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Using GPS Multipath for Snow-Depth Estimation By Felipe G. Nievinski and Kristine M. Larson INNOVATION INSIGHTS by Richard Langley FRINGES. No, I’m not talking about the latest celebrity hairstyles nor the canopy of an American doorless, four-wheeled carriage from yesteryear (think Oklahoma!). I’m talking about interference fringes. But there is a connection to these other uses of the word fringe as we’ll see. You’ve all seen interference fringes at your local gas station, typically after it has just rained. They are the alternating bands of color we perceive when looking at a gasoline or oil slick in a puddle of water. They are caused by the white light from the Sun or artificial lighting reflected from the top surface of the slick and that from the bottom surface at the slick-water interface combining or interfering with each other at our eyeballs. The two sets of light waves arrive slightly out of phase with each other, and depending on the wavelengths of the reflected light and our angle of view, produce the colorful fringes. If the incident light was monochromatic, consisting of a single frequency or wavelength, then we would perceive just alternating bright and dark bands. The bright bands result from constructive interference when the phase difference is a near a multiple of 2π whereas the dark bands result from destructive interference when the difference is near an odd multiple of π. Interference fringes had been seen long before the invention of the automobile. They are clearly seen on soap bubbles and the iridescent colors of peacock feathers, Morpho butterflies, and jewel beetles are also due to the interference phenomenon rather than pigmentation. Sir Isaac Newton did experiments on interference fringes (amongst other things) and tried to explain their existence — wrongly, it turned out. But he did coin the term fringes since they resembled the decorative fringe sometimes used on clothing, drapery, and, yes, surrey canopies. It was the English polymath, Thomas Young, who, in 1801, first demonstrated interference as a consequence of the wave-nature of light with his famous double-slit experiment. You may have replicated his experiment in a high-school physics class. I did and I think I did it again as an undergraduate student taking a course in optics. Already by that point I was aiming for a career in physics or space science but I didn’t know that as a graduate student I would do research involving interference fringes. But not using light waves. My research involved the application of very long baseline interferometry or VLBI to geodesy. VLBI had been developed by radio astronomers to better understand the structure of quasars and other esoteric celestial objects. At either ends of a baseline connecting large radio telescopes, perhaps stretching between continents, the quasar signals were recorded on magnetic tape and precisely registered using atomic clocks. When the tapes were played back and the signals aligned, one obtained interference fringes as peaks and troughs in an analog or digital waveform. Computer analysis of these fringes not only provided information on the structure of the observed radio source but also on the distance between the radio telescopes — eventually accurate enough to measure continental drift.  But what has all of this got to do with GPS? In this month’s column, we look at a technique that uses fringes generated by signals arriving at an antenna directly from GPS satellites and those reflected by snow surrounding the antenna to measure its depth and how it varies over time. GPS for measuring snow depth; who would have thought? “Innovation” is a regular feature that discusses advances in GPS technology and its applications as well as the fundamentals of GPS positioning. The column is coordinated by Richard Langley of the Department of Geodesy and Geomatics Engineering, University of New Brunswick. He welcomes comments and topic ideas. Snowpacks are a vital resource for human existence on our planet. They provide reservoirs of fresh water, storing solid precipitation and delaying runoff. One sixth of the world population depends on this resource. Both scientists and water-supply managers need to know how much fresh water is stored in snowpack and how fast it is being released as a result of melting. Snow monitoring from space is currently under investigation by both NASA and ESA. Greatly complementary to such spaceborne sensors are automated ground-based methods; the latter not only serve as essential independent validation and calibration for the former, but are also valuable for climate studies and flood/drought monitoring on their own. It is desirable for such estimates to be provided at an intermediary scale, between point-like in situ samples and wider area pixels. In the last decade, GPS multipath reflectometry (GPS-MR), also known as GPS interferometric reflectometry and GPS interference-pattern technique, has been proposed for monitoring snow. This method tracks direct GPS signals, those that travel directly to an antenna, that have interfered with a coherently reflected signal, turning the GPS unit into an interferometer (see FIGURE 1). Its main variant is based on signal-to-noise ratio (SNR) measurements, although GPS-MR is also possible with carrier-phase and pseudorange observables. Data are collected at existing GPS base stations that employ commercial-off-the-shelf receivers and antennas in a conventional, antenna-upright setup. Other researchers have used a custom antenna and/or a dedicated setup, with the antenna tipped for enhanced multipath reception. FIGURE 1. Standard geodetic receiver installation. The antenna is protected by a hemispherical radome. The monument (tripod structure) is ~ 2 meters above the ground. GPS satellites rise and set in ascending and descending sky tracks, multiple times per day. The specular reflection point migrates radially away from the receiver for decreasing satellite elevation angle. The total reflector height is made up of an a priori value and an unknown bias driven by the thickness of the snow layer. In this article, we summarize the SNR-based GPS-MR technique as applied to snow sensing using geodetic instruments. This forward/inverse approach for GPS-MR is new in that it capitalizes on known information about the antenna response and the physics of surface scattering to aid in retrieving the unknown snow conditions in the site surroundings. It is a statistically rigorous retrieval algorithm, agreeing to first order with the simpler original methodology, which is retained here for the inversion bootstrapping. The first part of the article describes the retrieval algorithm, while the second part provides validation at a representative site over an extended period of time.  Physical Forward Model SNR observations are formulated as SNR = Ps/Pn. In the denominator, we have the noise power, Pn, here taken as a constant, based on nominal values for the noise power spectral density and the noise bandwidth. The numerator is composite signal power: .   (1) Its incoherent component is the sum of the respective direct and reflected powers (although direct incoherent power is negligible). In contrast, the coherent composite signal power follows from the complex sum of direct and reflection average voltages (not to be confused with the electromagnetic propagating fields, which neglect the receiving antenna response and also the receiver tracking process): (2) It is expressed in terms of the coherent direct and reflected powers, as well as the interferometric phase,  , (3) which amounts to the reflection excess phase with respect to the direct signal. We decompose observations, SNR = tSNR + dSNR, into a trend   (4) over which interference fringes are superimposed: . (5)  From now on, we neglect the incoherent power, which only impacts tSNR, not dSNR, and drop the coherent power superscript, for brevity. The direct or line-of-sight power is formulated as   (6) where    is the direction-dependent right-hand circularly polarized (RHCP) power component incident on an isotropic antenna; the left-handed circularly polarized (LHCP) component is negligible. The direct antenna gain, , is obtained evaluating the antenna pattern in the satellite direction and with RHCP polarization. The reflection power, , (7) is defined starting with the same incident isotropic power, , as in the direct power. It ends with a coherent power attenuation factor,    (8) where  θ  is the angle of incidence (with respect to the surface normal), k = 2π/λ, is the wave number, and λ = 24.4 centimeters is the carrier wavelength for the civilian GPS signal on the L2 frequency (L2C). This polarization-independent factor accounts only for small-scale residual height above and below a large-scale trend surface. The former/latter results from high-/low-pass filtering the actual surface heights using the first Fresnel zone as a convolution kernel, roughly speaking. Small-scale roughness is parameterized in terms of an effective surface standard deviation s (in meters); its scattering response is modeled based on the theories of random surfaces, except that the theoretical ensemble average is replaced by a sensing spatial average. Large-scale deterministic undulations could be modeled, but their impact on snow depth is canceled to first-order by removing bare-ground reflector heights. At the core of , we have coupled surface/antenna reflection coefficients,  , producing respectively RHCP and LHCP fields (under the assumption of a RHCP incident field). These terms include antenna response power gain and phase patterns, evaluated in the reflection direction, and separately for each polarization. The surface response is represented by complex-valued Fresnel coefficients for cross- and same-sense circular polarization, respectively. The medium is assumed to be homogeneous (that is, a semi-infinite half-space). Material models provide the complex permittivity, which drives the Fresnel coefficients. The interferometric phase reads: .(9) The first term accounts for the surface and antenna properties of the reflection, as above. The last one is the direct phase contribution, which amounts to only the RHCP antenna phase-center variation evaluated in the satellite direction. The majority of the components present in the direct RHCP phase (such as receiver and satellite clock states, the bulk of atmospheric propagation delays, and so on) are also present in the reflection phase, so they cancel out in forming the difference. At the core of the interferometric phase, we have the geometric component, φI = kτi, the product of the wave number and the interferometric propagation delay. Assuming a locally horizontal surface, the latter is simply:   (10) in terms of the satellite elevation angle, e, and an a priori reflector height, HA. Snow depth will be measured in terms of changes in reflector height. The physical forward model, based only on a priori information, can then be summarized as:   (11) where interferometric power and phase are, respectively:   (12) . (13) In all of these terms the pseudorandom-noise-code modulation impressed on the carrier wave can be safely neglected, given the small interferometric delay and Doppler shift at grazing incidence, stationary surface/receiver conditions, and short antenna installations. Parameterization of Unknowns There are errors in the nominal values assumed for the physical parameters of the model (permittivity, surface roughness, reflector height, and so on). Ideally we would estimate separate corrections for each one, but unfortunately many are linearly dependent or nearly so. Because of this dependency, we have kept physical parameters fixed to their optimal a priori values, and have estimated a few biases. Each bias is an amalgamation of corrections for different physical effects. In a later stage, we rely on multiple independent bias estimates (such as for successive days) to try and separate the physical sources. Each satellite track is inverted independently. A track is defined by partitioning the data by individual satellite and then into ascending and descending portions, splitting the period between the satellite’s rise and set at the near-zenith culmination. Each satellite track has a duration of ~1–2 hours. This configuration normally offers a sufficient range of elevation angles, unless the satellite reaches culmination too low in the sky (less than about 20°), in which case the track is discarded. In seeking a balance between under- and over-fitting, between an insufficient and an excessive number of parameters, we estimate the following vector of unknown parameters: . (14) FIGURE 2 shows the effect of the constant and linear biases on the SNR observations. Reflector height bias, HB , changes the number of oscillations; phase shift, φB , displaces the oscillations along the horizontal axis; reflection power,    , affects the depth of fades; zeroth-order noise power,     , shifts the observations up or down as a whole; and first-order noise power,    , tilts the SNR curve. A good parameterization yields observation sensitivity curves as unique as possible for each parameter. FIGURE 2. Effect of each parameter on SNR observations; curves are displaced vertically (6 dB) for clarity. The forward model, now including the biases, can be summarized as follows:  (15) where the modified interferometric power and phase are given by: , (16) . (17) The total reflector height, H = HA – HB (a priori value minus unknown bias), is to be interpreted as an effective value that best fits measurements, which includes snow and other components. Bootstrapping Parameter Priors. Biases and SNR observations are involved non-linearly through the forward model. Therefore, there is the need for a preliminary global optimization, without which the subsequent final local optimization will not necessarily converge to the optimal solution. SNR observations would trace out a perfect sinusoid curve in the case of an antenna with isotropic gain and spherical phase pattern, surrounded by a smooth, horizontal, and infinite surface (free of small-scale roughness, large-scale undulations, and edges), made of perfectly electrically conducting material, and illuminated by constant incident power. Thus, in such an idealized case, SNR could be described exactly by constant reflector height, phase shift, amplitude, and mean values. As the measurement conditions become more complicated, the SNR data start to deviate from a pure sinusoid. Yet a polynomial/spectral decomposition is often adequate for bootstrapping purposes.  Statistical Inverse Model Formulation Based on the preliminary values for the unknown parameters vector and other known (or assumed) values, we run the forward model to obtain simulated observations. We form pre-fit residuals comparing the model values to SNR measurements collected at varying satellite elevation angles (separately for each track). Residuals serve to retrieve parameter corrections, such that the sum of squared post-fit residuals is minimized. This non-linear least squares problem is solved iteratively using both a functional model and a stochastic model. The functional modeling includes a Jacobian matrix of partial derivatives, which represents the sensitivity of observations to parameter changes where the partial derivatives are defined element-wise. Instead of deriving analytical expressions, we evaluate them numerically, via finite differencing. The stochastic model specifies the uncertainty and correlation expected in the residuals. Their a priori covariance matrix modifies the objective function being minimized.  Directional Dependence It is important to know at which elevation angles the parameter estimates are best determined. Here, we focus on the phase parameters instead of reflection power or noise power parameters.  We can utilize the estimated reflector height and phase shift to evaluate the full phase bias function over varying elevation angles. Similarly, we can extract the corresponding 2-by-2 portion of the parameters’ a posteriori covariance matrix, containing the uncertainty for reflector height and for phase shift, as well as their correlation, which is then propagated to obtain the full phase uncertainty (see FIGURE 3). FIGURE 3. Uncertainty of full phase function, propagated from the uncertainty of reflector height and of phase shift, as well as their correlation. The uncertainty attains a clear minimum versus elevation angle. The least-uncertainty elevation angle pinpoints the observation direction where reflector height and phase shift are best determined (in combined form, not individually). The azimuth and epoch coinciding with the peak elevation angle act as track tags, later used for clustering similar tracks and analyzing their time series of retrievals. If we normalize phase uncertainty by its value at the peak elevation angle, then plot such sensing weights (between 0 and 1) versus the radial or horizontal distance to the center of the first Fresnel zone at each elevation angle, we obtain FIGURE 4. It can be interpreted as the reflection footprint, indicating the importance of varying distances, with a longer far tail and a shorter near tail (respectively regions beyond and closer than the peak distance). The implications for in situ data collection are clear: one should sample more intensely near the peak distance (about 15 meters) and less so in the immediate vicinity of the GPS antenna, tapering it off gradually away from the antenna. As a caveat, these conclusions are not necessarily valid for antenna setups other than the one considered here. FIGURE 4. Reflection footprint in terms of a sensing weight (between 0 and 1) defined as the normalized reciprocal of full phase uncertainty, plotted versus the radial or horizontal distance from the receiving antenna to the center of the first Fresnel zone at each elevation angle; valid for an upright 2-meter-tall antenna; the receiving antenna is at zero radial distance. Results We now examine the snow-depth retrievals from the GPS multipath retrieval algorithm and assess both the precision and accuracy of the method. Multiple metrics have been developed to assess the quality of the results. The accuracy of the method has been evaluated by comparing with in situ data over a multi-year period. Three field sites were chosen to highlight different limitations in the method, both in terms of terrain and forest cover: grassland, alpine, and forested. We will look at the forested site in some detail. Satellite Coverage and Track Clustering. All GPS-MR retrievals reported here are based on the newer GPS L2C signal. Of the approximately 30 GPS satellites in service, 8-10 L2C satellites were available between 2009 and 2012 (8, 9, and 10 satellites at the end of 2009, 2010, and 2011, respectively). Satellite observations were partitioned into ascending and descending portions, yielding approximately twenty unique tracks per day at a site with good sky visibility. GPS orbits are highly repeatable in azimuth, with deviations at the few-degree range over a year, translating into ~50-100-centimeter azimuthal displacement of the reflecting area (corresponding to the first Fresnel zone at 10°-15° elevation angle for a 2-meter high antenna). This repeatability permits clustering daily retrievals by azimuth. It also allows the simplification that estimated snow-free reflector heights are fairly consistent from day to day, facilitating the isolation of the varying snow depth during the snow-covered period. For a given track, its revisit time is also repeatable, amounting to practically one sidereal day. The deficit in time relative to a calendar day results in the track time of the day receding ~4 minutes and 6 seconds every day. This slow but steady accumulation eventually makes the time of day return to its starting value after about one year. As all GPS satellites drift approximately at the same rate, the time between successive tracks remains nearly repeatable. Its reciprocal, the sampling rate, has a median equal to approximately one track per hour, with a low value of one track within two hours and a high of one track within 15 minutes; both extremes occur every day, with low-rate idle periods interspersed with high-rate bursts. The time of the day reduced to a fixed day (such as January 1, 2000) could also be used to cluster tracks. Neighboring clusters, which are close in azimuth and/or in reduced time of the day, are expected to be more comparable, as they sample similar conditions and are subject to similar errors. Observations. FIGURE 5 shows several representative examples of SNR observations. A typical good fit between measured and modeled values is shown in Figure 5(a), corresponding to the beginning of the snow season. Generally the model/measurement fit is good when the scattering medium is homogeneous; it deteriorates as the medium becomes more heterogeneous, particularly with mixtures of soil, snow, and vegetation. There are genuine physical effects as well as more mundane spurious instrumental issues that degrade the fit but do not necessarily cause a bias in snow-depth estimates. These include secondary reflections, interferometric power effects, direct power effects, and instrument-related issues. FIGURE 5. Examples of observations: (a) good fit; (b) presence of secondary reflections; (c) vanishing interference fringes; (d) atypical interference fringes. Secondary reflections originate from disjoint surface regions. Interference fringes become convoluted with multiple superimposed beats (see Figure 5(b)). As long as there is a unique dominating reflection, the inversion will have no difficulty fitting it, as the extra reflections will remain approximately zero-mean. Random deviations of the actual surface with respect to its undulated approximation, called roughness or residual surface height, will affect the interferometric power. SNR measurements will exhibit a diminishing number of significant interference fringes, compared to the measurement noise level (see Figure 5(c)). This facilitates the model fit but the reflector height parameter may become ill-determined: its estimates will be more uncertain. Changes in snow density also affect the fringe amplitude. Snow precipitation attenuates the satellite-to-ground radio link, which affects SNR measurements through the direct power term. First, this shifts the SNR measurements up or down (in decibels); second, it tilts the trend tSNR as attenuation is elevation-angle dependent; third, fringes in dSNR will change in amplitude because of the decrease in the coherent component of the direct power. Partial obstructions can affect either or both direct and interferometric powers. In this case, SNR measurements, albeit corrupted, are still recorded. This situation is in contrast to complete blockages as caused by topography. The deposition of snow and the formation of a winter rime on the antenna are a particularly insidious type of obstruction, as their presence in the near-field of the antenna element can easily distort the gain pattern in a significant manner. In the far-field, trees are another important nuisance, so much so that their absence is held as a strong requirement for the proper functioning of multipath reflectometry. Satellite-specific direct power offsets and also long-term power drifts are to be expected as spacecraft age and modernized designs are launched. In addition, noise power depends on the state of conservation of receiver cables and on their physical temperature. Less subtle incidents are sudden ~3-dB SNR steps, hypothesized to originate in the receiver switching between the L2C data and pilot subcodes, CM and CL. Quality Control. Anomalous conditions may result in measurement spikes, jumps, and short-lived rapidly-varying fluctuations. For snow-depth-sensing purposes, it is necessary and sufficient to either neutralize such measurement outliers through a statistically robust fit or detect unreliable fits and discard the problematic ones that could not otherwise be salvaged. The key to quality control (QC) is in grouping results into statistically homogeneous units, having measurements collected under comparable conditions. In our case, azimuth-clustered tracks are the natural starting unit. Secondarily, we must account for genuine temporal variations in the tendency of results, from beginning to peak to the end of the snow season. The detection of anomalous results further requires an estimate of the statistical dispersion to be expected. Considering that the sample is contaminated with outliers, robust estimators (running median instead of the running mean, and median absolute deviation over the standard deviation) are called for, if the first- and second-order statistical moments are to be representative. Given estimates of the non-stationary tendency and dispersion, a tolerance interval can then be constructed such that it bounds, say, a 99% proportion of the valid results with 95% confidence level. We also desire QC to be judicious, or else too many valid estimates will be lost. Notice that in the present intra-cluster QC, we compare an individual estimate to the expected performance of the track cluster to which it belongs; later, we complement QC with an inter-cluster comparison of each cluster’s own expected performance. Based on our practical experience, no single statistic detects all the outliers. We use four particular statistics that we have found to be useful: 1) degrees of freedom, essentially the number of observations per track (modulo a constant number of parameters); 2) using the scaled root-mean-square error (RMSE) to test for goodness-of-fit, that is, how well measurements can be explained adjusting the unknown values for the parameters postulated in the model; 3) reflector height uncertainty; and 4) peak elevation angle, which behaves much like a random variable, as it is determined by a multitude of factors.  Combinations. We combine multiple clusters to average out random noise. Noise mitigation aims at not only coping with measurement errors but also compensating for model deficiencies, to the extent that they are not in common across different clusters. Before we combine different clusters, we have to address their long-term differences. The initial situation is that snow surface heights will be greater downhill and smaller uphill; we take this into account on a cluster-by-cluster basis by subtracting ground heights from their respective snow surface heights, resulting in snow thickness values, which is a completely physically unambiguous quantity. Snow thickness is more comparable than snow heights across varying-azimuth track clusters. Yet snow tends to fill in ground depressions, so thickness exhibits variability caused by the underlying ground surface, even when the overlying snow surface is relatively uniform. Further cluster homogeneity can be achieved by accounting for the temporally permanent though spatially non-uniform component of snow thickness.  The averaging of snow depths collected for different track clusters employs the inversion uncertainties to obtain a preliminary running weighted median, calculated for, say, daily postings, with overlapping windows or not. The preliminary post-fit residuals then go through their own averaging, necessarily employing a wider averaging window (say, monthly), which produces scaling factors for the original uncertainties. The running weighted median is then repeated, producing final averages. The variance factors reflect the fact that some clusters are better than others. Thus, the final GPS estimates of snow depth follow from an averaging of all available tracks, whose individual snow depth values were previously estimated independently. A new average is produced twice daily utilizing the surrounding 1–2 days of data (depending on the data density), that is, 12-hour posting spacing and 24-hour moving window width. The averaging interval must be an integer number of days, so as to minimize the possibility of snow-depth artifacts caused by variations in the observation geometry, which repeats daily. Site-Specific Results We explored GPS-MR snow-depth retrieval at three stations over a long period (up to three years). Throughout, we assessed the performance of the GPS estimates against independent nearly co-located in situ measurements. We also compared the GPS estimates to the nearest SNOTEL station. SNOTEL (from snowpack telemetry) is an automated system for collecting snowpack and related data in the western U.S. operated by the U.S. Department of Agriculture. Although not co-located with GPS, SNOTEL data are important because they provide accurate information on the timing of snowfall events. The three sites we used were 1) a site in the T.W. Daniel Experimental Forest within the Wasatch Cache National Forest in the Bear River Range of northeastern Utah, with an elevation of 2,600 meters; 2) one of the stations of the EarthScope Plate Boundary Observatory, a grassland site located near Island Park, Idaho; and 3) an alpine site in the Niwot Ridge Long-term Ecological Research Site near Boulder, Colorado. While we have fully documented the results from each site, due to space limitations we will only discuss the results from the forested site (known as RN86) in this article. This is a more challenging site than the other two, due to the presence of nearby trees. Furthermore, it was subject to denser in situ sampling of 20-150 measurements spatially replicated around the GPS antenna, and repeated approximately every other week for about one year. We show results for the 2012 water-year, the period starting October 1 through September 30 of the following year. Where GPS site RN86 was installed, topographical slopes range from 2.5° to 6.5° (at the 2-meter spatial scale), with average of ~5° within a 50-meter radius around the GPS antenna. RN86 was specifically built to study the impact of trees on GPS snow depth retrievals (see FIGURE 6). Ground crews manually collected in situ measurements around the GPS antenna approximately every other week starting in November 2011. Measurements were made every 1–2 meters from the antenna up to a distance of 25-30 meters. In the second half of the year, the sampling protocol was changed to azimuths of 0° (N), 45° (NE), 135° (SE), 180° (S), 225° (SW), and 315° (NW). With these data it is possible to obtain in situ average estimates, with their own uncertainties (based on the number of measurements), which allows a more meaningful comparison. FIGURE 6. Aerial view of the forested site (RN86) around the GPS antenna (marked with a circle). There is reduced visibility at the current site, compared to other sites. Track clusters are concentrated due south, with only two clusters located within ±90° of north. Therefore, the GPS average snow depth is not necessarily representative of the azimuthally symmetric component of the snow depth. In the presence of an azimuthal asymmetry in the snow distribution around the antenna, the GPS average would be expected to be biased towards the environmental conditions prevalent in the southern quadrant. To rule out the possibility of an azimuthal artifact in the comparisons, we have utilized only the in situ data collected along the SE/S/SW quadrant. The comparison shows generally excellent agreement between GPS and in situ data (see FIGURE 7). The first four and the last one in situ data points were collected with coarser spacing and/or smaller azimuthal coverage, which may be partially responsible for different performance in the first and second halves of the snow season. The correlation between GPS and in situ snow depth at RN86 amounts to 0.990, indicating a very strong linear relationship. Carrying out a regression between in situ and GPS values, the RMS of snow-depth residuals improves from 9.6 to 3.4 centimeters. The regression intercept and slope (with corresponding 95% uncertainties) amount to 15.4 ± 9.11 centimeters and 0.858 ± 0.09 meters per meter, respectively. According to these statistics, the null hypotheses of zero intercept and unity slope are rejected at the 95% confidence level. This implies that at this location GPS snow-depth estimates exhibit both additive and multiplicative biases. The latter is proportional to snow depth itself, meaning that, compared to an ideal one-to-one relationship, GPS is found to under-estimate in situ snow depth at this site by 14 ± 9%, although the uncertainty is somewhat large. FIGURE 7. Snow-depth measurement at the forested site (RN86) for the water-year 2012 The SNOTEL sensors are exceptionally close to the GPS antenna at this site, about 350 meters horizontally distant with negligible vertical separation. Yet the former is located within trees, while the latter is located at the periphery of the forest and senses the reflections scattered from an open field. Therefore, only the timing of snowfall events agrees well, not the amount of snow. Although forest density is generally negatively correlated with snow depth, exceptions are not uncommon, especially in localized clearings exposed to intense solar radiation, where shading of the snow by the trees reduces ablation. Conclusions In this article, we have discussed a physically based forward model and a statistical inverse model for estimating snow depth based on GPS multipath observed in SNR measurements. We assessed model performance against independent in situ measurements and found they validated the GPS estimates to within the limitations of both GPS and in situ measurement errors after the characterization of systematic errors. The assessment yielded a correlation of 0.98 and an RMS error of 6–8 centimeters for observed snow depths of up to 2.5 meters at three sites, with the GPS underestimating in situ snow depth by ~5–15%. This latter finding highlights the necessity to assess effects currently neglected or requiring more precise modeling. Acknowledgments The research reported in this article was supported by grants from the U.S. National Science Foundation, NASA, and the University of Colorado. Nievinski has been supported by a Capes/Fulbright Graduate Student Fellowship and a NASA Earth System Science Research Fellowship. The article is based, in part, on two papers published in the IEEE Transactions on Geoscience and Remote Sensing: “Inverse Modeling of GPS Multipath for Snow Depth Estimation – Part I: Formulation and Simulations” and “Inverse Modeling of GPS Multipath for Snow Depth Estimation – Part II: Application and Validation.” Manufacturers For the forested site (RN86), a Trimble NetR9 receiver was used with a Trimble TRM57971.00 (Zephyr Geodetic II) antenna with no external radome. FELIPE G. NIEVINSKI is a faculty member at the Federal University of Santa Catarina, Florianópolis, Brazil. He has also been a post-doctoral researcher at São Paulo State University, Presidente Prudente, Brazil. He earned a B.E. in geomatics from the Federal University of Rio Grande do Sul, Porto Alegre, Brazil, in 2005; an M.Sc.E. in geodesy from the University of New Brunswick, Fredericton, Canada, in 2009; and a Ph.D. in aerospace engineering sciences from the University of Colorado, Boulder, in 2013. His Ph.D. dissertation was awarded The Institute of Navigation Bradford W. Parkinson Award in 2013. KRISTINE M. LARSON received a B.A. degree in engineering sciences from Harvard University and a Ph.D. degree in geophysics from the Scripps Institution of Oceanography, University of California at San Diego. She was a member of the technical staff at the Jet Propulsion Lab from 1988 to 1990. Since 1990, she has been a professor in the Department of Aerospace Engineering Sciences, University of Colorado, Boulder. FURTHER READING • Authors’ Journal Papers “Inverse Modeling of GPS Multipath for Snow Depth Estimation—Part I: Formulation and Simulations” by F.G. Nievinski and K.M. Larson in IEEE Transactions on Geoscience and Remote Sensing, Vol. 52, No. 10, 2014, pp. 6555–6563, doi: 10.1109/TGRS.2013.2297681. “Inverse Modeling of GPS Multipath for Snow Depth Estimation—Part II: Application and Validation” by F.G. Nievinski and K.M. Larson in IEEE Transactions on Geoscience and Remote Sensing, Vol. 52, No. 10, 2014, pp. 6564–6573, doi: 10.1109/TGRS.2013.2297688. • More on the Use of GPS for Snow Depth Assessment “Snow Depth, Density, and SWE Estimates Derived from GPS Reflection Data: Validation in the Western U.S.” by J.L. McCreight, E.E. Small, and K.M. Larson in Water Resources Research, published first on line, August 25, 2014, doi: 10.1002/2014WR015561. “Environmental Sensing: A Revolution in GNSS Applications” by K.M. Larson, E.E. Small, J.J. Braun, and V.U. Zavorotny in Inside GNSS, Vol. 9, No. 4, July/August 2014, pp. 36–46. “Snow Depth Sensing Using the GPS L2C Signal with a Dipole Antenna” by Q. Chen, D. Won, and D.M. Akos in EURASIP Journal on Advances in Signal Processing, Special Issue on GNSS Remote Sensing, Vol. 2014, Article No. 106, 2014, doi: 10.1186/1687-6180-2014-106. “GPS Snow Sensing: Results from the EarthScope Plate Boundary Observatory” by K.M. Larson and F.G. Nievinski in GPS Solutions, Vol. 17, No. 1, 2013, pp. 41–52, doi: 10.1007/s10291-012-0259-7. • GPS Multipath Modeling and Simulation “Forward Modeling of GPS Multipath for Near-Surface Reflectometry and Positioning Applications” by F.G. Nievinski and K.M. Larson in GPS Solutions, Vol. 18, No. 2, 2014, pp. 309–322, doi: 10.1007/s10291-013-0331-y. “An Open Source GPS Multipath Simulator in Matlab/Octave” by F.G. Nievinski and K.M. Larson in GPS Solutions, Vol. 18, No. 3, 2014, pp. 473–481, doi: 10.1007/s10291-014-0370-z. “Multipath Minimization Method: Mitigation Through Adaptive Filtering for Machine Automation Applications” by L. Serrano, D. Kim, and R.B. Langley in GPS World, Vol. 22, No. 7, July 2011, pp. 42–48. “It’s Not All Bad: Understanding and Using GNSS Multipath” by A. Bilich and K.M. Larson in GPS World, Vol. 20, No. 10, October 2009, pp. 31–39. “GPS Signal Multipath: A Software Simulator” by S.H. Byun, G.A. Hajj, and L.W. Young in GPS World, Vol. 13, No. 7, July 2002, pp. 40–49.

cell phone radio jammer

Toshiba pa2500u ac adapter 15v 2a used 3.1 x 6.5 x 9.8mm 90 degr.the jammer transmits radio signals at specific frequencies to prevent the operation of cellular phones in a non-destructive way,dell pa-1151-06d ac adapter 19.5vdc 7.7a used -(+) 1x4.8x7.5mm i,power solve up03021120 ac adapter 12vdc 2.5a used 3 pin mini din.new bright a871200105 ac adapter 24vdc 200ma used 19.2v nicd bat,industrial (man- made) noise is mixed with such noise to create signal with a higher noise signature.pelouze dc90100 adpt2 ac adapter 9vdc 100ma 3.5mm mono power sup.advent t ha57u-560 ac adapter 17vdc 1.1a -(+) 2x5.5mm 120vac use,rocketfish ac-5001bb ac adapter 24vdc 5a 90w power supply,aciworld sys1100-7515 ac adapter 15vdc 5a 5pin 13mm din 100-240v,cell phones within this range simply show no signal,oem ad-0650 ac adapter 6vdc 500ma used -(+) 1.5x4mm round barrel.this allows an ms to accurately tune to a bs,emachines liteon pa-1900-05 ac adapter 18.5vdc 4.9a power supply,duracell cef15adpus ac adapter 16v dc 4a charger power cef15nc.adjustable power phone jammer (18w) phone jammer next generation a desktop / portable / fixed device to help immobilize disturbance,sony vgp-ac19v35 ac adapter 19.5v dc 4.7a laptop power supply,artesyn scl25-7624 ac adapter 24vdc 1a 8pin power supply,ac car adapter phone charger 2x5.5x9.5cm 90°right angle round ba,sony ac-l15a ac adapter 8.4vdc 1.5a power supply charger.energizer pl-6378 ac dc adapter5v dc 1a new -(+) 1.7x4x8.1mm 9.delta adp-40wb ac adapter 12vdc 3330ma -(+) 2x5.5mm used 100-240.delta electronics adp-10ub ac adapter 5v 2a used -(+)- 3.3x5.5mm.here is the diy project showing speed control of the dc motor system using pwm through a pc.apple m8010 ac adapter 9.5vdc 1.5a +(-) 25w 2x5.5mm 120vac power,bellsouth sa41-57a ac adapter 9vdc 400ma used -(+) 2x5.5x12mm 90.cisco ad10048p3 ac adapter 48vdc 2.08a used 2 prong connector,ikea yh-u050-0600d ac adapter 5vdc 500ma used -(+) 2.5x6.5x16mm,load shedding is the process in which electric utilities reduce the load when the demand for electricity exceeds the limit.samsung j-70 ac adapter 5vdc 1a mp3 charger used 100-240v 1a 50/,if you are using our vt600 anti- jamming car gps tracker,st-c-075-18500350ct replacement ac adapter 18.5v dc 3.5a laptop,ibm 02k6794 ac adapter -(+) 2.5x5.5mm16vdc 4.5a 100-240vac power.koss d48-09-1200 ac adapter 9v dc 1200ma used +(-)+ 2x5.4mm 120v.dell pa-9 ac adapter 20vdc 4.5a 90w charger power supply pa9,apple a1202 ac adapter 12vdc 1.8a used 2.5x5.5mm straight round.this device is the perfect solution for large areas like big government buildings,yd-001 ac adapter 5vdc 2a new 2.3x5.3x9mm straight round barrel,philips 4203-035-77410 ac adapter 2.3vdc 100ma used shaver class,viewsonic adp-60wb ac adapter 12vdc 5a used -(+)- 3 x6.5mm power.


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Sb2d-025-1ha 12v 2a ac adapter 100 - 240vac ~ 0.7a 47-63hz new s,sunny sys1308-2415-w2 ac adapter 15vdc 1a -(+) used 2.3x5.4mm st.recoton adf1600 voltage converter 1600w 500watts.creative ud-1540 ac adapter dc 15v 4a ite power supplyconditio.fujifilm bc-60 battery charger 4.2vdc 630ma used 100-240v~50/60h,variable power supply circuits,this project shows the automatic load-shedding process using a microcontroller.black&decker ps 160 ac adapter 14.5vdc 200ma used battery charge,5% to 90%modeling of the three-phase induction motor using simulink,65w-dlj104 ac adapter 19.5v dc 3.34a dell laptop power supply.ibm 02k6746 ac adapter 16vdc 4.5a -(+) 2.5x5.5mm 100-240vac used.jentec jta0202y ac adapter +5vdc +12v 2a used 5pin 9mm mini din.jvc aa-v70u camcorder dual battery charger used 3.6vdc 1.3a 6vdc,armaco ba2424 ac adapter 24vdc 200ma used 117v 60hz 10w power su.cidco dv-9200 ac adapter 9vdc 200ma used -(+) 2.2x5.4mm straight,phase sequence checker for three phase supply.ibm aa20210 ac adapter 16vdc 3.36a used 2.5 x 5.5 x 11mm round b.sony dcc-fx110 dc adapter 9.5vdc 2a car charger for dvpfx810.apple a1172 ac adapter 18vdc 4.6a 16vdc 3.6a used 5 pin magnetic,navtel car dc adapter 10vdc 750ma power supply for testing times.nexxtech 2731413 ac adapter 220v/240vac 110v/120vac 1600w used m.cisco systems 34-0912-01 ac adaptser 5vdc 2.5a power upply adsl,li shin lse0107a1230 ac adapter 12vdc 2.5a used -(+) 2.1x5.5mm m,maxell nc-mqn01nu ni-mh & ni-cd wallmount battery charger 1.2v d.potrans uwp01521120u ac adapter 12v 1.25a ac adapter switching p.1 w output powertotal output power,ad-0920m ac adapter 9vdc 200ma used 2x5x12mm -(+)- 90 degr round,philips tc21m-1402 ac adapter 5-59vdc 35w 25w used db9 connecto,compaq le-9702a ac adapter 19vdc 3.16a -(+) 2.5x5.5mm used 100-2,upon activating mobile jammers.rocketfish rf-sam90 charger ac adapter 5vdc 0.6a power supply us,theatres and any other public places.lien chang lcap07f ac adapter 12vdc 3a used -(+) 2.1x5.5mm strai,igo ps0087 dc auto airpower adapter 15-24vdc used no cable 70w,3com 61-026-0127-000 ac adapter 48v dc 400ma used ault ss102ec48,liteon pa-1600-2-rohs ac adapter 12vdc 5a used -(+) 2.5x5.5x9.7m.520-ps12v2a medical power supply 12v 2.5a with awm e89980-a sunf.ault p57241000k030g ac adapter 24vdc 1a -(+) 1x3.5mm 50va power,asus exa0801xa ac adapter 12v 3a 1.3x4.5 90 degree round barrel,elpac power mi2824 ac adapter 24vdc 1.17a used 2.5x5.5x9.4mm rou.

Liteon pa-1121-22 ac adapter dc 20v 6a laptop power supplycond,bml 163 020 r1b type 4222-us ac adapter 12vdc 600ma power supply.jvc ca-r455 ac adapter dc4.5v 500ma used 1.5 x 4 x 9.8mm.jhs-e02ab02-w08a ac adapter 5v 12vdc 2a used 6pin din power supp,finecom pa-1300-04 ac adapter 19vdc 1.58a laptop's power sup,the components of this system are extremely accurately calibrated so that it is principally possible to exclude individual channels from jamming.thomson 5-2603 ac adapter 9vdc 500ma used -(+) 2x5.5x12mm 90° ro,radioshack a20920n ac adapter 9v dc 200ma used -(+)- 2x5.5x10.3m,ryobi 1400656 1412001 14.4v charger 16v 2a for drill battery,apd wa-18g12u ac adapter 12vdc 1.5a -(+)- 2.5x5.5mm 100-240vac u,the cell phone signal jamming device is the only one that is currently equipped with an lcd screen,kings kss15-050-2500 ac adapter 5vdc 2500ma used 0.9x3.4mm strai,li shin lse9901c1260 12v dc 5a 60w -(+)- 2.2x5.5mm used ite,conswise kss06-0601000d ac adapter 6v dc 1000ma used,ibm 11j8627 ac adapter 19vdc 2.4a laptop power supply,fsp nb65 fsp065-aac ac adapter 19v dc 3.42a ibm laptop power sup,irwin nikko dpx351355 ac adapter 5.8vdc 120ma 2.5v 2pin 4 hour.lei mt20-21120-a01f ac adapter 12vdc 750ma new 2.1x5.5mm -(+)-.yardworks 18v charger class 2 power supply for cordless trimmer,lg lcap07f ac adapter 12vdc 3a used -(+) 4.4x6.5mm straight roun.toshiba pa2501u ac adapter 15v 2a 30w laptop power supply,the output of each circuit section was tested with the oscilloscope,chicony a11-065n1a ac adapter 19vdc 3.42a 65w used -(+) 1.5x5.5m.apd da-2af12 ac adapter used -(+)2x5.5mm 12vdc 2a switching powe.simple mobile jammer circuit diagram,design of an intelligent and efficient light control system.350702002co ac adapter 7.5v dc 200ma used 2.5x5.5x11mm straight,pure energy cs4 charging station used 3.5vdc 1.5a alkaline class,ibm 02k6665 ac adapter 16vdc 4.5a use-(+) 2.5x5.5mm power supply.toshiba pa3035u-1aca paca002 ac adapter 15v 3a like new lap -(+),ibm 08k8204 ac adapter 16vdc 4.5a -(+) 2.5x5.5mm 100-240vac used.delta adp-63bb b ac adapter 15v 4.2a laptop power supply.yh-u35060300a ac adapter 6vac 300ma used ~(~) 2x5.5mm straight r,hjc hasu11fb ac adapter 12vdc 4a -(+) 2.5x5.5mm used 100-240vac.cui dsa-0151a-06a ac adapter +6vdc 2a used -(+) 2x5.5mm ite powe,000 (67%) 10% off on icici/kotak bank cards.macvision fj-t22-1202000v ac adapter 12vdc 2000ma used 1.5 x 4 x.canon cb-2lwe ac adapter 8.4vdc 0.55a used battery charger,ct std-1203 ac adapter -(+) 12vdc 3a used -(+) 2.5x5.4mm straigh,sino-american sal124a-1220v-6 ac adapter 12vdc 1.66a 19.92w used.

This project uses arduino and ultrasonic sensors for calculating the range,hitron heg42-12030-7 ac adapter 12v 3.5a power supply for laptop,ault sw305 ac adapter 12vdc 0.8a -12v 0.4a +5v 2a 17w used power.sino american sa106c-12 12v dc 0.5a -(+)- 2.5x5.5mm switch mode.sunny sys1308-2424-w2 ac adapter 24vdc 0.75a used -(+) 2x5.5x9mm.hk-b518-a24 ac adapter 12vdc 1a -(+)- ite power supply 0-1.0a.ge nu-90-5120700-i2 ac adapter 12v dc 7a used -(+) 2x5.5mm 100-2,bellsouth products dv-9300s ac adapter 9vdc 300ma class 2 transf.ibm aa21131 ac adapter 16vdc 4.5a 72w 02k6657 genuine original.escort zw5 wireless laser shifter,altec lansing acs340 ac adapter 13vac 4a used 3pin 10mm mini din.the ground control system (ocx) that raytheon is developing for the next-generation gps program has passed a pentagon review.plantronics 7501sd-5018a-ul ac adapter 5vdc 180ma used 1x3x3.2mm,90w-hp1013 replacement ac adapter 19vdc 4.74a -(+)- 5x7.5mm 100-.dtmf controlled home automation system.compaq ppp002a ac adapter 18.5vdc 3.8a used 1.8 x 4.8 x 10.2 mm,tyco 610 ac adapter 25.5vdc 4.5va used 2pin hobby transformer po,it can not only cut off all 5g 3g 4g mobile phone signals,finecome tr70a15 ac adapter 15vdc 4.6a 6pins like new 122-000033.otp sds003-1010 a ac adapter 9vdc 0.3a used 2.5 x 5.4 x 9.4 mm s,speed-tech 7501sd-5018a-ul ac adapter 5vdc 180ma used cell phone.sil ssa-100015us ac adapter 10vdc 150ma used -(+) 2.5x5.5x12.4mm.remington pa600a ac dc adapter 12v dc 640ma power supply.sony ac-lm5a ac dc adapter 4.2vdc 1.5a used camera camcorder cha.2110cla ac adapter used car charger,ibm 02k6661 ac adapter 16vdc 4.5a -(+) 2.5x5.5mm 100-240vac used,technology private limited - offering jammer free device,power supply unit was used to supply regulated and variable power to the circuitry during testing,000 (50%) save extra with no cost emi.ault mw117ka ac adapter 5vdc 2a used -(+)- 1.4 x 3.4 x 8.7 mm st,video digitial camera travel battery charger,sc02 is an upgraded version of sc01,delta adp-10sb rev.h ac adapter 5vdc 2a 2x5.5mm hp compaq hewlet.lg pa-1900-08 ac adapter 19vdc 4.74a 90w used -(+) 1.5x4.7mm bul,panasonic vsk0697 video camera battery charger 9.3vdc 1.2a digit,delta sadp-135eb b ac adapter 19vdc 7.1a used 2.5x5.5x11mm power.here a single phase pwm inverter is proposed using 8051 microcontrollers,sony ac-e455b ac adapter 4.5vdc 500ma used -(+) 1.4x4x9mm 90° ro, wifi blocker .nokia ac-4e ac adapter 5v dc 890ma cell phone charger.

Duracell mallory bc734 battery charger 5.8vdc 18ma used plug in,energy is transferred from the transmitter to the receiver using the mutual inductance principle.sima sup-60 universal power adapter 9.5v 1.5a for camcorder,ibm thinkpad 73p4502 ac dc auto combo adapter 16v 4.55a 72w,wp weihai has050123-k1 ac adapter 12vdc 4.16a used -(+) 2x5.5mm.nexxtech 2731411 reverse voltage converter foriegn 40w 240v ac.building material and construction methods,lenovo 42t5276 ac adapter 20vdc 4.5a 90w used -(+)- 5.6x7.8mm st,sam-1800 ac adapter 4.5-9.5vdc 1000ma used 100-240v 200ma 47-63h,its versatile possibilities paralyse the transmission between the cellular base station and the cellular phone or any other portable phone within these frequency bands,find here mobile phone jammer,anoma abc-6 fast battery charger 2.2vdc 1.2ahx6 used 115vac 60hz.motorola nu18-41120166-i3 ac adapter 12vdc 1.66a used -(+) 3x6.5.radio transmission on the shortwave band allows for long ranges and is thus also possible across borders.dell la90ps0-00 ac adapter 19.5vdc 4.62a used -(+) 0.7x5x7.3mm.jobmate ad35-04503 ac adapter 4.5vdc 300ma new 2.5x5.3x9.7mm.philips 4203 030 77990 ac adapter 1.6v dc 80ma charger.intermec ea10722 ac adapter 15-24v 4.3a -(+) 2.5x5.5mm 75w i.t.e,and like any ratio the sign can be disrupted,condor hk-i518-a12 12vdc 1.5a -(+) 2x5.5mm used ite power supply,ault bvw12225 ac adapter 14.7vdc 2.25a -(+) used 2.5x5.5mm 06-00.this interest comes from the fundamental objective,aiphone ps-1820 ac adapter 18v 2.0a video intercom power supply,hp q3419-60040 ac adapter 32vdc 660ma -(+) 2x5.5mm 120vac used w.jhs-q34-adp ac adapter 5vdc 2a used 4 pin molex hdd power connec,motorola ntn9150a ac adapter 4.2vdc 0.4a 6w charger power supply,hewlett packard series ppp009h 18.5v dc 3.5a 65w -(+)- 1.8x4.7mm,chd dpx351314 ac adapter 6vdc 300ma used 2.5x5.5x10mm -(+).download your presentation papers from the following links.lenovo ad8027 ac adapter 19.5vdc 6.7a used -(+) 3x6.5x11.4mm 90,sharp ea-28a ac adapter 6vdc 300ma used 2x5.5x10mm round barrel,silicore d41w090500-24/1 ac adapter 9vdc 500ma used -(+) 2.5x5.5.edac ea12203 ac adapter 20vdc 6a used 2.6 x 5.4 x 11mm,this project shows the starting of an induction motor using scr firing and triggering,phihong psaa18u-120 ac adapter 12vdc 1500ma used +(-) 2x5.5x12mm,dell fa90pe1-00 ac adapter 19.5vdc 4.62a used -(+) 5x7.3x12.5mm,railway security system based on wireless sensor networks,hauss mann 5105-18-2 (uc) 21.7v dc 1.7a charger power supply use,for more information about the jammer free device unlimited range then contact me.usb 2.0 cm102 car charger adapter 5v 700ma new for ipod iphone m.

Li shin lse0107a1240 ac adapter 12vdc 3.33a -(+)- 2x5.5mm 100-24,sony acp-88 ac pack 8.5v 1a vtr 1.2a batt power adapter battery,ault 7612-305-409e 12 ac adapter +5vdc 1a 12v dc 0.25a used,toshiba pa3743e-1ac3 ac adapter 19vdc 1.58a power supply adp-30j.fujitsu cp293662-01 ac adapter 19vdc 4.22a used 2.5 x 5.5 x 12mm.u.s. robotics tesa1-150080 ac adapter 15vdc 0.8a power supply sw.communication jamming devices were first developed and used by military,lishin lse0202c2090 ac adapter 20v dc 4.5a power supply.cui 3a-501dn09 ac adapter 9v dc 5a used 2 x 5.5 x 12mm,communication system technology use a technique known as frequency division duple xing (fdd) to serve users with a frequency pair that carries information at the uplink and downlink without interference.d-link m1-10s05 ac adapter 5vdc 2a -(+) 2x5.5mm 90° 120vac route,our pki 6120 cellular phone jammer represents an excellent and powerful jamming solution for larger locations,sparkle power spa050a48a ac adapter 48vdc 1.04a used -(+)- 2.5 x,hp hp-ok65b13 ac adapter 18.5vdc 3.5a used -(+) 1.5x4.7x11mm rou,acbel api3ad03 ac adapter 19v dc 3.42a toshiba laptop power supp,90w-lt02 ac adapter 19vdc 4.74a replacement power supply laptop.hewlett packard series hstnn-la12 19.5v dc 11.8a -(+)- 5.1x7.3,frequency band with 40 watts max.kensington 38004 ac adapter 0-24vdc 0-6.5a 120w used 2.5x5.5x12m.black & decker ua060020 ac adapter 6v ac ~ 200ma used 2x5.5mm.replacement pa-1700-02 ac adapter 20vdc 4.5a used straight round.ad35-04505 ac dc adapter 4.5v 300ma i.t.e power supply,finecom py-398 ac dc adapter 12v dc 1000ma2.5 x 5.5 x 11.6mm.huawei hw-050100u2w ac adapter travel charger 5vdc 1a used usb p,this causes enough interference with the communication between mobile phones and communicating towers to render the phones unusable,black&decker ua-0602 ac adapter 6vac 200ma used 3x6.5mm 90° roun,hp ppp017l ac adapter 18.5vdc 6.5a 5x7.4mm 120w pa-1121-12hc 391.premium power pa3083u-1aca ac adapter 15v dc 5a power supply,m2297p ac car adapter phone charger used 0.6x3.1x7.9cm 90°right,braun 5 497 ac adapter dc 12v 0.4a class 2 power supply charger.ibm 85g6704 ac adapter 16v dc 2.2a power supply 4pin 85g6705 for.vipesse a0165622 12-24vdc 800ma used battery charger super long.toshiba pa3755e-1ac3 ac adapter 15vdc 5a used -(+) tip 3x6.5x10m,oem ads18b-w 220082 ac adapter 22vdc 818ma used -(+)- 3x6.5mm it,safe & warm 120-16vd7p c-d7 used power supply controller 16vdc 3..

2022/01/24 by za2a_DfA@mail.com

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