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Multi-objective particle swarm optimization with preference information and its application in electric arc furnace steelmaking process

机译:偏好信息的多目标粒子群算法及其在电弧炉炼钢中的应用

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摘要

In this paper, multi-objective particle swarm optimization with preference information (MOPSO-PI) has been proposed. In the proposed algorithm, the information entropy is employed for measuring the probability distribution of particles; the user’s preference information is represented as the ranking of each particle through the possible matrix. The optimal procedure is guided by the preference information since the global best performance of particle is randomly chosen among non-dominated solutions with higher ranking value in each iteration. Finally, the MOPSO-PI is applied to optimize the steelmaking process; the power supply curve obtained reduces the electric energy consumption, shortens the smelting time and prolongs the lifespan of the furnace lining. The application results show the effectiveness of the proposed algorithm.
机译:本文提出了带有偏好信息的多目标粒子群算法(MOPSO-PI)。该算法利用信息熵来度量粒子的概率分布。用户的偏好信息表示为每个粒子在可能的矩阵中的排名。最优过程由偏好信息指导,因为粒子的全局最佳性能是在每次迭代中从排名较高的非支配解决方案中随机选择的。最后,将MOPSO-PI用于优化炼钢工艺。所获得的电源曲线减少了电能消耗,缩短了熔炼时间,并延长了炉衬的使用寿命。应用结果表明了该算法的有效性。

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