Litcius/Paper detail

Granular-Causality-Based Byproduct Energy Scheduling for Energy-Intensive Enterprise

Feng Jin, Linqing Wang, Jun Zhao, Wei Wang, Quanli Liu

2020IEEE Transactions on Automation Science and Engineering25 citationsDOI

Abstract

The energy-intensive enterprises (EIEs), such as iron and steel enterprises, account for a significant part of the total energy consumption in society. The Linz-Donawitz converter gas (LDG) is a kind of crucial byproduct energy resource recycled during the steelmaking process, and its reasonable scheduling can effectively reduce the LDG emission and increase its efficiency. In this study, a granular-causality-based scheduling approach for the LDG system in steel industry is proposed. A granular causality technique is modeled to confirm the casual relationship of the LDG system based on the discontinuous production characteristic, in which a causality diagram is established and the phase space of the training sample is reconstructed to improve the prediction accuracy. Then, a multioutput least-square support vector machine model is constructed for the prediction of the gas tank levels. In order to consider the impact of multiple solutions on the scheduling result in a period of time, a scheduling objective function that combines the economy criterion and the safety one is designed and optimized by a modified particle swarm optimization (PSO) algorithm. The validation experiments using real-world data coming from the energy data center of a steel plant are carried out, and the results indicate that the proposed method exhibits reliable performance. Moreover, an application software system based on the proposed method is developed and implemented, which demonstrates the applicability of the proposed approach.

Topics & Concepts

Particle swarm optimizationScheduling (production processes)Mathematical optimizationJob shop schedulingComputer scienceEngineeringMathematicsEmbedded systemRouting (electronic design automation)Process Optimization and IntegrationIron and Steelmaking ProcessesCatalysis and Hydrodesulfurization Studies