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Health Monitoring of Wind Turbine Blades through Vibration Signal Using Advanced Signal Processing Techniques

机译:通过使用先进的信号处理技术通过振动信号的风力涡轮机叶片的健康监测

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Wind turbines are used for the transformation of wind energy into electrical energy with the help of rotating blades connected to the generator. The blades of the wind turbine play an important role since these are used for the conversion of kinetic energy into electrical energy. The blades of the wind turbine experience severe vibrations due to adverse environmental conditions, huge size, variation in wind speeds, and continuous operation throughout. These vibrations lead to serious damage to the turbine resulting in the reduction of its productivity and may lead to failure in the future. The faults must be recognized at the early stage so that energy conversion is not affected. Therefore, effective health monitoring and fault diagnosis are important for evading severe damage to the wind turbines. The identification of faults in any system requires physical knowledge of the parts which are not readily available every time. Hence data-driven models are used for classification and diagnosis of faults. The present work aims to diagnose the faults in a wind turbine blade using vibration signals as the measured signal which is acquired from the hardware setup and classify the faults using different machine learning techniques and then the performance of the classifiers are compared. The experimental work is carried out using a wind turbine set-up by introducing the different conditions of the blades i.e. healthy and defective blades. To find the suitability of the proposed method, the signal acquisition is done at three different speeds using a suitable instrumentation system. The required statistical parameters are extracted from the measured vibration signals. Then three different machine learning classifiers are applied for the classification of faults. The performances of the classifiers are evaluated in terms of the percentage of accuracy from the confusion matrix. The proposed work shows that the machine learning technique is a good approach for wind turbine fault classification and the vibration signal is a good choice as a measuring signal for the detection and diagnosis of the faults in wind turbine blades.
机译:通过连接到发电机的旋转叶片,风力涡轮机用于将风能转换为电能。风力涡轮机的叶片起着重要作用,因为这些是用于将动能转化为电能的重要作用。风力涡轮机的刀片由于不利的环境条件,巨大尺寸,风速变化以及整个持续运行而经历严重的振动。这些振动导致涡轮机造成严重损坏,从而降低其生产率,并可能导致未来失败。必须在早期阶段识别故障,以便能量转换不受影响。因此,有效的健康监测和故障诊断对于对风力涡轮机造成严重损害,很重要。任何系统中的故障的识别都需要每次不容易获得的部件的物理知识。因此,数据驱动的模型用于故障的分类和诊断。目前的工作旨在使用振动信号诊断风力涡轮机叶片中的故障,作为从硬件设置获取的测量信号,并使用不同的机器学习技术对故障进行分类,然后比较分类器的性能。通过引入叶片的不同条件,使用风力涡轮机设置进行实验工作。健康和缺陷的叶片。为了找到所提出的方法的适用性,使用合适的仪器系统以三种不同的速度完成信号采集。从测量的振动信号提取所需的统计参数。然后应用三种不同的机器学习分类器用于故障分类。根据困惑矩阵的精度百分比评估分类器的性能。所提出的工作表明,机器学习技术是风力涡轮机故障分类的良好方法,振动信号是作为检测和诊断风力涡轮机叶片故障的良好选择。

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