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Prediction of chaotic data sequences with BP tuned by an improved PSO

机译:改进PSO与BP调谐的混沌数据序列的预测

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This BP is the most commonly used artificial neural network, but it suffers from extensive computations, relatively slow convergence speed and other possible weaknesses for complex problems. Genetic Algorithm (GA) has been successfully used to train neural networks, but often with the result of exponential computational complexities and hard implementation. Hence Particle Swarm Optimization (PSO) is used to train BP in the paper. For the purpose of predicting chaotic data sequences, an improved PSO is implemented, in which a chaotic way for changing particle velocity is proposed, i.e., the inertia weight is fixed on a chaotic sequence at the beginning of searching process. The efficiency of BP trained with this improved PSO is compared with those of BP and BP tuned with GA based on the prediction of same chaotic data sequences. Comparison based on the searching precision and convergence speed of each method show that BP tuned with PSO is dominant and effective to predict chaotic data sequences.
机译:该BP是最常用的人工神经网络,但它受到广泛的计算,收敛速度相对缓慢,以及复杂问题的其他可能的弱点。遗传算法(GA)已成功地致力于培训神经网络,但通常具有指数计算复杂性和难以实现的结果。因此,粒子群优化(PSO)用于纸张中的BP。为了预测混沌数据序列,提出了一种改进的PSO,其中提出了用于改变粒子速度的混沌方式,即,在搜索过程开始时惯性重量在混沌序列上固定在混沌序列上。基于相同混沌数据序列的预测,将用这种改进的PSO培训的BP培训的效率与GA调谐的BP和BP。基于每种方法的搜索精度和收敛速度的比较表明,使用PSO调谐的BP是显性的,有效地预测混沌数据序列。

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