8,198 research outputs found

    Modeling Micro-Porous Surfaces for Secondary Electron Emission Control to Suppress Multipactor

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    This work seeks to understand how the topography of a surface can be engineered to control secondary electron emission (SEE) for multipactor suppression. Two unique, semi-empirical models for the secondary electron yield (SEY) of a micro-porous surface are derived and compared. The first model is based on a two-dimensional (2D) pore geometry. The second model is based on a three-dimensional (3D) pore geometry. The SEY of both models is shown to depend on two categories of surface parameters: chemistry and topography. An important parameter in these models is the probability of electron emissions to escape the surface pores. This probability is shown by both models to depend exclusively on the aspect ratio of the pore (the ratio of the pore height to the pore diameter). The increased accuracy of the 3D model (compared to the 2D model) results in lower electron escape probabilities with the greatest reductions occurring for aspect ratios less than two. In order to validate these models, a variety of micro-porous gold surfaces were designed and fabricated using photolithography and electroplating processes. The use of an additive metal-deposition process (instead of the more commonly used subtractive metal-etch process) provided geometrically ideal pores which were necessary to accurately assess the 2D and 3D models. Comparison of the experimentally measured SEY data with model predictions from both the 2D and 3D models illustrates the improved accuracy of the 3D model. For a micro-porous gold surface consisting of pores with aspect ratios of two and a 50% pore density, the 3D model predicts that the maximum total SEY will be one. This provides optimal engineered surface design objectives to pursue for multipactor suppression using gold surfaces

    Sensitivity of GNSS-R spaceborne observations to soil moisture and vegetation

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    Global navigation satellite systems-reflectometry (GNSS-R) is an emerging remote sensing technique that makes use of navigation signals as signals of opportunity in a multistatic radar configuration, with as many transmitters as navigation satellites are in view. GNSS-R sensitivity to soil moisture has already been proven from ground-based and airborne experiments, but studies using space-borne data are still preliminary due to the limited amount of data, collocation, footprint heterogeneity, etc. This study presents a sensitivity study of TechDemoSat-1 GNSS-R data to soil moisture over different types of surfaces (i.e., vegetation covers) and for a wide range of soil moisture and normalized difference vegetation index (NDVI) values. Despite the scattering in the data, which can be largely attributed to the delay-Doppler maps peak variance, the temporal and spatial (footprint size) collocation mismatch with the SMOS soil moisture, and MODIS NDVI vegetation data, and land use data, experimental results for low NDVI values show a large sensitivity to soil moisture and a relatively good Pearson correlation coefficient. As the vegetation cover increases (NDVI increases) the reflectivity, the sensitivity to soil moisture and the Pearson correlation coefficient decreases, but it is still significant.Postprint (author's final draft

    Earth Observing System. Volume 1, Part 2: Science and Mission Requirements. Working Group Report Appendix

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    Areas of global hydrologic cycles, global biogeochemical cycles geophysical processes are addressed including biological oceanography, inland aquatic resources, land biology, tropospheric chemistry, oceanic transport, polar glaciology, sea ice and atmospheric chemistry

    Comparison of passive microwave and modeled estimates of total watershed SWE in the continental United States

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    In the U.S., a dedicated system of snow measurement stations and snowpack modeling products is available to estimate the snow water equivalent (SWE) throughout the winter season. In other regions of the world that depend on snowmelt for water resources, snow data can be scarce, and these regions are vulnerable to drought or flood conditions. Even in the U.S., water resource management is hampered by limited snow data in certain regions, as evident by the 2011 Missouri Basin flooding due in large part to the significant Plains snowpack. Satellite data could potentially provide important information in under‐sampled areas. This study compared the daily AMSR‐E and SSM/I SWE products over nine winter seasons to spatially distributed, modeled output SNODAS summed over 2100 watersheds in the conterminous U.S. Results show large areas where the passive microwave retrievals are highly correlated to the SNODAS data, particularly in the northern Great Plains and southern Rocky Mountain regions. However, the passive microwave SWE is significantly lower than SNODAS in heavily forested areas, and regions that typically receive a deep snowpack. The best correlations are associated with basins in which maximum annual SWE is less than 200 mm, and forest fraction is less than 20%. Even in many watersheds with poor correlations between the passive microwave data and SNODAS maximum annual SWE values, the overall pattern of accumulation and ablation did show good agreement and therefore may provide useful hydrologic information on melt timing and season length

    Technical approaches, chapter 3, part E

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    Radar altimeters, scatterometers, and imaging radar are described in terms of their functions, future developments, constraints, and applications

    AmĂ©lioration de la caractĂ©risation de la neige et du sol arctique afin d’amĂ©liorer la prĂ©diction de l’équivalent en eau de la neige en tĂ©lĂ©dĂ©tection micro-ondes

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    Le phĂ©nomĂšne de l’amplification arctique consiste en une augmentation plus prononcĂ©e des tempĂ©ratures de surface dans cette rĂ©gion que sur le reste du globe. Ce phĂ©nomĂšne est notamment dĂ» Ă  la diminution marquĂ©e du couvert nival provoquant un dĂ©sĂ©quilibre dans le bilan d’énergie de surface via une rĂ©duction gĂ©nĂ©ralisĂ©e de l’albĂ©do (rĂ©troaction positive). L’accĂ©lĂ©ration du rĂ©chauffement est jusqu’à trois fois plus Ă©levĂ©e dans ces rĂ©gions. Il est donc primordial, dans un contexte de changement climatique arctique, de poursuivre et d’amĂ©liorer le suivi Ă  grande Ă©chelle du couvert nival afin de mieux comprendre les processus gouvernant la variabilitĂ© spatio-temporelle du manteau neigeux. Plus spĂ©cifiquement, l’Équivalent en Eau de la Neige (EEN) est gĂ©nĂ©ralement utilisĂ© pour quantifier deux propriĂ©tĂ©s (hauteur et densitĂ©) de la neige. Son estimation Ă  grande Ă©chelle dans les rĂ©gions Ă©loignĂ©es tel que l’Arctique provient actuellement essentiellement de produits en micro-ondes passives satellitaires. Cependant, il existe encore beaucoup d’incertitudes sur les techniques d’assimilation de l’ÉEN par satellite et ce projet vise une rĂ©duction de l’erreur liĂ©e Ă  l’estimation de l’ÉEN en explorant deux des principales sources de biais tels que : 1) la variabilitĂ© spatiale de l’épaisseur et des diffĂ©rentes couches du manteau neigeux arctique liĂ©es Ă  la topographie et la vĂ©gĂ©tation au sol influençant l’estimation de l’ÉEN; et 2) les modĂšles de transfert radiatif micro-ondes de la neige et du sol ne bĂ©nĂ©ficient pas actuellement d’une bonne paramĂ©trisation en conditions arctiques, lĂ  oĂč les erreurs liĂ©es Ă  l’assimilation de l’ÉEN sont les plus importantes. L’objectif global est donc d’analyser les propriĂ©tĂ©s gĂ©ophysiques du couvert nival en utilisant des outils de tĂ©lĂ©dĂ©tection et de modĂ©lisation pour diminuer l’erreur liĂ©e Ă  la variabilitĂ© spatiale locale dans l’estimation du ÉEN Ă  grande Ă©chelle, tout en amĂ©liorant la comprĂ©hension des processus locaux qui affectent cette variabilitĂ©. PremiĂšrement, une analyse haute rĂ©solution Ă  l’aide de l’algorithme Random Forest a permis de prĂ©dire la hauteur de neige Ă  une rĂ©solution spatiale de 10 m avec une RMSE de 8 cm (23%) et d’en apprendre davantage sur les processus de distribution de la neige en Arctique. DeuxiĂšmement, la variabilitĂ© du manteaux neigeux arctique (hauteur et microstructure) a Ă©tĂ© incorporĂ©e dans des simulations en transfert radiatif micro-ondes de la neige et comparĂ©e au capteur satellitaire SSMIS. L’ajout de variabilitĂ© amĂ©liore la RMSE des simulations de 8K par rapport Ă  un manteau neigeux uniforme. Finalement, une paramĂ©trisation du sol gelĂ© est prĂ©sentĂ©e Ă  l’aide de mesures de rugositĂ© provenant de photogrammĂ©trie (Structure-from-Motion). Cela a permis d’investiguer trois modĂšles de rĂ©flectivitĂ© micro-ondes du sol ainsi que la permittivitĂ© effective du sol gelĂ© avec une rugositĂ© SfM d’une prĂ©cision de 0.1 mm. Ces donnĂ©es de rugositĂ© SfM avec une permittivitĂ© optimisĂ©e (Δ'_19 = 3.3, Δ'_37 = 3.6) rĂ©duisent significativement l’erreur des tempĂ©ratures de brillance simulĂ©es par rapport Ă  des mesures au sols (RMSE = 3.1K, R^2 = 0.71) pour toutes les frĂ©quences et polarisations. Cette thĂšse offre une caractĂ©risation des variables de surface (neige et sol) en Arctique en transfert radiatif micro-ondes qui bĂ©nĂ©ficie aux multiples modĂ©lisations (climatiques et hydrologiques) de la cryosphĂšre

    An artificial neural network approach for soil moisture retrieval using passive microwave data

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    Soil moisture is a key variable that defines land surface-atmosphere (boundary layer) interactions, by contributing directly to the surface energy and water balance. Soil moisture values derived from remote sensing platforms only accounts for the near surface soil layers, generally the top 5cm. Passive microwave data at L-band (1.4 GHz, 21cm wavelength) measurements are shown to be a very effective observation for surface soil moisture retrieval. The first space-borne L-band mission dedicated to observing soil moisture, the European Space Agency's (ESA) Soil Moisture and Ocean Salinity (SMOS) mission, was launched on 2nd November 2009.Artificial Neural Network (ANN) methods have been used to empirically ascertain the complex statistical relationship between soil moisture and brightness temperature in the presence of vegetation cover. The current problem faced by this method is its inability to predict soil moisture values that are 'out-of-range' of the training data.In this research, an optimization model is developed for the Backpropagation Neural Network model. This optimization model utilizes the combination of the mean and standard deviation of the soil moisture values, together with the prediction process at different pre-determined, equal size regions to cope with the spatial and temporal variation of soil moisture values. This optimized model coupled with an ANN of optimum architecture, in terms of inputs and the number of neurons in the hidden layers, is developed to predict scale-to-scale and downscaling of soil moisture values. The dependency on the accuracy of the mean and standard deviation values of soil moisture data is also studied in this research by simulating the soil moisture values using a multiple regression model. This model obtains very encouraging results for these research problems.The data used to develop and evaluate the model in this research has been obtained from the National Airborne Field Experiments in 2005

    Active microwave users working group program planning

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    A detailed programmatic and technical development plan for active microwave technology was examined in each of four user activities: (1) vegetation; (2) water resources and geologic applications, and (4) oceanographic applications. Major application areas were identified, and the impact of each application area in terms of social and economic gains were evaluated. The present state of knowledge of the applicability of active microwave remote sensing to each application area was summarized and its role relative to other remote sensing devices was examined. The analysis and data acquisition techniques needed to resolve the effects of interference factors were reviewed to establish an operational capability in each application area. Flow charts of accomplished and required activities in each application area that lead to operational capability were structured

    PASSIVE MICROWAVE SATELLITE SNOW OBSERVATIONS FOR HYDROLOGIC APPLICATIONS

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    Melting snow provides an essential source of water in many regions of the world and can also contribute to devastating, wide-scale flooding. The objective of this research was to investigate the potential for passive microwave remotely sensed data to characterize snow water equivalent (SWE) and snowmelt across diverse regions and snow regimes to improve snowmelt runoff estimation. The first step was to evaluate the current, empirically-based passive microwave SWE products compared to NOAA’s operational SWE estimates from SNODAS across 2100 watersheds over eight years. The best agreement was found within basins in which maximum annual SWE is less than 200 mm, and forest fraction is less than 20%. Next, a sensitivity analysis was conducted to evaluate the microwave signal response to spatially distributed wet snow using a loosely-coupled snow-emission model. The results over an area approximately the size of a microwave pixel found a near-linear relationship between the microwave signal response and the percent area with wet snow present. These results were confirmed by evaluating actual wet snow events over a nine year period, and suggest that the microwave response provides the potential basis for disaggregating melting snow within a microwave pixel. Finally, a similar sensitivity analysis conducted in six watersheds with diverse landscapes and snow conditions confirmed the relationship holds at a basin scale. The magnitude of the microwave response to wet snow was compared to the magnitude of subsequent discharge events to determine if an empirical relation exists. While positive increases in brightness temperature (TB) correspond to positive increases in discharge, the magnitude of those changes is poorly correlated in most basins. The exception is in basins where snowmelt runoff typically occurs in one event each spring. In similar basins, the microwave response may provide information on the magnitude of spring runoff. Methods to use these findings to improve current snow and snow melt estimation as well as future research direction are discussed
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