College of Agriculture, Guizhou University, Guiyang, 550025, China.
State Key Laboratory of Soil and Sustainable Agriculture, Institute of Soil Science, Chinese Academy of Sciences, Nanjing, 210008, China.
Bull Environ Contam Toxicol. 2024 Aug 3;113(2):22. doi: 10.1007/s00128-024-03911-z.
To achieve food security in a contaminated agricultural land, the remediation areas usually need more samples to obtain accurate contamination information and implement appropriate measures. In this study, we propose an optimal encryption sampling design to instead of the detailed survey, which is determined by the variation of heavy metals and the technology capability of remediation, to guide soil sampling for accurately remediation in the potential remediation-effective areas (PRA). The coefficient of screening variation threshold (CSVT), considering spatial variation, technology capacity and acceptable error of sampling, together with the spatial cyclic statistics method of neighbourhood analysis, is introduced to identify and delineate the PRA. Both of the hypothetical analysis and application case studies are conducted to illustrate the advantages and disadvantages of the optimization. The results show that, compared with the detailed survey, the optimal design shows a lower overall accuracy due to its sparsely sampling at the clean area, but it exhibits a similar effect of accurately prediction in boundary delineation and further classification in the PRA in both simulation and application studies. This work provides an effective method for subsequent accurate remediation at the investigation stage and valuable insights into application combination of technology capacity and contaminated agricultural land investigation.
为了实现受污染农田的粮食安全,修复区域通常需要更多的样本以获取准确的污染信息并采取适当的措施。在本研究中,我们提出了一种最优加密抽样设计,以替代详细调查,这是由重金属的变化和修复技术能力决定的,以指导潜在修复有效区域(PRA)的准确修复土壤采样。引入了考虑空间变异、技术能力和可接受采样误差的筛选变异系数阈值(CSVT),以及邻域分析的空间循环统计方法,用于识别和划定 PRA。通过假设分析和应用案例研究,说明了优化的优缺点。结果表明,与详细调查相比,由于在清洁区域稀疏采样,最优设计的整体精度较低,但在模拟和应用研究中,在边界划定和进一步分类的准确预测方面,在 PRA 中表现出相似的效果。这项工作为调查阶段的后续准确修复提供了一种有效的方法,并为技术能力和受污染农田调查的应用组合提供了有价值的见解。