Prediction of Energy Consumption in a Coal-Fired Boiler Based on MIV-ISAO-LSSVM

Author:

Zhang Jiawang1ORCID,Ma Xiaojing1,Cheng Zening2,Zhou Xingchao3

Affiliation:

1. College of Electrical Engineering, Xinjiang University, Urumqi 830047, China

2. Zhundong Energy Research Institute, Xinjiang Tianchi Energy Co., Ltd., Changji 831100, China

3. Guodian Power Datong Hudong Power Generation Co., Ltd., Datong 037000, China

Abstract

Aiming at the problem that the energy consumption of the boiler system varies greatly under the flexible peaking requirements of coal-fired units, an energy consumption prediction model for the boiler system is established based on a Least-Squares Support Vector Machine (LSSVM). First, the Mean Impact Value (MIV) algorithm is used to simplify the input characteristics of the model and determine the key operating parameters that affect energy consumption. Secondly, the Snow Ablation Optimizer (SAO) with tent map, adaptive t-distribution, and the opposites learning mechanism is introduced to determine the parameters in the prediction model. On this basis, based on the operation data of an ultra-supercritical coal-fired unit in Xinjiang, China, the boiler energy consumption dataset under variable load is established based on the theory of fuel specific consumption. The proposed prediction model is used to predict and analyze the boiler energy consumption, and a comparison is made with other common prediction methods. The results show that compared with the LSSVM, BP, and ELM prediction models, the average Relative Root Mean Squared Errors (aRRMSE) of the LSSVM model using ISAO are reduced by 2.13%, 18.12%, and 40.3%, respectively. The prediction model established in this paper has good accuracy. It can predict the energy consumption distribution of the boiler system of the ultra-supercritical coal-fired unit under variable load more accurately.

Funder

Xinjiang Uygur Autonomous Region Key Research and Development Task Special Project

Xinjiang Uygur Autonomous Region Tianshan Talent Training Plan

Xinjiang Uygur Autonomous Region Major Science and Technology Special Project

China College Students’ Innovative Entrepreneurial Training Plan Program

Publisher

MDPI AG

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