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首页> 外文期刊>Journal of Landscape Ecology >Unveiling Spatial Variation in Salt Affected Soil of Gautam Buddha Nagar District Based on Remote Sensing Indicators
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Unveiling Spatial Variation in Salt Affected Soil of Gautam Buddha Nagar District Based on Remote Sensing Indicators

机译:基于遥感指标的高坦佛纳加地区盐受影响土壤的空间变异

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摘要

Salt accumulation within the soil is one of the subtle ecological issues around the world. An integrated of remote sensing with different statistical techniques has indicated accomplishment for creating soil quality forecasting models. The objective of this research was to unveil the degree and location of the salt affected soils as it has a severe effect on the agricultural crop yield of the Gautam Buddha Nagar (GBN) district. To assess spatial variation of the salt-affected soil a simulation model integrating satellite observation data, artificial neural network (ANN) and multiple linear regression (MLR) was used. The statistical correlation amongst ground-truth data and Landsat original bands and band ratios showed that all the bands and ratios showed a non-significant correlation with SAR. While four optical bands and eleven band ratios showed high correlation with all the soil quality parameters. Combining all the remotely sensed variables into models resulted in the finest fit with the Rsup2/sup value equal to 0.84, 0.69, 0.59 and 0.85 for EC, pH, ESP and TSS, respectively. The soil quality parameter maps generated using selected models revealed that most of the part of the agricultural land of the study area lies in the range of moderately saline and moderately sodic soil. Further Analytical Hierarchy Process (AHP) was applied to generate overall soil degradation probability map of the district, with respect to salt accumulation. The result revealed that the major portion of the entire agricultural field of the study area lie between low (32.74 %) to moderate (29.53 %) probability zones of salt susceptibility.
机译:土壤中的盐积累是世界各地的微妙生态问题之一。采用不同统计技术的遥感集成表明为创建土壤质量预测模型的成就。本研究的目的是揭示盐受影响的土壤的程度和位置,因为它对高坦佛纳卡瓦(GBN)区的农业作物产量具有严重影响。为了评估盐影响土壤的空间变化,使用卫星观察数据的模拟模型,使用人工神经网络(ANN)和多元线性回归(MLR)。地面真实数据和LANDSAT原始带和带比之间的统计相关性表明,所有带和比率都显示出与SAR的非显着相关性。虽然四个光带和十一带比与所有土壤质量参数显示出高的相关性。将所有远程感测的变量与模型组合成最佳拟合,R 2 值等于0.84,0.69,0.59和0.85,用于EC,pH,ESP和TSS。使用所选模型产生的土壤质量参数图显示,研究区的大部分农业土地部分位于适度盐水和适度的善良土壤中。进一步的分析层次方法(AHP)被应用于产生区域的整体土壤退化概率图,相对于盐积累。结果表明,研究区域的整个农业领域的主要部分位于低(32.74%)到中度(29.53%)的盐易感区。

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