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Improved PSO algorithm based parameter optimization for fabric heat-setting machine

机译:基于改进PSO算法的织物热定型机参数优化

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Based on the energy consumption model of heat-setting machine, an improved PSO (Particle Swarm Optimization) algorithm is proposed and used to optimize its key parameters. The improved algorithm has made three improvements: firstly, initializing the granule position by using the chaotic sequence; secondly, improving the particles'' search capability by using dynamic weight factor; thirdly, using “Re-screening Method” to avoid particles falling into the local optima. Finally the improved PSO and the standard PSO algorithms are applied in solving the heat-setting energy consumption model at the same time; their comparative simulation results show the improved PSO algorithm has better and faster optimal performances. Besides, the improved PSO algorithm is also used to solve the energy consumption models for four kinds of common fabrics under different heat setting condition separately, whose series results may provide some operation reference for heat setting process engineers and operators.
机译:基于热定型机的能耗模型,提出了一种改进的粒子群算法(PSO),并对其关键参数进行了优化。改进后的算法进行了三点改进:第一,利用混沌序列初始化粒子位置;第二,利用粒子序列对粒子位置进行初始化。其次,利用动态权重因子提高粒子的搜索能力。第三,使用“重新筛选方法”避免粒子落入局部最优值。最后,将改进的粒子群优化算法和标准粒子群优化算法同时应用于求解热定型能耗模型。他们的对比仿真结果表明,改进的PSO算法具有更好,更快的最优性能。此外,改进的PSO算法还可以分别求解不同热定型条件下四种常见织物的能耗模型,其系列结果可为热定型工艺工程师和操作人员提供一定的操作参考。

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