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Multitasking Multiobjective Evolutionary Operational Indices Optimization of Beneficiation Processes

机译:选矿过程的多任务多目标进化操作指标优化

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摘要

Operational indices optimization is crucial for the global optimization in beneficiation processes. This paper presents a multitasking multiobjective evolutionary method to solve operational indices optimization, which involves a formulated multiobjective multifactorial operational indices optimization (MO-MFO) problem and the proposed multiobjective MFO algorithm for solving the established MO-MFO problem. The MO-MFO problem includes multiple level of accurate models of operational indices optimization, which are generated on the basis of a data set collected from production. Among the formulated models, the most accurate one is considered to be the original functions of the solved problem, while the remained models are the helper tasks to accelerate the optimization of the most accurate model. For the MFO algorithm, the assistant models are alternatively in multitasking environment with the accurate model to transfer their knowledge to the accurate model during optimization in order to enhance the convergence of the accurate model. Meanwhile, the recently proposed two-stage assortative mating strategy for a multiobjective MFO algorithm is applied to transfer knowledge among multitasking tasks. The proposed multitasking framework for operational indices optimization has conducted on 10 different production conditions of beneficiation. Simulation results demonstrate its effectiveness in addressing the operational indices optimization of beneficiation problem.Note to Practitioners-Operational indices optimization is a typical approach to achieve global production optimization by efficiently coordinating all the indices to improve the production indices. In this paper, a multiobjective multitasking framework is developed to address the operational indices optimization, which includes a multitasking multiobjective operational indices optimization problem formulation and a multitasking multiobjective evolutionary optimization to solve the above-formulated optimization problem. The proposed approach can achieve a solution set for the decision-making. The simulation results on a real beneficiation process in China with 10 operational conditions show that the proposed approach is able to obtain a superior solution set, which is associated with a higher grade and yield of the product.
机译:操作指标优化对于选矿过程中的全局优化至关重要。本文提出了一种解决任务指标优化的多任务多目标进化方法,该方法涉及一个公式化的多目标多因子操作指标优化(MO-MFO)问题和提出的用于解决已建立的MO-MFO问题的多目标MFO算法。 MO-MFO问题包括操作指标优化的多个精确模型,这些模型是根据从生产中收集的数据集生成的。在制定的模型中,最精确的模型被认为是已解决问题的原始功能,而其余模型则是加速最精确模型优化的辅助任务。对于MFO算法,辅助模型可以在具有精确模型的多任务环境中交替使用,以在优化过程中将其知识转移到精确模型中,以增强精确模型的收敛性。同时,最近提出的多目标MFO算法的两阶段分类匹配策略被用于在多任务任务之间传递知识。拟议的用于优化运营指标的多任务框架已在10个不同的选矿生产条件下进行。仿真结果证明了该方法在解决选矿问题的经营指标优化方面的有效性。作业人员注意事项-经营指标优化是通过有效地协调所有指标以改善生产指标来实现全球生产优化的典型方法。本文提出了一种多目标多任务框架来解决运营指标优化问题,该框架包括一个多任务多目标运营指标优化问题的表述和一个多任务多目标进化优化来解决上述优化问题。所提出的方法可以为决策制定一套解决方案。在中国有10个运行条件的实际选矿过程中的仿真结果表明,所提出的方法能够获得出色的解决方案集,这与更高等级和更高的产品产量相关。

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