Since solids are only sometimes seen en masse in a pure bulk form, and for liquids other than water almost never, a capability to model reflectance spectra from analytes deposited on various substrates would be highly advantageous. If available, the real, n ( ν ) , and imaginary, k ( ν ) , components of the complex refractive index, n∼ = n + ik, can be used to simulate infrared spectra, accounting for reflection, refraction, and absorption phenomena as a function of wavelength. We focus on using the Pacific Northwest National Laboratory (PNNL) derived n / k vectors for solid and liquid analytes deposited as thin layers on different types of substrates including conductors, such as aluminum, and inorganic dielectrics, such as glass. The model is an adaptation of the Monte Carlo ray trace modeling program, TracePro, extended through the use of its macrolanguage. The model is tested using thin films of organic liquids including silicone oil and no. 2 diesel fuel, as well as organic solids such as caffeine and acetaminophen on aluminum and glass. The predicted spectra for the solid films were compared to experimental hemispherical reflectance data measured using a Fourier transform spectrometer with an integrating sphere. The thickness of the calculated layer is a parameter for predicting the (transflectance) spectra and is obtained using the areal density measured from gravimetric methods to generate the thin-layer samples. Comparison of the calculated spectra with experimental hemispherical reflectance data shows excellent agreement, indicating promise for the use of measured n / k data to synthesize reference spectral data. In particular, accounting for the inhomogeneity of the deposits greatly improved the match with experimental data. Finally, the theoretical modeling shows that for thicker layers (ca. 20 to 100 μm) of typical organics possessing moderately strong k values, the longwave infrared features are often saturated and better spectral contrast is obtained from the overtone/combination bands in the shortwave infrared. |
1.IntroductionSpectroscopy, especially infrared absorption and reflectance spectroscopy, is a valuable tool to remotely detect and identify unknown gases,1–4 solids,5–7 and liquids.8,9 Identification of unknown spectra from library endmembers makes use of techniques such as matched filtering, generalized least squares, and mixture-tuned matched filtering.10 In all of these methods, it is necessary to have a spectrum of the unknown material in the library for reliable identification. Spectral libraries exist for the three phases of matter, with solid materials typically characterized using reflectance spectroscopy, and gases and liquids identified predominantly using absorption spectroscopy.10,11 Unlike gases, the ability to detect solids and liquids under various environmental conditions using spectroscopic techniques can be challenging since morphological phenomena such as layer thickness,12 substrate composition,13,14 or particle size15,16 are all known to affect the infrared reflectance, emission, and transmission spectra. Generating a spectral library with all the different morphological conditions would require an infinite number of measurements; modeling the solid or liquid spectrum to account for the different morphological conditions is thus preferred but requires both the real () and imaginary () optical constants of the complex refractive index where . Identification of endmembers obtained via imaging spectroscopy is traditionally accomplished by comparing the unknown library endmember spectra found via reflectance spectroscopy using various algorithms.10,17 However, experience has shown there can be differences between field-obtained data and laboratory-measured spectra of neat chemicals. Consequently, there has been recent interest in obtaining the complex index of refraction of materials from which reflectance versus wavelength (or wavenumber) data can be calculated by way of the Fresnel equations for bulk materials or using ray tracing or thin film calculations. However, for many materials of environmental or security interest, such as explosives, chemical agents, or their precursors, the chemicals exist most often only as thin films either on metal or dielectric substrates. The combination of thin films of either solids or liquids on surfaces can result in complex spectra that contain attributes of both the film material and substrate. In the complex index of refraction, the real part describes the material’s reflectance and refraction properties, and the imaginary part describes the attenuation of light within the medium.18 In the infrared, these properties are associated with the spectroscopic rotational–vibrational features that are useful in identifying materials such as organic gases or liquids, especially within the molecular fingerprint region spanning 5.5 to . Once the complex index of refraction is found, the bulk reflectance from the first surface of the material can be calculated using the Fresnel equations.18 Since liquids as well as most solid deposits will only rarely be seen in pure bulk form, one is more likely to see the influence of the substrate combined with that of the liquid or solid, and this composite signature may not necessarily strongly resemble either signature. However, using the complex index of refraction for both the material and substrate, reflectance spectra can be calculated and eventually matched to acquired endmember data with a good degree of confidence. In the following, the methods used to model various liquid and solid thin films are described, along with assumptions about the liquid, solid, and substrate. Finally, modeling results of selected liquids and solids on metal and dielectric substrates are presented, including rough (scattering) metallic substrates. 2.Experimental MethodsThe theoretical calculations presented here are all based on using and vectors to perform the calculations, and in most cases the calculated spectra are compared to experimental directional-hemispherical reflectance spectra recorded using an integrating sphere coupled to a Fourier transform infrared spectrometer. The and vectors that are used in the models described here were obtained from the PNNL database of optical constants.8,19,20 This database consists of a set of spectra for a rather large collection of liquids of different chemical varieties: organics, inorganics, polar, nonpolar viscous, etc. The liquids data8 were derived using improved methods originally developed by Bertie et al.,21,22 whereby a series of absorption spectra are recorded from liquid cells of fixed path lengths, and the scalar refractive index is also measured using an Abbe refractometer. The Kramers–Kronig transform uses these data to iteratively generate the vectors. The PNNL data set also consists of a set of data for solids, data which are, in general, much more difficult to obtain; most of the experimental details of the methods to obtain the data for the solid samples have been previously reported as obtained by any of three methods: single-angle reflectance spectroscopy,23,24 ellipsometry,25,26 or a more economical method,27 whereby the values are obtained from the absorbance data of KBr pellets prepared using quantitative gravimetric analysis. In the KBr pellet method, the values are calculated from by Kramers–Kronig transformation along with an approximated scalar value of at the high wavenumber limit of . Both liquid and solid thin films are examined in this paper. To obtain the experimentally-derived results, it was necessary to record the directional–hemispherical reflectance spectra.28 The measured total hemispherical reflectance (diffuse + specular) is reported in many of the following examples. These data were recorded using a 75-mm sphere with a nominally matte gold interior surface (Bruker A 562) and a Fourier-transform infrared (FTIR) spectrometer. The FTIR (typically either a Bruker Tensor 37 or Matrix IR cube) was used with the infrared beam coupled to the inlet port of the sphere.28 Both FTIRs were operated in the mid-IR using a SiC source, KBr beamsplitter, and an HgCdTe detector with a spectral resolution of . The thin layer solid samples for the reference measurements were provided and prepared by the Johns Hopkins University Applied Physics Laboratory (APL). Soda lime glass substrates were used without any surface modification, but roughened aluminum substrates were prepared via grit blasting with 150-mesh SiC. Solid analytes were deposited onto the substrates via robotic airbrushing of the chemicals from solution.29 Final mass loading was controlled through solution concentration and volume of the solution deposited onto the samples and verified by gravimetric analysis. A Keyence VHX-1000 digital microscope was also used to record high-quality photomicrographs of the various samples to examine the uniformity of the layers. Images for the solid samples on glass and polished aluminum are presented but not for samples on roughened aluminum since the surface roughness was too high () compared to the film thickness, making it impossible to yield information regarding the uniformity. For the liquids, spin coating was used to apply thin films to the substrates but attempts to quantify the thickness of the analytes were not successful;30 reference measurements are thus not presented for the liquids. 3.Modeling ApproachIn this paper, a Monte Carlo ray tracing program (TracePro)31 is used to model liquid films on substrates with nonsequential ray tracing using a substrate + thin layer model. The ray-tracing approach treats light incoherently (i.e., phase is not considered), which is not unreasonable for real-world data acquisition. TracePro, which can assign both material as well as surface properties of the substrate, can extend modeling into a regime where scattered light is detected from a surface using either bidirectional reflectance distribution function (BRDF) models or measured scattering data. However, scattering was not considered in any of the modeling results presented in this paper. An additional consideration is that a ray-tracing approach such as that used in this study has the ability to create more complex spatial models in which thin films with voids or droplet models can be considered, as well as homogeneous but nonuniform thickness of thin layers. It is worth noting that traditional thin film modeling methods, such as the transfer matrix method (TMM),32 have the ability to model basic systems by providing an exact solution to Maxwell’s equations. However, TMM models require assumptions such as an infinite substrate, and homogeneous, parallel film layers; TMM cannot address scattering from very rough surfaces or model films with voids or droplets nor analyze nonuniformly thick layers, which TracePro® can. We plan to pursue such studies in the future. The liquids examined include no. 2 diesel fuel and silicone oil. Substrates considered include aluminum and soda lime glass. These provide a small subset of organic liquids and substrates to illustrate the challenges of detecting thin absorbing layers of liquids on either metallic or dielectric surfaces. In addition, thin layers of solid materials are also considered for which and values have been derived using the KBr pellet method.27 In the case of the solids, these materials are applied to aluminum and glass substrates with known areal density (and hence, known film thickness) in order to validate the modeling approach, or in some cases, show where there are challenges in practice and more research is needed. 4.Reflectance of Liquid Films on Substrates4.1.SubstratesBoth aluminum33 and soda lime glass34 substrates are considered for these modeling efforts. Figure 1 plots the complex index of refraction for both substrates. In comparison to aluminum, significant variation in and for soda lime glass is evident throughout the wavelength region of interest. All reflectance plots shown in this paper are calculated with unpolarized illumination at and light collected at the specular angle of . Once a researcher has access to the complex index of refraction, reflectance data can be calculated; Fig. 2 displays the first surface or bulk reflection plots for both aluminum and soda lime glass. Aluminum displays the high reflectance common to most metals and is relatively featureless spectroscopically, while soda lime glass exhibits relatively low reflectance except for the peak around due to the Si–O antisymmetric stretch. 4.2.Liquid Layers on Metal SubstrateNext, the addition of liquid layers is examined on the aluminum and soda lime glass substrates. The two liquids considered are silicone oil and no. 2 diesel fuel, whose complex index of refraction plots20 are shown in Fig. 3. The strongest feature for silicone oil occurs at with a peak -value of 0.9 and is due to the Si–C stretch. Weaker -values are observed for no. 2 diesel fuel in which the strongest features occur in the C–H stretching region with a smaller peak -value of at . Using the and values shown in Fig. 3, first surface or bulk reflectance values are computed for infinitely thick layers of silicone oil and no. 2 diesel fuel. The reflectance values are shown in Fig. 4. The bulk spectra resemble the real part of the refractive index since the illumination is completely attenuated by the liquid and the substrate has no influence on the spectral response. When thin films of silicone oil having layer thicknesses of 1 and , respectively, are layered atop an aluminum substrate, the transflectance plots shown in Fig. 5 are determined. It is worthy to note the marked difference in the two spectra: for the thin layer, the spectrum resembles a double-pass absorption spectrum with near Beer–Lambert behavior, whereas for the thicker layer, as the film layer increases, those portions of the modeled response in the longwave infrared (LWIR) saturate, and only first surface reflections from the film layer are detected; these regions slightly resemble bulk reflectance of silicone oil [cf. Fig. 4(a)]. For the case of the layer, distinguishable absorption features appear in the reflectance data, but due to the transflectance behavior of the highly reflecting substrate, the response resembles neither the first surface nor the bulk reflectance of silicone oil. As the layer increases to , portions of the transflectance plot saturate. Namely, in the LWIR where the values are large due to allowed fundamental vibrational transitions, some of the incident light does not reach the aluminum substrate, revealing portions of the spectrum that consequently display only the first surface reflectance of silicone oil. By knowing the complex index of refraction of both the substrate and liquid layers, one can recreate the liquid layer–substrate system and estimate the thickness of the liquid layer. To make identification easier, the data in Fig. 5 suggest that instead of searching in the LWIR where the strongest signatures reside, it may be more advantageous to look for data signatures in the shortwave infrared (SWIR), for example, where greater spectral contrast is observed. Figure 6 shows modeled reflectance spectra for no. 2 diesel fuel for both 1 and layer thicknesses, with results similar to those shown for silicone oil, but with less pronounced effects as its values are nearly an order of magnitude smaller than those of silicone oil. The spectra of the two layers as well as the bulk spectrum are still quite different, presenting a challenge for material identification if only the spectrum for the bulk liquid were included in the spectral library. By having the complex index of refraction along with modeling methods, one can investigate optimal regions for detection as well as avoid regions where complete saturation is observed that would confound identification. 4.3.Liquid Layer on Dielectric SubstrateIn this section, the behavior of thin liquid layers on dielectric substrates is examined. Unlike the aluminum substrate, which has high reflectance and no substantial spectral features, the dielectric medium considered here, soda lime glass, has significant spectral features in the same spectral domain as those of the liquids under study. This results in both different and more complex behavior than that of the liquid–metal systems for which modeling the substrate + layer system using and values is well suited. Figure 7 shows the reflectances modeled for 1 and layers of silicone oil on a soda lime glass substrate. For both the 1- and layer plots shown in Fig. 7, the reflectance features of silicone oil dominate, but for the thin layer example, these features are interloped by features of the soda lime glass. At layer thickness, however, essentially only the bulk reflectance of silicone oil is observed [cf. Fig. 4(a)]. In a similar fashion, the reflectance of no. 2 diesel fuel, which has smaller values compared to silicone oil, is explored for 1- and layer thicknesses on soda lime glass, and the results are shown in Fig. 8. In contrast to what was seen for silicone oil, for diesel oil with its smaller values, the soda lime glass reflectance features essentially dominate with minimal signature of diesel oil in the case. As the layer thickness is increased to , the structured diesel fuel features begin to become evident on top of the soda lime glass reflectance. The features of the soda lime glass, however, are still evident for this thicker layer due to the weaker values of diesel fuel in contrast to silicone oil [vis-à-vis Fig. 7(b)]. 5.Reflectance of Solid Films on SubstratesFor the case of solid films, samples were provided by APL in which the analytes were deposited on both polished and roughened aluminum substrates as well as soda lime glass.29 For the materials considered here, the areal density was known at the time of deposition, and with this knowledge together with known volume densities, the thickness of the film layer was calculated and used as input for the model. The substrate characteristics were shown in Sec. 4.1 and will not be revisited. However, micrographs of the samples were recorded with an optical microscope to examine the uniformity of the layers. The two solids that were modeled include caffeine and acetaminophen. Figure 9 shows the real () and imaginary components () of the complex index of refraction for these two analytes over the wavelength range of interest. These data were derived from the KBr pellet method.27 5.1.Caffeine on AluminumFor the first example, a thin film of caffeine having an areal density of was applied to polished aluminum. The model requires the physical thickness of the film, which is determined using the volume density35 of the material and solving for the thickness. In Fig. 10, the thin film model reflectance results are compared to experimental measurements of the caffeine film having an areal density of . Good agreement is observed between measured and modeled thin film reflectance when the film thickness is set to 719 nm. Similar results (not shown) were also achieved for a caffeine film prepared with an areal density of and modeled with a film thickness of . The good agreement is indicative of homogeneous deposition of caffeine across the entire substrate without any significant clumping or blank regions as verified by the micrograph image [see Fig. 10(b)], which indicates fairly uniform coverage. As was true for the liquid layer cases, transflectance behavior is seen, but in this case, the layers for the solids were neither thick enough nor so absorptive to cause saturation. For the liquids, saturation was not observed for the thinner layers, which is similar to the thicknesses for the solid films presented in this section. Additional samples were created and applied in various areal densities to a roughened aluminum substrate created by sandblasting with 150 mesh of SiC grit. The measured reflectance is shown in Fig. 11 for the case of an areal density of caffeine (a film thickness of 865 nm) on the roughened aluminum substrate compared with the modeled reflectance using the polished aluminum substrate model. The evident wavelength dependence of the reflectance of roughened aluminum (as a substrate) is seen in Fig. 11; it may be due to the surface roughness having an rms roughness of .30 Two features are of note: (i) there is a wavelength dependence to the reflectance of the roughened aluminum substrate and (ii) there is an offset between the reflectance of the bare substrate and that of the roughened substrate coated with caffeine. The additional reflective losses arise from the first and second surface reflective losses from the caffeine layer. In addition, the transflectance modulation depth is lower for the areal density than one would obtain using a polished substrate. This may be caused by the reduced reflectance of the aluminum substrate due its roughness, and hence, reduced transflectance. To compare the modeled and measured data, the measured data had its continuum removed,36 and the continuum-removed data are compared to the normalized modeled data in Fig. 11. Ideally, one would consider the spectroscopic BRDF of the substrate, but this information was not available, thus the continuum removal method was applied to permit comparison of the modeled and experimental data on a common baseline. In general, the modeled data show greater reflectance magnitude when compared to the measured spectra for this example. Agreement is good across much of the spectrum, although the modeled values slightly overestimate reflectance in general. 5.2.Acetaminophen on AluminumA second solid material examined was acetaminophen with a density35 of . It was also applied to both aluminum and glass substrates with various areal density loadings that were then measured in reflection mode, similar to the methods for caffeine. The first example of acetaminophen on polished aluminum with an areal density is shown below (636-nm film thickness). The discrepancy between the experimental and modeled values is stark, which is not surprising upon examining the micrograph of the coated surface in Fig. 12(b). The large discrepancy between the model and experimental data can be explained by the poor homogeneity of the film that exhibits large patches of uncoated aluminum, which skew the measured reflectance data. To demonstrate that this “patchy” nature of the coating is the cause of the discrepancy, the above image was made binary and the black pixels counted in order to estimate coverage of the acetaminophen on the aluminum substrate. When compared to the original image, only 30% of the pixels were coated. Therefore, a cylindrical thin film layer was created in the model having an appropriate thickness of 636 nm, but having a radius that covered an area of only 30% of the illumination beam’s footprint. The results in Fig. 13 show the binarized image along with the new model results compared with the experimental data, exhibiting good agreement between the two cases except for the offset. This offset or reduced reflection from the measured sample arises from scattering from the sample. As a final example of coating on a metal, a solid thin film of acetaminophen with an areal density of was coated onto polished aluminum; it is modeled and compared to experimentally measured data in Fig. 14. As is evident in the image of the film and the experimental reflectance plot, the occurrence of voids decreases the transflectance behavior of the film when compared to an ideal case of a uniform film of (corresponding to an areal density of ). Similar to the case shown in Fig. 13, the image of the film was analyzed and coverage or packing density was estimated at , and a uniform film having an area 45% of the illumination beam footprint was modeled and compared again to the measured reflectance. The final result shown in Fig. 15 shows good agreement between the experimental measurement of reflectance and model when the reduced fill-factor thin film approach is used. 5.3.Acetaminophen on GlassAs seen in the earlier results for liquids, spectra rapidly become more complex when the substrate also has substantial spectral features within the wavelength range of the measurement. In addition to depositing on aluminum, acetaminophen was also deposited on glass substrates, whose spectra have several spectral features. One such example is shown in Fig. 16 of acetaminophen with an areal density of ( thickness) on soda lime glass modeled and compared with experimental results. The agreement between the modeled thin film reflectance with experimental measurement is reasonable, except for a slight baseline offset. (Prior measurements determined that a portion of the baseline offset, ca. , in the measured spectrum is due to the transparency of the substrate such that light is reflected off the Delrin sample holder and detected.) As was true for earlier results of liquid thin films on glass, the spectral features of the soda lime glass dominate and are modulated by those of the analyte acetaminophen. The rough texture of the film on the glass substrate does not seem to have the same negative effect as the aluminum substrate shown in Fig. 12, perhaps because there is less contrast in the reflectance of the analyte compared to the substrate material. Also, with reference to the image in Fig. 16, although the film is patchy, no voids reaching the substrate are apparent. 6.Summary and ConclusionsThin films of liquids or solids on various substrates present challenges to spectral identification owing to the contribution of the substrate’s spectral signature combining in a nonlinear fashion with those of the thin films. Historical approaches to spectral endmember identification for either contact or standoff infrared detection10,17 relied on the application of various algorithms that first removed the spectral effects due to interfering species and then compared the unknown species with library spectra, typically of bulk solids or gases. In the case of thin films, bulk endmember spectra are seldom encountered, and the complex spectra of the thin film/substrate systems require new methods for identification. The availability of the complex index of refraction data in combination with methods such as those described here offers (at the least) a more facile method to compute the reflectance spectra for the bulk material via Fresnel equations, as well as the option to iteratively compute potential spectra of film + substrate systems for multiple candidate materials, including substrates. Here, we have made initial attempts at modeling these more complex systems with an ultimate goal of synthetically populating all the members of a spectral library using spectra calculated from the Fresnel equations and the associated values versus linear combinations of the two endmembers, namely the pure substrate and the bulk (surface) analyte. Two major classes of thin films were explored: liquids and solids, on both aluminum and glass substrates. Two distinctly different responses were seen in the case of the transflectance that arises from metallic substrates, and the more complex response of thin film materials on soda lime glass substrates. For the case of the solid thin films for which film areal densities were known and experimental reflectance data were available, model results showed good agreement with measured spectra for uniformly covered substrates. Those films for which homogeneous coverage was not achieved showed a marked deviation from model results that assumed even coverage. However, by analyzing images of the films and estimating the fill factor, a lumped model in which the percent coverage was used to postulate a uniform film that incompletely covered the area probed by the model’s illumination beam, good agreement could be demonstrated between model and experimental results. In the case of rough metallic substrates, reasonable agreement between modeled and experimental results was shown when the experimental data had its continuum removed so that it could be compared with the ideal modeled results on a common baseline. Clearly, more work is needed for the treatment of scattering surfaces, but even with good BRDF models, the roughness of the substrates used here was such that it entered the bulk scattering regime, which would be challenging to model without foreknowledge of the substrate. The modeled results for liquids also highlighted that for thicker layers ( to ), the LWIR features are often saturated and display the bulk reflectance in those regions for analytes with moderate to strong values. Better spectral contrast is obtained from the overtone and/or combination bands in the SWIR. The methods reported here along with the complex index of refraction data thus enable the possibility to optimize detection systems such as spectral range based on the expected analyte, layer thickness, substrate, etc. In conclusion, the use of the complex index of refraction for materials including substrates promises new possibilities for spectroscopic feature extraction, especially for the case of thin films that might be encountered in environmental or defense applications such as the detection of chemical agents or their precursors, or possibly civilian oversight of industrial processes and the detection of toxic industrial chemicals. AcknowledgmentsThe research was based upon work supported in part by the Office of the Director of National Intelligence (ODNI), Intelligence Advanced Research Projects Activity (IARPA), via DOE DE-AC05-76RL01830. The views and conclusions contained herein are those of the authors and should not be interpreted as necessarily representing the official policies or endorsements, either expressed or implied, of the ODNI, IARPA, DRDC, or the U.S. Government. The U.S. Government is authorized to reproduce and distribute reprints for governmental purposes notwithstanding any copyright annotation thereon. Pacific Northwest National Laboratory is operated for the Department of Energy by Battelle Memorial Institute under Contract No. DE-AC05-76RL01830. PNNL wishes to acknowledge scientists from John Hopkins University – Applied Physics Laboratory, including Drs. Leslie Hamilton and Natasha Zimmerman for providing the air-brushed solid samples used for model validation. ReferencesT. J. Johnson et al.,
“Absolute integrated intensities of vapor-phase hydrogen peroxide () in the mid-infrared at atmospheric pressure,”
Anal. Bioanal. Chem., 395 377
–386
(2009). https://doi.org/10.1007/s00216-009-2805-x ABCNBP 1618-2642 Google Scholar
T. J. Johnson et al.,
“Quantitative IR spectrum and vibrational assignments for glycolaldehyde vapor: glycolaldehyde measurements in biomass burning plumes,”
J. Phys. Chem. A, 117
(20), 4096
–4107
(2013). https://doi.org/10.1021/jp311945p JPCAFH 1089-5639 Google Scholar
M. C. Phillips et al.,
“Real-time trace gas sensing of fluorocarbons using a swept-wavelength external cavity quantum cascade laser,”
Analyst, 139
(9), 2047
–2056
(2014). https://doi.org/10.1039/c3an01642k ANLYAG 0365-4885 Google Scholar
T. Burr and N. Hengartner,
“Overview of physical models and statistical approaches for weak gaseous plume detection using passive infrared hyperspectral imagery,”
Sensors, 6
(12), 1721
–1750
(2006). https://doi.org/10.3390/s6121721 SNSRES 0746-9462 Google Scholar
T. A. Blake et al.,
“Passive standoff detection of RDX residues on metal surfaces via infrared hyperspectral imaging,”
Anal. Bioanal. Chem., 395 337
–348
(2009). https://doi.org/10.1007/s00216-009-2907-5 ABCNBP 1618-2642 Google Scholar
T. N. Beiswenger et al.,
“Identification of uranium minerals in natural U-bearing rocks via infrared reflectance spectroscopy,”
Appl. Spectrosc., 72 209
–224
(2017). https://doi.org/10.1177/0003702817743265 APSPA4 0003-7028 Google Scholar
T. L. Myers et al.,
“Hyperspectral imaging of minerals in the longwave infrared: the use of laboratory directional-hemispherical reference measurements for field exploration data,”
J. Appl. Remote Sens., 13 034527
(2019). https://doi.org/10.1117/1.JRS.13.034527 Google Scholar
T. L. Myers et al.,
“Accurate measurement of the optical constants n and k for a series of 57 inorganic and organic liquids for optical modeling and detection,”
Appl. Spectrosc., 72
(4), 535
–550
(2018). https://doi.org/10.1177/0003702817742848 APSPA4 0003-7028 Google Scholar
A. K. Goyal et al.,
“Active infrared multispectral imaging of chemicals on surfaces,”
Proc. SPIE, 8018 80180N
(2011). https://doi.org/10.1117/12.882698 PSISDG 0277-786X Google Scholar
M. T. Eismann, Hyperspectral Remote Sensing, 458 SPIE Press, Bellingham, Washington DC
(2012). Google Scholar
J. Theiler et al.,
“Spectral variability of remotely sensed target materials: causes, models, and strategies for mitigation and robust exploitation,”
IEEE Geosci. Remote Sens. Mag., 7
(2), 8
–30
(2019). https://doi.org/10.1109/MGRS.2019.2890997 Google Scholar
B. E. Bernacki et al.,
“Modeling liquid organic thin films on substrates,”
Proc. SPIE, 10629 1062916
(2018). https://doi.org/10.1117/12.2299873 PSISDG 0277-786X Google Scholar
C. J. Breshike et al.,
“Infrared backscatter imaging spectroscopy of trace analytes at standoff,”
J. Appl. Phys., 125 104901
(2019). https://doi.org/10.1063/1.5079622 JAPIAU 0021-8979 Google Scholar
B. M. DeVetter et al.,
“Optical and chemical characterization of uranium dioxide () and uraninite mineral: calculation of the fundamental optical constants,”
J. Phys. Chem. A, 122 7062
–7070
(2018). https://doi.org/10.1021/acs.jpca.8b05943 JPCAFH 1089-5639 Google Scholar
T. L. Myers et al.,
“Quantitative reflectance spectra of solid powders as a function of particle size,”
Appl. Opt., 54
(15), 4863
–4875
(2015). https://doi.org/10.1364/AO.54.004863 APOPAI 0003-6935 Google Scholar
J. E. Moersch and P. R. Christensen,
“Thermal emission from particulate surfaces: a comparison of scattering models with measured spectra,”
J. Geophys. Res., 100
(E4), 7465
–7477
(1995). https://doi.org/10.1029/94JE03330 JGREA2 0148-0227 Google Scholar
G. Raz et al.,
“Novel trace chemical detection algorithms: a comparative study,”
Proc. SPIE, 10198 101980D
(2017). https://doi.org/10.1117/12.2258429 PSISDG 0277-786X Google Scholar
M. Born and E. Wolf, Principles of Optics, 40
–41 6th ed.Pergamon Press, Oxford
(1986). Google Scholar
T. L. Myers et al.,
“Accurate optical constants for liquids in the near-infrared: improved methods for obtaining the n and k constants from 1 to ,”
Proc. SPIE, 11010 110100O
(2019). https://doi.org/10.1117/12.2519499 PSISDG 0277-786X Google Scholar
T. L. Myers et al.,
“IARPA/PNNL liquid phase IR spectra,”
(2018) https://webbook.nist.gov/chemistry/silmarils-liquids-n-k/ Google Scholar
J. E. Bertie,
“Quantitative infrared intensities of neat liquids: their measurement and use,”
Microchim. Acta Suppl., 47 15
–22
(1997). https://doi.org/10.1007/978-3-7091-6840-0_3 Google Scholar
J. E. Bertie et al.,
“Infrared intensities of liquids XI: infrared refractive indices from 8000 to , absolute integrated intensities, and dipole moment derivatives of methanol at 25°C,”
Appl. Spectrosc., 47 1100
–1114
(1993). https://doi.org/10.1366/0003702934067973 APSPA4 0003-7028 Google Scholar
B. M. DeVetter et al.,
“Single-angle reflectance spectroscopy to determine the optical constants n and k: considerations in the far-infrared domain,”
Appl. Opt., 57
(22), 6587
–6597
(2018). https://doi.org/10.1364/AO.57.006587 APOPAI 0003-6935 Google Scholar
M. R. K. Kelly-Gorham et al.,
“Complex refractive index measurements for and via single-angle infrared reflectance spectroscopy,”
Opt. Mater., 72 743
–748
(2017). https://doi.org/10.1016/j.optmat.2017.06.052 OMATET 0925-3467 Google Scholar
T. A. Blake et al.,
“Measurement of the infrared optical constants for spectral modeling: n and k values for via single-angle reflectance and ellipsometric methods,”
Proc. SPIE, 10198 101980J
(2017). https://doi.org/10.1117/12.2264501 PSISDG 0277-786X Google Scholar
H. Fujiwara, Spectroscopic Ellipsometry: Principles and Applications, John Wiley and Sons, San Francisco, California
(2007). Google Scholar
T. L. Myers et al.,
“Obtaining the complex optical constants and via quantitative absorption measurements in KBr pellets,”
Proc. SPIE, 11010 110100M
(2019). https://doi.org/10.1117/12.2519503 PSISDG 0277-786X Google Scholar
T. A. Blake et al.,
“Methods for quantitative infrared directional-hemispherical and diffuse reflectance measurements using an FTIR and a commercial integrating sphere,”
Appl. Opt., 57
(3), 432
–446
(2018). https://doi.org/10.1364/AO.57.000432 APOPAI 0003-6935 Google Scholar
K. Dewitt,
“Advances in active infrared spectroscopy for trace chemical detection,”
Proc. SPIE, 10986 109860J
(2019). https://doi.org/10.1117/12.2516198 PSISDG 0277-786X Google Scholar
T. L. Myers et al.,
“Accurate measurement of the optical constants for organic and organophosphorous liquid layers and drops,”
Proc. SPIE, 10629 1062912
(2018). https://doi.org/10.1117/12.2300777 PSISDG 0277-786X Google Scholar
Lambda Research Corporation, “TracePro,”
(2020) http://www.lambdares.com/tracepro Google Scholar
A. Macleod, Thin-Film Optical Filters, 3rd ed.Institute of Physics, Bristol
(2001). Google Scholar
D. Rakić,
“Algorithm for the determination of intrinsic optical constants of metal films: application to aluminum,”
Appl. Opt., 34 4755
–4767
(1995). https://doi.org/10.1364/AO.34.004755 APOPAI 0003-6935 Google Scholar
M. Rubin,
“Optical properties of soda lime glasses,”
Sol. Energy Mater., 12
(4), 275
–288
(1985). https://doi.org/10.1016/0165-1633(85)90052-8 SOEMDH 0165-1633 Google Scholar
“Physical constants of organic compounds,”
CRC Handbook of Chemistry and Physics, CRC Press, Boca Raton, Florida
(20052005). http://www.hbcpnetbase.com Google Scholar
R. N. Clark and T. L. Roush,
“Reflectance spectroscopy: quantitative analysis techniques for remote sensing applications,”
J. Geophys. Res., 89
(B7), 6329
–6340
(1984). https://doi.org/10.1029/JB089iB07p06329 JGREA2 0148-0227 Google Scholar
BiographyBruce E. Bernacki received his PhD in optical sciences from the University of Arizona. Prior to joining Pacific Northwest National Laboratory, he spent nearly 5 years as a vice president of New Product Development and CTO at LightPath Technologies, in Orlando, FL. His experience includes optical design, modeling, optical data storage, and optical component manufacturing. He has received two R&D 100 awards in 2014 and 2017 for his inventions. Timothy J. Johnson is a cum laude graduate of Carleton College and received his PhD in chemical physics from Washington State University in 1987. He is currently a senior scientist at PNNL and has extensive experience with spectroscopic signatures, including contributions to the PNNL gas-phase database and other high fidelity spectroscopic signature efforts including for solids and liquids. He has led efforts for better quantitation using visible and infrared reflectance, as well as Raman spectroscopy. He is a member of the SPIE, Optical Society of America, and a recent corecipient of the Meggars Award. Tanya L. Myers is a senior research scientist at PNNL. She received her BS degree in chemistry from the University of North Carolina at Chapel Hill in 1992 and her PhD in chemistry from the University of Chicago in 1997. From 1997 to 1999, she was a National Research Council Postdoctoral fellow at the National Institute of Standards and Technology in Boulder, CO. Her current research interests include high-resolution infrared spectroscopy and quantitative measurement of the optical constants for stand-off detection of solids and liquids. She is a member of SPIE, Optical Society of America, and Phi Beta Kappa. |