Zhang Fan, Liang Yusheng, Hu Zhenqi
School of Resources and Civil Engineering, Northeastern University, Shenyang, 110819, China.
School of Environment Science and Spatial Informatics, China University of Mining and Technology, Xuzhou, 221116, Jiangsu, China.
Sci Rep. 2025 Sep 2;15(1):32330. doi: 10.1038/s41598-025-17813-5.
The excavation of subterranean coal has led to a plethora of ecological and environmental issues, which seriously restrict the sustainable development of society. As one of the important physical indicators of soil, soil moisture content needs to be scientific, real-time, and comprehensively monitored. Due to the low efficiency of manual measurement, methods based on remote sensing data inversion have received widespread attention and in-depth research in recent years. In this study, a new ReMPDI index (Red edge Modified Perpendicular Drought Index) is constructed, and six retrieval models of soil moisture content based on machine learning algorithms are compared and analyzed, and the accuracy is verified by measured sampling data. The following conclusions were obtained: (1) Using the red edge band as the horizontal axis, and the near infrared band NIR as the vertical axis is the optimal spatial band combination of spectral characteristics for constructing soil lines; (2) The determination coefficient (R2) of ReMPDI index based on REdge-NIR spectral feature space and adding vegetation cover factor is the highest, which is-0. 798, and there is a significant correlation, which is better than MPDI and PDI index; (3) The model inversion accuracy of the RF is significantly higher than SVM, BPNN, PLSR, CNN, and RBFNN, with an error of only 9.52% compared to the measured results. The results of this study can provide a theoretical basis and technical support for the fine monitoring of surface soil moisture content on a large scale in mining areas.
地下煤炭开采引发了诸多生态与环境问题,严重制约了社会的可持续发展。土壤含水量作为土壤重要的物理指标之一,需要进行科学、实时、全面的监测。由于人工测量效率较低,基于遥感数据反演的方法近年来受到广泛关注并得到深入研究。本研究构建了一种新的ReMPDI指数(红边修正垂直干旱指数),比较分析了基于机器学习算法的六种土壤含水量反演模型,并通过实测采样数据验证了其准确性。得到以下结论:(1)以红边波段为横轴、近红外波段NIR为纵轴是构建土壤线的最佳光谱特征空间波段组合;(2)基于红边 - 近红外光谱特征空间并加入植被覆盖因子的ReMPDI指数决定系数(R2)最高,为 - 0.798,且存在显著相关性,优于MPDI和PDI指数;(3)随机森林(RF)模型反演精度显著高于支持向量机(SVM)、反向传播神经网络(BPNN)、偏最小二乘回归(PLSR)、卷积神经网络(CNN)和径向基函数神经网络(RBFNN),与测量结果相比误差仅为9.52%。本研究结果可为矿区大面积地表土壤含水量精细监测提供理论依据和技术支持。