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ENHANCING GEAR PHYSICS-OF-FAILURE MODELS WITH SYSTEM LEVEL VIBRATION FEATURES

机译:利用系统级振动功能增强齿轮物理失效模型

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To truly optimize the deployment of DoD assets, there exists a fundamental need for predictive tools that can reliably estimate the current and reasonably predict the future capacity of complex systems. Prognosis, as in all true predictions, has inherent uncertainty, which has been treated through probabilistic modeling approaches. The novelty in the current prognostic tool development is that predictions are made through the fusion of stochastic physics-of-failure models, relevant system or component level health monitoring data and various inspection results. Regardless of the fidelity of a prognostic model or the quantity and quality of the seeded fault or run-to-failure data, these models should be adaptable based on system health features such as vibration, temperature, and oil analysis. The inherent uncertainties and variability in material capacity and localized environmental conditions, as well as the realization that complex physics-of-failure understanding will always possess some uncertainty, all contribute to the stochastic nature of prognostic modeling. However, accuracy can be improved by creating a prognostic architecture instilled with the ability to account for unexpected damage events, fuse with diagnostic results, and statistically calibrate predictions based on inspection information and real-time system level features. In this paper, the aforementioned process is discussed and implemented first on controlled failures of single spur gear teeth and then on a helical gear contained within a drivetrain system. The stochastic, physics-of-failure models developed are validated with transitional run-to-failure data developed at Penn State ARL. Future work involves applying the advanced prognostics process to helicopter gearboxes.
机译:为了真正优化国防部资产的部署,根本需要一种预测工具,该工具可以可靠地估算当前并合理地预测复杂系统的未来容量。正如所有真实的预测一样,预后具有内在的不确定性,已通过概率建模方法对其进行了处理。当前的预测工具开发中的新颖之处在于,通过融合随机故障物理模型,相关系统或组件级别的运行状况监视数据以及各种检查结果来进行预测。不管预测模型的保真度,种子故障或运行失败数据的数量和质量如何,这些模型都应该基于振动,温度和油液分析等系统健康状况而适用。材料能力和局部环境条件的内在不确定性和可变性,以及对复杂的故障物理理解将始终具有某些不确定性的认识,所有这些都对预测模型的随机性做出了贡献。但是,可以通过创建一种预后架构来提高准确性,该架构具有处理意外损坏事件,与诊断结果融合以及基于检查信息和实时系统级功能进行统计校准预测的能力。在本文中,上述过程首先在单个正齿轮齿的受控故障上讨论,然后在传动系统中包含的斜齿轮上实现。开发的随机故障物理模型已由宾夕法尼亚州立大学ARL开发的过渡性运行至故障数据进行了验证。未来的工作涉及将先进的预测过程应用于直升机齿轮箱。

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