Das Dhananjay Paswan, Pandey Ashish
Department of Water Resource Development & Management, Indian Institute of Technology Roorkee, Roorkee, Uttarakhand, India, 247667.
Krishi Vigyan Kendra Khagaria, Bihar Agriculture University, Sabour, Bhagalpur, Bihar, India, 813210.
Environ Monit Assess. 2024 Dec 12;197(1):52. doi: 10.1007/s10661-024-13510-4.
The accurate retrieval of soil moisture plays a pivotal role in agriculture, particularly in effective irrigation water management, as it significantly affects crop growth and yield. The present study mainly focuses on the robustly investigated capability of dual-polarized Sentinel-1 SAR-derived vegetation descriptors in the water cloud model (WCM) in surface soil moisture (SSM) retrieval over wheat crops. The vegetation descriptors used in the study are radar vegetation index (RVI), backscattering ratio, polarimetric radar vegetation index (PRVI), dual polarization SAR vegetation index (DPSVI), and dual polarimetric radar vegetation index (DpRVI). The results of the WCM model illustrate that all the models show acceptable results, which confirms that this vegetative descriptor can be useful to estimate the accurate soil moisture over the wheat crop in the study area, except for DPSVI. Furthermore, the results revealed that model performances gradually decrease as the crop enters the complex stages. In summary, the overall finding demonstrates that PRVI outperformed other models in terms of statistical indicators value for calibration (R = 0.728, NSE = 0.727, PBIAS = - 2.67%, and RMSE = 2.985%) and validation (R = 0.728, NSE = 0.684, PBIAS = - 13.666%, and RMSE = 4.106%). Thus, overall results proved that the WCM model has considerable potential to retrieve SSM over wheat crops from Sentinel-1 satellite data. This study will be beneficial for regional water resources managers for proper allocation of irrigation water, effective irrigation management, and enhanced irrigation efficiency within the regions.
准确获取土壤湿度在农业中起着关键作用,特别是在有效的灌溉用水管理方面,因为它会显著影响作物生长和产量。本研究主要关注双极化哨兵 -1合成孔径雷达(SAR)衍生的植被描述符在水云模型(WCM)中用于小麦作物表层土壤湿度(SSM)反演的强大研究能力。该研究中使用的植被描述符包括雷达植被指数(RVI)、后向散射比、极化雷达植被指数(PRVI)、双极化SAR植被指数(DPSVI)和双极化雷达植被指数(DpRVI)。WCM模型的结果表明,除DPSVI外,所有模型都显示出可接受的结果,这证实了这种植被描述符可用于估计研究区域内小麦作物的准确土壤湿度。此外,结果表明,随着作物进入复杂生长阶段,模型性能逐渐下降。总之,总体研究结果表明,在校准(R = 0.728,NSE = 0.727,PBIAS = -2.67%,RMSE = 2.985%)和验证(R = 0.728,NSE = 0.684,PBIAS = -13.666%,RMSE = 4.106%)的统计指标值方面,PRVI优于其他模型。因此,总体结果证明,WCM模型具有从哨兵 -1卫星数据反演小麦作物SSM的巨大潜力。这项研究将有助于区域水资源管理者在区域内合理分配灌溉用水、进行有效的灌溉管理并提高灌溉效率。