A Bayesian Networks Structure Learning and Reasoning-Based Byproduct Gas Scheduling in Steel Industry
Release time:2019-03-09
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Indexed by:期刊论文
First Author:Zhao, Jun
Correspondence Author:Zhao, J (reprint author), Dalian Univ Technol, Sch Control Sci & Engn, Dalian 116023, Peoples R China.
Co-author:Wang, Wei,Sun, Kan,Liu, Ying
Date of Publication:2014-10-01
Journal:IEEE TRANSACTIONS ON AUTOMATION SCIENCE AND ENGINEERING
Included Journals:SCIE、EI、Scopus
Document Type:J
Volume:11
Issue:4
Page Number:1149-1154
ISSN No.:1545-5955
Key Words:Byproduct gas system; Bayesian network; dynamic scheduling; structural
learning and reasoning
Abstract:It is very crucial for the byproduct gas system in steel industry to perform an accurate and timely scheduling, which enables to reasonably utilize the energy resources and effectively reduce the production cost of enterprises. In this study, a novel data-driven-based dynamic scheduling thought is proposed for the realtime gas scheduling, in which a probability relationship described by a Bayesian network is modeled to determine the adjustable gas users that impact on the gas tanks level, and to give their scheduling amounts online by maximizing the posterior probability of the users' operational statuses. For the practical applicability, the obtained scheduling solution can be further verified by a recurrent neural network reported in literature. To indicate the effectiveness of the proposed data-driven scheduling method, the real gas flow data coming from a steel plant in China are employed, and the experimental results indicate that the proposed method can provide real-time and scientific gas scheduling solution for the energy system of steel industry.
Translation or Not:no