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Bearing Diagnostics of Hydro Power Plants Using Wavelet Packet Transform and a Hidden Markov Model with Orbit Curves

机译:基于小波包变换和隐马尔可夫轨道曲线模型的水电站轴承诊断。

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The contribution of a medium-sized hydro power plant to the power grid can be either at base load or at peak load. When the latter is the most common operation mode, it increases the start and stop frequency, intensifying the hydro turbine components’ degradation, such as the guide bearings. This happens due to more frequent operation in transient states, which means being outside the service point of the machines’ nominal condition, consisting of speed, flow, and gross head. Such transient state operation increases the runner bearings’ mechanical vibration. The readings are acquired during the runner start-ups and filtered by a DC component mean value and a wavelet packet transform. The filtered series are used to estimate the relationship between the maximum orbit curve displacement and the accumulated operating hours. The estimated equation associated with the ISO 7919-5 vibration standards establishes the sojourn times of the degradation states, sufficient to obtain the transition probability distribution. Thereafter, a triangular probability function is used to determine the observation probability distribution in each state. Both matrices are inputs required by a hidden Markov model aiming to simulate the equipment deterioration process, given a sequence of maximum orbit curve displacements.
机译:中型水力发电厂对电网的贡献可以是基本负荷或峰值负荷。当后者是最常见的运行模式时,它会增加启动和停止频率,从而加剧水轮机部件的退化,例如导向轴承。发生这种情况的原因是,在瞬态下的运行更加频繁,这意味着它们超出了机器标称条件的服务点,包括速度,流量和总扬程。这种瞬态操作会增加转轮轴承的机械振动。在跑步者启动期间获取读数,并通过DC分量平均值和小波包变换进行滤波。滤波后的序列用于估计最大轨道曲线位移与累计运行时间之间的关系。与ISO 7919-5振动标准关联的估计方程式确定了退化状态的停留时间,足以获得过渡概率分布。此后,使用三角概率函数确定每种状态下的观察概率分布。在给定最大轨道曲线位移序列的情况下,这两个矩阵都是隐马尔可夫模型所需的输入,该模型旨在模拟设备退化过程。

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