Developing an ANFIS-PSO Based Model to Estimate Mercury Emission in Combustion Flue Gases

S. Shamshirband, A. Baghban, Masoud Hadipoor, A. Mosavi
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引用次数: 1

Abstract

Accurate prediction of mercury content emitted from fossil-fueled power stations is of utmost important to environmental pollution assessment and hazard mitigation. In this paper, mercury content in the output gas from boilers was predicted using an Adaptive Neuro-Fuzzy Inference System (ANFIS) integrated with particle swarm optimization (PSO). Input parameters were selected from coal characteristics and the operational configuration of boilers. The proposed ANFIS-PSO model is capable of developing a nonlinear model to represent the dependency of flue gas mercury content into the specifications of coal and also the boiler type. In this study, operational information from 82 power plants has been gathered and employed to educate and examine the proposed model. To evaluate the performance of the proposed model the statistical meter of MARE% was implemented, which resulted 0.003266 and 0.013272 for training and testing respectively. Furthermore, relative errors between acquired data and predicted values were between -0.25% and 0.1%, which confirm the accuracy of PSO-ANFIS model.
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基于anfiss - pso模型估算燃烧烟气中汞排放
准确预测化石燃料发电厂排放的汞含量对环境污染评估和减轻危害至关重要。本文采用自适应神经模糊推理系统(ANFIS)和粒子群优化(PSO)相结合的方法对锅炉输出气体中的汞含量进行了预测。输入参数根据煤的特性和锅炉的运行配置进行选择。所提出的anfiss - pso模型能够建立一个非线性模型来表示烟气中汞含量与煤规格和锅炉类型的关系。在本研究中,我们收集了82个发电厂的运行信息,并利用这些信息来教育和检验所提出的模型。为了评价该模型的性能,我们采用了MARE%的统计度量,训练和测试的结果分别为0.003266和0.013272。实测数据与预测值的相对误差在-0.25% ~ 0.1%之间,验证了PSO-ANFIS模型的准确性。
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