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Modelling sulphur dioxide levels of Konya city using artificial intelligent related to ozone, nitrogen dioxide and meteorological factors

机译:利用与臭氧,二氧化氮和气象因素有关的人工智能对科尼亚市的二氧化硫水平进行建模

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摘要

Increasing industrial developments increased the environmental pollution problems in many cities of the world. Air quality modelling and indexes are used to introduce the information on local air quality indicators in polluted regions. Estimation and monitoring of air quality in the city centres are important due to environmental health and comfort of human-related topics. Air quality approximation is a complicate subject that artificial intelligent techniques are successfully used for modelling the complicated and nonlinear approximation problems. In present study, artificial neural network and an adaptive neuro-fuzzy logic method developed to approximate the impact of certain environmental conditions on air quality and sulphur dioxide pollution level and used with this study in Konya city centre. Data of sulphur dioxide concentrations were collected from 15 selected points of Konya city for prediction of air quality. Using air quality standards, air quality was discussed by considering the sulphur dioxide concentration as independent variables with meteorological parameters. Different meteorological parameters were used for investigation of pollution relation. One of the important modelling tools, adaptive network-based fuzzy inference system model, was used to assess performance by a number of checking data collected from different sampling stations in Konya. The outcomes of adaptive network-based fuzzy inference system model was evaluated by fuzzy quality charts and compared to the results obtained from Turkey and Environmental Protection Agency air quality standards. From the present results, fuzzy rule-based adaptive network-based fuzzy inference system model is a valuable tool prediction and assessment of air quality and tends to propagate accurate results.
机译:工业发展的增长加剧了世界许多城市的环境污染问题。空气质量建模和指数用于介绍污染地区当地空气质量指标的信息。由于环境健康和人类相关主题的舒适性,对市中心的空气质量进行估计和监视非常重要。空气质量逼近是复杂的课题,人工智能技术已成功用于建模复杂的非线性逼近问题。在本研究中,开发了人工神经网络和自适应神经模糊逻辑方法来近似估算某些环境条件对空气质量和二氧化硫污染水平的影响,并在科尼亚市中心与这项研究一起使用。从科尼亚市的15个选定地点收集了二氧化硫浓度数据,以预测空气质量。使用空气质量标准,通过将二氧化硫浓度作为具有气象参数的自变量来讨论了空气质量。不同的气象参数被用于调查污染关系。重要的建模工具之一是基于自适应网络的模糊推理系统模型,用于通过从科尼亚(Konya)不同采样站收集的大量检查数据来评估性能。通过模糊质量图评估基于自适应网络的模糊推理系统模型的结果,并将其与从土耳其和环境保护局的空气质量标准中获得的结果进行比较。从目前的结果来看,基于模糊规则的自适应网络模糊推理系统模型是一种有价值的空气质量预测和评估工具,并且倾向于传播准确的结果。

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