Here, we present a protocol for using three-dimensional fast force mapping – an atomic force microscopy technique – for visualizing solution structure at solid-liquid interfaces with the subnanometer resolution by mapping the tip-sample interactions within the interfacial region.
Amongst the challenges for a variety of research fields are the visualization of solid-liquid interfaces and understanding how they are affected by the solution conditions such as ion concentrations, pH, ligands, and trace additives, as well as the underlying crystallography and chemistry. In this context, three-dimensional fast force mapping (3D FFM) has emerged as a promising tool for investigating solution structure at interfaces. This capability is based on atomic force microscopy (AFM) and allows the direct visualization of interfacial regions in three spatial dimensions with sub-nanometer resolution. Here we provide a detailed description of the experimental protocol for acquiring 3D FFM data. The main considerations for optimizing the operating parameters depending on the sample and application are discussed. Moreover, the basic methods for data processing and analysis are discussed, including the transformation of the measured instrument observables into tip-sample force maps that can be linked to the local solution structure. Finally, we shed light on some of the outstanding questions related to 3D FFM data interpretation and how this technique can become a central tool in the repertoire of surface science.
Many interesting phenomena occur within a few nanometers of a solid-liquid interface where classical theories for colloidal interactions break down1. Solvent molecules and ions organize into unexpected patterns2 and diverse processes, such as catalysis3, ion adsorption4,5, electron transfer6,7, bio-molecular assembly8, particle aggregation9, attachment10,11, and assembly12,13, can occur. However, few techniques can characterize the solution structure at the interface, particularly with sub-nanometer 3D resolution. In this context, three-dimensional fast force mapping (3D FFM)-a technique based on atomic force microscopy (AFM)-has emerged as a useful tool for determining interfacial solution structure14,15 and understanding its impact on such phenomena.
In general, AFM techniques employ a cantilever with a nanosized tip to characterize surfaces using two main classes of measurements: topographic imaging that measures the height of a substrate at every xy pixel or force measurements that quantify mechanical properties, colloidal interactions16,17, or adhesive forces between a functionalized tip and the substrate. Today, the capabilities of this versatile instrument extend far beyond these traditional applications; skilled users operating modern instruments can measure electrical, magnetic, and chemical surface properties by coupling force microscopy to spectroscopy and other methods18. Perhaps the most fascinating advances have been the ability to image materials and processes in their native solutions, with nanoscale spatial resolution, in real time19,20,21. This latter capability facilitated the development of 3D FFM, which extends AFM measurements into the third spatial dimension by combining 1D force curves with topographic imaging14. Specifically, the tip acquires consecutive force curves at each xy coordinate to produce a 3D map of the forces detected by the tip at the solid-liquid interface. The novelty here is that a sufficiently fast and sensitive tip can detect minor force gradients corresponding to the local distribution of molecules to map the interfacial solution structure.
To date, 3D FFM has been developed by only a few research groups, which, in our opinion, is not due to its technical limitations but rather the need for customizing instruments in-house to perform these measurements. However, 3D FFM was recently commercialized and is now accessible to researchers of all relevant disciplines. From a scientific point of view, this technique has a broad and multi-disciplinary appeal. For example, the first 3D FFM experiments were performed on mineral-solution systems15,22,23,24, where important questions included understanding mechanisms of crystal growth and dissolution, the adsorption of ions and molecules, and the role of hydration layers in particle aggregation and attachment. Successful experiments have identified calcium and magnesium atoms in a dolomite crystal lattice25, visualized solution structure around calcite point defects26, and imaged ion adsorption at mica27,28 and fluorite24,29 surfaces.
Beyond visualizing mineral-solution interfaces, 3D FFM can provide insights into fundamental questions in surface and colloidal physics, such as the scaling of short-range colloidal interactions, the structure of electric double layers at a molecular level, and the nature and origins of solvation forces. These measurements have important implications for electrochemistry and battery research, as 3D FFM can map electrode-electrolyte interfaces and probe their response to electric fields3. Other applications in materials science include understanding phenomena that occur at the surfaces of separation membranes, heterogeneous catalysts, and polymer coatings. As this capability develops further, we anticipate that it will also play an important role in imaging biomolecules and delineating the role of interactions, ions, and solvent molecules in their self-assembly.
One of the key aspects for advancing data interpretation in 3D FFM is benchmarking against other experimental and simulation tools that have been previously used to study solid-liquid interfaces. For example, techniques based on X-ray reflectivity or diffraction measure electron density profiles that can be mapped to the distribution of ions and solvent molecules as a function of height from the interface30,31,32,33. This approach has been successful for a range of mineral-solution systems but remains limited to large atomically smooth surfaces and is often incapable of producing laterally resolved data. Other techniques, such as sum frequency generation spectroscopy, provide evidence of particular aspects of solvent structuring at mineral surfaces, such as the orientation of solvent molecules at the surface, but not direct visualization of the structure34,35. Moreover, molecular dynamics simulations have advanced significantly and can now routinely probe solvent distribution profiles at crystal surfaces4,36,37,38,39. While each of these techniques has its own challenges and limitations, they form a complementary suite of tools for investigating interfacial solution structure; 3D FFM is poised to contribute significantly to this regard and expand the range of solid-liquid systems that can be studied, as well as the research questions that can be answered.
A pre-requisite for implementing 3D FFM on a particular sample, is the ability to obtain topographic images with the desired spatial resolution. For a detailed experimental protocol on high-resolution AFM imaging, the reader is referred to a recent manuscript by Miller et al.20. For optimal operation of 3D FFM, it is strongly advised to first master the high-resolution imaging technique described therein. Most of the recommendations in that protocol are applicable and necessary for 3D FFM. In the following protocol, we briefly highlight the main steps for high-resolution imaging but focus on specific considerations for 3D FFM.
1. Loading and calibrating the AFM tip
2. Loading the substrate and solution
3. Setting instrument parameters for amplitude-modulated AFM measurements
4. Acquiring 3D force maps
NOTE: Finding the optimal parameters for 3D FFM measurements will depend on the sample surface, cantilever tip, and imaging solution. General guidelines are provided as a starting point but the appropriate parameters for each sample will require obtaining and analyzing datasets with various measurement conditions. The following steps show how to acquire the 3D force maps for the mineral water system. All of the parameters described in steps 4.2 – are set using the instrument software.
5. Processing 3D force map data
NOTE: The following steps can be performed in the preferred data analysis software using in-house generated codes or alternatively using the data processing files provided in the Supporting Information.
Figure 2A presents a schematic of 3D force mapping. Similar to other AFM techniques operating in amplitude modulated mode, an oscillating cantilever is scanned across the surface. In addition to the tip height at each coordinate, instrument observables such as phase shift and amplitude are collected as the tip approaches and retracts from the surface. The result is a 3D dataset of observables-notably the oscillation amplitude, phase shift, and tip deflection-that can be readily converted into a measurement of the force exerted on the tip. This method for the tip modulation is suitable for fast acquisition rates and produces reliable 3D data within a reasonable timescale of tens of seconds.
As a representative example, a 3D force map of a muscovite mica surface in contact with water is provided (Figure 2B,C). The data presented in terms of the force gradient experienced by the AFM tip (detailed explanation below) show lateral and vertical sub-nanometer features in three spatial dimensions. These features are ascribed to the interfacial solution structure and dissipate in the bulk solution, at heights beyond one nanometer from the surface. For a detailed description of the scientific significance and recent results from 3D FFM, the reader is referred to a review article by Fukuma and Garcia14. In this manuscript, we provide an experimental protocol for acquiring, processing, and analyzing 3D FFM data.
Figure 1: 1D force curves. Example force curves acquired for muscovite mica in 10 mM NaCl solution showing data in terms of (A) φ, (B) A, and (C) δ. Scaling of z in nm is accurate, but z = 0 nm is an approximation. Please click here to view a larger version of this figure.
Figure 2: 3D FFM scheme and representative data. (A) Schematic of 3D FFM data acquisition. Representative (B) xz and (C) xy data slices of the force gradient map obtained for muscovite mica in pure water. Please click here to view a larger version of this figure.
Figure 3: Comparison of 3D FFM data with different tips. xz slices of 3D FFM data acquired for muscovite mica in 10 mM NaCl solution using (A) silicon AC55TS tip and (B) carbon USC-F5-k30-10 tip. (C) Average force profiles of the data sets obtained using the silicon tip (red) and carbon tip (blue). Please click here to view a larger version of this figure.
Figure 4: Effect of tip blunting. (A) Average force profile from 3D FFM data set obtained for muscovite mica in pure water with increasingly blunted tip (blue, red, yellow, magenta, respectively). (B) Force gradients for the blue and red profiles in (A). (C) Image with exceedingly blunted tip still shows lattice resolution. Please click here to view a larger version of this figure.
Figure 5: Force reconstruction from 3D FFM data acquired for muscovite mica in 10 mM NaCl solution. Comparison of (A) tip-sample interactions calculated using the Kuehnle equations (blue markers) as well as the Garcia equations including the first (solid, red), second (solid, yellow), and third (solid, magenta) force components, (B) tip-sample force gradient showing features corresponding to the solution structure. Please click here to view a larger version of this figure.
Figure 6: Flow chart of 3D FFM data acquisition, processing, and analysis. Please click here to view a larger version of this figure.
Selecting the AFM tip
As with any AFM application, the key characteristics of the probe tip are the resonance frequency, cantilever size, tip radius, tip material, and spring constant. Almost all the 3D FFM literature to date has reported the use of stiff, high-frequency tips. The most common examples are silicon-based tips (e.g., AC55TS, PPP-NCH, Tap300-G, etc.) tips that can be utilized in their higher resonance modes14. Other research groups have opted for USC-F5-k30-10 carbon tips. Some important considerations are discussed below.
The cantilevers should be stiff, with spring constants k > 1 N/m. Otherwise, the tip will be subjected to large deflections and possibly adhere to the surface during each approaching and retracting cycle, instead of following the desired sinusoidal trajectory. In addition to tip deflection due to interactions with the surface, the solution structure itself might compromise the stability of tips with low spring constants, as the measured force gradients can exceed 0.1 N/m depending on the sample. In such cases, even if the tip can detect oscillatory features in the force profiles, the data would not be reliable. At the other extreme, tips that are too rigid might be incapable of detecting small features in the force profiles. The latter problem can be mitigated to some extent by operating at high resonance frequencies or extremely low drive amplitudes (< 0.1 nm) that are inaccessible to softer tips.
Cantilevers with higher resonance frequency (v0 > 1 MHz in air) are more capable of resolving sub-nanometer, minor features in the force profiles. Recall that the minimum detectable force in AFM is given by:
where kB, T, B, ν0, and Q denote Boltzmann's constant, temperature, measurement bandwidth, resonance frequency, and quality factor of the cantilever resonance; respectively41.
In general, the options are either silicon tips that are assumed to have hydrophilic silicon dioxide termination in aqueous solutions or hydrophobic carbon tips. For this technique, hydrophilic tips are considered superior and more suitable for comparing the instrument data with existing theoretical models. However, note that silicon tips are more brittle than electron beam-deposited carbon tips, and should be handled very carefully when acquiring consecutive data sets.
Figure 3 compares force maps obtained on a muscovite mica surface in [KCl] = 1 mM using two different AFM tips. The hydrophilic AC55TS tip produces laterally resolved features templated by the underlying mica lattice (Figure 3A). By comparison, USC-F5-k30-10 tips with significantly lower spring constants can also resolve clear oscillations in the force curves. However, these hydrophobic tips measure a qualitatively different force map that shows a layered pattern with a spacing comparable to the size of a water molecule (Figure 3B). Interestingly, Seibert et al. determined that hydrophobic surfaces are likely to attract contaminants that render the results interpretation very challenging42. As an optimal solution, the Fukuma group has recommended the use of USC-F5-k30-10 tips that are sputter coated with silicon24. This method cedes control over the tip radius but produces hydrophilic probes with an ideal range of resonance frequency and spring constant.
Regarding the tip size, the most used tips for this technique have nominal radii of 2-10 nm. For ultra-sharp tips (<2 nm), additional noise due to lateral tip oscillations can decrease image resolution. At the other extreme of a large "planar" tip, the force response is expected to be radically different due to fluid confinement between the two large surfaces; i.e., more comparable to surface force apparatus measurements.
To evaluate the effect of tip radius in the intermediate range relevant to 3D AFM force maps are acquired using a single tip that has been progressively blunted (Figure 4A). Notice that the oscillatory features gradually become less resolved (Figure 4B). While the peak positions do not change appreciably in this case, the magnitude of these features decreases. This effect is ascribed to the blunted tip detecting a convoluted signal from a large substrate area instead of sharp responses from distinct crystallographic sites. Interestingly, the blunted tip is still capable of producing lattice-resolution 2D images, even after the resolution in the height coordinate has been significantly compromised (Figure 4C). This presents a caution; a damaged tip could produce topographic images of the highest quality but still produce distorted 3D data.
In summary, the most favorable tips are stiff, sharp, and hydrophilic, with a high resonance frequency for improved sensitivity.
Data analysis
After the processing steps are completed, the measured observables can be converted into the force exerted on the tip at each voxel of the 3D dataset. This problem is discussed in a considerable body of literature using multiple approaches and assumptions43,44. The common underlying feature in these methods is that the cantilever is considered as a driven harmonic oscillator where the cantilever and tip are reduced to an effective point mass:
where Ftot is the total force acting on the tip, and the four terms on the right represent the tip-sample (ts) interactions, the driven harmonic oscillator force, the restoring force due to attachment of cantilever to a mechanical support, and the frictional force (γ denotes damping constant), respectively. Multiple formulations exist for solving this problem, although the fundamental physics is the same. In particular, the methods by Söngen et al. from the Kühnle research group43 and Payam et al. from the Garcia research group44 are highlighted here, which have been successfully implemented on 3D FFM data. The former approach gives:
For data acquired in amplitude modulated mode, the first term can be ignored since the cantilever oscillates at its resonance frequency. In reality, this term can be calculated for datasets where vexc is not exactly identical to ve, but its contribution is generally minimal. The imaging contrast is hence provided by (cos Φ)/A. By comparison, the method from the Garcia group reconstructs the conservative force acting on the tip according to:
where α is a constant, and the variables z, r, and ν were used here instead of d, x, and ω in the original reference, respectively, for consistency with Equation 2 and the rest of this manuscript. Notice that the derivative of the first term in Equation 3 corresponds to the force gradient calculated in Equation 2. However, the second and third terms are negligible; in particular the contribution of the third term is dominant at high drive amplitudes (few nanometers) but significantly lower at typical 3D FFM imaging conditions (Figure 5A).
Depending on the sample and the choice of the tip, the oscillatory features are sometimes not clearly resolved in the force profiles, as they are overlain on the long-range interaction between the tip and the sample. These features are more clearly observed when plotting the force gradient, for instance, using Equation 2 (Figure 5B). Traditionally, the long-range interaction has been considered (or ignored) according to one of the following methods: (1) Qualitatively analyzing the oscillatory features in terms of the instrument observables, i.e., amplitude, phase, and frequency shift without transforming the data into a force-distance curve, and without accounting for the long-range interaction25,26,36. This approach is a decent qualitative representation of the force gradient, which scales with (cos Φ)/A in amplitude-modulated mode. (2) Transforming the instrument observables into force or force gradient curves (using one of the two formulations described above) and studying the local oscillatory features semi-quantitatively while still ignoring the long-range background27,28,45. This method is a decent first approximation of the magnitude of the oscillatory features, and hence the degree of water ordering at the surface. (3) Subtracting the long-range tip-sample interaction using a function that is motivated by a physical rationale and ascribing the residual features to the interfacial solution structure. In principle, this method is the most quantitative and self-consistent. However, it predicates a fundamental knowledge of the nature and scaling of the tip-sample interactions. In earlier 3D FFM studies, this long-range background was subtracted using an exponential fit14,46, similar to how the Debye-Hückel term is treated in surface force apparatus data. However, this approach did not produce good results for a variety of experimental systems. More recently, a rationale based on nanoscale hydrodynamics suggested a power-law scaling of this tip-sample interaction, which produced excellent results for the boehmite-water system47. The authors suggest that the oscillatory motion of the AFM tip in the vicinity of a large planar surface leads to a "conservative" hydrodynamic lubrication force that scales according to . Subtracting this long-range background revealed a clear patterning of the solution structure close to the interface. Further data is needed to validate this approach.
Data interpretation
The ability to resolve interfacial features with sub-nanometer 3D resolution is, by itself, an impressive technological feat. However, scientific progress from this technique will not be possible without important advances in data interpretation. We consider two questions:
Does the AFM tip influence the measured features, and how? In other words, how can one extrapolate information about the free substrate-solution interface based on measurements using an AFM tip?
The simplest approach to this problem is a direct transformation between water density distribution (ρ) and force profiles using the solvent-tip approximation (STA)48:
The rationale for this method is straightforward: the AFM tip is assumed to behave like a water molecule, hence experiencing energy minima in locales of high water density close to the surface. Accordingly, the STA is mostly plausible for sharp, hydrophilic tips whose tightly bound hydration layer is effectively part of the tip, which is in line with previous work where 1D force curves were acquired using ultrasharp tips of different hydrophilicity49. The STA model has been applied to water density maps obtained from molecular simulations on mineral-solution interfaces. In some cases, the STA model has shown decent qualitative agreement with 3D FFM measurements23.
Nevertheless, more rigorous approaches are needed to account for the complexity of the tip size, chemistry, physical shape, as well as water confinement between the tip and the sample. Recently, Miyazawa et al. presented an "extended-STA" model wherein the tip chemistry is varied in molecular dynamics simulations (carbonate, calcium, or hydroxyl terminations) which resulted in drastic changes to the hydration structure at the interface50. Another study from our group used molecular dynamics simulations to survey the effect of tip size, tip-sample specific interactions, and tip chemistry, with each variation capturing an additional level of complexity observed in the experimental data47.
How can one de-convolute the two main components of the measured force: tip-substrate colloidal forces and tip-solution hydration forces?
The full answer to this question is beyond current theoretical models. Most studies have ignored the long-range interaction whose detailed physical nature is not completely clear and focused on the short-range oscillatory features. If achieved, a deeper understanding of the tip-sample interactions can become an asset of 3D FFM as it provides insights into colloidal interactions in addition to producing a more systematic and self-consistent analysis of the interfacial solution structure.
Ideally, one would delineate the dependence of forces, such as van der Waals, electrostatic, and hydrodynamic interactions, on local solution structure, patterns in the charge distribution, as well as other variables close to the interface where traditional models break down. The approach of analyzing the background as arising from the "conservative" hydrodynamic lubrication force (mentioned above) is a promising step in this direction that requires further investigation47. The schematics for 3D FFM data acquisition, processing, and analysis is shown in Figure 6.
To date, 3D FFM has been applied to multiple mineral-solution systems. In some cases, the results have been validated by molecular dynamics simulations, while in other cases questions about the role of the AFM tip have proven challenging24,25,29,51. As more details regarding data interpretation are ironed out, the next important steps will be to venture beyond these early benchmarking experiments and generalize 3D FFM to other applications in the wide range of scientific domains for which interfacial structure is an important factor. We anticipate that this technique will play a leading role in solving problems related to fundamentals of interfacial solution structure, surface chemistry, and colloidal physics, which in turn holds great promise for a deeper understanding in a multitude of research fields including electrochemistry, catalysis, geochemistry, materials science, biochemistry and biology.
The authors have nothing to disclose.
We thank Dr. Marta Kocun (Asylum Research), Dr. Takeshi Fukuma (Kanazawa), Dr. Ricardo Garcia (CSIC Madrid), Dr. Angelika Kühnle (Bielefeld), Dr. Ralf Bechstein (Bielefeld), Sebastien Seibert (Bielefeld), and Dr. Hiroshi Onishi (Kobe) for useful discussions.
Development of the 3D FFM experimental protocol was supported as part of IDREAM (Interfacial Dynamics in Radioactive Environments and Materials), an Energy Frontier Research Center funded by the U.S. Department of Energy (DOE), Office of Science (SC), Office of Basic Energy Sciences (BES). Development of the 3D FFM data analysis code was supported by the Laboratory Directed Research and Development Program (LDRD) at Pacific Northwest National Laboratory (PNNL) through the Linus Pauling Distinguished Postdoctoral Fellowship program to which E.N. is grateful for support. Development of the 3D FFM measurement capability was carried out at PNNL with support from the BES Division of Materials Science and Engineering, Synthesis and Processing Sciences Program. PNNL is a multiprogram national laboratory operated for DOE by Battelle Memorial Institute under contract no. DEAC05-76RL0-1830.
AC55TS AFM tip | Olympus | ||
Cypher VRS Atomic Force Microscope | Asylum Research | ||
PPP-NCH AFM tip | Nanosensors | ||
Tap300-G AFM tip | Budget Sensors | ||
USC-F5-k30-10 AFM tip | Nanoworld | ||
(Note only one of the AFM tip options is required) |
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