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热处理炉钢板温度度的的自适应混沌粒子群算法–最小二乘支持向量机优化预报算法 被引量:2

Optimized prediction algorithm with adaptive chaos particle swarm optimization-least squares support vector machine for steel plate temperature prediction in heat treatment furnace
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摘要 针对传统传热模型参数调整较复杂和模型精度较低的问题,构建了一种基于改进粒子群算法优化最小二乘支持向量机(least squares SVM,LSSVM)的钢板温度预报模型.首先,对基本粒子群算法进行分析,提出自适应混沌粒子群算法(adaptive chaos PSO,ACPSO),并通过性能指标定量评价验证算法的有效性、鲁棒性和寻优效率.其次,采用LSSVM建立钢板温度预报模型,并选用径向基函数作为核函数,用ACPSO算法优化该模型参数.最后,结合现场数据进行仿真研究和工程应用,结果表明基于该算法建立的钢板温度预报模型具有较高的预报精度,达到智能调优的目的. To deal with the difficulty in parameter adjustment and the low precision of the traditional heat-conduction model, we build a prediction model for the steel plate temperature, based on the least-squares-support-vector machine(LSSVM) which is optimized by the improved particle-swarm algorithm. First, on the basis of the particle-swarm algorithm, we propose an adaptive chaotic particle-swarm algorithm(ACPSO) for which the validity, robustness and the optimization efficiency are quantitatively evaluated based on performance indices; and then, the radial basis functions are selected as the kernel function. Thus, the temperature prediction model of steel plate is built with LSSVM and optimized with ACPSO algorithm. Finally, the model is simulated by using the data acquired from the site and used in practical operation; the result indicates that the prediction model based on ACPSO and LSSVM has higher prediction accuracy than the tradition one, achieving the goal of intelligent optimization.
出处 《控制理论与应用》 EI CAS CSCD 北大核心 2011年第12期1825-1830,共6页 Control Theory & Applications
基金 "十一五"国家科技支撑计划资助项目(2006BAE03A06)
关键词 热处理炉 粒子群优化算法 支持向量机 混沌 heat treating furnace; PSO(particle swarm optimizer algorithm); SVM(support vector machine); chaos
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参考文献11

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