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预测中国成都平原典型地区的土壤镉分布。

Prediction of soil cadmium distribution across a typical area of Chengdu Plain, China.

机构信息

College of Resources, Sichuan Agricultural University, Chengdu, 611130, China.

Chengdu Testing Center of Soil and Fertilizer, Chengdu, 610041, China.

出版信息

Sci Rep. 2017 Jul 28;7(1):7115. doi: 10.1038/s41598-017-07690-y.

Abstract

A suitable method and appropriate environmental variables are important for accurately predicting heavy metal distribution in soils. However, the classical methods (e.g., ordinary kriging (OK)) have a smoothing effect that results in a tendency to neglect local variability, and the commonly used environmental variables (e.g., terrain factors) are ineffective for improving predictions across plains. Here, variables were derived from the obvious factors affecting soil cadmium (Cd), such as road traffic, and were used as auxiliary variables for a combined method (HASM_RBFNN) that was developed using high accuracy surface modelling (HASM) and radial basis function neural network (RBFNN) model. This combined method was then used to predict soil Cd distribution in a typical area of Chengdu Plain in China, considering the spatial non-stationarity of the relationships between soil Cd and the derived variables based on 339 surface soil samples. The results showed that HASM_RBFNN had lower prediction errors than OK, regression kriging (RK) and HASM_RBFNN, which didn't consider the spatial non-stationarity of the soil Cd-derived variables relationships. Furthermore, HASM_RBFNN provided improved detail on local variations. The better performance suggested that the derived environmental variables were effective and HASM_RBFNN was appropriate for improving the prediction of soil Cd distribution across plains.

摘要

对于准确预测土壤中重金属分布而言,合适的方法和适当的环境变量十分重要。然而,经典方法(例如普通克里金法(OK))具有平滑效应,这导致其倾向于忽略局部变异性,而常用的环境变量(例如地形因素)对于提高平原地区的预测效果并不有效。在这里,我们从明显影响土壤镉(Cd)的因素(例如道路交通)中提取了变量,并将其作为组合方法(HASM_RBFNN)的辅助变量,该方法结合了高精度表面建模(HASM)和径向基函数神经网络(RBFNN)模型。然后,我们考虑到基于 339 个表层土壤样本的土壤 Cd 与所提取变量之间关系的空间非平稳性,使用该组合方法预测了中国成都平原典型地区的土壤 Cd 分布。结果表明,与 OK、回归克里金法(RK)和未考虑土壤 Cd 衍生变量关系空间非平稳性的 HASM_RBFNN 相比,HASM_RBFNN 的预测误差更低。此外,HASM_RBFNN 还能更好地反映局部变化的细节。更好的性能表明,所提取的环境变量是有效的,HASM_RBFNN 适合提高平原地区土壤 Cd 分布的预测效果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b748/5533786/bc487c335098/41598_2017_7690_Fig1_HTML.jpg

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