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Fault Prediction Method of the Marine Gas Turbine Based on Neural Network-Markov

机译:基于神经网络 - 马尔可夫的海洋燃气轮机故障预测方法

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Since the fault of marine gas turbine is difficult to predict accurately, making the rolling bearing as the specific object, a fault prediction model of the marine gas turbine based on Neural Network and Markov method is built through the data analysis, preprocessing and feature extraction for the rolling bearing history test data. First, it uses the neural network method to realize the health state recognition of the marine gas turbine. Then, the fault of the marine gas turbine is predicted by taking advantage of the fault prediction which is based on the Markov model. The results show that the efficiency of fault prediction for the marine gas turbine can be realized better through the fault prediction model constructed in view of the Neural Network and Markov. And it also has a significant practical value in project item.
机译:由于船用燃气轮机的故障难以准确地预测,使滚动轴承为特定对象,通过数据分析,预处理和特征提取构建了基于神经网络和马尔可夫方法的海洋燃气轮机的故障预测模型滚动轴承历史测试数据。首先,它使用神经网络方法实现海洋燃气轮机的健康状态识别。然后,通过利用基于马尔可夫模型的故障预测来预测船用燃气轮机的故障。结果表明,通过鉴于神经网络和马尔可夫构造的故障预测模型,可以更好地实现海上燃气轮机故障预测效率。它在项目项目中也具有显着的实用价值。

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