Flatness pattern recognition based on a binary tree hierarchical BP model
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摘要: 針對傳統最小二乘多項式板形模式識別方法魯棒性差、各分項物理意義不明確,以及普通BP(back propagation)識別法精度低等問題,選用勒讓德多項式作為板形基本模式,提出一種基于二叉樹型分層BP的板形模式識別并行計算模型.該模型通過逐層細化預測范圍并選用多個神經網絡進行遞推.實驗結果表明,采用此方法不僅增強了系統的抗干擾能力,而且提高了系統的識別精度.Abstract: Parallel flatness pattern recognition based on a binary tree hierarchical back propagation (BP) model and Legendre orthodoxy polynomial decomposition was presented aiming at the illegibility in physical meaning and poorness in robust stability of traditional flatness defect pattern recognition by the least squares method (LSM) proximity algorithm and the low accuracy of a common BP neuron network. It reduces the prediction range of each network and uses more networks for degree elevation. Experimental results show that the system performances are improved not only in robust ability but also in precision.
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Key words:
- flatness /
- pattern recognition /
- binary tree /
- hierarchical /
- pattern decomposition /
- robust
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