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首页> 外文期刊>Journal of earth system science >Semi-empirical model for retrieval of soil moisture using RISAT-1 C-Band SAR data over a sub-tropical semi-arid area of Rewari district, Haryana (India)
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Semi-empirical model for retrieval of soil moisture using RISAT-1 C-Band SAR data over a sub-tropical semi-arid area of Rewari district, Haryana (India)

机译:使用RISAT-1 C波段SAR数据在哈里亚纳邦(印度)Rewari区的亚热带半干旱地区检索土壤水分的半经验模型

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We have estimated soil moisture (SM) by using circular horizontal polarization backscattering coefficient (??oRH), differences of circular vertical and horizontal ??o (??oRVa?? ??o RH) from FRS-1 data of Radar Imaging Satellite (RISAT-1) and surface roughness in terms of RMS height (RMSheight). We examined the performance of FRS-1 in retrieving SM under wheat crop at tillering stage. Results revealed that it is possible to develop a good semi-empirical model (SEM) to estimate SM of the upper soil layer using RISAT-1 SAR data rather than using existing empirical model based on only single parameter, i.e., ??o. Near surface SM measurements were related to ??oRH, ??oRVa????oRH derived using 5.35 GHz (C-band) image of RISAT-1 and RMSheight. The roughness component derived in terms of RMSheight showed a good positive correlation with ??oRHa????oRH (R2 = 0.65). By considering all the major influencing factors (??oRH, ??oRVa?? ??oRH, and RMSheight), an SEM was developed where SM (volumetric) predicted values depend on ??oRH, ??oRVa?? ??oRH, and RMSheight. This SEM showed R2 of 0.87 and adjusted R2 of 0.85, multiple R=0.94 and with standard error of 0.05 at 95% confidence level. Validation of the SM derived from semi-empirical model with observed measurement (SMObserved) showed root mean square error (RMSE) = 0.06, relative- RMSE (R-RMSE) = 0.18, mean absolute error (MAE) = 0.04, normalized RMSE (NRMSE) = 0.17, Nasha??Sutcliffe efficiency (NSE) = 0.91 (a??1), index of agreement (d) = 1, coefficient of determination (R2) = 0.87, mean bias error (MBE) = 0.04, standard error of estimate (SEE) = 0.10, volume error (VE) = 0.15, variance of the distribution of differences (S2d) = 0.004. The developed SEM showed better performance in estimating SM than Topp empirical model which is based only on ??o. By using the developed SEM, top soil SM can be estimated with low mean absolute percent error (MAPE) = 1.39 and can be used for operational applications.
机译:我们通过使用圆形水平极化反向散射系数(ΔωoRH),来自雷达成像卫星FRS-1数据的圆形垂直和水平Δωo(ΔωoRVaΔΔωoRH)的差异来估算土壤湿度(SM) (RISAT-1)和以RMS高度(RMSheight)表示的表面粗糙度。我们研究了分RS期FRS-1在小麦作物下提取SM方面的表现。结果表明,有可能使用RISAT-1 SAR数据而不是仅基于单个参数即?o的现有经验模型来开发良好的半经验模型(SEM)来估算上层土壤层的SM。近表面SM测量值与使用RISAT-1和RMSheight的5.35 GHz(C波段)图像得出的ΔoRH,ΔoRVaΔoRH有关。以RMSheight表示的粗糙度分量与ΔoRHaΔΔoRH(R2 = 0.65)显示出良好的正相关。通过考虑所有主要的影响因素(ΔωRH,ΔωRVaΔωoRH和RMSheight),开发了一种SEM,其中SM(体积)预测值取决于ΔωRH,ΔωRVaΔω。 oRH和RMSheight。该SEM显示R2为0.87,调整后的R2为0.85,多重R = 0.94,在95%置信度下的标准误为0.05。用观察到的测量值(SMObserved)对半经验模型得出的SM进行验证,表明均方根误差(RMSE)= 0.06,相对RMSE(R-RMSE)= 0.18,平均绝对误差(MAE)= 0.04,归一化RMSE( NRMSE)= 0.17,Nasha ?? Sutcliffe效率(NSE)= 0.91(a ?? 1),一致性指数(d)= 1,测定系数(R2)= 0.87,平均偏差误差(MBE)= 0.04,标准估计误差(SEE)= 0.10,体积误差(VE)= 0.15,差异分布的方差(S2d)= 0.004。所开发的SEM在评估SM方面表现出比仅基于?o的Topp经验模型更好的性能。通过使用发达的SEM,可以估算出平均平均误差(MAPE)= 1.39较低的表层土壤SM,可将其用于运营应用。

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