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Quantum recurrent encoder-decoder neural network for performance trend prediction of rotating machinery

机译:旋转机械性能趋势预测量子复制编码器 - 解码器神经网络

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Traditional neural networks generally neglect the primary and secondary relationships of input information and process the information indiscriminately, which leads to their bad nonlinear approximation capacity and low generalization ability. As a result, traditional neural networks always show poor prediction accuracy in the performance degradation trend prediction of rotating machinery (RM). In view of this, a novel neural network called quantum recurrent encoder-decoder neural network (QREDNN) is proposed in this paper. In QREDNN, the attention mechanism is used to simultaneously reconstruct encoder and decoder of QREDNN, so that QREDNN can fully excavate and pay attention to important information but suppress the interference of redundant information to obtain better nonlinear approximation capacity. On the other hand, the quantum neuron is used to construct a new quantum gated recurrent unit (QGRU) in which activation values and weights are represented by quantum rotation matrices. The QGRU can traverse the solution space more finely and has a lot of multiple attractors, so it can replace the traditional recurrent unit of the encoder and decoder and enhance the generalization ability and response speed of QREDNN. Moreover, the Levenberg-Marquardt (LM) algorithm is introduced to improve the update speeds of the rotation angles of quantum rotation matrices and the attention parameters of QREDNN. Based on the superiorities of QREDNN, a new performance trend prediction method for RM is proposed, in which the denoised fuzzy entropy (DFE) of vibration acceleration signal of RM is input into QREDNN as the performance degradation feature for predicting the performance degradation trend of RM. The examples of predicting the performance trend of rolling bearings demonstrate the effectiveness of our proposed method. (C) 2020 Elsevier B.V. All rights reserved.
机译:传统的神经网络通常忽略输入信息的主要和二级关系并不分青红皂白地处理信息,这导致其非线性近似容量和低概括能力。结果,传统的神经网络始终在旋转机械(RM)的性能下降趋势预测中始终显示出差的预测准确性。鉴于此,本文提出了一种名为量子反复编码器 - 解码器神经网络(Qrednn)的新型神经网络。在Qrednn中,注意机制用于同时重建Qrednn的编码器和解码器,使得Qrednn可以完全挖掘并注意重要信息,而抑制冗余信息的干扰以获得​​更好的非线性近似容量。另一方面,量子神经元用于构建新的量子门控复发单元(QGRU),其中激活值和权重由量子旋转矩阵表示。 QGRU可以更精细地遍历解决方案空间并具有大量多个吸引子,因此它可以取代编码器和解码器的传统反复单元,并提高Qrednn的泛化能力和响应速度。此外,引入了Levenberg-Marquardt(LM)算法以提高量子旋转矩阵的旋转角度的更新速度和Qrednn的注意参数。基于Qrednn的优越性,提出了一种新的性能趋势预测方法,其中RM的振动加速信号的去噪模糊熵(DFE)被输入到QredNN中,作为用于预测RM性能降级趋势的性能劣化特征。预测滚动轴承性能趋势的例子证明了我们提出的方法的有效性。 (c)2020 Elsevier B.v.保留所有权利。

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