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Lumped parameters modelling of the EMAs' ball screw drive with special consideration to ball/grooves interactions to support model-based health monitoring

机译:集声参数建模EMAS滚珠丝杠驱动,特别考虑到球/槽的相互作用,以支持基于模型的健康监测

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Building a high-fidelity model to identify a connection between a measurable signal variation and the onset and growth of a fault, which can then evolve in a failure, is a method to develop a prognostic and health management system. With this goal, this paper is focused on the development of a high-fidelity dynamic model of the ball screw component of flight control electro-mechanical actuators. This model can represent the roll/slip transition in the spheres/grooves contact points depending on dynamic operative conditions. It is suitable for various defects injection, such as friction increase, preload variation or mechanical backlash. The effect of such defects on the mechanical direct efficiency is investigated since it is a parameter which can be easily measured experimentally, and which may be a suitable candidate as health feature or as an indicator of faults onset and progression within the mechanism. This approach is intended to track the health status of the component and consequently avoid unexpected in-service failure, which may have a high cost, especially in the aerospace sector. (c) 2019 Elsevier Ltd. All rights reserved.
机译:构建高保真模型以识别可测量的信号变化与故障的发作和生长之间的连接,然后可以在发生故障中发展,是一种开发预后和健康管理系统的方法。通过这一目标,本文专注于开发飞行控制机械执行器的滚珠丝杠组件的高保真动态模型。根据动态操作条件,该模型可以代表球形/凹槽接触点中的辊/滑移过渡。它适用于各种缺陷喷射,例如摩擦增加,预加载变化或机械急流。研究了这种缺陷对机械直接效率的影响,因为它是可以通过实验易于测量的参数,并且可以是合适的候选者作为健康特征,或者作为机构内的故障发作和进展的指示。这种方法旨在追踪部件的健康状况,从而避免意外的在线失败,这可能具有高成本,特别是在航空航天部门。 (c)2019年elestvier有限公司保留所有权利。

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