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改進粒子群優化神經網絡及其在產品質量建模中的應用

Improved particle swarm optimized back propagation neural network and its application to production quality modeling

  • 摘要: 針對傳統神經網絡優化算法易陷入局部最優值的問題,在標準粒子群算法的基礎上,對粒子速度與位置更新策略進行改進,提出一種基于改進粒子群優化算法的BP神經網絡建模方法.使用sinc函數、波士頓住房數據及某鋼廠帶鋼熱鍍鋅生產的實際數據進行驗證.結果表明,與標準的反向傳播神經網絡和支持向量機相比,基于改進粒子群優化的神經網絡模型可以有效提高預測精度.

     

    Abstract: In order to solve the difficulties of tendency to local optima in conditional optimization algorithms for back propagation neural network (BPNN), with improvements in the strategy for updating the particle's velocity and location, this paper proposed a new back propagation neural network modeling method based on improved particle swarm optimization. The data from sinc function, Boston housing problem and the real strip hot-dip galvanizing production in an iron and steel corporation were used for verification. The results show that, compared with the standard BPNN and support vector machine algorithms, the proposed method can effectively help the BPNN to get a better regression precision and prediction performance.

     

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