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Prognostics of Onboard Electromechanical Actuators: a New Approach Based on Spectral Analysis Techniques

机译:车载机电执行器的预后:基于光谱分析技术的新方法

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In the last years, the layout of servomechanisms used in the aeronautical field to actuate the flight controls has changed radically and, nowadays electromechanical actuators (EMAs) are increasingly replacing the older hydraulic powered actuator types. The definition of special monitoring procedures, based on the analysis of the system response and aiming to evaluate the evolution of faults, represents an important task of the modern system engineering taking into account that onboard actuators are typically safety critical items. The present paper proposes a new prognostic procedure centered on the characterization of the state of health of an EMA used in aircraft primary flight controls. This approach, based on the innovative use of a model-based fault detection and identification method (FDI), identifies the actuator actual state of wear of the actuator analyzing proper system operational parameters, able to put in evidence the corresponding degradation path, by means of a numerical algorithm based on spectral analysis techniques. The proposed FDI algorithm has been tested in case of EMA affected by two progressive failures (rotor static eccentricity and stator phase turn-to-turn short-circuit), showing an adequate robustness and a suitable ability to early identify EMA malfunctions with low risk of false alarms or missed failures.
机译:在过去的几年中,用于航空领域以致动飞行控制的伺服机构的布局发生了根本性的变化,如今,机电致动器(EMA)越来越多地取代了老式的液压致动器类型。考虑到系统执行器通常是安全关键项目,基于对系统响应的分析并旨在评估故障的发展,特殊监视程序的定义代表了现代系统工程的一项重要任务。本文提出了一种新的预后程序,该程序以飞机主要飞行控制中使用的EMA的健康状态为特征。该方法基于对基于模型的故障检测和识别方法(FDI)的创新使用,可通过分析适当的系统操作参数来识别执行器的执行器实际磨损状态,从而能够通过以下方式证明相应的降级路径:频谱分析技术的数值算法的原理。在EMA受两个渐进式故障(转子静态偏心率和定子相匝间短路)影响的情况下,已经对提出的FDI算法进行了测试,显示出足够的鲁棒性和适当的能力,可以早期识别EMA故障,且风险较低。错误警报或错过的故障。

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