Abstract
More than Moore technology is driving semiconductor devices towards higher complexity and further miniaturization. Device miniaturization strongly impacts failure analysis (FA), since it triggers the need for non-destructive approaches with high resolution in combination with cost and time efficient execution. Conventional scanning acoustic microscopy (SAM) is an indispensable tool for failure analysis in the semiconductor industry, however resolution and penetration capabilities are strongly limited by the transducer frequency. In this work, we conduct an acoustic interferometry approach, based on a SAM-setup utilizing 100 MHz lenses and enabling not only sufficient penetration depth but also high resolution for efficient in-line FA of Through Silicon Vias (TSVs). Accompanied elastodynamic finite integration technique-based simulations, provide an in-depth understanding concerning the acoustic wave excitation and propagation. We show that the controlled excitation of surface acoustic waves extends the contingency towards the detection of nm-sized cracks, an essential accomplishment for modern FA of 3D-integration technologies.
Similar content being viewed by others
Introduction
Three-dimensional integration technology is a continuously burgeoning field in the semiconductor industry that addresses the convergence of Moore’s law and More than Moore (MtM)1. The third dimension helps to configure highly integrated heterogeneous devices by vertically stacking different functional components together with a notably reduced form factor2. Through Silicon Vias (TSVs) represent a high-performance 3D integration technology used in microchip engineering to build sophisticated and multifunctional microelectronic setups like microelectromechanical systems (MEMS), inductors, power electronics, optical sensors, and 3D packages3,4,5 with low cost and miniature size5,6. TSVs are fabricated through an assortment of various steps including the etching of deep trenches through the silicon substrate, followed by the deposition of electric insulation layers (e.g. silicon dioxide). Thenceforth the TSV is either filled or coated with a conductive metal, leading to filled or open TSV technology respectively5,7,8,9. One of the key factors determining the abiding reliability of TSVs is the thermo-mechanical stress resulting from the mismatch of the coefficient of thermal expansion (CTE) between the TSV conductive path and the bulk10,11. Tungsten-lined open TSV technology addresses this issue of CTE mismatch but at the cost of high residual stresses arising after the deposition process within the thin film stack formed at the sidewall and bottom12,13. In general, the formation of residual stresses in thin films is a challenging problem14,15,16. The emerging residual stress may cause critical damage formation such as delamination and/or cracks in the sidewall or bottom of the TSV. Therefore, defect detection in TSVs on μm-level and below is crucial to ensure a reliable fabrication of interconnects in the production17. However, failure analysis of TSVs in-line within an industrial environment poses a tremendous challenge. In particular, the requirement such as the non-destructive high-resolution characterization of defects with micron- and sub-micron size in a time and cost-efficient manner, as well as to gain a statistical relevant amount of TSVs on wafer level in-line, is tough to fulfill18.
In the past several decades, there have been several advancements in the field of quality assessment of microelectronic components19,20,21,22,23,24,25. This includes methods such as automatic optical inspection (AOI)26,27, scanning electron microscopy (SEM)20,28, emission microscopy (EMMI)21, micro-X-ray computed tomography (μ-XCT)29,30,31, X-ray microscopy (XRM)32,33,34, terahertz (THz) techniques32, transmission electron microscopy (TEM)35, electrical characterization techniques36, scanning acoustic microscope (SAM)37 and many more38,39. Choosing the most suitable testing method among these techniques is crucial when it comes to perform a thorough non-destructive analysis of defects in high throughput data, such as those found in 3D interconnect technologies. Certain positive attributes of these methods qualify them to meet some of the above-stated requirements for assuring high yield and high quality fabrication of TSVs, but not all of them are met40. AOI is a non-destructive technique26, which excels in identifying defects on the bottom surface of TSVs but falls short when it comes to detecting sidewall defects17. EMMI is an optical defect inspection technique to detect and localize failures in integrated circuits21. EMMI is primarily effective on electrically active structures and defects with electrical signatures, hindering its application to certain critical defects. SEM offers high-resolution images for both sidewall and bottom TSV areas. However, it faces limitations in high-throughput inspection and statistical information generation due to time-consuming data acquisition20,28. The X-ray based imaging techniques41 such as μ-XCT or XRM offer distinct advantages but they also come with drawbacks that constrain their applicability for defect detection in TSVs. μ-XCT represents a well-established non-destructive, 3D imaging technique employed for the analysis of defects within the micro-meter range in 3D semiconductor packaging31. Here the possible resolution is defined by the focal spot size, which is about a micron. Further the magnification and resolution is dependent on the sample size42 due to the utilized cone beam configuration. The lack of resolution in the nm-range and the extended duration time for μ-XCT measurements poses a major challenge31, constraining the generation of comprehensive statistical information for sub-micron crack detection. Those constraints could potentially affect the overall reliability of quality assessments of TSVs at wafer level. XRM is proficient in identifying voids, delamination, or cracks in three dimensions32. It utilizes additional optics, which makes the magnification or resolution less dependent on the sample size. Nevertheless, there are certain limitations with respect to resolution and contrast32. Further the time required for imaging the entire package is a downside32. THz techniques have the capability to detect delamination, voids, and cracks, however, the assessment of defect presence requires the availability of reference data. The method also shows low resolution compared to XRM32. Electrical characterization techniques helps in identifying and rectifying deviations in electrical properties that might affect the reliability of semiconductor devices, but provides limited insights into the structural integrity of the device36.
Among these mentioned methods, SAM is notable for its exceptional characteristics of the fast, cost-efficient and non-destructive capability of damage analysis over a large array of 3D interconnects40,43. Nevertheless, the achievable image resolution using SAM for failure analysis of 3D interconnects is of high intrigue18. The resolution capabilities of a SAM are strongly governed by the wavelength of the acoustic waves and thus the frequency of the transducer44. There have been several studies carried out on defect detection in TSVs using SAM within different frequency ranges18,45,46,47,48,49. The improvement in lateral and axial resolution is possible with high-frequency transducers, but results in limiting analysis capabilities to defects close to the surface50. The resolution limit of MHz frequency transducers is thus driving the industrial application towards the GHz regime. For example, in the analysis of voids in materials used in micro-connects such as the Cu-Sn material system51, for the assessment of the adhesive bonding in semiconductor wafers52, or the identification in poor layer-to-layer adhesion in integrated circuits (ASIC)53 and so forth. The high frequency transducers are not ideal for quality assessment in open TSV technology, because of the intricate analysis required for the TSV bottom. This demands a modified SAM setup that can extract information about the TSV sidewall as well as TSV bottom, unlike GHz SAM setup.
Interferometry-based characterization approaches have a wide range of applications in various fields of science and engineering54,55,56. There are several interferometry techniques based on Moiré interferometry (MI)57, holographic interferometry (HI)58, optical interferometric based techniques like speckle interferometry (SI) and electronic speckle pattern interferometry (ESPI)59. Those interferometry-based techniques provide advantages with respect to failure assessment e.g. deformation classification in microelectronic packages60, subsurface defect inspection on silicon wafers59, or solder joint failure investigations60. In acoustics, constructive and destructive interferences may occur between elastic waves and surface acoustic waves (SAWs)44. The alluring feature of SAWs is their energy confinement at the near surface of solids61,62. SAWs are therefore capable in modifying the direct reflections from the substrate to provide an interference effect. This property of SAWs is utilized in various applications ranging from measuring intrinsic material properties to electronic devices61,62,63, geophysics, material science, telecommunications, photonics and many more64.
In this paper, we apply the concept of acoustic interferometry for cost and time efficient high-resolution failure analysis in TSVs down to the nanometer regime by amalgamating special transducer configurations. The transducer is suitable to excite surface acoustic waves with a modified but highly industrial serviceable scanning acoustic microscope setup. In particular, we use customized transducers with a central frequency of 100 MHz and lenses with wider opening angle, exceeding the critical Rayleigh angle and enabling the controlled excitation of Rayleigh waves or SAWs. We conduct, accompanied to the experimental results, wave propagation simulations based on elastodynamic finite integration technique (EFIT). The simulations aim to validate the generation of SAWs utilizing the SAM interferometry setup on wafer level as well as to contribute to a deeper understanding of SAW propagation, with a specific focus on the angles of the acoustic lenses. The detected different SAM interference patterns can be associated in an automated manner to either non-defective or various defective TSV classes, by utilizing an end-to-end convolutional neural network17. The presented methodology shows that the controlled excitation of surface acoustic waves facilitates the detection of nm-sized cracks, an essential accomplishment for modern failure analysis in 3D integration technologies. We point out that the discussed acoustic interference approach is not only limited to failure analysis of TSVs but can be also exploited to further topics.
Results and discussion
Acoustic interferometry setup
Figure 1a illustrates the workflow for the SAM interferometry setup. We conduct a narrow band, tone burst driven setup as illustrated in Fig. 1a suitable to improve the acoustic wave detection capabilities and to deliver failure analysis possibilities below the μm regime. The presented SAM interferometry approach involves a strategic choice in balancing the penetration depth and resolution. In general, the frequency of the acoustic wave directly relates to the resolution, see method section. Increasing the frequency of the acoustic wave results in higher resolution, thus smaller structures can be resolved. However, also the attenuation in the coupling liquid and in the sample increases with frequency. For this reason, higher frequency leads to a lower penetration depth. Therefore, in many cases, a trade-off between resolution and penetration depths has to be made for conventional SAM measurements. Notably, in the SAM interferometry approach, the detection capability does not solely depend on the frequency of the transducer. Rather the excitation of additional wave modes such as SAWs by utilizing a modified SAM setup and lenses with a wider opening angle (60°) facilitate the detection of defects smaller than the resolution commonly determined by the transducer frequency. The interaction of these excited SAWs with other wave modes within the TSV henceforth are mapped in the measured SAM C-scan images leading to characteristic interference patterns. The proposed approach of SAM interferometry is contrary to the usual approach and less dependent on the transducer frequency. It exceeds existing resolution capabilities but also provides the possibility to enable sufficient penetration depth.
The modified SAM setup, as shown in Fig. 1a, aims for the controlled generation of interference effects based on the superposition of surface acoustic waves and bulk acoustic waves. We use spherical lenses with a specific lens aperture and piezoelectric transducer. An accurate positioning system is applied to move the transducer from the focused to different defocused positions in z-direction, see Methods. The precise movement of the x-y scanning stage enables the controlled excitation of surface acoustic waves at any position below the focused position Z0. The SAM interferometry set up is operated in pulse-echo mode. That means, the same transducer is capable in transmitting and receiving the acoustic waves. As shown in Fig. 1a, the transducer is wired with a custom-engineered tone burst box setup, which provides the possibility to perform high precision frequency dependent analysis from the reflected transducer signal. Further a schematic of the investigated TSV structure including the relevant dimensions is provided.
Four adjustment steps are necessary to generate a tone burst signal that is useful for signal analysis. The first step is to set the excitation mode to tone burst mode. The second step is to set the frequency of the tone burst signal. The selection of the tone burst frequency depends on the information that needs to be extracted from the sample under investigation. The careful adjustment of the frequency makes our SAM interferometry approach more efficient and highly suitable for high-resolution defect analysis. The third step is to determine the duration of the burst. The duration of the burst has to be set in accordance with the wavelength of the acoustic wave to achieve the best possible spatial resolution. The final step is dealing with the start and control of the scan, using the designed burst signal. The piezo electric transducer converts the RF electrical signal to acoustic waves, which then propagate towards the sample through the acoustic lens. The opening angle of the lens is chosen to reach an angle of incidence above the Rayleigh angle of silicon, enabling the excitation of bulk as well as surface acoustic waves. The reflections from the sample are converted to a digital signal using an analog to digital converter (ADC) and can be visualized in the form of C-scan images using the WinSAM software.
In particular, the utilization of the tone burst signal with a suitable frequency and pulse duration is critical for improving the detection of defects in TSVs with varying geometries. TSVs, being intricate three-dimensional structures, require a method that can adapt to their specific dimensions and potential flaws. The short burst duration and carefully chosen frequency of a tone burst signal enhances the resolution of defect detection. This selection allows the precise identification of smaller defects within the confined space of TSVs. TSVs with smaller dimensions require a tone burst signal with higher frequencies for effective detection, while TSVs with larger dimensions benefit from lower frequencies to ensure sufficient penetration of the acoustic waves into the sample. The length of the tone burst signal, or pulse duration, influences the temporal resolution. The tone burst signal’s ability to provide enhanced contrast proves invaluable for distinguishing subtle variations in acoustic impedance, aiding in the clear differentiation between TSV materials and potential defects. Moreover, the short duration of the signal minimizes interference and crosstalk, particularly crucial when TSVs are closely located. The compatibility of the tone burst signal with the acoustic lenses further refines SAM’s imaging capabilities, ensuring high-resolution examination of the complex TSV structure. For the utilized transducer frequency of 100 MHz, a tone burst signal with 50 ns duration is selected, since it provides better isolation of the signals. Further details in this context are provided in the Method section.
Figure 1b shows the C-scan for different transducer positions along the z-direction from Z0 to Z12. The schematic shown in Fig. 1c illustrates the possible ray propagation exemplarily for the transducer position Z0, Z1, and Z7. Here we consider mainly normal incidence. At the focus position indicated with Z0, mainly the axial rays propagate from the sample along the axis of the lens. Rays from the lens which are specular reflected by the sample, shown as arbitrary rays in Fig. 1c, do not necessarily contribute to the excitation of the transducer44. Once the transducer is defocused with the condition Zn < Z0, n = 1,2,…, then in addition to the rays reflected along the axis of the lens, further rays can be excited that are incident on the sample at the Rayleigh angle44. In case of the defocused transducer, both axial rays and the rays exciting surface acoustic waves or Rayleigh waves may then contribute to the transducer signal. Therefore, at the transducer the complex-valued sum of the axial ray and additional generated rays can be detected. Interference effects between those rays become then apparent44. Once a defocused position of the transducer is reached (Z < Z0), concentric intensity fringes unlike seen in the focused position emerge near the intensity associated with the TSV circumference within the C-scan image data. Those fringes change in intensity as the position in Z is altered as shown in Fig. 1c. While Rayleigh waves can be excited at various positions below Z0, the selection of the optimal defocus position is crucial for achieving the best possible contrast and effectively revealing any underlying inhomogeneity. The optimum position of Z suitable for our experimental SAM setup, with respect to the intensity, Rayleigh velocity and formed fringes, is sustained at Z7 with a Z of −140 µm, revealing a Rayleigh velocity of 5200 meters per second, closely aligning with the theoretical value65, see Supplementary Note 1. At defocused position Z7, a well-defined intensity pattern with evenly spaced fringes of width \((\lambda /2)\) can be seen66 unlike Z1, which in turn indicates the stronger interaction of the Rayleigh wave.
Further information about the selection of the Z-position is provided in Supplementary Note 1 and Supplementary Fig. 1. The results prove qualitatively that the excitation of surface acoustic waves at any position below the focus position takes place as well as indicates the position in Z maximizing the interference effect.
Acoustic interferometry for high-resolution sub-micron crack detection
Figure 2a illustrates the SAM C-scan image of a TSV test array at the defocused position Z7, maximizing the interference effect. Here, we efficiently evaluate the quality of 308 TSVs using the SAM interferometry setup in approximately 15 minutes at 2 µm/pixel resolution with a 100 MHz transducer and a lens providing an opening angle of 60°. A frequency of 100 MHz is selected to provide a sufficient balance between resolution and penetration depth. The achieved fast end time, sets the developed approach apart from other FA techniques like SEM, XCT etc. Therefore, the setup is highly suited for the inline inspection of TSVs within an industrial environment. We utilize the convolutional neural network methodology developed in ref. 17 for the automated and time-efficient localization and classification of the TSVs on wafer level. This workflow involves two sequentially connected convolutional neural network (CNN) architectures. The first CNN (CNN1) detects TSV locations using a 100 × 100 pixels sliding window approach. CNN2 classifies thus detected TSVs based on their quality. CNN1 is trained with labeled images, featuring two classes: TSVs centered in the bounding box and TSVs off-center or C-scan images with the background. During testing, CNN1 predicts multiple bounding boxes, refined by non-maximal suppression (NMS) to select the best bounding box, thus identifying TSVs as objects. CNN2, taking CNN1 predictions as inputs, is trained with C-scan images showing blossom-shaped interference patterns, in addition to classes defined in the previous study17. For the training of CNN1, we use a dataset consisting of a total of 20,000 images. We split it into 70% (14,000 images) for training and 30% (6000 images) for testing. For CNN2, a dataset of 10,000 images, each sized 100 × 100 pixels, showing interference patterns of different TSVs is used. Out of these, 7000 images are used to train CNN2, and 3000 are kept aside to validate the model. Since the blossom-shaped patterns are less common compared to other classes of interference patterns, we used augmentation techniques like flipping, rotation, and random zoom-in and -out on the C-scan images to make the dataset larger and more diverse. Figure 2b depicts an exemplary region of interest (ROI) and illustrates the automated classification and localization of the TSV array using E2E-CNN in ref. 17. Here, within the ROI we extract three classes indicated by different color codes. As shown in Fig. 2c, Class 1 indicates homogeneous interference fringes. Class 2 illustrates patterns with a deterioration of the homogenous fringes. Both classes are similar to what has been shown in refs. 17,18,49 where such patterns could be associated with non-defected TSVs and defected TSVs, respectively. Correlated SEM investigations disclosed failure sizes within the μm-regime. Beyond the state of the art, we reveal an additional class illustrating a further unique interference pattern. The observed pattern is indicated as Class 3 in Fig. 2c. The interference pattern for Class 3 is notably different to Class 1 and Class 2 or to other classes reported previously17,40,49. Figure 2d shows the corresponding intensity plot of Class 3 in the x-y plane for the C-scan image, which indicates the disturbance of the interference patterns within the TSV along the whole circumference.
A distinction between different interference pattern classes manifested in the C-scan is not feasible with a conventional SAM. In Supplementary Fig. 2, we illustrate a comparison between the interferometric C-scan image and the conventional SAM C-scan image for two TSVs. The conventional C-scan image shows for TSV1 and TSV2 similar results. In case of the interferometric C-scan image, a clear difference between TSV1 and TSV2 is depicted. TSV1 and TSV2 show two different interference patterns which correspond to Class 3 and Class 1, respectively. The interference pattern associated with Class 1 and Class 3 in Fig. 2c as well as Fig. S2, are generated by the interaction of SAWs with the TSV side wall. In case of Class 3, the SAWs are interacting with a sub-micron crack located in the sidewall of the TSV, leading to the disturbance of the interference patterns. Correlative scanning electron microscopy characterization of a TSV, associated with a Class 3 interference pattern, shows a thin crack extending over the whole circumference of the metallized side wall, see Fig. 2e. In Supplementary Fig. 3 we show further TSVs for Class 3. Again, the associated SEM images illustrate for those investigated TSVs a thin nm-sized crack within the sidewall. Figure 2f shows the cross section, performed via ion slicing, of the TSV associated with a Class 3 interference pattern. Notably, a cone crack in the metallization with a crack opening of about 200 nm, much smaller than the lateral and axial resolution of the 100 MHz transducer, is featured. Hence, the acoustic interferometry is suitable to detect features sizes below the resolution limit of the transducer frequency due to the excited SAWs. The SAM-based failure analysis is carried out without any prior knowledge of the defect position.
Excitation of surface acoustic waves within the TSV
We conduct numerical simulations based on the elastodynamic finite integration technique (EFIT)67,68 to gain an improved understanding of the excitation of wave modes at different transducer positions relative to the TSV. The primary objectives of the EFIT simulations are threefold. Firstly, the simulations aim to validate the generation of SAWs utilizing the SAM interferometry setup on waver level, setting it apart from conventional SAM methods. Secondly, the EFIT simulations aim to contribute to a deeper understanding of SAW propagation, with a specific focus on the angles of the acoustic lenses. Moreover, the goal includes the utilization of simulation outcomes in refining the acoustic lens for optimization and the development of a more advanced lens design.
The flow chart of the entire process of EFIT simulation is shown in Fig. 3a. Further details are provided in Supplementary Note 2. We assume an isotropic linear elastic medium to uncover especially the role of the SAWs in context to the generated interference fringes. The utilization of the EFIT helps to understand the propagation and excitation of acoustic waves in liquids and solids. The simulation workflow is outlined through four key steps: initialization, solver definition, time stepping, and post-processing. The initial stage encompasses the setup of the simulation domain, including the definition of geometries such as the acoustic lens, transducer, and sample, along with their corresponding material parameters. The transducer’s excitation is modeled as a modulated sinusoidal wave with a Gaussian envelope, emulating a tone burst signal. The frequency and length of this tone burst signal is set in accordance with the SAM interferometry setup. The input stage also involves determining stable spatial and time step sizes. The spatial step size is determined by the minimum wavelength of shear waves in the medium. For our simulations, 10 grid points per wavelength are used as recommended in literatures69. Additionally, the Courant–Friedrichs–Levy (CFL) condition is applied to calculate the upper limit of the time step size, see Method section. An absorbing boundary condition is also defined at this stage to attenuate the reflections at the domain boundaries. The second step of the simulation focuses on grid generation based on the calculated spatial step size, followed by defining the necessary equations of EFIT. Finite difference equations for stress and particle velocity are derived from integral forms of Cauchy’s equation of motion and Hooke’s law. As the simulation progresses in time during the third step, the velocity fields are updated, followed by the updating of stress tensors using the previously updated velocity components. Here, the velocity and stress variables are discretised on a staggered spatial and temporal grid70. This discretization uses the central difference operator. The simulation proceeds in time within a leap-frogging scheme71. Supplementary Fig. 4 shows the discretization of variables on a unit cell with the necessary equations for the simulation of the elastic waves, see also Supplementary Note 2 for further information. The final stage of the simulation involves the post-processing step, as illustrated in the flow chart.
For an improved understanding of the SAW propagation in the SAM interferometry setup, we transfer the exact transducer position in Z (focus and defocus) to the EFIT simulations, see further details in Supplementary Fig. 5 and Supplementary Note 3. The setup used in the EFIT simulations consists of an acoustic lens with an anti-reflective coating (ARC) in compliance with the experimental setup. The sample within the simulation is defined by the silicon substrate and a TSV with a diameter of 100 µm and a depth of 250 µm configured by different layers to mimic the metallization present in the real sample, see Supplementary Fig. 6. The applied parameters for the simulation such as the Young’s moduli, Poisson ratios and mass densities of silicon, various layers of TSV such as silicon dioxide, tungsten, silicon nitride and sapphire for lenses used in defining various materials are summarized in Table 1.
Figure 3b, c shows the full lens simulation with a slice representation utilizing the EFIT simulation with the transducer positioned at the focus and defocus position, respectively. Within time step 1, an acoustic wave at the center frequency of 100 MHz is excited, see time step 1 in Fig. 3b and c, respectively. Here, a plane wave propagates towards the ARC within the defined acoustic lens. The velocity of the propagating plane wave is approximately 11,100 meters per second. The high difference of sound velocity of the sapphire lens compared to the liquid coupling medium causes the acoustic wave to be refracted into a spherical wave front72, see time step 2 in Fig. 3b and c, respectively and further propagates towards the sample in time step 3. At the focused position Z0 of the transducer, the propagating wave front converges near the center of curvature of the acoustic lens, see time step 4 in Fig. 3b. The simulation at time step 4 and 5 in Fig. 3b exhibits that one fraction of the acoustic wave is reflected by the silicon, i.e. propagating back to the lens, while the other fraction is propagating towards the bottom of the TSV. Finally, in time step 6 of Fig. 3b the propagating acoustic wave is reflected from the bottom of the TSV.
Differently the situation for the defocused transducer in time step 3 and 4, as shown in Fig. 3c. Here, an additional wave mode near the surface of the TSV is excited. The excitation of this wave and its interaction with the TSV is marked in Fig. 3c. Such additional wave modes can be also excited in filled TSVs as shown in the EFIT simulation in Supplementary Note 4 and Supplementary Fig. 7. Such excited waves, which can be linked to the surface acoustic waves, are manifested within the observed interference fringes of the C-scan data, see Supplementary Note 1 and Supplementary Fig. 1. The evaluated depth information from the sample at a single X-Y location (gated A-scan signal) depicts the corresponding gray value in the SAM C-scan images. We validate the simulation result of Fig. 3c by comparing the simulated A-scan signal at the defocused position (Zn) with the measured SAM A-scan signal, see Supplementary Fig. 8. The simulated A-scan signal shows a high resemblance to the experimental A-scan signal, which in turn validates the simulation. For the excitation of SAWs, also the position of the acoustic lens with respect to the x-y plane of TSV needs to be considered, see Supplementary Note 5 and Supplementary Fig. 9. The simulation result in Supplementary Fig. 9 shows that the interaction of SAWs depends on the lens positioning relative to the TSV irrespective of the pitch length between the adjacent TSVs.
Acoustic lens selection and impact on failure analysis
The excitation of the surface acoustic waves is dependent on the transducer position with respect to the sample. Here, an optimized position at Z7 with −140 µm is achieved leading to a Rayleigh velocity of 5200 meters per second which is in accordance with the velocity of Si65. In order to investigate the impact from the acoustic lens angle on the SAW generation and defect detectability, we perform 3D EFIT simulations with a 100 MHz transducer as used in the experiment. Here, we keep the position of the lens in Z constant. The result for an opening angle of 60° and 80° is shown in Fig. 4a and b, respectively. The larger curvature of the 80° lens results for the same defocus position in a smaller working distance compared to the 60° lens. Further details with respect to the 3D EFIT simulation are presented in the method section.
In Fig. 4a, b the simulation step 1 starts with the generation of the acoustic waves at the silicon surface. The complete series of 3D EFIT simulation results, using a 100 MHz 60° and 80° lens configuration, is shown in the Supplementary Movies 1 and 2. The energy of the wave in time step 1 is concentrated near the surface for both opening angles. The simulations at time steps 2 for 60° and 80° manifest the propagation of SAWs towards the TSV. Time step 3 in Fig. 4a, b indicates the position in z-direction where the generated SAW is interacting with the TSV wall. In case of 100 MHz and a 60° acoustic lens the SAW interacts rather close to the bottom of the TSV, whereas for 100 MHz and 80° more towards the open side of the TSV. From time step 4 to 6, the propagation of the direct reflection towards the sample and interference with the SAWs is obvious.
The schematic in Fig. 4c highlights the context between the opening angle of the lens and failure location. The total length of the TSV in Fig. 4c is marked as L1 and L2 and corresponds to the lower and upper half of the TSV height, respectively. Figure 4d depicts two C-scan image data sets with interference fringes utilizing an acoustic lens with a center frequency of 100 MHz and an opening angle of 60° and 80°, respectively. The displayed inhomogeneity within in the interference fringes of the C-scan is more prominently detected for the acoustic lens with 80° than for 60°.
The plot between the normalized intensity of the absolute values of the velocity vectors versus the outer most layer of the TSV height for the same defocus position of 100 MHz 60° and 80° lenses, is shown in Fig. 4e. Figure 4e quantitatively validates the argument that there is a direct dependence between the opening angle of the acoustic lens and defect detectability. That is, the maximum intensity of the acoustic wave generated by the lens with 100 MHz and 60°, as plotted in purple color, is depicted at a height of 102 µm from the bottom of the TSV. Whereas, for 100 MHz and 80° the maximum intensity is observed at a height of 205 µm from TSV bottom, as plotted in green color. The considerable difference implies that a careful selection of the opening angle from the acoustic lens is crucial for the failure analysis. If the location of the defect is located within the ‘L2’ region, then the interference fringes for an opening angle greater than 60° show more intensity variations in the SAM C-scan image. This is also highlighted by the intensity-plot across the xy-plane, see Fig. 4d. Figure 4f supports this argument with a SEM image taken from the TSV under investigation. i.e., a crack combined with a micron-sized delamination is observed within the ‘L2’ length of TSV. The interference fringes of this TSV observed with the 80° lens shows more variations in the C-scan image as well.
Conclusion
In the realm of failure analysis (FA), the demand for high-resolution information is paramount, but needs to be achieved within the constraints of cost- and time-effectiveness. Here, we tackle this challenge by conducting a SAM interferometry-based approach for TSV failure analysis suitable for in-line inspection. The approach enables the characterization within the industrial environment with high resolution down to the nm-regime. Further, it provides user-friendliness with respect to the sample- to transducer-distance and offers a sufficient penetration depth with up to 250 μm.
The presented approach leverages interference effects between the generated bulk and surface acoustic waves. An accurate defocusing of the transducer as well as the use of specific lenses with an opening angle larger than the associated Rayleigh angle of the material under investigation, makes FA below the nominal resolution limit of a 100 MHz transducer feasible. Indeed, the approach provides evidence that cracks with a crack opening less than about 200 nm are possible, i.e. cracks with an opening less than half a wavelength can be detected with a frequency of 100 MHz within the investigated open TSV geometry. Unlike from the conventional SAM approach that operates with a focused transducer, our methodology utilizes a defocused transducer and a lens with an opening angle larger than the Rayleigh angle. By employing the concept of interferometry, we generate distinct characteristic interference patterns within the C-scan image data. The differentiation of the generated patterns allows the application of automated TSV classification and localization routines based on machine learning17. The experimental results, are complemented by EFIT simulations. The latter validate the generation of the SAWs utilizing the SAM interferometry setup as well as provide a deeper understanding about the SAW propagation and impact of the lens angles. We argue that the approach is not only suitable for open TSV technologies. The simulation result in Supplementary Fig. 7 indicates a similar excitation of SAWs for filled TSVs which suggests a utilization of the acoustic interferometry approach beyond open TSV technologies. An extension to smaller TSV geometries, than investigated here is also feasible, however will demand higher frequencies and specifically tailored pulse manipulation.
Additionally, we emphasize based on the experimental and simulation results that for the FA it is essential to consider the opening angle of the acoustic lens. The angle has an unavoidable impact on the sensitivity of the acoustic wave and, consequently, influences the lens selection process. Specifically, our finding implies that the acoustic lenses with angles larger than 60° prove to be more suitable in detecting inhomogeneities towards the open end of the TSV.
In conclusion, the SAM interferometry-based approach pushes the boundaries of modern failure analysis. We point out that the discussed acoustic interference approach is not only limited to failure analysis of TSVs but can be also exploited to further topics.
Methods
Scanning Acoustic Microscope (SAM) & Acoustic Interferometry Approach
The SAM setup used in this study is a ‘SAM 400’ by PVA TePla Analytical Systems GmbH, Westhausen, Germany. We performed the analysis of the reflected signal from the sample (A-scan signal) as well as the cross-sectional image of the sample (C-scan image) using the WinSAM 8.0.2293.0 software developed by PVA TePla with a time resolution of 0.1429 ps using a 7 GHz ADC card. To perform acoustic interferometry, we used a 100 MHz transducer affixed to the flat surface of an acoustic lens with a gold coating. The lateral resolution in SAM is related to the wavelength of the acoustic waves\(\left(\lambda \right)\) and the numerical aperture \(({NA})\) by
For a transducer frequency of 100 MHz, half the wavelength corresponds to approximately 15 µm in water and a penetration depth of 0.4 mm, whereas the axial resolution depends on the longitudinal wave velocity (\(c\)) and temporal pulse width of the acoustic wave (\({\delta }_{t}\)) by Eq. (2).
By assuming the speed of sound in water as 1450 meters per second and a temporal pulse width of 10 ns, the axial resolution of the SAM setup is 7.56 µm. By defocusing the acoustic lens with an opening angle greater than the Rayleigh angle, we excited SAWs and detected cracks with opening below the lateral and axial resolution of conventional SAM. SAWs can be efficiently generated even by slightly defocusing the transducer below the focal point, as long as the lens has an opening angle above the critical Rayleigh angle. A key challenge is to select the optimal defocus position that yields the best contrast in the C-scan image with maximum information about the TSV. Here, the movement of the transducer in z-direction is crucial. The maximum distance from the focal point in z-direction of the transducer is −240 µm. As the transducer is brought closer to the sample surface, the C-scan image exhibits reduced contrast, making it challenging to discern the underlying interference pattern. Our analysis shows that a step size of 20 µm along z-direction provides the best possible result. Among all the Z sets, Z7 is found to show the best defocus position, see Supplementary Note 1.
Tone burst
The tone burst box is incorporated with an arbitrary waveform generator (AWG) that has been programmed with different burst duration. The AWG helps to generate the necessary electrical burst for the excitation of the acoustic waves. The length of the burst is set typically between 20 ns to 100 ns. We select 50 ns duration of the shaped tone burst. The frequency is set in accordance with the bandwidth of the central frequency provided by the transducer with 100 MHz. Here, we use a tone burst frequency of 113 MHz. The desired tone-burst RF electrical signal has been generated using ‘tone burst control software’ developed by PVA TePla. The trigger for the piezo electric transducer is the intermittent RF pulse from the tone burst box. There are two types of excitation signals namely wideband and narrow band that can be used to generate acoustic signals. The selection of excitation signal depends on the complexity of the sample. Narrow band signals help in providing high spatial resolution images of complex samples like TSV wafers and are capable in detecting small features in the sample.
Scanning Electron Microscope (SEM)
The field emission SEM is used as complimentary tool to correlate the SAM interferometric pattern of TSVs with conventionally obtained defect data. The SEM setup is equipped with a 360° rotation stage. We utilize the secondary electron (SE) detector to image the TSVs.
Acoustic lens
For our SAM interferometry approach, we use a custom engineered gold lenses with a spherical cavity of 60° and 80° on a sapphire rod. To mitigate the energy loss from the impedance mismatch between the lens material and water, an anti-reflective coating (ARC) with one-quarter wavelength of the acoustic wave is applied onto the lens opening.
The limited working distance of the 80° lens provides a lower contrast within the C-scan image. Therefore, we augmented the gain of the A-scan signal using WinSAM software to enhance the contrast.
Samples
ams-OSRAM AG, Premstätten, Austria (AMS) provided the silicon wafers (200 mm) with TSVs containing artificially induced defects at unknown locations. The analyzed open TSV technologies in this study are with a diameter and length of 100 µm and 250 µm, respectively. The TSVs are fabricated following the ‘via last’ approach. The sidewall of the TSVs consist of various layers – SiO2 as insulation layer, tungsten as conductive layer metal, SiO2 and SiN for passivation. The open TSVs are used over filled (closed) TSV technology, due to obvious advantage with respect to reduced thermomechanical stresses.
ML-based failure localization and classification
We used two CNN models arranged in an E2E fashion to localize and classify TSVs from the test array17. The first CNN is dedicated for localizing all the TSVs from the SAM C-scan image. The input to the second CNN are the thus detected TSVs from CNN1. Here, the TSVs are classified into three classes according to the defect level. All the TSVs with homogeneous fringes are classified as Class 1 (non-defective TSVs) and all other TSVs with inhomogeneous fringes can be classified according to the underlying failure class e.g. Class 2, 3, etc. For further details see ref. 17.
2D EFIT
We utilize Python 3.7 and tensor flow version 2.1.0, to implement the necessary equations for the 2D and 3D EFIT simulations. For this study, we simulate a simple model of open TSV technology with layers such as SiO2, tungsten, SiN and layer thicknesses corresponding to real structure of the TSV. The necessary differential equations for EFIT simulations of acoustic wave propagation have been discretised into finite difference equation (see, Supplementary Note 2). We consider the entire simulation domain to be composed of several material grids. Within such a grid, the material is assumed to be constant. The Courant–Friedrichs–Levy (CFL) condition determines the numerical stability for the EFIT simulation67,73 and is given by
where \({\Delta t}_{\max }\) is the maximum possible time step, \({C}_{l}\) is the fastest longitudinal wave speed in elastic medium and \(\Delta x\), \(\Delta y\), \(\Delta z\) are the lengths of unit cell. For simplicity equal lengths, \(\Delta x=\Delta y=\Delta z=\Delta s\) are considered. We assign 10 grid points per shear wavelength in our simulation in order to achieve a balance between computational cost and accuracy of the representation of the dispersion (i.e. the numerical error in phase and group velocity of the wave).
Furthermore, we utilize the Avizo software version 2022.2 to perform the 3D visualization of the geometry and velocities at different time steps.
3D EFIT
We develop the 3D-EFIT code for simulating the SAM setup utilizing Python. We reduce the simulation area so as to deal with large sizes of velocity and stress arrays, while performing the simulation in three dimensions. By utilizing the Avizo software, the normalized values of the absolute velocity at different time steps along with the SAM setup and sample are visualized. We deal with the computational power required for solving the nine arrays using the memory mapping from ‘numpy’ library. This helped in accessing the arrays from the disk rather than reading the entire file into the memory. The parallel computing of data is effectively realized by executing the EFIT script on the GPU.
Data availability
All data that support the findings of this study are available from the corresponding author upon reasonable request.
Code availability
All codes that support the findings of this study are available from the corresponding author upon reasonable request.
References
Arden, W. et al. More-than-Moore white paper. Version 2, 14 (2010).
Di Cioccio, L., Radu, I., Gueguen, P. & Sadaka, M. Direct bonding for wafer level 3D integration. In 2010 IEEE International Conference on Integrated Circuit Design and Technology 110–113 (IEEE, 2010).
Le, H. T. et al. MEMS inductor fabrication and emerging applications in power electronics and neurotechnologies. Microsyst. Nanoeng. 7, 59 (2021).
Ham, D., Park, H., Hwang, S. & Kim, K. Neuromorphic electronics based on copying and pasting the brain. Nat. Electron. 4, 635–644 (2021).
Khorramdel, B. et al. Inkjet printing technology for increasing the I/O density of 3D TSV interposers. Microsyst. Nanoeng. 3, 1–9 (2017).
Wang, Z. 3-D integration and through-silicon vias in MEMS and microsensors. J. Microelectromechanical Syst. 24, 1211–1244 (2015).
Beica, R., Sharbono, C. & Ritzdorf, T. Through silicon via copper electrodeposition for 3D integration. In 2008 58th Electronic Components and Technology Conference 577–583 (IEEE, 2008).
Kraft, J. et al. 3D sensor application with open through silicon via technology. In 2011 IEEE 61st Electronic Components and Technology Conference (ECTC) 560–566 (IEEE, 2011).
Kraft, J. et al. Volcano effect in open through silicon via (TSV) technology. In 2012 IEEE International Reliability Physics Symposium (IRPS) PI-−2 (IEEE, 2012).
Cassidy, C. et al. Through silicon via reliability. IEEE Trans. Device Mater. Reliab. 12, 285–295 (2012).
Chakrabarty, K., Deutsch, S., Thapliyal, H. & Ye, F. TSV defects and TSV-induced circuit failures: The third dimension in test and design-for-test. In 2012 IEEE International Reliability Physics Symposium (IRPS) 5F-−1 (IEEE, 2012).
Singulani, A. P., Ceric, H. & Selberherr, S. Thermo-mechanical simulations of an open tungsten TSV. In 2012 IEEE 14th Electronics Packaging Technology Conference (EPTC) 107–111 (IEEE, 2012).
Krauss, C. et al. Stress measurements in tungsten coated through silicon vias for 3D integration. Thin Solid Films 530, 91–95 (2013).
Sinojiya, R. J. et al. Probing the composition dependence of residual stress distribution in tungsten-titanium nanocrystalline thin films. Commun. Mater. 4, 11 (2023).
Treml, R. et al. High resolution determination of local residual stress gradients in single-and multilayer thin film systems. Acta Mater. 103, 616–623 (2016).
Reiter, G. et al. Residual stresses in thin polymer films cause rupture and dominate early stages of dewetting. Nat. Mater. 4, 754–758 (2005).
Paulachan, P., Siegert, J., Wiesler, I. & Brunner, R. An End-to-End Convolutional Neural Network for Automated Failure Localisation and Characterisation of 3D Interconnects. Sci. Rep. 36, 9376 (2023).
Grünwald, E. et al. Automatized failure analysis of tungsten coated TSVs via scanning acoustic microscopy. Microelectron. Reliab. 64, 370–374 (2016).
Janóczki, M., Becker, Á., Jakab, L., Gróf, R. & Takács, T. Automatic optical inspection of soldering. Materals Science- Advanced Topics, Chap. 16, 387–441, (IntechOpen, 2013).
Reimer, L. Scanning Electron Microscopy: Physics of Image Formation and Microanalysis, 2nd edn (Springer, 1998).
Cassidy, C., Teva, J., Kraft, J. & Schrank, F. Through Silicon Via (TSV) defect investigations using lateral emission microscopy. Microelectron. Reliab. 50, 1413–1416 (2010).
Vartanian, V. et al. Metrology needs for through-silicon via fabrication. J. Micro Nanolithography MEMS, MOEMS 13, 11206 (2014).
Jacobs, K. J. P. et al. Characterization of through-silicon vias using laser terahertz emission microscopy. Nat. Electron. 4, 202–207 (2021).
Stucchi, M., Perry, D., Katti, G., Dehaene, W. & Velenis, D. Test structures for characterization of through-silicon vias. IEEE Trans. Semicond. Manuf. 25, 355–364 (2012).
Yu, Z. & Boseck, S. Scanning acoustic microscopy and its applications to material characterization. Rev. Mod. Phys. 67, 863 (1995).
Abd Al Rahman, M. & Mousavi, A. A review and analysis of automatic optical inspection and quality monitoring methods in electronics industry. IEEE Access 8, 183192–183271 (2020).
Rau, H. & Wu, C.-H. Automatic optical inspection for detecting defects on printed circuit board inner layers. Int. J. Adv. Manuf. Technol. 25, 940–946 (2005).
Zhou, W., Apkarian, R., Wang, Z. L. & Joy, D. Fundamentals of scanning electron microscopy (SEM). In Scanning microscopy for nanotechnology 1–40 (Springer, 2006).
Hsu, P.-N. et al. Artificial intelligence deep learning for 3D IC reliability prediction. Sci. Rep. 12, 1–7 (2022).
Cui, C. et al. Correlative, ML based and non destructive 3D analysis of intergranular fatigue cracking in SAC305 Bi solder balls. npj Mater. Degrad 8, 40 (2024).
Aryan, P., Sampath, S. & Sohn, H. An overview of non-destructive testing methods for integrated circuit packaging inspection. Sensors 18, 1981 (2018).
Su, Y. et al. Volumetric nondestructive metrology for 3D semiconductor packaging: A review. Measurement 225, 114065 (2023).
Hartfield, C., Schmidt, C., Gu, A. & Kelly, S. T. From PCB to BEOL: 3D X-ray microscopy for advanced semiconductor packaging. In 2018 IEEE International Symposium on the Physical and Failure Analysis of Integrated Circuits (IPFA) 1–7 (IEEE, 2018).
Modgil, D. et al. Material identification in x-ray microscopy and micro CT using multi-layer, multi-color scintillation detectors. Phys. Med. Biol. 60, 8025 (2015).
Crewe, A. V., Wall, J. & Welter, L. M. A high-resolution scanning transmission electron microscope. J. Appl. Phys. 39, 5861–5868 (1968).
Deen, M. J. & Pascal, F. Electrical characterization of semiconductor materials and devices. J. Mater. Sci. Mater. Electron. 17, 549–575 (2006).
Wickramasinghe, H. K. Scanning acoustic microscopy: a review. J. Microsc. 129, 63–73 (1983).
Dom, B. E. & Brecher, V. Recent advances in the automatic inspection of integrated circuits for pattern defects. Mach. Vis. Appl. 8, 5–19 (1995).
Bazu, M. & Bajenescu, T. Failure analysis: A practical guide for manufacturers of electronic components and systems, 4, (John Wiley & Sons, 2011).
Kozic, E. et al. Metallization defect detection in 3D integrated components using scanning acoustic microscopy and acoustic simulations. Microelectron. Reliab. 88, 262–266 (2018).
de Veen, P. J. et al. High-resolution X-ray computed tomography of through silicon vias for RF MEMS integrated passive device applications. Microelectron. Reliab. 55, 1644–1648 (2015).
Schmidt, C. 3-D X-Ray imaging with nanometer resolution for advanced semiconductor packaging FA. IEEE Trans. Components, Packag. Manuf. Technol. 8, 745–749 (2018).
Mehr, M. Y. et al. An overview of scanning acoustic microscope, a reliable method for non-destructive failure analysis of microelectronic components. In 2015 16th International Conference on Thermal, Mechanical and Multi-Physics Simulation and Experiments in Microelectronics and Microsystems 1–4 (2015).
Briggs, A., Briggs, G. A. D. & Kolosov, O. Acoustic microscopy, 67, (Oxford University Press, 2010).
Brand, S. et al. Acoustic GHz-microscopy and its potential applications in 3D-integration technologies. In 2015 IEEE 65th Electronic Components and Technology Conference (ECTC) 46–53 (IEEE, 2015).
Phommahaxay, A. et al. Defect detection in through silicon vias by GHz scanning acoustic microscopy: Key ultrasonic characteristics. In 2014 IEEE 64th Electronic Components and Technology Conference (ECTC) 850–855 (IEEE, 2014).
Brand, S. et al. Scanning acoustic gigahertz microscopy for metrology applications in three-dimensional integration technologies. J. Micro Nanolithography MEMS MOEMS 13, 11207 (2014).
Brand, S., Czurratis, P., Hoffrogge, P. & Petzold, M. Automated inspection and classification of flip-chip-contacts using scanning acoustic microscopy. Microelectron. Reliab. 50, 1469–1473 (2010).
Grünwald, E., Hammer, R., Rose, J., Sartory, B. & Brunner, R. Accretion detection via scanning acoustic microscopy in microelectronic components-considering symmetry breaking effects. Microsc. Microanal. 23, 1466–1467 (2017).
Canumalla, S. Resolution of broadband transducers in acoustic microscopy of encapsulated ICs: Transducer selection. IEEE Trans. Components Packag. Technol. 22, 582–592 (1999).
Ross, G., Vuorinen, V., Petzold, M., Paulasto-Kröckel, M. & Brand, S. Gigahertz scanning acoustic microscopy analysis of voids in Cu-Sn micro-connects. Appl. Phys. Lett. 110, 54102 (2017).
Mario, P., Josef, M. & Michael, I. Inverted high frequency Scanning Acoustic Microscopy inspection of power semiconductor devices. Microelectron. Reliab. 52, 2115–2119 (2012).
Oberhoff, S., Goetz, K., Trojan, K., Zoeller, M. & Glueck, J. Application of high frequency scanning acoustic microscopy for the failure analysis and reliability assessment of MEMS sensors. Microelectron. Reliab. 64, 656–659 (2016).
Born, M. & Wolf, E. Principles of optics: electromagnetic theory of propagation, interference and diffraction of light (Elsevier, 2013).
Steel, W. H. & Knight, P. L. Interferometry, 1 (CUP Archive, 1983).
Hariharan, P. Basics of interferometry (Elsevier, 2010).
Han, B. Recent advancements of moiré and microscopic moiré interferometry for thermal deformation analyses of microelectronics devices. Exp. Mech. 38, 278–288 (1998).
Hÿtch, M., Houdellier, F., Hüe, F. & Snoeck, E. Nanoscale holographic interferometry for strain measurements in electronic devices. Nature 453, 1086–1089 (2008).
Udupa, G., Ngoi, B. K. A., Goh, H. C. F. & Yusoff, M. N. Defect detection in unpolished Si wafers by digital shearography. Meas. Sci. Technol. 15, 35 (2003).
Shi, X. Q., Pang, H. L. J. & Zhang, X. R. Investigation of long-term reliability and failure mechanism of solder interconnections with multifunctional micro-moire interferometry system. Microelectron. Reliab. 44, 841–852 (2004).
Morgan, D. R. Surface acoustic wave devices and applications: 1. Introductory review. Ultrasonics 11, 121–131 (1973).
Liu, B. et al. Surface acoustic wave devices for sensor applications. J. Semicond. 37, 21001 (2016).
Campbell, C. Surface acoustic wave devices and their signal processing applications (Elsevier, 2012).
Tarasenko, A. Čtvrtlík, R. & Kudělka, R. Theoretical and experimental revision of surface acoustic waves on the (100) plane of silicon. Sci. Rep. 11, 2845 (2021).
Ananda, A. A. Propagation of Rayleigh waves in thin films (The College of William and Mary, 1997).
Yamanaka, K. & Enomoto, Y. Observation of surface cracks with scanning acoustic microscope. J. Appl. Phys. 53, 846–850 (1982).
Fellinger, P., Marklein, R., Langenberg, K. J. & Klaholz, S. Numerical modeling of elastic wave propagation and scattering with EFIT—elastodynamic finite integration technique. Wave motion 21, 47–66 (1995).
Schubert, F., Peiffer, A., Köhler, B. & Sanderson, T. The elastodynamic finite integration technique for waves in cylindrical geometries. J. Acoust. Soc. Am. 104, 2604–2614 (1998).
Zingg, D. W., Lomax, H. & Jurgens, H. High-accuracy finite-difference schemes for linear wave propagation. SIAM J. Sci. Comput. 17, 328–346 (1996).
Schubert, F. Numerical time-domain modeling of linear and nonlinear ultrasonic wave propagation using finite integration techniques-theory and applications. Ultrasonics 42, 221–229 (2004).
Leckey, C. A. C., Rogge, M. D., Miller, C. A. & Hinders, M. K. Multiple-mode Lamb wave scattering simulations using 3D elastodynamic finite integration technique. Ultrasonics 52, 193–207 (2012).
Peck, S. D. & Briggs, G. A. D. The caries lesion under the scanning acoustic microscope. Adv. Dent. Res. 1, 50–63 (1987).
Bingham, J. & Hinders, M. Lamb wave characterization of corrosion-thinning in aircraft stringers: Experiment and three-dimensional simulation. J. Acoust. Soc. Am. 126, 103–113 (2009).
Hopcroft, M. A., Nix, W. D. & Kenny, T. W. What is the Young’s Modulus of Silicon? J. Microelectromechanical Syst. 19, 229–238 (2010).
Deluca, M. et al. Integrated experimental and computational approach for residual stress investigation near through-silicon vias. J. Appl. Phys. 120, 195104 (2016).
Grünwald, E. et al. Young’s modulus and Poisson’s ratio characterization of tungsten thin films via laser ultrasound. Mater. Today Proc. 2, 4289–4294 (2015).
Acknowledgements
We acknowledge the financial support by Die Österreichische Forschungsgesellschaft (FFG) under Bridge Young Scientist, Proj. No. 872629, “REFORM” and partly under the scope of the COMET program within the K2 Center “Integrated Computational Material, Process and Product Engineering (IC-MPPE) (Proj. No 886385, P2.22). This program is supported by the Austrian federal Ministries for Climate Action, Environment, Energy, Mobility, Innovation and Technology (BMK) and for Labour and Economy (BMAW), represented by the Austrian Research Promotion Agency (FFG), and the federal states of Styria, Upper Austria and Tyrol. We acknowledge the necessary experimental support from E. Kozic (Materials Center Leoben (MCL) Forschung GmbH) and M. Gritzner (ams-OSRAM AG) for SEM measurements.
Author information
Authors and Affiliations
Contributions
R.B. planned the SAM measurements and modifications towards the acoustic interferometry setup. P.P. conducted the SAM measurements and performed the modifications. J.S. provided the TSV wafers for analysis. I.W. supported the modification of the SAM set up with development of tone burst module and custom engineered acoustic lenses. P.P. performed the analysis under supervision of R.B. R.H. generated the original EFIT code. P.P. performed the EFIT simulations and enhanced the code. R.B. and P.P wrote, revised and improved the manuscript. All authors discussed the results and commented on the paper.
Corresponding author
Ethics declarations
Competing interests
The authors declare no competing interests.
Peer review
Peer review information
Communications Engineering thanks Ziyue Zhang and the other, anonymous, reviewer(s) for their contribution to the peer review of this work. Primary Handling Editors: [Mengying Su and Ros Daw]. A peer review file is available.
Additional information
Publisher’s note Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
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 licence, and indicate if changes were made. The images or other third party material in this article are included in the article’s Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article’s Creative Commons licence 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 licence, visit http://creativecommons.org/licenses/by/4.0/.
About this article
Cite this article
Paulachan, P., Hammer, R., Siegert, J. et al. Fast in-line failure analysis of sub-micron-sized cracks in 3D interconnect technologies utilizing acoustic interferometry. Commun Eng 3, 100 (2024). https://doi.org/10.1038/s44172-024-00247-8
Received:
Accepted:
Published:
DOI: https://doi.org/10.1038/s44172-024-00247-8