Artificial Intelligence-Based Emission Reduction Strategy for Limestone Forced Oxidation Flue Gas Desulfurization System

Author:

Uddin Ghulam Moeen1,Arafat Syed Muhammad1,Ashraf Waqar Muhammad23,Asim Muhammad1,Bhutta Muhammad Mahmood Aslam1,Jatoi Haseeb Ullah Khan4,Niazi Sajawal Gul1,Jamil Ahsaan3,Farooq Muhammad1,Ghufran Muhammad1,Jawad Muhammad1,Hayat Nasir1,Jie Wang3,Chaudhry Ijaz Ahmad5,Zeid Ibrahim6

Affiliation:

1. Department of Mechanical Engineering, UET, Lahore, Punjab 54890, Pakistan

2. Department of Mechanical Engineering, UET, Lahore, Punjab 54890, Pakistan;

3. Huaneng Shandong Ruyi (Pakistan) Energy Pvt. Ltd. Sahiwal Coal Power Complex, Sahiwal, Punjab 57000, Pakistan

4. Institute of Chemical Technology, University of Leipzig, 04103 Leipzig, Germany

5. Department of Industrial Engineering, University of Management and Technology, Lahore, Punjab 54770, Pakistan

6. Department of Mechanical and Industrial Engineering, Northeastern University, Boston, MA 02115

Abstract

Abstract The emissions from coal power plants have serious implication on the environment protection, and there is an increasing effort around the globe to control these emissions by the flue gas cleaning technologies. This research was carried out on the limestone forced oxidation (LSFO) flue gas desulfurization (FGD) system installed at the 2*660 MW supercritical coal-fired power plant. Nine input variables of the FGD system: pH, inlet sulfur dioxide (SO2), inlet temperature, inlet nitrogen oxide (NOx), inlet O2, oxidation air, absorber slurry density, inlet humidity, and inlet dust were used for the development of effective neural network process models for a comprehensive emission analysis constituting outlet SO2, outlet Hg, outlet NOx, and outlet dust emissions from the LSFO FGD system. Monte Carlo experiments were conducted on the artificial neural network process models to investigate the relationships between the input control variables and output variables. Accordingly, optimum operating ranges of all input control variables were recommended. Operating the LSFO FGD system under optimum conditions, nearly 35% and 24% reduction in SO2 emissions are possible at inlet SO2 values of 1500 mg/m3 and 1800 mg/m3, respectively, as compared to general operating conditions. Similarly, nearly 42% and 28% reduction in Hg emissions are possible at inlet SO2 values of 1500 mg/m3 and 1800 mg/m3, respectively, as compared to general operating conditions. The findings are useful for minimizing the emissions from coal power plants and the development of optimum operating strategies for the LSFO FGD system.

Publisher

ASME International

Subject

Geochemistry and Petrology,Mechanical Engineering,Energy Engineering and Power Technology,Fuel Technology,Renewable Energy, Sustainability and the Environment

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