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Prediction of soil heavy metal distribution using Spatiotemporal Kriging with trend model

机译:基于时空克里金趋势模型的土壤重金属分布预测

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摘要

Soil heavy metal concentrations exhibit significant space-time trends due to their accumulation along the time axis and the varying distances from the pollution sources. Thus, concentration trends cannot be ignored when performing spatiotemporal soil heavy metal predictions in an area. In this work, datasets were used of soil cadmium (Cd) concentrations in the Qingshan district (Wuhan City, Hubei Province, China) sampled during the period 2010-2014. Spatiotemporal Kriging with four Trend models (STKT) and non-separable space-time correlation was implemented to assimilate multi-temporal data in the mapping of Cd distribution within the contaminated soil area. Soil Cd trends were represented by four different space-time polynomial functions, and a non-separable power function-exponential variogram model of Cd distribution was assumed. Plots of the predicted space-time Cd distributions revealed a marked tendency of the Cd concentrations over time to spread from the southwest part to the entire study area (higher soil Cd concentrations are found in the southwest part of the Qingshan area, whereas the temporal Cd trend is characterized by a constant increase from 2010 to 2014). Thus, the maps indicate that the entire study area is contaminated by Cd, a situation that seems to be stable over time. STKT can reduce prediction errors in practically and statistically significant ways. A numerical comparison of the STKT technique vs. the mainstream Spatiotemporal Ordinary Kriging (STOIC) technique showed that STKT can perform better than STOIC when the trend model's goodness of fit to the Cd data was satisfactory (producing minimal data fit error statistics), implying that adequate trend modeling is a key issue for space-time prediction accuracy purposes. In particular, quantitative results obtained at the Qingshan region showed that, by incorporating local Cd values and distance-based dependence structures the STKT techniques produced the best prediction error statistics, resulting in considerable prediction error reductions (the level of which depend on the trend model specification; e.g., in the case of STKT with trend model 3 the improvement comparing to STOIC was almost 30%). Future studies of Cd contamination in the region (sampling design optimization) can benefit from the results of the geostatistical analysis of the present paper (variogram and trend modeling, etc.). (C) 2015 Elsevier Ltd. All rights reserved.
机译:由于土壤重金属在时间轴上的累积以及与污染源之间的距离不同,因此它们表现出明显的时空趋势。因此,在某个地区进行时空土壤重金属预测时,浓度趋势不可忽略。在这项工作中,我们使用了2010-2014年间在青山区(中国湖北省武汉市)采样的土壤镉(Cd)浓度数据集。实施了具有四个趋势模型(STKT)和不可分离的时空相关性的时空克里金法,以吸收污染土壤区域Cd分布图中的多时相数据。土壤中镉的趋势由四个不同的时空多项式函数表示,并假设了一个不可分的幂函数-指数分布的镉分布模型。预测的时空Cd分布图显示了Cd浓度随时间从西南部向整个研究区域扩散的明显趋势(在青山地区的西南部发现较高的土壤Cd浓度,而时空Cd趋势的特点是从2010年到2014年持续增长。因此,这些图表明整个研究区域都被镉污染,这种情况似乎随着时间的推移而稳定。 STKT可以在实际和统计上有效的方式减少预测错误。对STKT技术与主流时空普通Kriging(STOIC)技术的数值比较表明,当趋势模型对Cd数据的拟合优度令人满意(产生最小数据拟合误差统计数据)时,STKT的性能将优于STOIC。适当的趋势建模是时空预测准确性目的的关键问题。特别是,在青山地区获得的定量结果表明,通过结合局部Cd值和基于距离的依存结构,STKT技术产生了最佳的预测误差统计量,从而大大降低了预测误差(其水平取决于趋势模型)规格;例如,在使用趋势模型3的STKT情况下,与STOIC相比,提高了近30%。对该区域中Cd污染的进一步研究(采样设计优化)可以从本文的地统计分析结果(变异函数和趋势建模等)中受益。 (C)2015 Elsevier Ltd.保留所有权利。

著录项

  • 来源
    《Ecological indicators》 |2015年第9期|125-133|共9页
  • 作者单位

    Huazhong Agr Univ, Dept Resources & Environm Informat, Coll Resources & Environm, Wuhan, Peoples R China|Minist Agr, Key Lab Arable Land Conservat Middle & Lower Reac, Beijing, Peoples R China|San Diego State Univ, Dept Geog, San Diego, CA 92182 USA;

    Zhejiang Univ, Ocean Coll, Hangzhou 310058, Zhejiang, Peoples R China;

    Zhejiang Univ, Ocean Coll, Hangzhou 310058, Zhejiang, Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Soil heavy metal; Spatiotemporal; Geostatistics; Kriging; Trend;

    机译:土壤重金属时空地统计学克里格趋势;

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