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Diagnosis of faulty gears by modified AlexNet and improved grasshopper optimization algorithm (IGOA)

机译:通过改进的AlexNet诊断故障齿轮和改进的蚱蜢优化算法(IGOA)

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摘要

Gearbox is a significant part for the transmission of vehicles and various mechanical devices and is being utilized broadly in the industries despite of its failure prone nature. Therefore, the need arises for diagnosing the faults present in a gearbox and to rectify the faulty gear. In this paper, deep learning method is utilized for the diagnosis of faulty gears and employs the modified AlexNet for the classification of various gear signals. The hidden units present in the bidirectional LSTM (long short term memory) layer of the AlexNet is selected by proposing an improved grasshopper optimization algorithm (IGOA). After the process of classification, performance evaluation is carried out for various performance measures. It is found that proposed method achieves accuracy of 2.4 %, specificity of -0.3 %, sensitivity of 1.01 %, recall of 0.97 %, precision of 0.59 %. Based on the results obtained it is found that proposed algorithm is more efficient when compared to existing algorithm.
机译:齿轮箱是传播车辆和各种机械设备的重要组成部分,并且尽管其失败性质,但在工业中广泛使用。 因此,需要诊断齿轮箱中存在的故障并纠正故障档位的需要。 在本文中,利用深度学习方法来诊断故障齿轮,并采用改进的亚历网进行各种档位信号的分类。 通过提出改进的蚱蜢优化算法(IGOA)来选择存在于双向LSTM(长短短期存储器)层中的隐藏单元。 在分类过程之后,进行绩效评估以进行各种绩效措施。 发现提出的方法实现了2.4%,特异性-0.3%,敏感性为1.01%,召回的精度为0.97%,精度为0.59%。 基于所获得的结果,发现与现有算法相比,所提出的算法更有效。

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