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A Low-Delay Lightweight Recurrent Neural Network (LLRNN) for Rotating Machinery Fault Diagnosis

机译:低延迟轻量递归神经网络(LLRNN)用于旋转机械故障诊断

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摘要

Fault diagnosis is critical to ensuring the safety and reliable operation of rotating machinery systems. Long short-term memory networks (LSTM) have received a great deal of attention in this field. Most of the LSTM-based fault diagnosis methods have too many parameters and calculation, resulting in large memory occupancy and high calculation delay. Thus, this paper proposes a low-delay lightweight recurrent neural network (LLRNN) model for mechanical fault diagnosis, based on a special LSTM cell structure with a forget gate. The input vibration signal is segmented into several shorter sub-signals in order to shorten the length of the time sequence. Then, these sub-signals are sent into the network directly and converted into the final diagnostic results without any manual participation. Compared with some existing methods, our experiments illustrate that the proposed method has less memory space occupancy and lower computational delay while maintaining the same level of accuracy.
机译:故障诊断对于确保旋转机械系统的安全性和可靠性至关重要。长短期存储网络(LSTM)在这一领域受到了广泛关注。大多数基于LSTM的故障诊断方法具有太多的参数和计算量,导致占用大量内存和较高的计算延迟。因此,本文基于具有遗忘门的特殊LSTM单元结构,提出了一种用于机械故障诊断的低延迟轻量级递归神经网络(LLRNN)模型。输入振动信号被分成几个较短的子信号,以缩短时间序列的长度。然后,这些子信号直接发送到网络中,并转换为最终诊断结果,而无需任何人工参与。与现有方法相比,我们的实验表明,该方法在保持相同精度水平的同时,具有较小的存储空间占用率和较低的计算延迟。

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