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Data driven sensor and actuator fault detection and isolation in wind turbine using classifier fusion

机译:基于分类器融合的风力发电机数据驱动传感器和执行器故障检测与隔离

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AbstractRenewable energy sources like wind energy are widely available without any limitation. Reliability of wind turbine is crucial in extracting the maximum amount of energy from the wind. Early fault detection, isolation and successful controller reconfiguration can considerably increase the performance in faulty conditions and prevent failures in the system. Along the same vein, fault diagnosis of wind turbine systems has received much attention in recent years. Fault detection methods based on time and frequency domain signal analysis without explicit mathematical model are state-of-the-art in complex processes. This paper investigates data-driven fault detection and isolation (FDI) design based on fusion of several classifiers for a wind turbine benchmark -second challenge. The proposed method is robust against different operational conditions and measurement errors. In fact, we develop a new data-driven FDI scheme, via analytical redundancy. Multi-Layer Perceptron (MLP), Radial Basis Function (RBF), Decision Tree, and K-Nearest Neighbor (KNN) classifiers are implemented in parallel, and fused together. Feature extraction from measurement signals enriches the information about wind turbine condition and improves decision making of proposed FDI scheme. Simulation results and Monte Carlo sensitivity analysis show the effectiveness of the proposed method.HighlightsA data driven approach based on fusion of several classifiers for Fault Detection and Isolation in wind turbine is proposed.Proposed feature extraction and feature selection schemes enhance richness of information.Proposed approach is validated based on extensive simulations in the FAST simulator.Comparative study with other advanced methods is provided.Sensitivity and error analysis show the robustness of the proposed data-driven method.
机译: 摘要 像风能这样的可再生能源已经广泛使用,没有任何限制。风力涡轮机的可靠性对于从风中获取最大能量至关重要。早期的故障检测,隔离和成功的控制器重新配置可以大大提高故障条件下的性能并防止系统故障。同样,近年来,风力涡轮机系统的故障诊断受到了广泛关注。在没有明确数学模型的情况下,基于时域和频域信号分析的故障检测方法是复杂过程中的最新技术。本文研究了基于多个分类器融合的数据驱动故障检测与隔离(FDI)设计,以应对风力涡轮机基准测试第二个挑战。所提出的方法对于不同的操作条件和测量误差具有鲁棒性。实际上,我们通过分析冗余开发了一种新的数据驱动的FDI方案。并行实现多层感知器(MLP),径向基函数(RBF),决策树和K最近邻(KNN)分类器,并将它们融合在一起。从测量信号中提取特征可丰富有关风力涡轮机状态的信息,并改善所提出的FDI方案的决策能力。仿真结果和蒙特卡罗灵敏度分析表明了该方法的有效性。 突出显示 提出了一种基于多个分类器融合的数据驱动方法,用于风力涡轮机的故障检测和隔离。 建议的特征提取和特征选择方案可增强信息的丰富性。 道具基于FAST模拟器中的大量模拟对osed方法进行了验证。 与其他高级方法进行了比较研究。 灵敏度和错误分析显示了该数据驱动方法的鲁棒性。 < / ce:list-item>

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