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Identifying the influencing factors controlling the spatial variation of heavy metals in suburban soil using spatial regression models

机译:利用空间回归模型识别影响郊区土壤重金属空间变化的因素

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Determining the factors that control the spatial variation of heavy metals in suburban soil is important in identifying and preventing pollution sources. Soil intrinsic factors combined with environmental variables can effectively explain the spatial distribution of heavy metals. Compared with classical statistical methods, such as multiple linear regression (MLR) models, spatial regression models that can cope with the spatial dependence of heavy metals have greater potential in establishing an accurate relationship between influencing factors and heavy metals. This study aims to identify the factors that influence the spatial variation of lead (Pb) and cadmium (Cd) in 138 topsoil samples from the suburbs of Wuhan City, China, by using spatial regression models with MLR as the reference. Moran's I values reveal the spatial autocorrelation of Pb and Cd. The spatial lag model (SLM) outperforms MLR and has higher R~2 and lower spatial dependence of residuals. The significant coefficients of the spatial lag term in SLMs indicate that the spatial variation of Pb and Cd depends on their surrounding observations. SLM results show that Pb content depends on the distance from the nearest industrial enterprises and suggest that industrial pollution is the main source of Pb. Cd content depends on pH, soil organic matter, and the topographic wetness index, indicating that intrinsic and topographical factors contribute to the spatial variation of Cd. Parent materials and application of phosphorus fertilizer are the most likely sources of Cd. The findings highlight the spatial autocorrelation of heavy metals and the effects of intrinsic factors and environmental variables on the spatial variation of such metals. Moreover, this study reveals the effectiveness of spatial regression models in identifying the influencing factors of heavy metals.
机译:确定控制郊区土壤中重金属空间变化的因素对于识别和预防污染源很重要。土壤内在因素与环境变量相结合可以有效地解释重金属的空间分布。与经典的统计方法(例如多元线性回归(MLR)模型)相比,可以应对重金属的空间依赖性的空间回归模型在建立影响因素与重金属之间的精确关系方面具有更大的潜力。本研究旨在通过以MLR为参考的空间回归模型,找出影响武汉市郊区138个表层土壤样品中铅(Pb)和镉(Cd)空间变化的因素。 Moran的I值揭示了Pb和Cd的空间自相关。空间滞后模型(SLM)优于MLR,具有较高的R〜2和较低的残差空间依赖性。 SLM中空间滞后项的显着系数表明,Pb和Cd的空间变化取决于其周围的观测结果。 SLM结果表明,铅的含量取决于与最近工业企业的距离,并表明工业污染是铅的主要来源。 Cd的含量取决于pH值,土壤有机质和地形湿度指数,这表明内在和地形因素会导致Cd的空间变化。母料和磷肥的施用是最可能的镉来源。这些发现突出了重金属的空间自相关性以及内在因素和环境变量对此类金属空间变异的影响。此外,这项研究揭示了空间回归模型在确定重金属影响因素方面的有效性。

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