Nonlinear observer-based fault detection and isolation for wind turbines

Abdulhamed Hwas, R. Katebi
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引用次数: 5

Abstract

This paper is concerned with the development of a novel nonlinear observer-based scheme for early Fault Detection and Isolation (FDI) in wind turbines. The method is based on designing a nonlinear observer using State Dependent Differential Riccati Equation (SDDRE) and a nonlinear model of the 5MW wind turbine. The fault detection system is designed and optimized to be most sensitive to system faults and least sensitive to system disturbances and noises. The comparison of system outputs with nonlinear observer outputs are given to demonstrate good estimation performance. The residual generator based on the nonlinear observer is also employed to develop a monitoring system. Simulation results presented to illustrate that the proposed method is robust and can detect and isolate a fault or multi-faults in sensors of the wind turbine.
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基于非线性观测器的风电机组故障检测与隔离
本文研究了一种新的基于非线性观测器的风电机组早期故障检测与隔离方案。该方法基于基于状态相关微分里卡蒂方程(SDDRE)和5MW风力发电机组非线性模型设计的非线性观测器。故障检测系统被设计和优化为对系统故障最敏感,对系统干扰和噪声最不敏感。将系统输出与非线性观测器输出进行了比较,证明了该方法具有良好的估计性能。基于非线性观测器的残差发生器也被用来开发一个监测系统。仿真结果表明,该方法具有较强的鲁棒性,能够检测和隔离风力发电机组传感器中的单个或多个故障。
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