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Chinese Journal of Applied Ecology ›› 2016, Vol. 27 ›› Issue (6): 1804-1810.doi: 10.13287/j.1001-9332.201606.016

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Soil moisture estimation method based on both ground-based remote sensing data and air temperature in a summer maize ecosystem.

WANG Min-zheng, ZHOU Guang-sheng*   

  1. Chinese Academy of Meteorological Sciences, Beijing 100081, China
  • Received:2015-11-18 Published:2016-06-18

Abstract: Soil moisture is an important component of the soil-vegetation-atmosphere continuum (SPAC). It is a key factor to determine the water status of terrestrial ecosystems, and is also the main source of water supply for crops. In order to estimate soil moisture at different soil depths at a station scale, based on the energy balance equation and the water deficit index (WDI), a soil moisture estimation model was established in terms of the remote sensing data (the normalized difference vegetation index and surface temperature) and air temperature. The soil moisture estimation model was validated based on the data from the drought process experiment of summer maize (Zea mays) responding to different irrigation treatments carried out during 2014 at Gucheng eco-agrometeorological experimental station of China Meteorological Administration. The results indicated that the soil moisture estimation model developed in this paper was able to evaluate soil relative humidity at different soil depths in the summer maize field, and the hypothesis was reasonable that evapotranspiration deficit ratio (i.e., WDI) linearly depended on soil relative humidity. It showed that the estimation accuracy of 0-10 cm surface soil moisture was the highest (R2=0.90). The RMAEs of the estimated and measured soil relative humidity in deeper soil layers (up to 50 cm) were less than 15% and the RMSEs were less than 20%. The research could provide reference for drought monitoring and irrigation management.

Key words: summer maize, soil moisture, water deficit index (WDI)., remote sensing