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Soil Nutrients Prediction Using Remote Sensing Data in Western India: An Evaluation of Machine Learning Models

机译:印度西部遥感数据的土壤营养预测:机器学习模型的评估

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Soil nutrient estimation can be used as a key input to increase crop yield and agriculture fertilization. Due to the shortage of the ground measured spectrum technology and costliness to obtain hyperspectral images, multispectral remote sensing data is used to explore the soil nutrient content estimation. In this paper, we have used optical remote sensing data (Landsat-8 and Sentinel-2), terrain/climate data (precipitation, radiation, slope etc.) and ground truth value to estimate four nutrients: N, K, P, and OC for two districts of Maharashtra, India. We compared four linear and non-linear regression models: multiple linear regression (MLR), random forest regression (RFR), support vector machine for regression (SVR) and gradient boosting (GB) for estimation of NPK and OC. Comparative results suggest that, GB and RFR performed better than other models with sMAPE in range of 0.125-0.377 for all nutrients, which is better or comparable with literature reported accuracy [1]. Therefore, the approach has potential to generate high resolution (<; ha) soil nutrients map and can reduce soil sampling effort/cost.
机译:土壤养分估计可作为增加作物产量和农业施肥的关键投入。由于地面的缺点测量了频谱技术和昂贵的性能,以获得高光谱图像,多光谱遥感数据用于探索土壤营养含量估计。在本文中,我们使用了光学遥感数据(Landsat-8和Sentinel-2),地形/气候数据(降水,辐射,斜率等)和地面真值,以估算四种营养素:N,K,P和oc为印度马哈拉施特拉的两个地区。我们比较了四种线性和非线性回归模型:多元线性回归(MLR),随机森林回归(RFR),支持向量机(SVR)和梯度升压(GB),用于估计NPK和OC。比较结果表明,GB和RFR比其他营养素为0.125-0.377范围内的其他模型的表现优于0.125-0.377,这与文献报告的准确性更好或比较[1]。因此,该方法具有产生高分辨率(<; HA)土壤营养成本的潜力,可以减少土壤采样努力/成本。

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