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A Multi-objective Optimization Model for Alloy Addition in BOS Process Based on ESN and Modified MOPSO

机译:基于ESN和改进的MOPSO的BOS工艺合金添加多目标优化模型

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This paper proposed a multi-objective optimization model to calculate the optimum adding amount of alloy during the process of basic oxygen steelmaking (BOS). In this model, one objective is the total costs of the alloys, and another objective is the total error of element contents. In order to establish the second objective, an echo state network (ESN) is adopted to predict the element contents. A modified multi-objective particle swarm optimization algorithm which has a chaos random mutation operator with Gaussian function proportions, called GMOPSO, is proposed to solve the alloy addition multi-objective optimization problem. Simulation results on practical data of BOS show that the costs optimized are lower than the actual costs, and the error of the element contents meets the demand for the steel products.
机译:本文提出了一种多目标优化模型,用于计算碱性氧气炼钢(BOS)过程中合金的最佳添加量。在此模型中,一个目标是合金的总成本,另一个目标是元素含量的总误差。为了建立第二目标,采用回波状态网络(ESN)来预测元素含量。为了解决合金添加的多目标优化问题,提出了一种具有高斯函数比例的具有混沌随机变异算子的改进的多目标粒子群算法。 BOS实际数据的仿真结果表明,优化后的成本低于实际成本,元素含量的误差满足了钢铁产品的需求。

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