School of Environment, Tsinghua University, Beijing, 100084, China.
College of Environment and Resource Science, Zhejiang University, Hangzhou, Zhejiang, China.
Environ Pollut. 2021 Jan 1;268(Pt A):115845. doi: 10.1016/j.envpol.2020.115845. Epub 2020 Oct 13.
Widespread soil contamination threatens living standards and weakens global efforts towards the Sustainable Development Goals (SDGs). Detailed soil mapping is needed to guide effective countermeasures and sustainable remediation operations. Here, we review visible and infrared reflectance spectroscopy (VIRS) based detection methods in combination with machine learning. To date, proximal, airborne and spaceborne carrier devices have been employed for soil contamination detection, allowing large areas to be covered at low cost and with minimal secondary environmental impact. In this way, soil contaminants can be monitored remotely, either directly or through correlation with soil components (e.g. Fe-oxides, soil organic matter, clay minerals). Observed vegetation reflectance spectra has also been proven an effective indicator for mapping soil pollution. Calibration models based on machine learning are used to interpret spectral data and predict soil contamination levels. The algorithms used for this include partial least squares regression, neural networks, and random forest. The processes underlying each of these approaches are outlined in this review. Finally, current challenges and future research directions are explored and discussed.
广泛的土壤污染威胁着生活水平,并削弱了全球实现可持续发展目标(SDGs)的努力。需要详细的土壤测绘来指导有效的对策和可持续的修复操作。在这里,我们回顾了基于可见和近红外反射光谱(VIRS)的检测方法,并结合了机器学习。迄今为止,已经使用了近地、机载和星载载体设备来进行土壤污染检测,可以以低成本和最小的二次环境影响覆盖大面积区域。通过这种方式,可以通过直接或通过与土壤成分(例如铁氧化物、土壤有机质、粘土矿物)相关联的方式来远程监测土壤污染物。观测到的植被反射光谱也被证明是用于绘制土壤污染图的有效指标。基于机器学习的校准模型用于解释光谱数据并预测土壤污染水平。为此使用的算法包括偏最小二乘回归、神经网络和随机森林。本综述概述了这些方法的基本原理。最后,探讨并讨论了当前的挑战和未来的研究方向。