Abstract
The relatively stable Holocene climate was preceded by a pronounced event of abrupt warming in the Northern Hemisphere, the termination of the Younger Dryas (YD) cold period1,2. Although this transition has been intensively studied, its imprint on low-latitude ocean temperature is still controversial and its effects on sub-annual to decadal climate variability remain poorly understood1,3,4. Sea surface temperature (SST) variability at these timescales in the tropical Atlantic is expected to intensify under current and future global warming and has considerable consequences for environmental conditions in Africa and South America, and for tropical Pacific climate5,6,7,8. Here we present a 100-µm-resolution record obtained by mass spectrometry imaging (MSI) of long-chain alkenones in sediments from the Cariaco Basin9,10,11 and find that annually averaged SST remained stable during the transition into the Holocene. However, seasonality increased more than twofold and approached modern values of 1.6 °C, probably driven by the position and/or annual range of the Intertropical Convergence Zone (ITCZ). We further observe that interannual variability intensified during the early Holocene. Our results demonstrate that sub-decadal-scale SST variability in the tropical Atlantic is sensitive to abrupt changes in climate background, such as those witnessed during the most recent glacial to interglacial transition.
Main
The warm and relatively stable climate of the Holocene has facilitated the development of modern ecosystems and the proliferation of human societies and their cultural diversification. Its onset, however, was associated with an event of abrupt climate change. The boundary between the Pleistocene and the Holocene is defined by the sudden Northern Hemisphere warming that terminated the YD cold spell12. The YD lasted from about 12.9 to 11.7 thousand years before 2000 AD (kyr b2k)13 and was triggered by a reduction of the Atlantic meridional overturning circulation resulting from freshwater discharge at higher latitudes14. Its effects quickly propagated, globally affecting hydroclimate and temperature1,2. Although correlative cooling was predominant across the Northern Hemisphere, the Southern Hemisphere, especially in the high latitudes, witnessed warming in what has been defined as the bipolar seesaw15. The annually laminated (varved) sediments from the Cariaco Basin, an anoxic oceanic basin located off Venezuela, have been crucial in identifying the tropical response to the YD–Holocene transition. A dry YD was succeeded by a wetter early Holocene16, resulting in vegetation change17. The end of the YD also witnessed changes in primary productivity11,18,19 and phytoplankton community composition20. These phenomena are explained by a northward migration of the ITCZ, which resulted in increased precipitation, but reduced trade winds and upwelling in the area11,17,19.
With respect to SST, the reconstructed pattern of change in the lower latitudes is more heterogeneous, and a greater impact of the YD on the hydrological cycle than on SST is assumed1. In the western tropical North Atlantic (TNA), different reconstructions have yielded inconsistent results, with evidence of both a slightly warmer YD from molecular proxies and planktonic foraminifera, consistent with a decrease of northward heat transport4,21, but also a comparatively cool YD, as recorded by foraminifera in the Cariaco Basin3.
These SST reconstructions record changes in mean states, averaging decades or centuries into single data points. The forcing of seasonal to interannual SST variability during this and other notable climatic transitions, however, remains unexplored. Perturbations on these timescales are, nevertheless, highly relevant: SST variability in the TNA profoundly affects precipitation in Africa and South America, including catastrophic droughts in Northeast Brazil8, modulates the incidence of hurricanes7, and influences tropical Pacific climate, particularly El Niño–Southern Oscillation (ENSO)5. Understanding TNA SST variability across changing climate backgrounds is thus of relevance, especially considering that an intensification under greenhouse warming has been anticipated6.
We analysed the well-established \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) SST proxy, based on the distribution of haptophyte-derived alkenones22, by means of MSI10 at 100-µm resolution in a 60-cm section of the well-dated core MD03-2621 from the Cariaco Basin. This section spans an age of approximately 11.9 to 11.2 kyr b2k and thus includes the YD–Holocene transition11. The resulting SST record provides insights into seasonal to interannual SST variability during the most recent glacial to interglacial transition.
Average annual SST
Despite the extensive environmental changes related to the northward shift of the ITCZ, which caused the abrupt change in sediment reflectance (Fig. 1b) and varve thickness11,19, our high-resolution reconstructions indicate that annually averaged SST remained constant across the YD–Holocene transition (Fig. 1a). In the 200 years before and after the reflectance-based midpoint of the YD–Holocene transition (11.673 kyr b2k)11, the average SST is 23.8 ± 1.0 °C and 23.8 ± 1.6 °C, respectively. This is consistent with conventional \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) analyses performed in the present study and with those previously reported by Herbert and Schuffert23 but different from the YD cooling described by Lea et al.3 (Extended Data Fig. 1). We argue that the transition into the Holocene did not have an imprint on the average annual SST and that conflicting, low-resolution SST records from the Cariaco Basin and the TNA can be explained by seasonal effects and changes to water-column stratification. Such seasonal effects are explored in a dedicated section below.
a, Annually averaged SST (red line) and 15-point Gaussian smoothing (black line). b, Changing sediment reflectance11 is an indicator of the environmental change in the Cariaco Basin associated with the transition from the cold YD to a milder Holocene, as recorded in δ18O values in Greenland ice cores13. The beginning of the Holocene (11.7 kyr b2k) is indicated as defined by Rasmussen et al.13.
Three prominent SST maxima are observed between about 11.50 to 11.45 kyr b2k and thus coincide in time with the ‘11.4 ka cold event’, or Preboreal oscillation (PBO) (Extended Data Fig. 2). The PBO was caused by a weakening of the thermohaline circulation24,25, and is registered in records from Europe and North America as a shift towards dryer, colder conditions25,26. These maxima are discussed in more detail in Methods, under the section titled ‘Decadal-scale to centennial-scale SST changes during the YD–Holocene transition and in the early Holocene’.
Interannual SST variability
Although apparently the longer-term SST trend was barely affected during the YD–Holocene transition, short-term variability increased. Frequency analysis of the annually resolved \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) SST record shows persistent centennial (120-year) and multidecadal (42-year) cycles. The variability at sub-decadal frequencies is weak during the late YD but substantially strengthens at 11.66 kyr b2k (P = 0.006) and remains prominent in the Holocene section (Fig. 2a–c and Extended Data Fig. 3). The modern tropical Atlantic presents strong interannual anomalies, mostly expressed in a zonal pattern analogous to the Pacific El Niño and a meridional pattern that results from the mutual interaction of the latitudinal SST gradient, the ITCZ position and the strength of trade winds27,28.
a, Continuous Morlet wavelet power of the \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) SST series. Contour lines denote the 95% significance level against red noise and the line marks the cone of influence. b, SST anomaly (SSTA) band-pass-filtered for a period of 2–8 years. c, SST variability in the 2–8-year window for 25-year intervals. The grey line represents raw data, whereas the black line shows data corrected for analytical variability (see Methods, under the sections titled ‘SST reconstruction with yearly resolution’ and ‘The effect of changing sedimentation rate on reconstructed interannual SST variability during the YD–Holocene transition’). The dotted lines represent average variability before/after 11.66 kyr b2k.
This variability is driven by local processes, but can also be forced by ENSO and the North Atlantic Oscillation29,30. ENSO has a strong teleconnection to TNA SST: El Niño events in boreal fall and winter tend to result in positive SST anomalies during the following spring in the TNA31,32,33 (Extended Data Fig. 4). The muted interannual SST variability during the late YD thus seems to stand in conflict with the hypothesis that the meltwater-induced collapse of overturning circulation during the YD would have resulted in increased ENSO amplitude34,35 and with estimations of a strengthened mid-YD ENSO based on individual foraminifera analysis of discrete samples with ages of 12.5 and 12.2 kyr b2k (refs. 36,37). However, our data reflect approximately the last two centuries of the YD, when the meltwater effect might have already ceased. Cheng et al.2 recently claimed that the YD termination might have started in the Southern Hemisphere (at around 11.9 kyr) or the tropical Pacific (at around 12.3 kyr), owing to a shift from El Niño to La Niña-like conditions. This shift would have induced a gradual strengthening of the Atlantic meridional overturning circulation until reaching a tipping point that led to the abrupt rise in North Atlantic temperature. A muted ENSO teleconnection during the late YD would thus be feasible and might have contributed, among other factors, to reduced SST variability in the TNA. Subsequent strengthening of SST variability in the early Holocene might be related to the northward shift of the ITCZ or to sea ice retreat.
Seasonal SST variability
In our record, sub-annual SST variability can be assessed by deconvoluting the SST signal into upwelling and non-upwelling seasons. This was achieved by combining information on sediment colour, elemental composition and \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) values in each µm-sized spot (Methods, sections titled ‘Assessment of SST seasonality’ and ‘Varve formation and alkenone deposition in the sediments of the Cariaco Basin during the YD–Holocene transition’). Using micro-X-ray fluorescence spectroscopy analysis of sampled spots congruent to those analysed by MSI, we confirmed that the investigated laminae couplets represent annual cycles, as already proposed by Hughen et al.18: darker layers are enriched in Fe, Ti and Ca and correspond to the rainy, non-upwelling (summer/fall) season depositing terrigenous material and biogenic CaCO3 from foraminifera or coccolithophores. Si abundance is highest in lighter layers and corresponds to the increased biogenic opal production by diatoms during the upwelling (winter/spring) season (Fig. 3b and Extended Data Fig. 5). This blueprint of seasonality was used to assess changes in alkenone abundance (Extended Data Fig. 6) and \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\)-based SST reconstruction. Light layers record lower SST values, consistent with upwelling-induced cooling, whereas darker layers show higher values (Fig. 3c and Extended Data Fig. 7). Deconvolution of reconstructed SST, based on sediment colour, enabled us to calculate the seasonality of SST, defined as the difference between average SST in the non-upwelling and upwelling seasons. SST seasonality substantially strengthened into the Holocene (P < 0.001) and this increase is robust across a range of sediment colour values chosen to separate data into upwelling and non-upwelling seasons (Extended Data Fig. 8). Fitting changes in seasonality to a ramp (see Methods, section titled ‘Assessment of SST seasonality’) results in an abrupt increase from 0.8 to 1.8 °C at 11.64 kyr b2k, whereas imposing a more gradual increase results in a 160-year trend from 0.6 to 1.8 °C (Fig. 3a). Reconstructed early Holocene seasonality is thus similar to the modern Cariaco Basin (1.6 °C).
a, SST seasonality calculated as the difference between \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) SST attributed to the non-upwelling and upwelling seasons in 5-year intervals. Increase in Holocene seasonality is fitted to an abrupt and a more gradual ramp (solid and dashed black lines). The dotted red line represents modern Cariaco SST seasonality (1.6 °C). b,c, Seasonality was evaluated by assigning molecular proxy data from each spot to a season of deposition based on the sediment colour of the spot. Elemental (b) and \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) (c) data from an exemplary 5-cm slice (490–495 cm below seafloor, 11.39–11.50 kyr b2k) binned according to sediment colour (greyscale, GS). For better visualization, each bin encompasses five GS units and includes at least 25 successful \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) analyses. The red and blue bars in c are attributed to non-upwelling and upwelling seasons, respectively. GS is shown as ΔGS, that is, the difference from the median GS of the slice.
This increase in seasonality is concurrent with the change in sediment reflectance and we posit that both were forced by the position of the ITCZ. Annual SST variability in the tropical Atlantic is driven by feedbacks between ocean and atmosphere38,39,40, and SST maxima are coupled to the seasonal migration of the ITCZ. Its northernmost displacement in summer/fall results in warmest surface waters in the Caribbean Sea. Decreased seasonality during the late YD can thus be explained by a southward shift of the mean position of the ITCZ and/or by a contraction of its annual range.
This effect was probably further reinforced by local features in the Cariaco Basin. The basin sits within the current area of migration of the Atlantic ITCZ, more precisely at its northernmost limit. This translates into a strong seasonal cycle: in summer and fall, heavy precipitation is related to the ITCZ being positioned over the catchment area of the basin and results in intense discharge by local rivers41. In winter and spring, as the ITCZ migrates southward, it allows for strong trade winds, increased upwelling, weakened stratification and highest primary productivity and export of biogenic material42. We argue that, as the ITCZ moved northward during the transition into the Holocene and/or expanded its annual range, the summer/fall season received larger freshwater input and became less influenced by regional windiness and upwelling11,16,19. This allowed the development of density stratification, with warm surface layers, as opposed to the colder mixed water column of the upwelling season. The incipient strengthening of SST seasonality would have been further supported by a maximum in insolation seasonality43 (Extended Data Fig. 9a).
In the modern Cariaco Basin, temperature has been identified as a chief driver of phytoplankton composition44, for example, warmer temperatures exert a negative effect on most diatoms. Stronger SST seasonality and a warmer non-upwelling season thus can be related to a more pronounced annual succession in the phytoplankton composition and to the shift from a diatom-dominated YD to a coccolithophore-dominated Holocene20,45. We further suggest that these changes in seasonality will have affected previous, lower-resolution SST reconstructions. The abrupt warming inferred by Lea et al.3 might actually reflect increased SST in the thermally stratified water column of the non-upwelling season (Methods, section titled ‘Effect of changing seasonality on YD and early Holocene SST records from the western TNA’ and Extended Data Fig. 9b).
Bova et al.46 have proposed that climatic events such as the Holocene and last interglacial thermal maxima are actually associated with large seasonal effects but weak annual SST changes. Our dataset provides proxy-based evidence of such seasonal effects in the TNA during the last abrupt transition to a warmer climate at the Pleistocene–Holocene boundary. Our record further describes the strengthening of TNA interannual SST variability over this boundary. By revealing these previously hidden sources of SST variability, we conclude that the high-frequency component of the climate system can be especially sensitive to changes in climate background. Assessing this variability over critical climate transitions through reconstructions has been hampered in the past by insufficient resolution in proxy records, but is now feasible through MSI-based analysis of molecular proxies and its combination with other high-resolution techniques.
Methods
Study site
The Cariaco Basin, located on the continental shelf off Venezuela, is a large (about 160 km long and about 65 km wide) depression, composed of two approximately 1,400-m-deep sub-basins. It is partially isolated from the Caribbean Sea by a series of sills with depths of less than 150 m (ref. 47). This limits renewal of deep water in the basin and, paired with the high oxygen demand resulting from intense surface primary productivity, leads to anoxic waters below a depth of about 275 m at present47,48.
The marked seasonality in the Cariaco Basin, combined with anoxic bottom waters that effectively prevent bioturbation, results in the accumulation of annually laminated (varved) sediments. As sediments are varved for the last deglaciation and the Holocene, and because of the sensitivity of the area to climate change, they are considered to be one of the most valuable high-resolution marine climate archives and have been successfully used to study climate variability in the tropics3,11,16,17,18. Varve thickness is about 1 mm or more during the YD–Holocene transition18.
Core and age model
Core MD03-2621 was retrieved during IMAGES cruise XI (PICASSO) aboard R/V Marion Dufresne in 2003 (Laj and Shipboard Party 2004). Cariaco cores have been collected under the regulations of the Ocean Drilling Program and the IMAGES coring programme. In this study, data from depths between 480 and 540 cm below the seafloor are presented, encompassing the YD–Holocene transition. A detailed age model for core MD03-2621 was established by Deplazes et al.11 and is based on the cross-correlation of total reflectance to dated colour records from the Cariaco Basin49,50. For the studied interval, the original age model is based on a floating varve chronology anchored to tree ring data by matching 14C data49. The age model for core MD03-2621 was further fine-tuned by correlation of reflectance data to the NGRIP ice core δ18O record on the GICC05 age scale11. The transition from the YD to the Holocene is characterized by a decrease in the sedimentation rate from 1.4 to 0.5 mm year−1.
To account for possible depth offsets during storage and subsampling, we matched sediment colour data expressed as greyscale (GS) to the reflectance data from Deplazes et al.11 with the software QAnalySeries51. To enable comparison with our record, ages in Lea et al.3 were corrected for the age difference between the sediment-colour-based midpoint of the YD–Holocene transition in their record (11.56 kyr b2k) and in data from Deplazes et al.11 (11.673 kyr b2k). The start and end of the change in reflectance were determined by the RAMPFIT software52.
Sample preparation
Samples for MSI of molecular proxies were prepared as described in Alfken et al.53: the original core was subsampled by LL channels, from which X-ray pictures (Hewlett-Packard Faxitron 43855A X-ray cabinet) and high-resolution digital images (smart-CIS 1600 Line Scanner) were obtained. The LL channels were then cut into 5-cm pieces, which were subsequently freeze-dried, embedded in a gelatin:carboxymethyl cellulose (4%:1%) mixture and thin-sectioned on a Microm HM 505 E cryomicrotome. From each piece, one 60-µm-thick and one 100-µm-thick, longitudinal slice (spanning the whole 5 cm piece) were prepared and affixed to indium-tin-oxide-coated glass slides (Bruker Daltonik, Bremen, Germany) for MSI and elemental mapping, respectively. Slices for MSI were further amended with a fullerite matrix54.
For all slices, a high-resolution picture was taken on a M4 Tornado micro-X-ray fluorescence spectroscopy system (Bruker Nano Analytics). This picture was used as a reference to set up elemental mapping and MSI analysis, and also for the 2D comparison of elemental and proxy data to sediment colour. Sediment colour is expressed as GS value. To account for differences between single slices, ΔGS was calculated as the difference between a value and the median GS of each individual slice. Very low GS values corresponding to areas devoid of sediment, identified by a black background, were excluded from analysis.
Elemental mapping
Elemental mapping of 100-µm-thick slices was performed on a M4 Tornado micro-X-ray fluorescence spectroscopy system (Bruker Nano Analytics) equipped with a micro-focused Rh source (50 kV, 600 µA) with a polycapillary optic. Measurements were conducted under vacuum, with a resolution of 50 µm, two scans per spot and a scan time of 5 ms per scan. Data were initially processed and visualized with M4 Tornado Software version 1.3. XY matrices of relevant elements and sediment colour were imported into MATLAB (R2016b) for further processing. To assess the correspondence between sediment colour and elemental composition, for each 5-cm piece, signal intensities of Ca, Fe, Ti and Si in single spots were binned according to ΔGS and average intensities were calculated for each bin (Extended Data Fig. 5). The bin size was 5 GS units.
Molecular proxy analysis by MSI
MSI was carried out on a 7T solariX XR Fourier transform ion cyclotron resonance mass spectrometer coupled to a matrix-assisted laser desorption/ionization source equipped with a Smartbeam II laser (Bruker Daltonik, Bremen, Germany). Analyses were performed in positive ionization mode selecting for a continuous accumulation of selective ions window of m/z 554 ± 12. Spectra were acquired with 25% data reduction to limit data size. Spatial resolution was obtained by rastering the ionizing laser across the sample in a defined rectangular area at a 100-µm spot distance. Considering laminae thickness in the millimetre range18, such raster resolution is suited for seasonally resolved SST reconstruction. Settings for laser power, frequency and number of shots were adjusted for optimal signal intensities before each measurement; typical values were 250 shots with 200 Hz frequency and 60% laser power. External mass calibration was performed in electrospray ionization mode with sodium trifluoroacetate (Sigma-Aldrich). Each spectrum was also calibrated after data acquisition by an internal lock mass calibration using the Na+ adduct of pyropheophorbide a (m/z 557.2523), a chlorophyll a derivative generally present in relatively young marine sediments. Around 20,000 individual spots were thereby obtained for every 5-cm slice, each spot containing information on the abundance of diunsaturated and triunsaturated C37 alkenones needed to calculate the \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) SST proxy.
We provide a two-pronged approach to decode SST proxy information: (1) a downcore \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) profile is obtained by pooling alkenone data from coeval horizons, and results in SST reconstructions with annual resolution, and (2) 2D images of alkenone distribution are examined in conjunction with maps of sediment colour and elemental distribution to filter single-spot alkenone data for season of deposition.
SST reconstruction with yearly resolution
For the downcore profile, MSI data were referenced to the X-ray image by the identification of three teaching points per 5-cm piece. Afterwards, the X-ray image was corrected for tilting of laminae in the LL channels. This was done by identification of single laminae in the X-ray image and selection of a minimum of four tie points per lamina. A detailed description can be found in Alfken et al.9. After applying the corresponding age model, downcore profiles were established with 1-year resolution: the intensity of the two alkenone species relevant to the \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) proxy (C37:2 and C37:3) were recorded for each individual laser spot and filtered for a signal-to-noise threshold of 3. Only spots in which both compounds were detected were further considered. Intensity values were then summed over the depth corresponding to 1 year. By pooling proxy data into 1-year horizons, the effect of changing sedimentation rate and, thereby, changing downcore resolution is minimized. If at least ten spots presenting both compounds were available for a single horizon, data quality criteria were satisfied54 and a \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) value was calculated as defined by Prahl and Wakeham22:
To apply the gas chromatography (GC)-based calibrations for the \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) proxy, MSI-based data were converted to GC equivalents. Therefore, after MSI, sediment slices were extracted for conventional proxy analysis. Sediment was scraped off the slide and extracted following a modified Bligh and Dyer procedure55,56. Extracts were evaporated under a stream of nitrogen, re-dissolved in n-hexane and analysed on a Thermo Finnigan Trace GC-FID equipped with a Restek Rxi-5ms capillary column (30 m × 0.25 mm ID). For each 5-cm piece, a ratio between the \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) values obtained by GC flame ionization detector analysis and MSI of the whole piece was calculated. The average ratio of all pieces for which GC-based values could be obtained was 1.194, with a standard deviation of 0.021.
This ratio was used to calculate GC-equivalent \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) values, which were then translated into SST using the BAYSPLINE calibration57. The average standard error of the BAYSPLINE model is 0.049 \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) units (corresponding to 1.4 °C) for samples with SST below 23.4 °C, but increases at higher values (to up to 4.4 °C)57. This is explained by the fact that sensitivity of the \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) to SST (that is, the slope of the regression) declines at higher values. In the current dataset, the 95% confidence interval is, on average, ±3.6 °C. The analytical precision of MSI-based SST reconstructions for the \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\), using at least ten data points, according to Alfken et al.9, is about 0.3 °C. Sources of uncertainty are summarized in Extended Data Fig. 10a.
For frequency analysis, a continuous, annually spaced record was constructed by linearly interpolating 49 missing values. The record was subsequently detrended. Spectral analysis was performed with the REDFIT module58 using a Hanning window (oversample 2, segments 2). Continuous wavelet transforms were applied to investigate changes in cyclicity over time, using the Morlet wavelet with code provided by Torrence and Compo59 for MATLAB. All steps, except for the wavelet analysis, were performed with the PAST software60.
For the assessment of the interannual variability, the SST record was band-pass-filtered for periods between 2 and 8 years. The record is based on 1-year binned data; seasonality is thereby nullified and the highest frequency to be evaluated (Nyquist frequency) corresponds to a period of 2 years. Variability of this time series was quantified by calculating the standard deviation of the band-pass-filtered \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) signal in 25-year intervals. To account for the potential impact of analytical precision on the observed signal (Methods, section titled ‘The effect of changing sedimentation rate on reconstructed interannual SST variability during the YD–Holocene transition’), the variability experiment from Alfken et al.9 was revisited. A sediment extract had been sprayed on an ITO slide and analysed by MSI. We then randomly selected n spots and obtained a \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) value for the summed intensities of these spots. Precision was calculated as the standard deviation of five replicate experiments for n = 1, 5, 10, 20, 30, 40, 50 and 60. Decreasing analytical variability with increasing number of observations was fitted to a curve (R2 = 0.838) described by the equation
On the basis of this equation, analytical variability for each horizon could be calculated on the basis of the number of values included (Extended Data Fig. 10b). The mean variability for each 25-year window was then subtracted from the observed variability in the band-pass-filtered signal and the resulting proxy values were translated to SST following the equation by Müller et al.61. Statistical significance of the change in corrected SST variability after 11.66 kyr b2k was assessed with a t-test.
Assessment of SST seasonality
For the assessment of SST seasonality, alkenone intensities from individual spots were binned according to ΔGS, with a bin size of 1 unit. Spots were then separated into the categories upwelling season and non-upwelling season by identifying the threshold ΔGS value that maximized the difference between average SST in the bins above and below it. Furthermore, this value had to fulfill three conditions: (1) be higher (lighter) than the bins with the highest relative abundance of Ca, Ti and Fe, which is indicative of the dark sediments associated to non-upwelling season, (2) be lower (darker) than the bin with highest relative abundance for Si indicative of light sediment associated to the upwelling season and (3) the number of spots categorized as upwelling and non-upwelling had to account for at least 25% of total spots. If criteria 1 and 2 prevented criteria 3 from being fulfilled, a limit of 15% was set. After separating data into these two categories, data were processed separately as described above for the unfiltered dataset and a downcore temporal resolution of 5 years was applied. Seasonality was calculated as the difference between both records and thus represents the difference between 5-year average SST in the non-upwelling and upwelling seasons.
Shift in seasonality was fitted to two different ramps with the RAMPFIT software52. An unconstrained approach and a constrained approach (in which the start and end points of the ramp were restricted to the intervals 11.725–11.8 kyr b2k and 11.6–11.675 kyr b2k) were applied. Negative values were excluded from this fitting. The resulting groups of data were compared by a Mann–Whitney rank test.
SST seasonality in the modern Cariaco Basin was calculated for the years 1980 to 2020 based on the HadISST dataset62 by dividing monthly data from each year into two groups and searching for the largest difference between the average temperatures of both groups. Each group had to include at least three consecutive months. In 36 out of 41 years, the warm season was defined from May to November or from July to November.
Decadal-scale to centennial-scale SST changes during the YD–Holocene transition and in the early Holocene
Annually reconstructed SST (average SST = 24.3 °C) remains relatively stable during the YD–Holocene transition. At around 11.4 kyr b2k, a warming trend is observed. Averaging all data before 11.39 kyr and after 11.37 kyr results in a warming from 23.9 ± 1.6 °C to 25.5 ± 1.4 °C. Trends identified by MSI are consistent with conventional \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) analyses performed in the present study and those previously reported by Herbert and Schuffert23 on Ocean Drilling Program core 165-1002C (Extended Data Fig. 1). These authors observed a slight warming several hundred years after the transition into the Holocene, between about 11.53 and 11.32 kyr b2k.
Three prominent SST maxima are observed between about 11.50 and 11.45 kyr b2k. The average SST in these 50 years is 1.3 °C higher than in the 50 years before and after. These maxima are synchronous with the 11.4-ka cold event or PBO characterized by a negative excursion in δ18O and reduced snow accumulation rates in Greenland ice cores63 (Extended Data Fig. 2). The PBO coincides with the oldest of the Bond events, that is, pulses of ice rafting in the Northern Atlantic indicative of climatic deterioration64.
A warm tropical response to the PBO would be supported by the lower-resolution foraminiferal SST record of Lea et al.3, which shows two data points of increased SST shortly after the end of the YD–Holocene transition. To enable direct comparison, ages in Lea et al.3 were corrected for the age difference between the sediment-colour-based YD termination midpoint in their record and in data from Deplazes et al.11. After this correction, these maxima correspond to 11.43 and 11.50 kyr b2k (Extended Data Fig. 2). Further, the SST maxima coincide with a short-lived change to lighter-coloured sediments. Hughen et al.19 described a correlation between brief North Atlantic cold events, such as the PBO, and changes in tropical primary productivity mediated by stronger upwelling that result in lighter sediments in the Cariaco Basin. Far-reaching effects of the PBO have previously been described in West Asia, with increased dust plumes being related to a southward shift of the westerlies65.
The identification of the mechanisms behind a potential TNA response to the PBO is beyond the scope of this study. However, we wish to point out that high-resolution records are crucial to identify such events and to differentiate between underlying changes coinciding in time and, as in the present case, sharp signals that act on the same multidecadal timescales and can potentially be triggered by the same processes66.
The effect of changing sedimentation rate on reconstructed interannual SST variability during the YD–Holocene transition
Pooling proxy data into 1-year horizons establishes a constant sampling rate and thereby prevents potential effects of changing sedimentation rates. The onset of the Holocene in the Cariaco Basin sediments is characterized by a sharp decrease in sedimentation rates from 1.4 to 0.5 mm year−1 (refs. 11,19). Consequently, in the yearly pooled data, we observe a reduction in the number of values summed for each horizon (Extended Data Fig. 10b), as fewer laser spots fit into the thinner Holocene annual layers. At the same time, the mean intensity in each of these spots slightly increases, consistent with a relative increase of the contribution of haptophytes to primary production20.
We have previously shown that the precision of MSI-based molecular proxy analysis is dependent on both the number of spots pooled per data point and the signal intensity in these spots54. All horizons used in the downcore record are above the established threshold of ten spots and proxy variability was shown to stabilize above this threshold9,54. However, as a decrease in the number of values per horizon might still result in lower analytical precision and contribute to higher signal variability, we corrected variability in the 2–8-year window with the estimated analytical variability (see equation (3)). With this correction, the magnitude of the described variability decreases across the record, but the trend towards higher interannual variability in the Holocene persists (Fig. 2c).
Varve formation and alkenone deposition in the sediments of the Cariaco Basin during the YD–Holocene transition
Comparison of elemental maps and sediment colour (Extended Data Fig. 5) shows a consistent pattern of lamination across the YD–Holocene transition that results from the seasonal interplay of precipitation, upwelling and dominant phytoplankton community composition. Darker laminae represent the rainy, non-upwelling (summer/fall) season and are enriched in Fe and Ti from terrigenous material and Ca sourced from biogenic CaCO3 produced by foraminifera or coccolithophores. Lighter laminae are characterized by high abundance of Si and correspond to the increased production of biogenic opal by diatoms during the upwelling (winter/spring) season67. This is in agreement with observations by Hughen et al.18, who described the laminae couplets in the Cariaco Basin as representing annual cycles, whereby light laminae are an indicator of high productivity associated with the winter/spring upwelling season and dark laminae are an indicator of summer/fall runoff and accumulation of terrigenous material. Deplazes et al.68 described a divergent origin of lamination for a deeper section of the YD, with light laminae being rich in calcareous and terrigenous elements characteristic for the summer season, whereas dark layers were enriched in Si and Br, indicative of diatoms and organic-walled primary producers characteristic for the more productive winter season. Such an alteration of the characteristic pattern of lamination is not observed in the late YD investigated here.
This blueprint of seasonality was used to assess the seasonal behaviour of alkenones. Alkenones were deposited throughout the year, as evidenced by the fact that the number of spots containing detectable amounts of both alkenone species are not restricted to the upwelling or non-upwelling seasons but distributed across a relatively wide range of GS values to both sides of the median (Extended Data Fig. 6). Average alkenone signal intensity is higher in the non-upwelling season, pointing to a preference of alkenone producers for this season and/or to a stronger dilution of the signal in the upwelling season. In regards to the \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) SST proxy distribution in light versus dark layers, our observations are in agreement with the ability to capture the seasonal SST cycle with alkenones in sinking particles in the modern Cariaco Basin69.
Effect of changing seasonality on YD and early Holocene SST records from the western TNA
Changing seasonality can contribute to explaining contrasting lower-resolution SST records in the western TNA during the YD and the early Holocene. The strong warming during the YD–Holocene transition recorded in the foraminiferal Mg/Ca record of the Cariaco Basin (Lea et al.3; Extended Data Fig. 1) might be reflecting the more robust thermohaline stratification and increasingly warmer non-upwelling seasons, given the preference of Globigerinoides ruber for this season.
Globigerinoides ruber (white), as used by Lea et al.3, is considered to be a dominant species in the tropics, with a relatively uniform annual distribution. However, in the modern Cariaco Basin, upwelling leads to a distinct foraminiferal community composition and seasonal turnover70, consistent with the notion of warm-water foraminifera narrowing their occurrence to the warmest season71. The relative abundance of G. ruber increases in the non-upwelling (warm) season but rarely exceeds 15%, whereas the upwelling season is clearly dominated by Globigerina bulloides72,73. Globigerinoides ruber fluxes are consistently lowest when upwelling is most vigorous, as expressed in annual minima in SST (Extended Data Fig. 9b). As upwelling during the YD and early Holocene was more intense than in the present70, the preference of G. ruber for the summer (non-upwelling) season might have been even more pronounced.
The development of a stronger seasonality in the early Holocene would thus have led to a narrower temporal occurrence of G. ruber in the non-upwelling season, during which it would also be exposed to higher SST. The average SST difference between seasons obtained in our analysis can be converted into annual SST amplitude by assuming a sinusoidal curve. By doing so, we observe an increase in the seasonal amplitude of 1.5 to 1.9 °C (depending on the ramp fitted), which is similar to the warming described by Lea et al.3.
This interpretation is in agreement with Bova et al.46, who observed that most Holocene climate reconstructions are biased towards the boreal summer/fall and reflect the evolution of seasonal rather than annual temperatures. As discussed above, this is probably not true for the \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) index in the Cariaco Basin, as alkenones are deposited throughout the year. The suggested weakening of summer stratification during the YD (as compared with the Holocene) might, however, explain why the lower-resolution \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) records from the semi-enclosed Cariaco Basin show no or weaker warming23 than other, open-ocean, tropical YD records4, where the interplay of upwelling, freshwater input and stratification are less relevant to the SST signal.
Data availability
Data are accessible in the Pangaea database under doi.pangaea.de/10.1594/PANGAEA.946440 and doi.pangaea.de/10.1594/PANGAEA.946442.
References
Shakun, J. D. & Carlson, A. E. A global perspective on Last Glacial Maximum to Holocene climate change. Quat. Sci. Rev. 29, 1801–1816 (2010).
Cheng, H. et al. Timing and structure of the Younger Dryas event and its underlying climate dynamics. Proc. Natl Acad. Sci. USA 117, 23408–23417 (2020).
Lea, D. W., Pak, D. K., Peterson, L. C. & Hughen, K. A. Synchroneity of tropical and high-latitude Atlantic temperatures over the last glacial termination. Science 301, 1361–1364 (2003).
Rühlemann, C., Mulitza, S., Müller, P. J., Wefer, G. & Zahn, R. Warming of the tropical Atlantic Ocean and slowdown of thermohaline circulation during the last deglaciation. Nature 402, 511–514 (1999).
Cai, W. et al. Pantropical climate interactions. Science 363, eaav4236 (2019).
Yang, Y. et al. Greenhouse warming intensifies north tropical Atlantic climate variability. Sci. Adv. 7, eabg9690 (2021).
Murakami, H., Levin, E., Delworth, T., Gudgel, R. & Hsu, P.-C. Dominant effect of relative tropical Atlantic warming on major hurricane occurrence. Science 362, 794–799 (2018).
Marengo, J. A., Torres, R. R. & Alves, L. M. Drought in Northeast Brazil—past, present, and future. Theor. Appl. Climatol. 129, 1189–1200 (2017).
Alfken, S. et al. Mechanistic insights into molecular proxies through comparison of subannually resolved sedimentary records with instrumental water column data in the Santa Barbara Basin, Southern California. Paleoceanogr. Paleoclimatol. 35, e2020PA004076 (2020).
Wörmer, L. et al. Ultra-high-resolution paleoenvironmental records via direct laser-based analysis of lipid biomarkers in sediment core samples. Proc. Natl Acad. Sci. USA 111, 15669–15674 (2014).
Deplazes, G. et al. Links between tropical rainfall and North Atlantic climate during the last glacial period. Nat. Geosci. 6, 213–217 (2013).
Walker, M. et al. Formal definition and dating of the GSSP (Global Stratotype Section and Point) for the base of the Holocene using the Greenland NGRIP ice core, and selected auxiliary records. J. Quat. Sci. 24, 3–17 (2009).
Rasmussen, S. O. et al. A stratigraphic framework for abrupt climatic changes during the Last Glacial period based on three synchronized Greenland ice-core records: refining and extending the INTIMATE event stratigraphy. Quat. Sci. Rev. 106, 14–28 (2014).
McManus, J. F., Francois, R., Gherardi, J.-M., Keigwin, L. D. & Brown-Leger, S. Collapse and rapid resumption of Atlantic meridional circulation linked to deglacial climate changes. Nature 428, 834–837 (2004).
Broecker, W. S. Paleocean circulation during the last deglaciation: a bipolar seesaw? Paleoceanography 13, 119–121 (1998).
Haug, G. H., Hughen, K. A., Sigman, D. M., Peterson, L. C. & Rohl, U. Southward migration of the intertropical convergence zone through the Holocene. Science 293, 1304–1308 (2001).
Hughen, K. A., Eglinton, T. I., Xu, L. & Makou, M. Abrupt tropical vegetation response to rapid climate changes. Science 304, 1955–1959 (2004).
Hughen, K. A., Overpeck, J. T., Peterson, L. C. & Anderson, R. F. The nature of varved sedimentation in the Cariaco Basin, Venezuela, and its palaeoclimatic significance. Geol. Soc. Lond. Spec. Publ. 116, 171–183 (1996).
Hughen, K. A., Overpeck, J. T., Peterson, L. C. & Trumbore, S. Rapid climate changes in the tropical Atlantic region during the last deglaciation. Nature 380, 51–54 (1996).
Werne, J. P., Hollander, D. J., Lyons, T. W. & Peterson, L. C. Climate-induced variations in productivity and planktonic ecosystem structure from the Younger Dryas to Holocene in the Cariaco Basin, Venezuela. Paleoceanography 15, 19–29 (2000).
Schmidt, M. W., Spero, H. J. & Lea, D. W. Links between salinity variation in the Caribbean and North Atlantic thermohaline circulation. Nature 428, 160–163 (2004).
Prahl, F. G. & Wakeham, S. G. Calibration of unsaturation patterns in long-chain ketone compositions for paleotemperature assessment. Nature 330, 367–369 (1987).
Herbert, T. D. & Schuffert, J. D. 16. Alkenone unsaturation estimates of sea-surface temperatures at site 1002 over a full glacial cycle. in Proceedings of the Ocean Drilling Program, Scientific Results (eds Leckie, R. M., Sigurdsson, H., Acton, G. D. & Draper, G.) 239–247 (Ocean Drilling Program, 2000).
Hald, M. & Hagen, S. Early Preboreal cooling in the Nordic seas region triggered by meltwater. Geology 26, 615–618 (1998).
Björck, S. et al. Synchronized terrestrial-atmospheric deglacial records around the North Atlantic. Science 274, 1155–1160 (1996).
Yu, Z. & Eicher, U. Abrupt climate oscillations during the last deglaciation in central North America. Science 282, 2235–2238 (1998).
Xie, S.-P. & Carton, J. A. in Earth’s Climate: The Ocean-Atmosphere Interaction (eds Wang, C., Xie, S.-P. & Carton, J. A.) 121–142 (AGU, 2004).
Cabos, W., de la Vara, A. & Koseki, S. Tropical Atlantic variability: observations and modeling. Atmosphere 10, 502 (2019).
Yang, Y., Xie, S.-P., Wu, L., Kosaka, Y. & Li, J. ENSO forced and local variability of north tropical Atlantic SST: model simulations and biases. Clim. Dyn. 51, 4511–4524 (2018).
Czaja, A., Van der Vaart, P. & Marshall, J. A diagnostic study of the role of remote forcing in tropical Atlantic variability. J. Clim. 15, 3280–3290 (2002).
Enfield, D. B. & Mayer, D. A. Tropical Atlantic sea surface temperature variability and its relation to El Niño‐Southern Oscillation. J. Geophys. Res. Oceans 102, 929–945 (1997).
Garcia-Serrano, J., Cassou, C., Douville, H., Giannini, A. & Doblas-Reyes, F. J. Revisiting the ENSO teleconnection to the tropical North Atlantic. J. Clim. 30, 6945–6957 (2017).
Astor, Y., Muller-Karger, F. & Scranton, M. I. Seasonal and interannual variation in the hydrography of the Cariaco Basin: implications for basin ventilation. Cont. Shelf Res. 23, 125–144 (2003).
Timmermann, A. et al. The influence of a weakening of the Atlantic meridional overturning circulation on ENSO. J. Clim. 20, 4899–4919 (2007).
Liu, Z. et al. Evolution and forcing mechanisms of El Niño over the past 21,000 years. Nature 515, 550–553 (2014).
Sadekov, A. Y. et al. Palaeoclimate reconstructions reveal a strong link between El Niño-Southern Oscillation and Tropical Pacific mean state. Nat. Commun. 4, 2692 (2013).
White, S. M., Ravelo, A. C. & Polissar, P. J. Dampened El Niño in the early and mid‐Holocene due to insolation‐forced warming/deepening of the thermocline. Geophys. Res. Lett. 45, 316–326 (2018).
Mitchell, T. P. & Wallace, J. M. The annual cycle in equatorial convection and sea surface temperature. J. Clim. 5, 1140–1156 (1992).
Carton, J. A. & Zhou, Z. Annual cycle of sea surface temperature in the tropical Atlantic Ocean. J. Geophys. Res. Oceans 102, 27813–27824 (1997).
Yu, L., Jin, X. & Weller, R. A. Role of net surface heat flux in seasonal variations of sea surface temperature in the tropical Atlantic Ocean. J. Clim. 19, 6153–6169 (2006).
Elmore, A. C. et al. Quantifying the seasonal variations in fluvial and eolian sources of terrigenous material to Cariaco Basin, Venezuela. J. S. Am. Earth Sci. 27, 197–210 (2009).
Montes, E. et al. Vertical fluxes of particulate biogenic material through the euphotic and twilight zones in the Cariaco Basin, Venezuela. Deep Sea Res. I Oceanogr. Res. Pap. 67, 73–84 (2012).
Felis, T. et al. Tropical Atlantic temperature seasonality at the end of the last interglacial. Nat. Commun. 6, 6159 (2015).
Mutshinda, C. M., Troccoli-Ghinaglia, L., Finkel, Z. V., Müller-Karger, F. E. & Irwin, A. J. Environmental control of the dominant phytoplankton in the Cariaco basin: a hierarchical Bayesian approach. Mar. Biol. Res. 9, 246–260 (2013).
Dahl, K. A., Repeta, D. J. & Goericke, R. Reconstructing the phytoplankton community of the Cariaco Basin during the Younger Dryas cold event using chlorin steryl esters. Paleoceanography 19, PA1006 (2004).
Bova, S., Rosenthal, Y., Liu, Z., Godad, S. P. & Yan, M. Seasonal origin of the thermal maxima at the Holocene and the last interglacial. Nature 589, 548–553 (2021).
Richards, F. A. & Vaccaro, R. F. The Cariaco Trench, an anaerobic basin in the Caribbean Sea. Deep-Sea Res. 3, 214–228 (1956).
Thunell, R. C. et al. Organic carbon fluxes, degradation, and accumulation in an anoxic basin: sediment trap results from the Cariaco Basin. Limnol. Oceanogr. 45, 300–308 (2000).
Hughen, K. A., Southon, J. R., Bertrand, C. J. H., Frantz, B. & Zermeno, P. Cariaco Basin calibration update: revisions to calendar and 14C chronologies for core PL07-58PC. Radiocarbon 46, 1161–1187 (2004).
Hughen, K., Southon, J., Lehman, S., Bertrand, C. & Turnbull, J. Marine-derived 14C calibration and activity record for the past 50,000 years updated from the Cariaco Basin. Quat. Sci. Rev. 25, 3216–3227 (2006).
Kotov, S. & Paelike, H. QAnalySeries - a cross-platform time series tuning and analysis tool. In American Geophysical Union, Fall Meeting 2018 abstr. PP53D-1230 (2018).
Mudelsee, M. Ramp function regression: a tool for quantifying climate transitions. Comput. Geosci. 26, 293–307 (2000).
Alfken, S. et al. Micrometer scale imaging of sedimentary climate archives - sample preparation for combined elemental and lipid biomarker analysis. Org. Geochem. 127, 81–91 (2019).
Wörmer, L. et al. Towards multiproxy, ultra-high resolution molecular stratigraphy: enabling laser-induced mass spectrometry imaging of diverse molecular biomarkers in sediments. Org. Geochem. 127, 136–145 (2019).
Bligh, E. G. & Dyer, W. J. A rapid method of total lipid extraction and purification. Can. J. Biochem. Phys. 37, 911–917 (1959).
Wörmer, L., Lipp, J. S. & Hinrichs, K.-U. in Hydrocarbon and Lipid Microbiology Protocols: Petroleum, Hydrocarbon and Lipid Analysis (eds McGenity, T. J., Timmis, K. N. & Nogales, B.) 289–317 (Springer, 2017).
Tierney, J. E. & Tingley, M. P. BAYSPLINE: a new calibration for the alkenone paleothermometer. Paleoceanogr. Paleoclimatol. 33, 281–301 (2018).
Schulz, M. & Mudelsee, M. REDFIT: estimating red-noise spectra directly from unevenly spaced paleoclimatic time series. Comput. Geosci. 28, 421–426 (2002).
Torrence, C. & Compo, G. P. A practical guide to wavelet analysis. Bull. Am. Meteorol. Soc. 79, 61–78 (1998).
Hammer, O., Harper, D. A. T. & Ryan, P. D. PAST: paleontological statistics software package for education and data analysis. Palaeontol. Electron. 4, 4 (2001).
Müller, P. J., Kirst, G., Ruhland, G., von Storch, I. & Rosell-Mele, A. Calibration of the alkenone paleotemperature index \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) based on core-tops from the eastern South Atlantic and the global ocean (60°N-60°S). Geochim. Cosmochim. Acta 62, 1757–1772 (1998).
Rayner, N. A. et al. Global analyses of sea surface temperature, sea ice, and night marine air temperature since the late nineteenth century. J. Geophys. Res. Atmos. 108, 4407 (2003).
Rasmussen, S. O., Vinther, B. M., Clausen, H. B. & Andersen, K. K. Early Holocene climate oscillations recorded in three Greenland ice cores. Quat. Sci. Rev. 26, 1907–1914 (2007).
Bond, G. et al. A pervasive millennial-scale cycle in North Atlantic Holocene and glacial climates. Science 278, 1257–1266 (1997).
Safaierad, R. et al. Elevated dust depositions in West Asia linked to ocean–atmosphere shifts during North Atlantic cold events. Proc. Natl Acad. Sci. 117, 18272–18277 (2020).
Rohling, E. J. & Pälike, H. Centennial-scale climate cooling with a sudden cold event around 8,200 years ago. Nature 434, 975–979 (2005).
Romero, O. E., Thunell, R. C., Astor, Y. & Varela, R. Seasonal and interannual dynamics in diatom production in the Cariaco Basin, Venezuela. Deep Sea Res. I Oceanogr. Res. Pap. 56, 571–581 (2009).
Deplazes, G. et al. Fingerprint of tropical climate variability and sea level in sediments of the Cariaco Basin during the last glacial period. Sedimentology 66, 1967–1988 (2019).
Turich, C. et al. Comparison of TEX86 and \({U}_{37}^{{K}^{{\prime} }}\) temperature proxies in sinking particles in the Cariaco Basin. Deep Sea Res. I Oceanogr. Res. Pap. 78, 115–133 (2013).
Peterson, L. C., Overpeck, J., Kipp, N. & Imbrie, J. A high‐resolution late Quaternary upwelling record from the anoxic Cariaco Basin, Venezuela. Paleoceanography 6, 99–119 (1991).
Jonkers, L. & Kučera, M. Global analysis of seasonality in the shell flux of extant planktonic Foraminifera. Biogeosciences 12, 2207–2226 (2015).
de Miró, M. D. Los foraminiferos planctónicos vivos y sedimentados del margen continental de Venezuela (resumen). Acta Geol. Hisp. 6, 102–108 (1971).
Tedesco, K. A. & Thunell, R. C. Seasonal and interannual variations in planktonic foraminiferal flux and assemblage composition in the Cariaco Basin, Venezuela. J. Foraminiferal Res. 33, 192–210 (2003).
Enfield, D. B., Mestas‐Nuñez, A. M. & Trimble, P. J. The Atlantic multidecadal oscillation and its relation to rainfall and river flows in the continental US. Geophys. Res. Lett. 28, 2077–2080 (2001).
Lee, S. K., Enfield, D. B. & Wang, C. Why do some El Niños have no impact on tropical North Atlantic SST? Geophys. Res. Lett. 35, L16705 (2008).
Park, J.-H. & Li, T. Interdecadal modulation of El Niño–tropical North Atlantic teleconnection by the Atlantic multi-decadal oscillation. Clim. Dyn. 52, 5345–5360 (2019).
Laskar, J. et al. A long-term numerical solution for the insolation quantities of the Earth. Astron. Astrophys. 428, 261–285 (2004).
Acknowledgements
We thank S. Alfken, T. Napier, I. Obreht and J. Pätzold for fruitful discussions and comments on an earlier draft and Z. Lu for sharing data on modelled ENSO variability. This research was supported by the European Research Council under the European Union’s Horizon 2020 research and innovation programme, grant agreement no. 670115 ZOOMECULAR (K.-U.H.) and by Germany’s Excellence Strategy (EXC-2077) project 390741603 ‘The Ocean Floor – Earth’s Uncharted Interface’.
Funding
Open access funding provided by Staats- und Universitätsbibliothek Bremen.
Author information
Authors and Affiliations
Contributions
Conceptualization: L.W., G.H.H., K.-U.H. Methodology: L.W., J.W. Software: L.W., B.B. Formal analysis: L.W. Investigation: L.W., J.W., B.B. Resources: G.H.H., K.-U.H. Writing, original draft: L.W., K.-U.H. Writing, review and editing: L.W., B.B., G.H.H., K.-U.H. Visualization: L.W. Funding acquisition: L.W., K.-U.H.
Corresponding author
Ethics declarations
Competing interests
The authors declare no competing interests.
Peer review
Peer review information
Nature thanks Alyssa Atwood, Sarah Feakins and the other, anonymous, reviewer(s) for their contribution to the peer review of this work. Peer reviewer reports are available.
Additional information
Publisher’s note Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Extended data figures and tables
Extended Data Fig. 1 Comparison of MSI-based and conventional SST records in the Cariaco Basin.
a, Reconstructed SST from Herbert and Schuffert23 based on the \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) proxy. The revised age model from Haug et al.16 was applied and expressed in kyr b2k to make the record comparable with our data. Foraminifera-based SST reconstruction in the Cariaco Basin3. Ages were adjusted by normalizing to the respective midpoints of the YD–Holocene transition expressed as changes in sediment colour in Deplazes et al.11 and Lea et al.3. b, Zoom-in to the YD–Holocene transition investigated in the present study, with MSI-based reconstruction (red line) shown together with data obtained by extracting sediment slices after having been used for MSI (black circles) and the two data points from the Herbert and Schuffert23 study that fall into the investigated interval (grey squares). Horizontal bars indicate the age interval corresponding to the data pooled into each extraction.
Extended Data Fig. 2 Evidence for a tropical response during the PBO.
a, The PBO is expressed as a negative excursion in δ18O and reduced snow accumulation rates in Greenland ice cores63. c, Abrupt SST maxima in our record are consistent with lower-resolution SST reconstruction3 (b) and are accompanied by an increase in reflectance indicative of changes in upwelling intensity11 (d). Duration of the PBO (11.52–11.40 kyr b2k) as defined by Rasmussen et al.13.
Extended Data Fig. 3 Spectral analysis of the annually resolved SST record.
Thick red and thin orange lines are 99% and 95% significance levels against red noise, respectively.
Extended Data Fig. 4 Teleconnection of ENSO to the Cariaco Basin.
a, Positive ENSO events identified by the MEI.v2 index (https://psl.noaa.gov/enso/mei/) are marked in red and lead to positive spring (b) and annual (c) SSTA in the Cariaco Basin. SSTA are calculated from HadISST62. Four of the five (six) strongest positive spring (annual) SST anomalies were related to positive ENSO events. From the nine positive ENSO events detected, eight (six) resulted in positive spring (annual) SST anomalies. d, The effect of positive ENSO was muted between the years 1992 and 2003, coinciding with a shift from negative to positive Atlantic Multidecadal Oscillation74, which is consistent with TNA-wide neutral response to positive ENSO events in 1992 and 2003 (ref. 75) and with a dependency of the ENSO teleconnection to the Atlantic Multidecadal Oscillation state76.
Extended Data Fig. 5 Elemental composition binned according to sediment colour.
Sediment colour is presented as delta greyscale (ΔGS, that is, the difference to the median GS value of each slice). Counts for each element were averaged for every bin and normalized to the highest value. Only bins with at least 100 data points were considered. The YD–Holocene transition, as defined by the change in sediment colour11, is situated between 501 and 509 cmbsf (cm below seafloor).
Extended Data Fig. 6 C37:2 long-chain alkenone intensity binned according to sediment colour (black dots) and relative contribution of each bin to the total number of spots in which both alkenones used in the \({{\bf{U}}}_{{\bf{37}}}^{{\bf{K}}{\boldsymbol{{\prime} }}}\) proxy were detected (grey bars).
Sediment colour is presented as delta greyscale (ΔGS, that is, the difference to the median GS value of each slice). The mean and standard error of alkenone intensity are shown. Only bins with at least 25 data points are shown. The YD–Holocene transition, as defined by the change in sediment colour11, is situated between 501 and 509 cmbsf (cm below seafloor).
Extended Data Fig. 7 \({{\bf{U}}}_{{\bf{37}}}^{{\bf{K}}{\boldsymbol{{\prime} }}}\) values binned according to sediment colour.
Sediment colour is presented as delta greyscale (ΔGS, that is, the difference to the median GS value of each sample). \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) was calculated on the basis of the sum of intensities in each bin and values obtained by MSI were converted to GC equivalents. Only bins with at least 25 data points are shown. The YD–Holocene transition, as defined by the change in sediment colour11, is situated between 501 and 509 cmbsf (cm below seafloor).
Extended Data Fig. 8 Impact of the sediment colour value used to separate \({{\bf{U}}}_{{\bf{37}}}^{{\bf{K}}{\boldsymbol{{\prime} }}}\) values into upwelling and non-upwelling seasons.
\(\Delta {{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) denotes the increase in seasonality after 11.64 kyr b2k, which is a robust feature across a wide range of ΔGS. ΔGS refers to the difference in greyscale values to the threshold used in the main text. The increase in seasonality weakens as lower GS values are chosen, that is, more signals from the non-upwelling, warm layers are incorporated into the cold season. The strongest increase in seasonality is not detected at ΔGS = 0 because we defined the threshold to be set in a way that at least 25% of the data points were included into each of the two seasons. Pushing the threshold towards higher values, in some cases assigning less than 25% of the data to the upwelling season, results in an even stronger enhancement of SST seasonality.
Extended Data Fig. 9 Seasonality of insolation and of foraminifera flux in the Cariaco Basin.
a, Seasonality of insolation at 10° N calculated as the difference between summer (JJA) and winter insolation (DJF) provided by Laskar et al.77. The shaded area indicates the investigated interval. b, Flux of G. ruber (white) in sediment traps from the Cariaco Basin plotted against monthly SST. Data from Tedesco and Thunell73.
Extended Data Fig. 10 Assessment of error sources.
a, Sources of uncertainty in the reconstruction of SST based on MSI of the \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) proxy. Bars represent analytical precision based on the standard deviation of replicate measurements9, the standard deviation of the average ratio between GC-based and MSI-based values in the current dataset, and the average 95% confidence interval for the SST calculation by means of the BAYSPLINE calibration model57 in the current dataset. Uncertainties related to analytical precision and MSI to GC equivalence are expressed in °C using the slope (0.033) provided by Müller et al.61 and using a 40% decrease in this slope to account for slope attenuation at high SST57. b, Number of spots pooled in each 1-year horizon to construct the \({{\rm{U}}}_{37}^{{{\rm{K}}}^{{\prime} }}\) record. The thin grey line shows annual values and the thick black line shows the 25-year running mean.
Supplementary information
Rights and permissions
Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The images or other third party material in this article are included in the article’s Creative Commons license, unless indicated otherwise in a credit line to the material. If material is not included in the article’s Creative Commons license and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this license, visit http://creativecommons.org/licenses/by/4.0/.
About this article
Cite this article
Wörmer, L., Wendt, J., Boehman, B. et al. Deglacial increase of seasonal temperature variability in the tropical ocean. Nature 612, 88–91 (2022). https://doi.org/10.1038/s41586-022-05350-4
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1038/s41586-022-05350-4
This article is cited by
Comments
By submitting a comment you agree to abide by our Terms and Community Guidelines. If you find something abusive or that does not comply with our terms or guidelines please flag it as inappropriate.