Solid Granule Flowrate Modeling Using Simple Dynamic Recurrent Neural Networks
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摘要: 提出了用簡單動態遞歸網來建立固體散料流量模型.針對動態遞歸網結構復雜、訓練算法收斂速度慢的缺點,采用一種結構十分簡單的遞歸網.對RPE算法進行了改進和補充,使之適用于簡單遞歸網,用來對網絡的權值和閾值進行調整.建模結果表明此方法收斂速度快,精度高.Abstract: A solid granule flowrate model was proposed by using simple dynamic recurrent neural networks. Considering dynamic recurrent neural network's shortcomings of complex structure and low convergence speed of training algorithm, a kind of recurrent neural network was adpted. whose structure is very simple. This RPE algorithm was adapted to the simple recurrent network by making improvement and complementarity, and the weight and the threshold of the network can be adjusted at the same time. The results of modeling show the speediness and the high-precision of this method.
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Key words:
- dynamic recurrent neural network /
- RPE algorithm /
- solid granule flowrate
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