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Intelligent integrated optimization of mining and ore-dressing grades in metal mines

机译:金属矿山矿山矿山矿山型矿井综合优化

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摘要

An intelligent integrated method is proposed for optimizing the head grade and dressing grade in the mining and ore-dressing management of metal mines, beginning with the establishment of a nonlinear constrained optimization model with the objective function of economic benefit, two constraints comprising of the resource utilization rate and the output of concentrate, along with head grade and dressing grade as the decision variables. Particle swarm optimization (PSO) algorithm is then integrated with artificial neural networks to create a PSO-ANN algorithm capable of identifying the optimal grade combination. The outer layer of PSO-ANN uses the PSO algorithm to carry out a global search, with the head grade and dressing grade being combined as swarm particles for evolutionary computation. The constraint handling techniques of feasibility-based rules are used to update the historical best location of each particle (pbest) and the global best location of the swarm (gbest) to guide the particles toward the optimum. The inner layer uses regression model, BPNN and RBFNN to calculate the loss rate, ore-dressing metal recovery rate and costs, respectively, to facilitate the further calculation of the resource utilization rate, the concentrate output and the economic benefit of each particle. Finally, the proposed method is tested by carrying out a case study based upon Daye Iron Mine to indicate its effectiveness and reliability.
机译:提出了一种智能综合方法,用于优化金属地雷采矿和矿石敷料管理中的头等级和敷料等级,从建立非线性约束优化模型,具有经济效益的客观函数,包括资源的两个限制利用率和浓缩物的输出,以及头等级和敷料等级作为决策变量。粒子群优化(PSO)算法与人工神经网络集成,以创建一种能够识别最佳等级组合的PSO-ANN算法。 PSO-ANN的外层使用PSO算法进行全球搜索,头等级和敷料等级组合为进化计算的群粒子。基于可行性的规则的约束处理技术用于更新每个粒子(PBEST)的历史最佳位置和群体(GBEST)的全球最佳位置,以引导粒子朝向最佳。内层使用回归模型,BPNN和RBFNN来分别计算损失率,矿石敷料金属回收率和成本,以便于进一步计算资源利用率,集中产量和每个颗粒的经济益处。最后,通过基于Daine Iron Mine进行案例研究来测试所提出的方法,以表明其有效性和可靠性。

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