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A reinforcement learning unit matching recurrent neural network for the state trend prediction of rolling bearings

机译:一种加固学习单元,匹配滚动轴承状态趋势预测的经常性神经网络

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摘要

This paper proposes a novel neural network, called a reinforcement learning unit matching recurrent neural network (RLUMRNN), with the aim of resolving the problem that the generalization performance and nonlinear approximation ability of typical neural networks are not controllable, which is caused by the experience-based selection of the hidden layer number and hidden layer node number. In the proposed RLUMRNN, the monotone trend discriminator is constructed by using the least squares linear regression method for dividing the whole state degradation trend of rolling bearings into the following three kinds of monotonic trend units: ascending unit, descending unit and stationary unit. Moreover, by virtue of reinforcement learning, the recurrent neural network (RNN) with the hidden layer number and hidden layer node number fitted to a corresponding monotone trend unit is selected to enhance the generalization performance and nonlinear approximation ability of RLUMRNN. Additionally, three monotonic trend units and different hidden layer and node numbers are respectively used to represent the status and action of the Q value table, and a new reward function associated with the RNN's output errors is constructed to clarify the purpose of reinforcement learning. This makes the RNN's output errors smaller, which avoids the blind search of Agent (i.e., decision function) in the update of the Q value table and improves the convergence speed of RLUMRNN. By taking advantage of RLUMRNN in the generalization performance, nonlinear approximation ability and convergence speed, a new state trend prediction method for rolling bearings is proposed. In this prediction method, the moving average singular spectral entropy is first used as the state degradation feature of rolling bearings, and then the feature is input into RLUMRNN to accomplish the state trend prediction of rolling bearings. The examples of the state trend prediction for double-row roller bearings demonstrate the higher prediction accuracy and higher calculation efficiency of the proposed method. (C) 2019 Elsevier Ltd. All rights reserved.
机译:本文提出了一种新颖的神经网络,称为加强学习单元匹配经常性神经网络(Rlumrnn),目的是解决典型神经网络的泛化性能和非线性近似能力而不是控制的问题,这是由经验引起的基于隐藏的层数和隐藏的层节点编号的选择。在所提出的Rlumrnn中,通过使用最小二乘线性回归方法来构造单调趋势判例器,用于将滚动轴承的整个状态降低趋势分成以下三种单调趋势单元:上升单元,降序和固定单元。此外,由于增强学习,选择了与拟合在相应的单调趋势单元的隐藏层数和隐藏层节点号的经常性神经网络(RNN)以增强Rlumrnn的泛化性能和非线性逼近能力。另外,三个单调趋势单位和不同的隐藏层和节点号码分别用于表示Q值表的状态和动作,构建与RNN输出错误相关的新奖励功能,以阐明加强学习的目的。这使得RNN的输出错误更小,这避免了在Q值表的更新中对代理(即,决策功能)的盲目搜索,并提高了Rlumrnn的收敛速度。通过在泛化性能中利用Rlumrnn,提出了一种用于滚动轴承的新状态趋势预测方法。在这种预测方法中,首先使用移动平均奇异谱熵作为滚动轴承的状态劣化特征,然后将该特征输入Rlumrnn,以实现滚动轴承的状态趋势预测。双行滚子轴承的状态趋势预测的示例展示了所提出的方法的更高预测精度和更高的计算效率。 (c)2019年elestvier有限公司保留所有权利。

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