基于状态增强ekf方法的液压俯仰系统故障检测与诊断研究

M. F. Asmussen, H. Pedersen, Lina Lilleengen, A. Larsen, Thomas Farsakoglou
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引用次数: 3

摘要

螺距系统是当今风力涡轮机的重要组成部分,它们既用于功率调节,又作为涡轮机安全系统的一部分。因此,螺距系统的任何故障都等于增加了涡轮机的停机时间,因此应该避免。通过实施故障检测和诊断(FDD)方案,可以在导致故障之前检测和估计故障,从而增加可用性并帮助维护风力涡轮机。因此,本文的重点是开发一种FDD算法来检测流体动力螺距系统中的泄漏和传感器故障。FDD算法基于状态增强扩展卡尔曼滤波器(SAEKF)和一组观测器,该观测器是利用一个经过实验验证的俯pitch系统模型设计的。SAEKF设计用于检测和估计内部和外部泄漏故障,同时还可以估计系统上未知的外部负载,以及检测传感器辍学的观察器组。仿真结果表明,SAEKF既能检测到突发性泄漏,也能检测到演化中的内部泄漏和外部泄漏,同时对噪声和系统参数的变化具有鲁棒性。类似地,我们发现该方案能够检测传感器辍学,但鲁棒性较差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigating Fault Detection and Diagnosis in a Hydraulic Pitch System Using a State Augmented EKF-Approach
Pitch systems impose an important part of today’s wind turbines, where they are both used for power regulation and serve as part of a turbines safety system. Any failure on a pitch system is therefore equal to an increase in downtime of the turbine and should hence be avoided. By implementing a Fault Detection and Diagnosis (FDD) scheme faults may be detected and estimated before resulting in a failure, thus increasing the availability and aiding in the maintenance of the wind turbine. The focus of this paper is therefore on the development of a FDD algorithm to detect leakage and sensor faults in a fluid power pitch system. The FDD algorithm is based on a State Augmented Extended Kalman Filter (SAEKF) and a bank of observers, which is designed utilizing an experimentally validated model of a pitch system. The SAEKF is designed to detect and estimate both internal and external leakage faults, while also estimating the unknown external load on the system, and the bank of observers to detect sensor drop-outs. From simulation it is found that the SAEKF may detect both abrupt and evolving internal and external leakages, while being robust towards noise and variation in system parameters. Similar it is found that the scheme is able to detect sensor drop-outs, but is less robust towards this.
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