Particle Swarm Optimization for Raw Material Purchasing Plan in Large Scale Ore Dressing Plant
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摘要: 选矿厂的原矿采购成本是构成精矿成本的主要部分. 优化原矿采购计划就是寻求最小采购成本. 在保证选矿生产工艺确定的精矿品位和原矿处理量的条件下, 使原矿采购成本最小的各种原矿采购计划对降低选矿企业的生产成本至关重要. 本文提出了在保证生产精矿需求和精矿品位的条件下, 使精矿库存尽量最小的原矿需求模型和使采购成本最小的各种原矿采购模型. 采用基于模糊规则调整惯性权值的粒子群优化算法, 对上述模型进行了动态优化求解, 确定了各种原矿的采购量. 采用了某选矿厂的实际数据进行了仿真实验, 实验结果表明了本文所提方法的有效性.Abstract: The raw ores purchasing cost is the main part of concentrate cost in an ore dressing plant. To optimize the raw ores purchasing plan is to minimize the purchasing cost. While assuring conditions of concentrate grade and quantity of raw ores which are required by production technology, the purchasing plan for varieties of raw ores to minimize the purchasing cost is very crucial to minimize the production cost of an ore dressing plant. Meeting the needs of concentrate inventory and concentrate grade, two models are proposed in this paper: the raw ores demand model for minimizing concentrate inventory and the raw ores purchasing model for minimizing purchasing cost. A particle swarm optimization (PSO) algorithm, based on fuzzy rule to adjust inertia weight, is used to dynamically optimize the models and to make sure the purchasing quantity of varieties of raw ores. Simulation experiments have been conducted by using the real data of an ore dressing plant. The result shows the effectiveness of the proposed algorithm in this paper.
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