Soft sensing technologies have the potential to revolutionize wearable devices, haptic interfaces and robotic systems. However, there are numerous challenges in the deployment of these devices due to their poor resilience, high energy consumption, and omnidirectional strain responsivity. This work reports the development of a versatile ionic gelatin-glycerol hydrogel for soft sensing applications. The resulting sensing device is inexpensive and easy to manufacture, is self-healable at room temperature, can undergo strains of up to 454%, presents stability over long periods of time, and is biocompatible and biodegradable. This material is ideal for strain sensing applications, with a linear correlation coefficient R2 = 0.9971 and a pressure-insensitive conduction mechanism. The experimental results show the applicability of ionic hydrogels for wearable devices and soft robotic technologies for strain, humidity, and temperature sensing while being able to partially self-heal at room temperature.
Soft sensing technologies provide a minimally invasive way to measure the internal states of a system and have several applications in health monitoring, human motion detection, human–machine interfaces, and soft robotics1,2. Typically, these soft sensors are developed using conductive composites of elastomers3,4,5,6, conductive liquids7,8, and stretchable optical fibers5. Hydrogels are an appealing alternative due to their high stretchability, transparency, biocompatibility9,10, and ionic conductivity, which can transmit high-frequency electrical signals over long distances. The physical properties of these materials can be easily tuned11,12,13, they are sensorizable with a variety of additives14,15,16,17, and they demonstrate unique diffusion-based actuation18,19,20. However, their high water content and often organic nature lead to difficulties in ensuring stability and durability over extended time periods10. Parasitic impedance layers can cause issues in fabricating an effective interface between the hydrogel and the electrode21, causing unwanted noise in the measurement devices. Additionally, as the migration of mobile ions in the hydrogel network is negligibly impacted by shape changes, the electrical resistivities of these hydrogels remain constant, thereby making them sensitive to changes in both length and area10,22. This feature complicates their applicability to strain sensing, as applied stresses in multiple directions cannot be decoupled. For hydrogel-based strain sensors to be truly effective, we need to reduce the vitrification effects that occur due to drying of the hydrogel, improve their robustness to damage, and be able to tune the strain response in desired directions. Additional properties such as biocompatibility, self-healing, low cost, ease of fabrication, and low energy consumption are beneficial.
Additive manufacturing methods have already proved useful in fabricating sensorized hydrogels23,24, although specialized/high-cost printers limit the practicality of this method. More straightforward deposition printing methods necessitate extrudable hydrogels25,26, which require careful tuning of the material properties and gelation time27. Gelatin-based hydrogels are inexpensive, extrudable, and biocompatible due to gelatin’s nontoxic nature28,29,30 and can be developed into self-healable materials30,31,32. In this paper, we tune the composition of a gelatin/glycerol/water/citric acid mixture to ensure durability, stability, and printability before testing a number of sensorization additives to create composite biocompatible sensors and sensorized actuators, which can be quickly and straightforwardly fabricated.
Upon cooling, aqueous gelatin undergoes a sol–gel transition at ~40 °C, during which its coiled chains transition toward right-handed triple helices31,33 to form a soft gel stabilized by hydrogen bonds34. This hygroscopic material undergoes adsorption and desorption to match the relative humidity of its surroundings35, although over longer periods of time, the hydrogel vitrifies, becoming dry and brittle upon the exclusion of aqueous solvent36. The physical crosslinks formed during this gelation are thermoreversible, but additional enzymatic crosslinking can be induced using transglutaminase to facilitate peptide bond formation37,38. Although this further crosslinking results in a loss of thermoreversibility31, Bigi et al. noted that crosslinked gels have a significantly increased Young’s modulus while remaining flexible34. The authors also identified a linear relationship between the gel triple helix content and the gelatin bloom index, with higher indices giving stronger gels, higher Young’s moduli (3.6 to 12 MPa from Gel-80 to Gel-270), and reduced swelling. To further improve the mechanical properties of the gel and to counter vitrification effects, glycerol may be introduced as a plasticizer15,39. Although glycerol is a nonsolvent for gelatin, its three hydroxyl groups form hydrogen bonds with water molecules to increase the bound-water content of the material (Fig. 1). These strong bonds disrupt the formation of ice crystals, and glycerol has been found to be an effective antifreeze additive for hydrogels40. Additionally, the presence of these hydroxyl groups was proposed by Pan et al. as an explanation for the self-healing behaviors of a guar gum-glycerol hydrogel25, the thixotropic nature of which makes it a good candidate for extrusion-based hydrogel printing.
When used in conjunction with gelatin hydrogels, glycerol does not affect the gelation mechanism36 but improves elasticity, flexibility, and moisture sensitivity by reducing interactions between adjacent gelatin chains41. Sanwlani et al. proposed a “hydration sheath” mechanism by which glycerol acts as a water structure enhancer to improve gel strength33, finding a linear relationship between glycerol concentration and gel strength in high solvent mixes. The relative proportions of gelatin (Ge), glycerol (Gl), and water in the mixture can be used to tune the mechanical properties of the hydrogel42. Shintake et al. tested a series of samples using Ge:Gl:H2O ratios of 1:1:8 and 1:2:8 with a 48 h drying time but reduced the water content to 1:2:3 when casting pneumatic actuators39. Nagai et al. demonstrated the biodegradability of 2:1:8 films in soil over a period of days43. Hughes et al. utilized a higher glycerol content (1:6:5) to create a material that biodegrades in warm water44. Ratios of 1:1.5:8 are suitable for extrusion-based printing when the enzyme transglutaminase is used to catalyze the gelation process45. However, the accompanying changes in viscosity lead to low resolution of the printed structures. Baumgartner et al.46 found that the acidic environment created by a small amount of citric acid—a food-safe ingredient—prevents bacterial growth without mechanical degradation in a hydrogel of composition 1:2:2:1.75:0.25 Ge:Gl:H2O:GS:CA, where CA represents citric acid and GS represents glucose syrup.
In this work, a 1:1.5:2.5:0.2 Ge:Gl:H2O:CA composition is selected to optimize the hydrogel printability and stability. Although the pure mixture shows a strong strain response, the baseline resistance of the hydrogel must be lowered to fabricate efficient and soft strain sensors. Four additives are tested that not only reduce the baseline resistance but also maintain the material’s mechanical properties, biodegradability, and relative sensitivity. Sodium chloride is found to give excellent results, creating a sensorized hydrogel capable of 454% strain, room temperature self-healing, and linear correlation coefficient R2 = 0.9971 over 300% strain (Fig. 1). Our hydrogel remains functional over a period of multiple months without drying out, is composed entirely of widely available, food-safe materials—including the sensorization additive—and exhibits extremely linear strain responsivity over large deformations. In addition to presenting the material composition and properties, we utilize a low-cost fabrication technique consisting of a modified desktop 3D printer, which allows the development of custom strain sensors that can be printed directly onto flexible substrates.
To justify the use of the hydrogel for rapid strain sensor prototyping, its behaviors directly after printing are characterized as an environmental equilibrium is approached. To exploit quick fabrication for customizable sensors or sensor morphology optimizations, it is necessary to understand how the sensor behaves within this window; commonly, the material is instead left to reach equilibrium before any measurements are taken38,39.
A straightforward dual-nozzle 3D printing setup is introduced, an extension of that proposed in the authors’ previous work45, which can be used to combine pure and sensorized hydrogels into composite structures. The introduction of a temperature-controlled printing mechanism eliminates the need for chemical crosslinking, ensuring consistent material properties. Experimentally, the mix of 1:1.5:2.5:0.2 Ge:Gl:H2O:CA is found to have a coalescence boundary near 45 °C and to undergo gelatin’s thermoreversible sol–gel transition within 90 s of printing at room temperature. The relatively low water content allows prints to reach equilibrium more quickly, leading to less temporal variability in the material properties. Coupled with the addition of citric acid monohydrate, the printed samples are found not to degrade over timescales of multiple months. This material stability, coupled with the straightforward and low-cost fabrication method, has major application in the automated design and rapid prototyping of sensorized soft robots. We show that the environmental sensitivity of the electrical properties of the hydrogel can be used to measure these factors, and even compensate for these effects using multiple sensors. Finally, two robotic applications of the sensorized hydrogels are demonstrated: a 3D-printed sensorized wearable glove and a self-healing soft pneumatic actuator with embedded sensing, which remains stable and functional over multiple months.
Choosing a sensorization additive
The resulting resistances of the four sensorization additives are compared in Fig. 2c. When evaluated by the ability to decrease the hydrogel’s baseline resistance, the ionic additive NaCl outperforms the other additives over both timescales. Carbon conductive paint (CCP), which has a high water content, has little effect on the resistance at this ratio. Previous studies have demonstrated the ability of CCP to better enhance the hydrogel conductivity at higher ratios45, although this comes at the cost of material vitrification in low-humidity environments. Similarly, higher concentrations of NaCl, milled carbon fiber (CF), and graphite powder (GP) are all empirically found to noticeably diminish the material’s mechanical properties and are not explored in depth.
At the same concentrations, Table 1 presents the resistive gauge factor (GF) values measured during e = 30% applied strain (chosen to ensure that all responses remain in an approximately linear response range—limited by graphite powder), where
The highest gauge factor, indicating the greatest relative response, is that of the pure Ge/Gl/H2O/CA hydrogel. Additives are therefore not required to provide a strain sensing mechanism but rather to maintain the sensitivity of the pure mixture, while lowering its baseline resistance to improve the energy efficiency of the sensor network. At the 1:0.02 mass ratio, NaCl does so most successfully and appears to be the best choice of conductivity-enhancing additive for our purposes.
The samples containing the most water-pure and CCP mixtures demonstrate the greatest relative resistance increase over the 5-day period. This result suggests that the primary mechanism for increasing resistance is the desorption of water from the samples as they approach equilibrium with the environment. To test this hypothesis, Fig. 2d tracks the relative masses of four equally sized samples. These are created from the same gelatin batch, extruded simultaneously, and weighed over a 7-day period in the laboratory. The pure composition is compared to the mixture with added salt, carbon conductive paint, and without citric acid monohydrate. As expected, the relative mass of the carbon conductive paint sample decreases dramatically, reaching 39% of its initial value ∼40 h after extrusion. In all samples, small fluctuations are seen around the equilibrium state as the environmental humidity is varied. Although the salted sample loses more water than the pure sample, it demonstrates a much lower increase in relative resistance, suggesting that the ionic conductivity mechanism is less affected by desorption than the pure mixture. Removing citric acid from the mixture has a large effect on the equilibrium mass since the monohydrate form used acts to increase the hydrogel’s bound water content, with the hydroxyl and three carboxyl groups providing a number of additional sites for hydrogen bonding. Because we desire our printed sensors to behave as uniformly as possible with time, the Ge/Gl/H2O/CA/NaCl composition is the best choice for printing.
Having chosen NaCl as an additive, we next examine its effect on the properties of the hydrogel under mechanical loading, with changes in humidity, and over multiple timescales. The alternating current (AC) resistive response of a printed sample containing 1/50 NaCl to 300% strain, applied at a uniform rate of 5 mm/s, is shown in Fig. 1c. The linearity in response over a large applied strain is very high, with an R2 value of 0.9971. This result is attributed to the material’s insensitivity to pressure, which implies an insensitivity to area changes caused by deformation.
Figure 2e, f illustrate the impressive mechanical properties of the pure composition after 7 days, which behaves linearly until failures at >400% and >500 kPa. Figure 2d desorption behaviors have a clear effect on the strength of the samples: the print given six additional days to reach environmental equilibrium achieves a failure stress 37× higher than that after just 1 day. For the samples printed and measured at high humidity, the addition of salt appears to have little effect on the mechanical behavior until the final moments before fracture (Since the NaCl sample may have undergone minor slippage in the Instron vice, the slightly lower but more reliable strain value of 454% is used in Table 2 presentation of sensor properties.). The closely matching responses over 400% strain show excellent promise for the integration of conductive and insulating layers into 3D structures, while minimizing interfacial failures due to stress concentration. The figure also illustrates the effect of humidity on the mechanical properties of the hydrogel, which is explored further in Fig. 3c.
Figure 3a tracks the electrical properties of the material over a 6-day period at 1 kHz to various mechanical stimuli. A low pressure sensitivity and high strain sensitivity are desirable for a linear strain sensor, as discussed in the “Introduction” section. The relative responses are remarkably consistent (GF ≈ 1.5) throughout both composition and temporal changes, considering the large changes in baseline resistance during the period. NaCl can therefore be used to adjust the baseline resistance of a sample while hardly affecting its sensitivity, enabling the fabrication of composite sensor networks: even with different salt contents, a constant gauge factor results in a sensor’s resistance always changing by the same proportion to a given strain, such that the baseline resistances of individual components in the network can be tuned to suitable values. The consistency in response is also incredibly beneficial in making meaningful measurements over resistive changes due to environmental changes: only a single measurement is required to recalibrate the sensor when it encounters any environmental fluctuations, from which the same proportional changes are expected. The reduction in resistance to flexural motion is advantageous, as it can provide a simple method to decouple pure bending and strain.
The electrical properties of the hydrogel are strongly dependent on temperature and humidity, as observed from our experiments. Although this dependency is not ideal for strain sensing applications, it allows us to develop sensor systems that can estimate multiple physical properties using the same sensing principle. To demonstrate this, we use three gelatin-glycerol hydrogels with NaCl added at 0, 1/50, and 1/100 by weight. The resistances of these samples are measured over a 19 day period while sampling the relative atmospheric humidity and temperature. After a 70 h near-linear initial period in which the hydrogel reaches equilibrium with the environment, a significant increase in relative humidity corresponds to a subsequent decrease in resistance and vice versa. This equilibrium can be sustained for long periods of time: Fig. 3f shows the material behaviors and responses of a sensorized hydrogel sample 6 months after extrusion. Not only is the hydrogel’s flexibility maintained, but a 100% strain test demonstrates a gauge factor of 1.7, similar to that of the original tests.
Since each of the samples produces a unique response to the environmental conditions, it becomes easier to decouple and model their dependencies47. Figure 3b shows how the sensor data can be used along with a learning-based approach to estimate environmental variables and estimate the passive response of other sensors to the environment. The left side of Fig. 3b shows the predictions of a feedforward network that is trained to simultaneously estimate the temperature and relative humidity of the environment from the three previous sensor datasets. Similarly, the environmental effects on one sensor can be removed completely using information from the other sensors. On the top-right side of Fig. 3b, we show how the sensor data from the first two sensors can be used to predict the response of the third sensor. This prediction can then be used to completely remove the effect of environmental factors from the sensors and reliably use it as a strain sensor. The regression fit on a test set is shown for both learned models to verify that the trained model does not overfit the data on the bottom-right side of Fig. 3b.
In addition to the stable strain response, conductivity, strong mechanical response, and printability of the Ge/Gl/H2O/CA/NaCl hydrogel, Fig. 3c, d demonstrate its room temperature self-healing capability. In Fig. 3c, a batch of identical rectangular samples are cut into halves using a scalpel at various hours after their extrusion. The halves are placed back into contact at room temperature, and the strain is tested 48 h later. Tests are also carried out on rehydrated and thermally healed samples over the same period (see “Mechanical/Electrical characterization” section).
The room temperature self-healing effects are found to be largest when a cut is made during the desorption period (Fig. 2e): upon testing, the samples can undergo up to 124% applied strain before the onset of fracture at the cut site. When the same test is performed more than 2 days after printing, only 28% strain is achieved, suggesting that the presence of free water is vital to the self-healing mechanism; a strong environmental dependence suggests a reliance upon noncovalent interactions48. Indeed, after 2 days, the rehydrated samples (given an excess of free water 48 h before testing) recover higher strains (∼80%) than the room temperature samples, which have reached equilibrium with the environment. A strain of 80% allows for a significant range of motion or pneumatic inflation in robotic applications up to a week after extrusion but is still significantly lower than the strain-to-failure of the undamaged material. Further tests are necessary to deduce the reliability of rehydration as a healing “catalyst”, such as whether the environmental temperature and humidity significantly affect these results. Due to the thermoreversibility and low sol-gel transition temperature of the hydrogel, thermal healing is capable of recovering the greatest strain (>150%) after 1 week, providing a mechanism for more substantial healing after the initial desorption period. Unlike room temperature tests, this method of healing requires an external stimulus (heat), relying on a different mechanism for recovering damage.
The hydrogel’s Ge/Gl/H2O/CA composition results in a large number of sites for hydrogen bonding, providing a feasible healing mechanism in room temperature samples49,50 or part of a multistep mechanism: Xu et al. and Wang et al.51,52 previously facilitated self-healing in gelatin hydrogels by introducing additional hydrogen bond donors/receptors with ureidopyrimidinone and tannic acid, respectively. The use of NaCl and citric acid monohydrate may introduce a further mechanism: Li et al. identified the high aggregation strength of noncoordinating metal ions and carboxylate anions in self-healing polymers53. In addition, citric acid lowers the hydrogel pH below the gelatin isoelectric point, such that electrostatic interactions could contribute to the mechanism54. Further investigations, including spectroscopic analyses across the healed interface, are necessary to deduce the specific bonding behind the observed behaviors and could provide information to help improve the recovered mechanical properties. A preliminary investigation of the effect of increasing the pH on any electrostatic healing mechanism (see “Mechanical/Electrical characterization” section) is shown in Fig. 3e. pH values close to 8.5 are found to result in higher recovered strains, although these values are lower than the healed strains tested in Fig. 3c due to the shorter time period between buffer solution subjection and testing. Repeating the testing over multiple timescales is a sensible route for further investigations. At the same concentrations and ranges, these pH values were not found to significantly impact the sensitivities or baseline resistance of the hydrogel.
Although the samples of Fig. 3c, d fracture at the site of the initial cut, regaining strains of >100% at room temperature can still benefit a wide range of scenarios. Figure 3e demonstrates how a soft sensory channel can be repaired in as little as one hour during the strong initial self-healing period. Here, a single line of hydrogel (colored using dye) is extruded onto a silicone substrate, and a 22% trapezoidal strain profile (typically sufficient for wearable sensors) is applied while resistance is recorded. Figure 3e marks the location at which the sensor is cut with a scalpel. After 1 h, the strain response is rerecorded, regaining full functionality with no increase in baseline resistance beyond that expected due to desorption. Such a quick recovery of sensory response upon damage is necessary for time-limited applications in high-risk situations, such as hostile environment recovery tasks. By coupling the self-healing sensor with a self-healing insulating substrate, restoration of high functionality can be ensured with minimal interfacial/damage-zone stresses.
Figure 4 demonstrates two promising applications for NaCl gelatin sensors: a customizable sensor morphology that can be printed directly onto a wearable glove for human joint tracking and a self-healing sensorized pneumatic actuator that remains stable and functional over multiple months. Figure 4a demonstrates the quick-to-fabricate glove morphology using a 3D printing setup to print a sensorized flexible network onto a disposable glove. Due to the excellent adhesive properties of the hydrogel, we obtain good interfacial bonds without further processing. Silver-coated conductive thread is used to connect each of the five sensors to a potential divider, which is measured at 10 kHz. Time-series resistances from the first two sensors—the thumb and index finger—are plotted, illustrating the clear responses to simple hand gestures, each of which is repeated three times during a 10 s period (see supplementary video). The rapid prototyping setup enables new sensor morphologies to be quickly proposed, fabricated, and tested and could be used to optimize the sensor response to particular gestures or tasks.
Due to the easy processibility and thermoreversibility of the hydrogel material, it can also be used to mold complex structures. Figure 4c shows a soft pneumatic actuator cast completely with the ionic hydrogel. To the best of our knowledge, this is the first demonstration of a self-healing hydrogel-based pneumatic actuator55. As the whole structure is conductive and responsive to strain, the internal state of the actuator can be easily measured by probing any two locations on the actuator. Such devices are appealing for soft robotic applications due to their biocompatibility and recyclability. We also investigate the actuator’s self-healing capabilities. Tests are performed on a 60-day-old actuator to mimic real-world scenarios and showcase the stability of the material. Figure 4c shows the electrical response of the system when the actuator is pierced while undergoing a 0.5 Hz periodic motion. As the whole actuator is conductive, information about its internal states can be estimated, even after damage. The internal pressure recorded in the pressure regulator is also shown here. We perform two healing experiments: one at room temperature (20 °C) and another using a heating device (see supplementary video). At room temperature, the 2-month-old actuator appears to self-heal after just 1 h. However, upon continuous pressurization, it fails to maintain a tight seal. Figure 4c shows how the internal pressures inside the actuator are maintained to an undamaged standard using room temperature healing. A more robust seal can be obtained by heating the hydrogel at the location of damage, although this slightly modifies the actuator’s physical properties. Figure 4c also shows that the actuator does not degrade over a 5 month period.
In this work, we demonstrate the impressive electrical and mechanical properties of an ionically sensorized self-healing gelatin hydrogel. The material can be cast or 3D printed using a low-cost setup to create customizable sensor networks and sensorized actuators that have highly linear responses to strain. Table 2 summarizes a number of the key characteristics of the Ge/Gl/H2O/CA/NaCl hydrogel, many of which surpass those of existing sensorized hydrogels and silicones used in soft robotics. Notably, strains exceeding 450% are achieved, with a highly linear strain response measured up to e = 300%. A reasonable gauge factor is demonstrated, and strain sensitivity can be recovered at room temperature within an hour of damage. Our hydrogel is preferable to many existing alternatives due to its long-term stability without drying out and its fabrication entirely from widely available, food-safe materials. Additionally, its thermoreversibility and low sol-gel transition temperature make it a promising candidate for the straightforward printing of custom strain sensors, as well as providing a method of thermal healing to reliably recover strains of 250%. The authors’ previous work45 used carbon conductive paint to sensorize chemically crosslinked gelatin hydrogels with GF ≈ 2.5, which quickly dried out and minimally reduced the baseline resistance. Another self-healing gelatin hydrogel using tannic acid30 achieves considerably higher strains of ∼1500% but requires silver nanowires for its sensorization to a lower gauge factor. We have demonstrated extremely linear sensor responses with GF = 1.49 up to 300% using only salt as a sensorization additive, making our material a good choice for biocompatible and low-cost sensing within this range.
The material properties and sensitivities of the proposed hydrogel do not degrade over long periods of time, and the printed samples stabilize to laboratory environmental conditions after losing only 20% of their mass. Large increases in conductivity are possible using small ratios of NaCl, producing stress–strain responses similar to that of the pure hydrogel and minimizing interfacial stresses in integrated systems. Furthermore, when damaged shortly after printing, the material is capable of self-healing to reach >100% strain at room temperature. Extending this strong healing region beyond the initial desorption period would benefit integration into soft robotic systems: preliminary investigations suggest that rehydration is a promising method but requires further investigation. Healing can be manually achieved through external heating due to the hydrogel’s thermoreversibility and low sol–gel transition temperature.
The material’s lack of degradation over multiple months in the laboratory makes it a strong candidate for rapid prototyping in this field. Further work should consider the range of conditions under which this stability occurs: pH, temperature, and humidity should be adjusted over longer periods of time. Due to its low resistivity and AC measurements, the energy consumption of our hydrogel sensors is very low, making them appealing for wearable applications.
Hydrogel-based sensors have a strong dependency on the environmental conditions and tend to deteriorate over time. We demonstrate that by using multiple sensors, these environmental factors can be estimated and compensated. Due to their high processability and adhesive properties, these materials can be easily integrated into existing wearable devices and soft robotic applications. The ability to respond to changes in the environment, alongside the custom fabrication method presented for the self-healing sensorized hydrogel, paves the way for further exploration of autonomous robots in medical, edible, wearable, hostile, and agricultural applications.
Materials and methods
Conductive hydrogel preparation
A 1:1.5:2.5:0.2 mass ratio of gelatin (Ge), glycerol (Gl), water (H2O), and citric acid monohydrate (CA) is used for the “pure” mixture. Cold water is poured onto 240/260 pork gelatin powder (Cake SOS) and allowed to bloom for 10 min. Next, glycerol (Fisher Scientific) and citric acid monohydrate (Fisher Scientific) are added, and the beaker is covered with parafilm and transferred to a water bath at 50 °C. Once the mixture is homogeneous, the bath is used to maintain the sol state: in practice, this is left overnight, and experiments are performed the following morning. The sol–gel transition occurs at ∼45 °C.
To reduce the hydrogel’s baseline resistance while retaining its strain responsiveness, four conductive additives are compared: 100 µm milled carbon fiber (CF), ThermoFisher general purpose graphite powder (GP), Liquiwire carbon conductive paint (CCP), and Sainsbury’s table salt (NaCl). Unless stated otherwise, all are added to the hydrogel with a 1:0.02 pure:additive mass ratio, stirred, and allowed to reach homogeneity in a water bath at 50 °C before fabrication. The sensorized mixtures are cast into 18 × 40 mm polylactic acid (PLA) molds joined to a glass plate using hot melt adhesive. After selecting NaCl is selected as the sensorization additive, the subsequent experiments use 18 × 45 × 1 mm samples printed using a custom 3D printing setup.
3D printer setup
The 3D printing setup consists of a modified Creality CR-20 fused deposition modeling (FDM) printer (Fig. 2) using two 50 ml syringes as the basis of a dual-nozzle extrusion system. Silicone heating pads are used alongside 2 Pt2000 thermistors to create an Arduino-controlled bang-bang trigger mechanism that retains the hydrogel inside the syringes at 45 °C. The gelatin mixtures can be individually extruded from the 1 mm nozzle using stepper motors that control the rack-and-pinion syringe depression.
By operating at 45 °C, adjacent lines printed using a high extrusion rate are able to coalesce before solidifying, while slowly extruded thin lines can produce more detailed shapes/networks. This hybrid approach enables the printing of 2D layers that are both detailed and isotropic: the shape’s thin boundaries are first printed and then used to contain a coalescing infill. These parameters are controlled using Cura to generate a gcode file that is edited with a custom script before being sent serially to the printer. The dual-nozzle setup enables seamless fabrication of composite structures; Fig. 2 demonstrates the printer’s ability to combine sensorized and insulating hydrogel layers to create flexible, stretchable, and biodegradable strain sensors.
Unless stated otherwise, the mechanical properties of the salted samples are characterized using an Instron 5544 extending at 10 mm/min. Stress and strain values are calculated based on the unstressed cross-sections and exposed lengths. Subsequent strain tests, in which the hydrogel’s resistive response is simultaneously measured, are performed by clamping the samples between the table and the end-effector of a Universal Robots UR5 robotic arm. Long-term resistances (during tests of environmental dependence) are measured using direct current (DC) voltages. The samples form one branch of a potential divider, which is probed using an Arduino Duemilanove microcontroller and logged using a serially connected Raspberry Pi 3B. During this logging, environmental conditions are simultaneously tracked using a DHT11 temperature and humidity sensor. To estimate the environmental variables from the raw sensors and to predict the passive response of the sensor, a single-layer feedforward neural network is used. The MATLAB neural network toolbox is used for creating and training the network. The trainlm algorithm with a training, test and validation ratio of 70:15:15 is used to train the network. For the first network, the inputs are the three sensor data, and the output is the two environmental variables: relative humidity and temperature. For the second network, the inputs are the raw values from the first two sensors, and the output is the response of the third sensor.
For shorter-term sensor responses, NaCl DC measurements undergo a short period of increasing resistance before stabilizing. This effect, due to the motion of the additional ions through the hydrogel, is eliminated when an AC signal is used due to the repeated reversal of probe polarity. AC measurements (1 kHz) are recorded using a handheld LCR meter (Keysight U1731C), while 10 and 100 kHz logging is performed using a National Instruments USB-6212 multifunction I/O device coupled with a potential divider and sampling at 100 kHz. The input/output voltage ratio is calculated using the relative magnitude of the applied frequency Fourier peaks over a 1000-sample rolling window. Capacitive effects at these high frequencies are not explicitly taken into consideration, although the measured resistance of a short circuit is subtracted from all readings. All the data processing is performed using MATLAB.
While comparing the relative salt content, pressure responses are recorded when a 100 g circular mass of 19 mm diameter is placed on the printed sample; samples under flexure are bent around a PLA jig with 12 mm curvature radius; and strain measurements are taken during 25 mm applied extension. All forces are applied through a thin sheet of insulating polydimethylsiloxane (PDMS) to avoid unintended changes in resistance, and values are given 10 s to stabilize before being recorded.
The healing tests shown in Fig. 3c are performed by cutting each sample across its width perpendicular to the axis of strain and leaving the two halves in contact for 48 h at room temperature before strain testing with the robotic arm setup described above. “Rehydrated” samples are coated on both sides with an excess of warm water before this 48 h period, while both sides of the thermally healed samples are quickly passed over with a rework station’s hot air gun.
The pH dependence is investigated using a 0.1 M Tris-HCl buffer solution at one of 6 pH values, namely, 6.8, 7.0, 7.5, 8.0, 8.5, and 8.8, each of which is tested twice. Then, 0.3 g of solution is pipetted onto 1/50 NaCl samples after solidification in their casts and left for 24 h before being tested.
Pneumatic actuations of a PneuNet finger are controlled by a Festo VEAB proportional pressure regulator, the input signal to which is provided by a National Instruments USB-6212 multifunction I/O device. This I/O device also provides a 5 kHz signal for resistive measurements. The actuator is cast using the low water composition from a 2-part PLA mold and sealed using localized heating. The base is sensorized using 1/50 NaCl, and conductive thread is joined to its ends using the sol hydrogel. Damage is inflicted by piercing a scalpel through the finger’s underside into one of the inflatable chambers. A rework station’s hot air gun is used for localized healing of the actuator.
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This work was supported by the SHERO project, a Future and Emerging Technologies (FET) program of the European Commission (grant agreement ID 828818) and by EPSRC DTP EP/R513180/1. The authors would like to thank Alex Casabuena Rodriguez and Professor Michael Sutcliffe for their assistance in characterizing the hydrogel’s stress–strain response and George Wood for the preparation of the Tris-HCl buffer solutions.
The authors declare no competing interests.
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Hardman, D., George Thuruthel, T. & Iida, F. Self-healing ionic gelatin/glycerol hydrogels for strain sensing applications. NPG Asia Mater 14, 11 (2022). https://doi.org/10.1038/s41427-022-00357-9
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