会议专题

Optimization for Mining Material Loading Based on Genetic Algorithm

In order to improve management level of mining materials, optimum loading scheme is important. Based on the analysis of bulk cargo loading problem, taking carrying capacity and effective volume as constraint conditions, maximizing transport benefits as target, mathematical model on the base of optimization method is established. And genetic algorithm is introduced to case study. The result shows that genetic algorithm in solving the optimum loading scheme of mining materials has quick convergence, short term, and higher precision. The better satisfactory answer can be obtained after 100 generations. Before 600 generations optimum loading scheme can be educed. Genetic algorithm, with good adaptability and powerful search performance, is very suitable for optimization calculation of multiple constraints problem. Genetic algorithm can make full use of carrying capacity and volume in the process of bulk cargo loading transport, that promot mining enterprises operation efficiency. The study is useful for management work of mining material warehousing, scheduling, transportation etc.

genetic algorithm mining materials constraint condition optimal loading

Tongbin Zhao Shanshan Liu Fanwei Bu

College of Resources and Environmental EngineeringShandong University of Science and TechnologyQingd Shandong Lineng Group Co. Ltd. Cogeneration branch company Jining, Shandong province, China

国际会议

2011 International Conference on Information System and Computational Intelligence(2011 IEEE信息系统与计算智能国际会议 ICISCI 2011)

哈尔滨

英文

248-251

2011-01-18(万方平台首次上网日期,不代表论文的发表时间)