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Integration of cancer and non-cancer human health risk assessment for Aniline enriched groundwater: a fuzzy inference system-based approach

机译:苯胺富集地下水的癌症和非癌症人体健康风险评估的整合:基于模糊推理系统的方法

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This study outlines a methodological approach to evaluate the environmental risk from integrating data of Aniline in groundwater near to coal-based industries using fuzzy logic, and a comprehensive artificial intelligence approach and the results were validated using conventional risk assessment approach. The Aniline is well-known carcinogenic pollutant released from coal-based industries, so to understand the associated cancer and non-cancer risks (CR and NCR), 15 groundwater samples were analyzed for Aniline, whose concentration was found within the range 0.10-0.34 mg/L, which is up to 68 times higher than the permissible limit. The alkaline pH of water samples resulted in reduced attractive forces between the soil particles with Aniline, and thereby increased percolation of Aniline into the groundwater. Women were at least risk in terms of Mamdani cancer risk (MCR) and Mamdani hazard index (MHI) which was observed up to 1.04E-04 and 3.04, respectively, while maximum MCR and MHI were observed in case of children, i.e., 1.21-E04 and 3.26, respectively. The newly proposed fuzzy inference rule-based Mamdani combined index (MCI) depicts the combined effect of both CR and NCR and was found to be highly correlated with each other. The detailed comparison analysis exhibited that the fuzzy inference rule-based MCI has better resolving ability to find out priority risk prediction over conventional methods under efficient parameter uncertainty control. Hence, it can be concluded that the fuzzy analyses can reflect human considerations and expertise in indices, empowering them to manage nonlinear, questionable, uncertain and subjective data. Therefore, this tool can predict the more meaningful risk estimation of any pollutants on human health.
机译:本研究概述了使用模糊逻辑将地下水中的地下水中苯胺数据与地下水中的数据集成的方法论方法,以及使用常规风险评估方法进行综合人工智能方法和结果。苯胺是众所周知的致癌污染物,从煤炭产业中释放,因此了解相关的癌症和非癌症风险(Cr和NCR),对苯胺分析了15种地下水样品,其浓度在0.10-0.34范围内。 Mg / L,比允许极限高出68倍。水样的碱性pH值导致与苯胺的土壤颗粒之间的吸引力降低,从而将苯胺的渗流增加到地下水中。妇女在Mamdani癌症风险(MAMDANI危险指数(MHI)方面至少观察到最高为1.04E-04和3.04的风险,而在儿童的情况下观察到最大MCR和MHI,即1.21 -e04和3.26分别。基于新提出的模糊推理规则的Mamdani组合指数(MCI)描绘了CR和NCR的组合效应,并被发现彼此高度相关。详细的比较分析表明,基于模糊推理规则的MCI具有更好地解决在有效参数不确定性控制下通过传统方法查找优先级风险预测的能力。因此,可以得出结论,模糊分析可以反映人类的考虑因素和指数专业知识,使他们能够管理非线性,可疑,不确定和主观数据。因此,该工具可以预测任何对人类健康污染物的风险估算更为有意义的风险估算。

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