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Comparative Analysis between Morphometry and Geo-Environmental Factor Based Soil Erosion Risk Assessment Using Weight of Evidence Model: a Study on Jainti River Basin, Eastern India

机译:基于权重模型的形态学与基于地球环境因素的土壤侵蚀风险评估的比较分析:印度东部Ja那提河流域的研究

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Assessment of spatial soil erosion risk is a viable effort signifying the needs of conservation measures due to the deterioration of land as well as soil quality degradation at various scales. Among several non-quantitative approaches regarding erosion risk prediction, watershed morphometry and other geo-environmental parameter based assessments were performed largely and separately which showed varied results. In the present work, using 15 morphometric and 13 geo-environmental parameters, spatial soil erosion risk was modelled in order to inspect the performances and consistency of both approaches in predicting Spatial Soil Erosion Risk (SSER). Field site erosion patch inventory (a total of 164 erosion patches), google earth imagery and a probabilistic model, i.e., Weight of Evidence (WoE) enabled the analysis. Training patches (115 patches) were used to model the SSER while validation patches (49 patches) were used to assess the consistency of model output. Both approaches quantify 25.41 % and 20.18% of the area to high to very high susceptibility class, separately. The contribution of each factor of both parameter groups in risk predicting was analysed through Map Removal Sensitivity Analysis (MRSA). Further, the results of performance were evaluated through Repetitive Operator Choice (ROC) curve (success rate and prediction rate curves) measuring Area Under Curve (AUC). The success and prediction rate curves show that when considering morphometric parameters, the AUC is 0.775 and 0.729, respectively, whereas in the case of geo-environmental parameters, AUC = 0.892 and 0.878 accordingly. This reveals the better consistency of geo-environmental parameters in context with the spatial erosion risk zoning in the present scenario.
机译:空间土壤侵蚀风险的评估是一项可行的工作,表明由于土地退化以及各种规模的土壤质量退化,需要采取保护措施。在关于侵蚀风险预测的几种非定量方法中,流域形态测量法和其他基于地球环境参数的评估分别进行了大范围和单独的评估,结果各不相同。在目前的工作中,使用15个形态计量学参数和13个地球环境参数,对空间土壤侵蚀风险进行了建模,以检验两种方法在预测空间土壤侵蚀风险(SSER)中的性能和一致性。现场场地侵蚀斑块清单(总共164个侵蚀斑块),谷歌地球图像和概率模型(即证据权重(WoE))可以进行分析。训练补丁(115个补丁)用于对SSER建模,而验证补丁(49个补丁)用于评估模型输出的一致性。两种方法分别将面积的25.41%和20.18%量化为高到非常高的磁化率等级。通过“地图去除敏感性分析”(MRSA)分析了两个参数组中每个因素在风险预测中的作用。此外,通过重复操作者选择(ROC)曲线(成功率和预测率曲线)测量曲线下面积(AUC)来评估性能结果。成功率和预测率曲线表明,在考虑形态计量学参数时,AUC分别为0.775和0.729,而在地球环境参数中,AUC分别为0.892和0.878。这揭示了在当前情况下,与环境侵蚀风险分区相关的地理环境参数具有更好的一致性。

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