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A Novel Condition Monitoring Methodology Based on Neural Network of Pump-Turbines with Extended Operating Range

机译:基于延长工作范围的泵涡轮机神经网络的新型条件监测方法

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Due to the entrance of new renewable energies, water-storage energy has to be regulated more frequently to keep the stability of power grid. Consequently, pump-turbines have to work under off-design conditions more than before, which will cause more damage and decrease their useful life. Advanced monitoring methodologies that can balance the degradation of machine and revenues to the power plant has been required. To develop an innovative condition monitoring approach, vibration data was collected from different components of a pump-turbine which is running in an extended operating range. The consequences of operating range extension on the vibration of the pump-turbine have been studied by analysing the vibration signatures. The changing rule of the vibration behavior of the machine with the operating parameters has been obtained. An artificial neural network based model has been applied to build an autoregressive normal behavior model. The results indicated that the normal behavior model based on multi-layer neural net has the ability to predict the vibration characteristics of the machine in different operating conditions. This monitoring method can be adapted to the similar type of hydraulic turbine units.
机译:由于新的可再生能量的入口,必须更频繁地调节储水能量以保持电网的稳定性。因此,泵涡轮机必须比以前更多地在非设计条件下工作,这将导致更多的损坏并降低其使用寿命。可以平衡机器和收入到电厂的劣化的先进监测方法。为了开发创新的状态监测方法,从泵涡轮机的不同部件收集振动数据,该泵涡轮机在延长的操作范围内运行。通过分析振动签名,研究了在泵涡轮机振动上进行操作范围延伸的后果。已经获得了具有操作参数的机器的振动行为的变化规则。基于人工网络的模型应用于构建自回归正常行为模型。结果表明,基于多层神经网络的正常行为模型具有预测机器在不同操作条件下的振动特性的能力。该监测方法可以适用于类似类型的液压涡轮机组。

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