会议专题

The Index Optimization Method in Neural Network for Soil Moisture Inversion

  Soil moisture,an important evaluation index in the field of environmental studies,plays a vital role in the exchange process between global surface and atmosphere.Although its content just takes a small percentage of freshwater resources,it is involved in the surface evapotranspiration process,moisture exchange process and many other cyclic processes.Temperature vegetation dryness index(TVDI)is a major mean that is based on optical and thermal infrared remote sensing to inverse soil moisture.However,its inversion accuracy is affected by soil background and the resolution of the thermal infrared data.Aiming at solving the problem of limited conditions of the data and complicated mathematical relations in modeling,ASTER NIR/TIR data is used in this study,and normalized differential vegetation index(NDVI)is replaced by the modified soil-adjusted vegetation index(MSAVI).Then,piecewise linear model is used to downscale the resolution of land surface temperature(LST),and modified temperature vegetation dryness index(MTVDI)is gained.Finally,back propagation(BP)neural network is established to calculate soil moisture.The result shows that the precision root mean square error(RMSE)of the two-parameter optimization model is higher than that of the none optimization model and single parameter optimization model.Improving the precision of soil moisture inversion by optimizing the input parameters of the neural network is feasible.

Soil moisture Remote sensing,Back propagation neural network Modified temperature vegetation dryness index

Sen-hao LIU Xu-wei HE Xiao-ai DAI

Chengdu University of Technology,Dongsan Road,ErXian Qiao,Chengdu,Sichuan 610059,China

国际会议

2019 International Conference on Civil Engineering, Mechanics and Materials Science (CEMMS 2019)(2019国际土木工程、力学和材料科学会议)

长沙

英文

156-161

2019-08-30(万方平台首次上网日期,不代表论文的发表时间)