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Advanced signal processing tools for helicopters’ future Health and Usage Monitoring Systems (HUMS)

机译:用于直升机未来的健康和使用情况监视系统(HUMS)的高级信号处理工具

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Health and Usage Monitoring Systems (HUMS) have been developed in order to monitor the health condition of helicopter drivetrains, focusing towards early, accurate and on time fault detection with limited false alarms and missed detections. Among other systems, the Main GearBox (MGB) is the heart of the drivetrain, reducing the high input speed generated by the engines, in order to provide the appropriate torque to the main rotors and to other auxiliary systems. HUMS are mounted on helicopters aiming to enhance the operational reliability and to support maintenance decision making, in order to increase the flight safety keeping in the meanwhile the overall maintenance cost low. Currently used HUMS seems to have reached their limits and the need for improvement has been recently highlighted by the post-accident analysis of the helicopter LN-OJF, which crashed in Norway in 2016. The aim of this paper is the application and further extension of recently proposed advanced cyclostationary based signal processing tools for the accurate detection of faults in helicopter gearboxes. The methodologies are tested, evaluated and compared with state of the art methods on datasets captured during experimental tests under various operating conditions on helicopter gearboxes, including a Category A Super Puma SA330 main planetary gearbox.
机译:为了监视直升机传动系统的健康状况,已经开发了健康和使用状况监视系统(HUMS),重点在于早期虚假警报和漏检的早期,准确和及时的故障检测。在其他系统中,主变速箱(MGB)是动力传动系统的核心,它降低了发动机产生的高输入速度,以便为主旋翼和其他辅助系统提供适当的扭矩。 HUMS安装在直升机上,旨在提高操作可靠性并支持维护决策,以便在保持总体维护成本较低的同时提高飞行安全性。当前使用的HUMS似乎已达到极限,对LN-OJF直升机的事故后分析最近强调了改进的必要性,该直升机于2016年在挪威坠毁。本文的目的是应用和进一步扩展最近提出了先进的基于循环平稳的信号处理工具,用于精确检测直升机变速箱中的故障。在直升机齿轮箱(包括A类Super Puma SA330主行星齿轮箱)的各种操作条件下的实验测试期间,在实验测试期间捕获的数据集上对方法论进行了测试,评估和比较,并与之进行了比较。

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