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DATA-DRIVEN MODEL-BASED FAULT DIAGNOSIS IN A WIND TURBINE WITH ACTUATOR FAULTS

机译:带有执行器故障的风轮机中基于数据驱动模型的故障诊断

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Wind turbines are renewable energy conversion devices that are being deployed in greater numbers. However, today's wind turbines are still expensive to operate, and maintain. The reduction of operational and maintenance costs has become a key driver for applying low-cost, condition monitoring and diagnosis systems in wind turbines. Accurate and timely detection, isolation and diagnosis of faults in a wind turbine allow satisfactory accommodation of the faults and, in turn, enhancement of the reliability, availability and productivity of wind turbines. The so-called model-based Fault Detection and Diagnosis (FDD) approaches utilize system model to carry out FDD in real-time. However, wind turbine systems are driven by wind as a stochastic aerodynamic input, and essentially exhibit highly nonlinear dynamics. Accurate modeling of such systems to be suitable for use in FDD applications is a rather difficult task. Therefore, this paper presents a data-driven modeling approach based on artificial intelligence (AI) methods which have excellent capability in describing complex and uncertain systems. In particular, two data-driven dynamic models of wind turbine are developed based on Fuzzy Modeling and Identification (FMI) and Artificial Neural Network (ANN) methods. The developed models represent the normal operating performance of the wind turbine over a full range of operating conditions. Consequently, a model-based FDD scheme is developed and implemented based on each of the individual models. Finally, the FDD performance is evaluated and compared through a series of simulations on a well-known large offshore wind turbine benchmark in the presence of wind turbulences, measurement noises, and different realistic fault scenarios in the generator/converter torque actuator.
机译:风力涡轮机是可再生能源转换设备,正在大量使用。但是,当今的风力涡轮机的操作和维护仍然很昂贵。降低运营和维护成本已成为在风力涡轮机中应用低成本状态监测和诊断系统的关键动力。准确,及时地检测,隔离和诊断风力涡轮机中的故障可以使故障得到令人满意的解决,进而可以提高风力涡轮机的可靠性,可用性和生产率。所谓的基于模型的故障检测与诊断(FDD)方法利用系统模型实时执行FDD。然而,风力涡轮机系统由风作为随机的空气动力输入来驱动,并且本质上表现出高度非线性的动力学。此类系统的准确建模以适合FDD应用是一项相当艰巨的任务。因此,本文提出了一种基于人工智能(AI)方法的数据驱动建模方法,该方法在描述复杂和不确定的系统方面具有出色的能力。特别是,基于模糊建模与识别(FMI)和人工神经网络(ANN)方法,开发了两个数据驱动的风力发电机动态模型。所开发的模型代表了风机在整个运行条件下的正常运行性能。因此,基于模型的FDD方案是基于每个单独的模型开发和实施的。最后,在发电机/变矩器扭矩执行器中存在风湍流,测量噪声和不同实际故障情况的情况下,通过在著名的大型海上风力发电机基准上进行一系列模拟来评估和比较FDD性能。

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