首页> 外文会议>The 56th Meeting of the Society for Machinery Failure Prevention Technology, Apr 15-19, 2002, Virginia Beach, Virginia >FUSION-BASED PROGNOSTICS/DIAGNOSTICS FOR OIL-WETTED COMPONENTS IN GAS TURBINE ENGINES
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FUSION-BASED PROGNOSTICS/DIAGNOSTICS FOR OIL-WETTED COMPONENTS IN GAS TURBINE ENGINES

机译:燃气轮机油润湿部件的基于融合的预测/诊断

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摘要

Development of robust in-flight prognostics or diagnostics for oil wetted gas turbine engine components will play a critical role in improving aircraft engine reliability and maintainability. Real-time algorithms for predicting and detecting bearing and gear failures are currently being developed in parallel with emerging flight-capable sensor technologies including in-line oil debris/condition monitors, and vibration analysis MEMS. These advanced prognostic/diagnostic algorithms utilize intelligent data fusion architectures to optimally combine sensor data, with probabilistic component models to achieve the best decisions on the overall health of oil-wetted components. By utilizing a combination of health monitoring data and model-based techniques, a comprehensive component prognostic capability can be achieved throughout a components life, using model-based estimates when no diagnostic indicators are present and monitored features such as oil debris and vibration at later stages when failure indications are detectable. Implementation of these oil-wetted component prognostic modules will be illustrated in this paper using bearing and gearbox test stand run-to-failure data.
机译:为油浸式燃气轮机发动机组件开发强大的飞行中预测或诊断功能,将在提高飞机发动机的可靠性和可维护性方面发挥关键作用。当前,正在与新兴的具有飞行能力的传感器技术(包括在线油屑/状态监测器和振动分析MEMS)并行开发用于预测和检测轴承和齿轮故障的实时算法。这些先进的预后/诊断算法利用智能数据融合体系结构,以最佳方式结合传感器数据和概率组件模型,从而对浸油组件的整体健康状况做出最佳决策。通过结合使用健康监测数据和基于模型的技术,可以在整个组件生命周期中实现全面的组件预后能力,当不存在诊断指标时使用基于模型的估计值,并在以后阶段监控诸如油屑和振动等特征当可检测到故障指示时。本文将使用轴承和变速箱测试台的运行失败数据来说明这些被油浸湿的组件预测模块的实现。

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