从土壤高光谱数据中检测和表征铬的深度学习方法

Toxics Pub Date : 2024-05-11 DOI:10.3390/toxics12050357
Chundi Ma, Xinhang Xu, Min Zhou, Tao Hu, Chongchong Qi
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引用次数: 0

摘要

土壤中高含量的铬(Cr)对人类和环境都构成了严重威胁。基于实验室的铬化学分析方法既耗时又昂贵,因此迫切需要一种更高效的方法来检测土壤中的铬。本研究将深度神经网络(DNN)方法应用于土地利用和覆盖区框架调查(LUCAS)数据集,以开发具有良好普适性和准确性的高光谱土壤铬含量预测模型。通过优化光谱预处理方法和 DNN 超参数,构建了最佳 DNN 模型,该模型对 Cr 检测具有良好的预测性能,在测试集上的相关系数值为 0.79。通过置换重要度和局部可解释模型的解释,确定了对铬具有较高敏感性的四个重要高光谱波段(400-439、1364-1422、1862-1934 和 2158-2499 nm)。研究发现,土壤氧化铁和粘土矿物含量是影响土壤铬含量的重要因素。本研究的结果为从高光谱数据中快速确定土壤中的铬含量提供了一种可行的方法,该方法可进一步完善并在未来应用于大规模的铬检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Learning Approach for Chromium Detection and Characterization from Soil Hyperspectral Data
High levels of chromium (Cr) in soil pose a significant threat to both humans and the environment. Laboratory-based chemical analysis methods for Cr are time consuming and expensive; thus, there is an urgent need for a more efficient method for detecting Cr in soil. In this study, a deep neural network (DNN) approach was applied to the Land Use and Cover Area frame Survey (LUCAS) dataset to develop a hyperspectral soil Cr content prediction model with good generalizability and accuracy. The optimal DNN model was constructed by optimizing the spectral preprocessing methods and DNN hyperparameters, which achieved good predictive performance for Cr detection, with a correlation coefficient value of 0.79 on the testing set. Four important hyperspectral bands with strong Cr sensitivity (400–439, 1364–1422, 1862–1934, and 2158–2499 nm) were identified by permutation importance and local interpretable model-agnostic explanations. Soil iron oxide and clay mineral content were found to be important factors influencing soil Cr content. The findings of this study provide a feasible method for rapidly determining soil Cr content from hyperspectral data, which can be further refined and applied to large-scale Cr detection in the future.
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