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首页> 外文期刊>Applied Soft Computing >Energy-efficient steelmaking-continuous casting scheduling problem with temperature constraints and its solution using a multi-objective hybrid genetic algorithm with local search
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Energy-efficient steelmaking-continuous casting scheduling problem with temperature constraints and its solution using a multi-objective hybrid genetic algorithm with local search

机译:节能炼钢 - 连续铸造调度问题,温度约束及其解决本地搜索的多目标混合遗传算法

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摘要

With the increasing energy price and the urgent demand of manufacturing enterprises for energy conservation, energy-efficient scheduling (EES) technology has been widely investigated and applied in industry and academia. The steelmaking-continuous casting (SCC) production is the main energy-consuming sector and the key process for quality control of steel manufacturing. Due to the high-temperature characteristics of SCC production, the temperature drop deriving from nonprocessing process could directly lead to energy loss and increase the energy consumption of each procedure, which has important influence on the total energy consumption. Therefore, the energy-efficient steelmaking-continuous casting scheduling problem with temperature constraints (EESCCSPT) was concerned and a multi-objective mathematical programming model was introduced to minimize the penalty of due date deviation and the extra energy consumption measured by temperature drop. Comparing to the general scheduling problem, the constraint of minimum casting superheat and the constraint of target tapping temperature generated by the high-temperature technical requirements were directly considered to ensure schedule feasibility in terms of temperature. A multi-objective hybrid genetic algorithm combined with local search (MOHGALS) was presented, in which the enhanced evolutionary mechanisms combined with the improved genetic operators and the local search were also designed. Results of computational experiments showed that MOHGALS was more feasible and effective than NSGA-II and SPEA2 on the EESCCSPT. (C) 2020 Elsevier B.V. All rights reserved.
机译:随着能源价格的增加和生产企业的迫切需求,节能调度(EES)技术已被广泛调查和应用于工业和学术界。炼钢 - 连续铸造(SCC)生产是主要的能耗部门和钢制造业质量控制的关键方法。由于SCC生产的高温特性,从非处理过程中得出的温度降低可能直接导致能量损失,并提高每个程序的能耗,这对总能耗产生了重要影响。因此,涉及温度约束(EESCCSPT)的节能炼钢连续铸造调度问题,并引入了多目标数学规划模型,以最大限度地减少截止日期偏差的惩罚以及通过温度下降测量的额外能耗。比较与一般调度问题相比,直接考虑了最小铸造过热的约束和由高温技术要求产生的目标攻丝温度的约束,以确保在温度方面的时间表可行性。提出了一种与本地搜索(MOHGALS)结合的多目标混合遗传算法,其中设计了增强的进化机制与改进的遗传运营商和本地搜索相结合。计算实验结果表明,MoHGALS比NSGA-II和EESCCSPT的SPEA2更加可行,有效。 (c)2020 Elsevier B.V.保留所有权利。

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