Multi-objective optimization for leaching process using improved two-stage guide PSO algorithm

被引:0
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作者
Guang-hao Hu
Zhi-zhong Mao
Da-kuo He
机构
[1] Northeastern University,School of Information Science and Engineering
关键词
leaching process; modeling; multi-objective optimization; two-stage guide; experiment;
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摘要
A mathematical mechanism model was proposed for the description and analysis of the heat-stirring-acid leaching process. The model is proved to be effective by experiment. Afterwards, the leaching problem was formulated as a constrained multi-objective optimization problem based on the mechanism model. A two-stage guide multi-objective particle swarm optimization (TSG-MOPSO) algorithm was proposed to solve this optimization problem, which can accelerate the convergence and guarantee the diversity of pareto-optimal front set as well. Computational experiment was conducted to compare the solution by the proposed algorithm with SIGMA-MOPSO by solving the model and with the manual solution in practice. The results indicate that the proposed algorithm shows better performance than SIGMA-MOPSO, and can improve the current manual solutions significantly. The improvements of production time and economic benefit compared with manual solutions are 10.5% and 7.3%, respectively.
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页码:1200 / 1210
页数:10
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