基于数值模拟和卷积神经网络的汽轮机转子不平衡并联故障诊断研究

Chongyu Wang, Di Zhang, Yonghui Xie
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引用次数: 1

摘要

汽轮机转子仍是主要的发电设备。受新能源对电网的冲击,汽轮机需要参与调峰,这将使汽轮机转子部件更容易发生故障。转子是汽轮机的重要设备。不平衡和不对中是转子故障的正常状态。近年来,以旋转机械为对象的基于深度学习的故障检测方法受到越来越多的关注。然而,对实际汽轮机转子的研究还很缺乏。提出了一种基于残差网络的转子不平衡并联不对中故障检测方法,实现了转子端到端故障检测。同时,用数值仿真数据对该方法进行了验证,实现了转子不平衡、并联不平衡、并联不平衡耦合故障(本文称之为耦合故障)的多任务检测。讨论了信噪比和训练样本数量对神经网络检测性能的影响。不平衡位置检测精度为93.5%,平行不对准检测精度为99.1%。对不平衡和平行对准的检测精度分别为89.1%和99.1%。该方法可以实现不平衡、并联、耦合故障振动信号与故障检测结果的直接映射。该方法具有自动提取故障特征的能力。它克服了传统方法依赖信号处理经验的缺点,具有精度高、鲁棒性强的特点。
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Research on Fault Diagnosis of Steam Turbine Rotor Unbalance and Parallel Misalignment Based on Numerical Simulation and Convolutional Neural Network
The steam turbine rotor is still the main power generation equipment. Affected by the impact of new energy on the power grid, the steam turbine needs to participate in peak load regulation, which will make turbine rotor components more prone to failure. The rotor is an important equipment of a steam turbine. Unbalance and misalignment are the normal state of rotor failure. In recent years, more and more attention has been paid to the fault detection method based on deep learning, which takes rotating machinery as the object. However, there is a lack of research on actual steam turbine rotors. In this paper, a method of rotor unbalance and parallel misalignment fault detection based on residual network is proposed, which realizes the end-to-end fault detection of rotor. Meanwhile, the method is evaluated with numerical simulation data, and the multi task detection of rotor unbalance, parallel misalignment, unbalanced parallel misalignment coupling faults (coupling fault called in this paper) is realized. The influence of signal-to-noise ratio and the number of training samples on the detection performance of neural network is discussed. The detection accuracy of unbalanced position is 93.5%, that of parallel misalignment is 99.1%. The detection accuracy for unbalance and parallel misalignment is 89.1% and 99.1%, respectively. The method can realize the direct mapping between the unbalanced, parallel misalignment, coupling fault vibration signals and the fault detection results. The method has the ability to automatically extract fault features. It overcomes the shortcoming of traditional methods that rely on signal processing experience, and has the characteristics of high precision and strong robustness.
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