Artificial intelligence model of fuel blendings as a step toward the zero emissions optimization of a 660 MWe supercritical power plant performance

Author:

Amjad Ahsan1,Ashraf Waqar Muhammad2ORCID,Uddin Ghulam Moeen3,Krzywanski Jaroslaw4ORCID

Affiliation:

1. Huaneng Shandong Ruyi (Pakistan) Energy Pvt. Ltd. Sahiwal Coal Power Complex Sahiwal Punjab Pakistan

2. The Sargent Center for Process Systems Engineering, Department of Chemical Engineering University College London London UK

3. Department of Mechanical Engineering University of Engineering & Technology Lahore Punjab Pakistan

4. Department of Advanced Computational Methods Jan Dlugosz University in Czestochowa Czestochowa Poland

Abstract

AbstractAccurately predicting fuel blends' lower heating values (LHV) is crucial for optimizing a power plant. In this paper, we employ multiple artificial intelligence (AI) and machine learning‐based models for predicting the LHV of various fuel blends. Coal of two different ranks and two types of biomass is used in this study. One was the South African imported bituminous coal, and the other was lignite thar coal extracted from the Thar Coal Block‐2 mine by Sind Engro Coal Mining Company, Pakistan. Two types of biomass, that is, sugarcane bagasse and rice husk, were obtained locally from a sugar mill and rice mill located in the vicinity of Sahiwal, Punjab. Bituminous coal mixture with other coal types and both types of biomass are used with 10%, 20%, 30%, 40%, and 50% weight fractions, respectively. The calculation and model development procedure resulted in 91 different AI‐based models. The best is the Ridge Regressor, a high‐level end‐to‐end approach for fitting the model. The model can predict the LHV of the bituminous coal with lignite and biomass under a vast share of fuel blends.

Publisher

Wiley

Subject

General Energy,Safety, Risk, Reliability and Quality

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