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Neural network based on adaptive chaotic gradient descending optimization algorithm and its application in matte converting process 被引量:3

Neural network based on adaptive chaotic gradient descending optimization algorithm and its application in matte converting process
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摘要 An adaptive chaotic gradient descending optimization algorithm for single objective optimization was presented. A local minimum judged by two rules was obtained by an improved mutative-step gradient descending method. A new optimal minimum was obtained to replace the local minimum by mutative-scale chaotic search algorithm whose scales are magnified gradually from a small scale in order to escape local minima. The global optimal value was attained by repeatedly iterating. At last, a BP (back-propagation) neural network model for forecasting slag output in matte converting was established. The algorithm was used to train the weights of the BP neural network model. The simulation results with a training data set of 400 samples show that the training process can be finished within 300 steps to obtain the global optimal value, and escape local minima effectively. An optimization system for operation parameters, which includes the forecasting model, is achieved, in which the output of converter increases by 6.0%, and the amount of the treated cool materials rises by 7.8% in the matte converting process. An adaptive chaotic gradient descending optimization algorithm for single objective optimization was presented. A local minimum judged by two rules was obtained by an improved mutative-step gradient descending method. A new optimal minimum was obtained to replace the local minimum by mutative-scale chaotic search algorithm whose scales are magnified gradually from a small scale in order to escape local minima. The global optimal value was attained by repeatedly iterating. At last, a BP (back-propagation) neural network model for forecasting slag output in matte converting was established. The algorithm was used to train the weights of the BP neural network model. The simulation results with a training data set of 400 samples show that the training process can be finished within 300 steps to obtain the global optimal value, and escape local minima effectively. An optimization system for operation parameters, which includes the forecasting model, is achieved, in which the output of converter increases by 6.0%, and the amount of the treated cool materials rises by 7.8% in the matte converting process.
出处 《Journal of Central South University of Technology》 EI 2004年第2期216-219,共4页 中南工业大学学报(英文版)
基金 Project ( 5 0 3 740 79)supportedbytheNationalNaturalScienceFoundationofChina project( 2 0 0 2cb3 12 2 0 0 )supportedbytheNationalKeyFundamentalResearchandDevelopmentProgramofChina
关键词 神经网络系统 转炉炼钢 无序查找 坡度 matte converting chaotic search gradient descending neural network
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