Shenyang Jianzhu University, Shenyang, 110168, China.
Environ Monit Assess. 2024 Feb 29;196(3):318. doi: 10.1007/s10661-024-12460-1.
A traditional grid model for soil sampling may suffer from poor efficiency and low accuracy. With a nonferrous metal processing plant as the study area, a three-dimensional kriging interpolation model was built based on this plant's preliminary investigation data for arsenic (As), and a detailed survey sampling programme was proposed. The sampling density at the pollution interval of the surface soil was estimated by the coefficient of variation method, and the sampling depth was determined by the pollution interval of the vertical prediction results. The results showed that the encrypted soil sampling distribution optimisation method obtains greater pointing accuracy with fewer points. The sampling accuracy was 87.62% after optimising the depth of pointing. Moreover, this approach could save 66.13% of the sampling costs and 56.93% of the testing costs compared to a full deployment programme. This study provides a new and cost-effective method for predicting the extent of contamination exceedance at a site and provides valuable information to guide post-remediation strategies for contaminated sites.
传统的土壤采样网格模型可能存在效率低、精度差的问题。以某有色金属加工厂为研究区域,根据该区域的初步调查数据,采用三维克立格插值模型对砷(As)进行了详细的调查采样方案设计。利用变异系数法估算表层土壤污染间隔的采样密度,根据垂直预测结果的污染间隔确定采样深度。结果表明,加密土壤采样分布优化方法用较少的点数获得了更高的指向精度。优化后的采样深度精度为 87.62%。与全面部署方案相比,该方法可节省 66.13%的采样成本和 56.93%的测试成本。本研究为预测场地污染超标范围提供了一种新的、具有成本效益的方法,为污染场地的后期修复策略提供了有价值的信息。