Effective Throughput Optimization of SAG Milling Process Based on BPNN and Genetic Algorithm

Zhenhong Liao, Ce Xu, Wen Chen, Qifu Chen, Feng Wang, Jinhua She
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Abstract

Grinding is an energy-consuming process in mineral processing industry. Improving grinding processing capacity per unit power consumption is an effective means to reduce grinding production cost. In this paper, a new index for evaluating the effective processing throughput of SAG milling is proposed. The production process model is established by BP neural network (BPNN). Through combining the process mechanism and production constraints, the genetic algorithm is adopted to optimize the operating parameters of the SAG milling process to maximize the effective throughput, thus improving the grinding efficiency. The experimental results showed that through optimization of effective throughput function proposed in this paper, the SAG mill processing capacity has been increased by 4% and the operating power drawn reduced by 1.12%. It has important guiding significance for the actual production process.
基于bp神经网络和遗传算法的SAG铣削加工有效吞吐量优化
磨矿是选矿工业中耗能较大的工序。提高单位电耗磨矿处理能力是降低磨矿生产成本的有效手段。本文提出了一种评价SAG铣削有效加工吞吐量的新指标。采用BP神经网络(BPNN)建立了生产过程模型。通过结合工艺机理和生产约束,采用遗传算法对SAG铣削工艺操作参数进行优化,使有效吞吐量最大化,从而提高磨削效率。实验结果表明,通过本文提出的有效吞吐量函数优化后,SAG磨机的处理量提高了4%,运行功率降低了1.12%。对实际生产过程具有重要的指导意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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