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Theory And Method Of Genetic-neural Optimizing Cut-off Grade And Grade Of Crude Ore

机译:遗传-神经优化选矿品位和粗矿石品位的理论和方法

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Cut-off grade for ore drawing is a kind of technological method used to control the process of drawing in sublevel caving with no sill pillar. The cut-off grade for ore drawing means the grade of ore in the last time (current time) of ore drawing. Grade of crude ore is the grade of ore entering the milling workshop after ore mixing. Cut-off grade and grade of crude ore are key parameters of production and management in mine system. Genetic algorithm and neural networks nesting method are used in this research to simulate the highly complexity and highly non-linear relationship between variables in mining system, to optimize the cut-off grade and grade of crude ore. The idea is detailed as follows. Cut-off grade and grade of crude ore are joined as chromosome of population for evolution computation; Self-adaptive neural network is used to obtain the local connection between the revenue (fitness function) and chromosome; Genetic algorithm is performed to search the optimal cut-off grade and grade of crude ore globally. The inner layer of nesting is neural networks, which is used to compute loss rate, amount of tailing ore and total cost; the outer layer is evolutionary computation, which is used to get the revenue. The inner layer carries out local approximation, and the outer carries out global search. These two layers carry out the optimization of cut-off grade and grade of crude ore jointly. Take Daye Iron Mine as an example, and the result shows that, the present scheme (cut-off grade is 18%, grade of crude ore is 41-43%) should be improved. During the period of August to November in the year 2007, the optimal cut-off grade is 15.8%, and optimal grade of crude ore is 43.7762-44.1387%, the optimized scheme can improve the present value by 9.01-9.44 million yuan.
机译:选矿的临界品位是一种用于控制无底柱的分段崩落中的开采过程的技术方法。选矿的品位等级是指上一次采石(当前时间)的矿石等级。粗矿石品位是指矿石混合后进入选矿车间的矿石品位。边界品位和粗矿石品位是矿山系统生产和管理的关键参数。本研究采用遗传算法和神经网络嵌套方法对采矿系统中变量之间的高度复杂性和高度非线性关系进行模拟,以优化粗矿的品位和品位。这个想法如下。边界品位和原矿品位作为种群染色体进行进化计算。自适应神经网络用于获得收益(适应度函数)与染色体之间的局部联系;进行遗传算法搜索全局的最优品位和品位。嵌套的内层是神经网络,用于计算损失率,尾矿量和总成本。外层是进化计算,用于获取收益。内层执行局部逼近,外层执行全局搜索。这两层共同进行了边界品位和粗矿石品位的优化。以大冶铁矿为例,结果表明,目前的方案(边界品位为18%,原矿品位为41-43%)有待改进。在2007年8月至11月期间,最优边界品位为15.8%,粗矿石的最优品位为43.7762-44.1387%,该优化方案可提高现值9.01-944万元。

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