López Eva M, García Miriam, Schuhmacher Marta, Domingo José L
Department of Chemical Engineering, ETSEQ, Rovira i Virgili University, Av. Països Catalans 26, 43007 Tarragona, Spain.
Environ Int. 2008 Oct;34(7):950-8. doi: 10.1016/j.envint.2008.02.005. Epub 2008 Apr 18.
As soil is a natural resource not always renewable, the risk characterization of contaminated soils is an issue of great interest. Artificial Intelligence (AI), based on Decision Support Systems (DSSs), has been developed for a wide range of applications in contaminated soil management. Decision trees have already shown to be easy to interpret and able to treat large scale applications. Fuzzy logic gives an improvement in the perturbations and the variance of the training data, due to the elasticity of fuzzy set formalism. In this study, we have developed a classificatory tool applied to characterize contaminated soil in function of human and environmental risks. Knowledge engineering for constructing the Soil Risk Characterization Decision Support System (SRC-DSS) involves three stages: knowledge acquisition, conceptual design and system implementation. A total of 26 parameters were divided into three groups to facilitate the configuration of the expert system: source attributes, transfer vector attributes, and local properties. Sixteen case studies were evaluated with the SRC-DSS. In comparison with other techniques, the results of the current study have shown that SRC-DDS is an excellent tool to classify and characterize soils according to the associated risk.
由于土壤是一种并非总能再生的自然资源,污染土壤的风险表征是一个备受关注的问题。基于决策支持系统(DSS)的人工智能(AI)已被开发用于污染土壤管理的广泛应用。决策树已被证明易于解释且能够处理大规模应用。由于模糊集形式主义的灵活性,模糊逻辑在训练数据的扰动和方差方面有所改进。在本研究中,我们开发了一种分类工具,用于根据人类和环境风险对污染土壤进行表征。构建土壤风险表征决策支持系统(SRC-DSS)的知识工程包括三个阶段:知识获取、概念设计和系统实施。总共26个参数被分为三组,以方便专家系统的配置:源属性、转移向量属性和局部属性。使用SRC-DSS对16个案例研究进行了评估。与其他技术相比,当前研究结果表明,SRC-DDS是根据相关风险对土壤进行分类和表征的优秀工具。