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Artificial neural network design for fault identification in a rotor-bearing system

机译:转子轴承系统故障识别的人工神经网络设计

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摘要

A neural network simulator built for prediction of faults in rotating machinery is discussed. A backpropagation learning algorithm and a multi-layer network have been employed. The layers are constituted of nonlinear neurons and an input vector normalization scheme has been built into the simulator. Experiments are conducted on an existing laboratory rotor-rig to generate training and test data. Five different primary faults and their combinations are introduced in the experimental set-up. Statistical moments of the vibration signals of the rotor-bearing system are employed to train the network. Network training is carried out for a variety of inputs. The adaptability of different architectures is investigated. The networks are validated for test data with unknown faults. An overall success rate up to 90% is observed.
机译:讨论了一种用于预测旋转机械故障的神经网络模拟器。已经采用了反向传播学习算法和多层网络。这些层由非线性神经元组成,并且已将输入向量归一化方案内置到模拟器中。在现有的实验室转子钻机上进行实验以生成培训和测试数据。在实验装置中介绍了五个不同的主要故障及其组合。转子轴承系统的振动信号的统计矩用于训练网络。对各种输入进行了网络培训。研究了不同体系结构的适应性。验证网络是否具有未知故障的测试数据。观察到总体成功率高达90%。

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