Developing an ANFIS PSO Model to Estimate Mercury Emission in Combustion Flue Gases
Shahaboddin Shamshirband, Masoud Hadipoor, Alireza Baghban, Amir, Mosavi, Jozsef Bukor, Annamaria Varkonyi Koczy

TL;DR
This paper presents an ANFIS PSO model that accurately predicts mercury emissions from power plant boilers based on coal and operational parameters, aiding environmental pollution control.
Contribution
It introduces a novel integration of ANFIS with PSO for mercury emission prediction, improving accuracy over existing methods.
Findings
High prediction accuracy confirmed by low MARE scores
Model effectively captures nonlinearity in mercury emissions
Relatively low errors between predicted and actual mercury content
Abstract
Accurate prediction of mercury content emitted from fossil fueled power stations is of utmost important for environmental pollution assessment and hazard mitigation. In this paper, mercury content in the output gas of power stations boilers was predicted using adaptive neuro fuzzy inference system method integrated with particle swarm optimization. The input parameters of the model include coal characteristics and the operational parameters of the boilers. The dataset has been collected from a number of power plants and employed to educate and examine the proposed model. To evaluate the performance of the proposed ANFIS PSO model the statistical meter of MARE was implemented. Furthermore, relative errors between acquired data and predicted values presented, which confirm the accuracy of the model to deal nonlinearity and representing the dependency of flue gas mercury content into the…
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