基于机身形变分布式光学感知的传感器融合策略在执行器载荷估计中的应用

Gaetano Quattrocchi, M. D. Dalla Vedova, Emanuele Frediani, P. Maggiore, P. Berri
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引用次数: 0

摘要

机载机电系统的实时健康监测通常涉及基于模型的方法,将测量(物理)信号与数值模型或统计数据进行比较。这种方法通常需要精确测量表征真实系统状态的特定物理量,命令输入,以及可以作为干扰源的各种边界条件。在这方面,作者研究了传感器融合技术,该技术能够整合基于布拉格光栅的光学传感器网络提供的信息,以重建由一个或多个虚拟传感器(单独或同时)获取的信号。使用适当的光纤布拉格光栅(fbg)网络,可以直接(局部)测量几个物理量(例如温度,振动,变形,湿度等),同时,使用这些数据来估计其他影响系统行为的影响,但由于各种原因,这些影响不能直接测量。在这种情况下,这些信号可以通过适当设计和训练的人工神经网络(ann)“虚拟测量”。作者提出了一种基于fbg的特定传感技术,将合适的精度水平与最小的侵入性、低复杂性和对EM干扰和恶劣环境条件的鲁棒性相结合。为说明所提出的方法而考虑的测试案例涉及一个伺服机械应用程序,该应用程序旨在使用基于模型的方法实时监测飞行控制执行器的健康状态。由于作用在系统上的外部气动载荷会影响大多数作动器的工作,因此对其进行测量将有助于准确地模拟监测模型的动态响应。因此,作者通过对机身应变的分布式感知来推断作用在飞行控制执行器上的气动载荷,从而评估所提出的传感器融合策略的有效性。从操作上讲,将结构模型和空气动力学模型相结合,生成一个数据库,用于训练基于数据的代理,将应变测量值与相应的执行器负载相关联。
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A sensor fusion strategy based on a distributed optical sensing of airframe deformation applied to actuator load estimation
Real-time health monitoring of mechatronic onboard systems often involves model-based approaches comparing measured (physical) signals with numerical models or statistical data. This approach often requires the accurate measurement of specific physical quantities characterizing the state of the real system, the command inputs, and the various boundary conditions that can act as sources of disturbance. In this regard, the authors study sensor fusion techniques capable of integrating the information provided by a network of optical sensors based on Bragg gratings to reconstruct the signals acquired by one or more virtual sensors (separately or simultaneously). With an appropriate Fiber Bragg Gratings (FBGs) network, it is possible to measure directly (locally) several physical quantities (e.g. temperature, vibration, deformation, humidity, etc.), and, at the same time, use these data to estimate other effects that significantly influence the system behavior but which, for various reasons, are not directly measurable. In this case, such signals could be “virtually measured” by suitably designed and trained artificial neural networks (ANNs). The authors propose a specific sensing technology based on FBGs, combining suitable accuracy levels with minimal invasiveness, low complexity, and robustness to EM disturbances and harsh environmental conditions. The test case considered to illustrate the proposed methodology refers to a servomechanical application designed to monitor the health status in real-time of the flight control actuators using a model-based approach. Since the external aerodynamic loads acting on the system influence the operation of most of the actuators, their measurement would be helpful to accurately simulate the monitoring model's dynamic response. Therefore, the authors evaluate the proposed sensor fusion strategy effectiveness by using a distributed sensing of the airframe strain to infer the aerodynamic loads acting on the flight control actuator. Operationally speaking, a structural and an aerodynamic model are combined to generate a database used to train data-based surrogates correlating strain measurements to the corresponding actuator load.
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