Prediction of SO2 concentration at desulfurization outlet of thermal power units based on reliefF-SC and ISAO-ARELM
Ze Dong,
Xinxin Zhao,
Jianan Huang
et al.
Abstract:The flue gas desulfurization (FGD) system of thermal power units operates under complex conditions and exhibits significant nonlinearity. Establishing an accurate prediction model for outlet SO2 concentration is crucial for optimizing the control of the FGD system. The study constructs an autoregressive limit learning machine (ARELM) prediction model for SO2 concentration at the desulfurization outlet of thermal power units, leveraging the improved feature selection algorithm ReliefF-SC and the improved snow a… Show more
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