现代化工2024,Vol.44Issue(z2) :348-354.DOI:10.16606/j.cnki.issn0253-4320.2024.S2.061

基于分布式证据学习算法的脱硫浆液品质监测模型研究

An evidential condition monitoring model for desulfurization slurry

徐侠 朱万进 薛钧赢 苏志刚 郝勇生
现代化工2024,Vol.44Issue(z2) :348-354.DOI:10.16606/j.cnki.issn0253-4320.2024.S2.061

基于分布式证据学习算法的脱硫浆液品质监测模型研究

An evidential condition monitoring model for desulfurization slurry

徐侠 1朱万进 1薛钧赢 1苏志刚 2郝勇生2
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作者信息

  • 1. 国能徐州发电有限公司,江苏徐州 221135
  • 2. 东南大学,江苏 南京 210096
  • 折叠

摘要

基于分布式计算框架与证据学习算法,对脱硫浆液品质建立了健康品质监测模型,突破了海量脱硫系统运行数据对基于传统机器学习的浆液品质监测方法所带来的计算瓶颈,并利用该模型对江苏某1 000 MW电厂的浆液品质进行了在线监测.测试表明,所建立的监测模型能够准确监测出脱硫浆液品质的恶化,与其他3类先进监测方法对比结果说明了所建立模型能够达到最优的报警及时性.将分布式计算框架结合证据理论应用于脱硫浆液品质监测是可行的,为脱硫浆液品质监测提供了一种新方法.

Abstract

Based on distributed computing framework and evidence learning algorithm,a robust condition monitoring model is established for desulfurization slurry,which overcomes the computational bottlenecks brought by massive operational data of desulfurization systems to traditional machine learning-based slurry condition monitoring methods.This model is utilized to perform online monitoring of slurry condition in a 1 000 MW power plant in Jiangsu,China.Test results indicate that the monitoring model established is able to detect the deterioration of desulfurization slurry condition accurately.Through comparing with three other advanced monitoring methods,it is demonstrated that the model established can achieve the optimal alarm timeliness.It is feasible to apply the integration between distributed computing framework and evidence theory in desulfurization slurry condition monitoring,providing a new approach for similar monitoring.

关键词

脱硫浆液/状态监测/证据理论/分布式计算框架

Key words

desulfurization slurry/condition monitoring/evidence theory/distributed computing framework

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基金项目

国家自然科学基金项目(52076037)

出版年

2024
现代化工
中国化工信息中心

现代化工

CSTPCDCSCD北大核心
影响因子:0.553
ISSN:0253-4320
参考文献量25
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