Suppr超能文献

基于光谱特征筛选和多策略光谱融合的土壤铅浓度快速估算

Rapid Estimation of Soil Pb Concentration Based on Spectral Feature Screening and Multi-Strategy Spectral Fusion.

作者信息

Zhang Zhenlong, Wang Zhe, Luo Ying, Zhang Jiaqian, Tian Duan, Zhang Yongde

机构信息

College of Environment and Resources, Southwest University of Science & Technology, Mianyang 621010, China.

出版信息

Sensors (Basel). 2023 Sep 6;23(18):7707. doi: 10.3390/s23187707.

Abstract

Traditional methods for obtaining soil heavy metal content are expensive, inefficient, and limited in monitoring range. In order to meet the needs of soil environmental quality evaluation and health status assessment, visible near-infrared spectroscopy and XRF spectroscopy for monitoring heavy metal content in soil have attracted much attention, because of their rapid, nondestructive, economical, and environmentally friendly features. The use of either of these spectra alone cannot meet the accuracy requirements of traditional measurements, while the synergistic use of the two spectra can further improve the accuracy of monitoring heavy metal lead content in soil. Therefore, this study applied various spectral transformations and preprocessing to vis-NIR and XRF spectra; used the whale optimization algorithm (WOA) and competitive adaptive re-weighted sampling (CARS) algorithms to identify feature spectra; designed a combination variable model (CVM) based on multi-layer spectral data fusion, which improved the spectral preprocessing and spectral feature screening process to increase the efficiency of spectral fusion; and established a quantitative model for soil Pb concentration using partial least squares regression (PLSR). The estimation performance of three spectral fusion strategies, CVM, outer-product analysis (OPA), and Granger-Ramanathan averaging (GRA), was discussed. The results showed that the accuracy and efficiency of the CARS algorithm in the fused spectra estimation model were superior to those of the WOA algorithm, with an average coefficient of determination (R) value of 0.9226 and an average root mean square error (RMSE) of 0.1984. The accuracy of the estimation models established, based on the different spectral types, to predict the Pb content of the soil was ranked as follows: the CVM model > the XRF spectral model > the vis-NIR spectral model. Within the CVM fusion strategy, the estimation model based on CARS and PLSR (CARS_D1+D2) performed the best, with R and RMSE values of 0.9546 and 0.2035, respectively. Among the three spectral fusion strategies, CVM had the highest accuracy, OPA had the smallest errors, and GRA showed a more balanced performance. This study provides technical means for on-site rapid estimation of Pb content based on multi-source spectral fusion and lays the foundation for subsequent research on dynamic, real-time, and large-scale quantitative monitoring of soil heavy metal pollution using high-spectral remote sensing images.

摘要

获取土壤重金属含量的传统方法成本高、效率低且监测范围有限。为满足土壤环境质量评价和健康状况评估的需求,用于监测土壤重金属含量的可见近红外光谱和X射线荧光光谱因其快速、无损、经济和环保的特点而备受关注。单独使用这两种光谱中的任何一种都无法满足传统测量的精度要求,而将两种光谱协同使用可以进一步提高土壤中重金属铅含量的监测精度。因此,本研究对可见近红外光谱和X射线荧光光谱进行了各种光谱变换和预处理;使用鲸鱼优化算法(WOA)和竞争性自适应重加权采样(CARS)算法识别特征光谱;设计了基于多层光谱数据融合的组合变量模型(CVM),改进了光谱预处理和光谱特征筛选过程,提高了光谱融合效率;并使用偏最小二乘回归(PLSR)建立了土壤铅浓度定量模型。讨论了三种光谱融合策略,即CVM、外积分析(OPA)和格兰杰-拉马纳坦平均法(GRA)的估计性能。结果表明,融合光谱估计模型中CARS算法的精度和效率优于WOA算法,平均决定系数(R)值为0.9226,平均均方根误差(RMSE)为0.1984。基于不同光谱类型建立的预测土壤铅含量的估计模型的精度排序如下:CVM模型>X射线荧光光谱模型>可见近红外光谱模型。在CVM融合策略中,基于CARS和PLSR的估计模型(CARS_D1+D2)表现最佳,R值和RMSE值分别为0.9546和0.2035。在三种光谱融合策略中,CVM的精度最高,OPA的误差最小,GRA表现较为均衡。本研究为基于多源光谱融合的土壤铅含量现场快速估计提供了技术手段,为后续利用高光谱遥感影像进行土壤重金属污染动态、实时、大规模定量监测的研究奠定了基础。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d978/10538168/96668341130c/sensors-23-07707-g001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验