Soil moisture retrieval based on GABP neural networks algorithm
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Key Laboratory of Geo-Informatics of State Bureau of Surveying and Mapping, Chinese Academy of Surveying & Mapping,College of Resource and Environment, Graduate School of the Chinese Academy of Science,Key Laboratory of Geo-Informatics of State Bureau of Surveying and Mapping, Chinese Academy of Surveying & Mapping

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    Abstract:

    active andA new semiempirical model is presented for soil moisture content retrieval, using ENVISAT ASAR and LANDSATTM data collaboratively. Firstly, a back propagation(BP) neural network algorithm(GA) is introduced, and a genetic algorithm is applied to optimize the weights of the node of BP neural network. Then the TM bands (TM3, TM4, TM6) and ASAR data(VV, VH, VH/VV) are taken as the input of the GABP neural network, and the output corresponds to the ground soil moisture. The partial field measurements of soil moisture are used as training samples to train the network and to achieve the map of soil moisture distribution. The field measurements are used to test the validity of the BP neural network algorithm and effectiveness of the active and passive remote sensing cooperative inversion. The comparison between the inversion using single data set(TM or ASAR), and the cooperative inversion of active and passive remote sensing data demonstrates that the new algorithm is more effective, and shows considerable potential in soil moisture retrieval by integrating active and passive remote sensing data. passive remote sensing; GABP neural network; soil moisture; inversion

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YU Fan, ZHAO Ying-Shi, LI Hai-Tao. Soil moisture retrieval based on GABP neural networks algorithm[J]. Journal of Infrared and Millimeter Waves,2012,31(3):283~288

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History
  • Received:December 29,2010
  • Revised:May 31,2011
  • Adopted:June 07,2011
  • Online: July 02,2012
  • Published: