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Generalized Prognostics Algorithm Using Kalman Smoother

机译:使用卡尔曼平滑器的广义预后算法

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The ability to prognosticate the future state of a mechanical component can greatly improve the ability of a helicopter operator to manage their assets. Fundamentally, prognostics can change the logistics support of a helicopter by: reducing spares, improving the likelihood of a deployment meeting its mission requirements, and reducing unscheduled maintenance events. A successful prognosis is based on applying a fault model and usage of metrics (torque) to a diagnostic. This paper addresses a generalized fault and usage model through simplification of Paris’ Law and the use of a Kalman Smoother. This state observer technique is a backward/forward filtering technique that has no phase delay. This allows a generalized, zero tuning model that provides an improved component health trend, and a better estimate of the current remaining useful life (RUL).
机译:预测机械部件未来状态的能力可以大大提高直升机操作员管理其资产的能力。从根本上说,预测可以通过以下方式改变直升机的后勤支持:减少备件,提高部署满足其任务要求的可能性,并减少计划外维护事件。成功的预后基于将故障模型和指标(扭矩)的使用应用于诊断。本文通过简化巴黎定律和卡尔曼平滑器的使用,解决了广义故障和使用模型。这种状态观察器技术是一种没有相位延迟的后向/前向滤波技术。这允许一个通用的零调整模型,提供改进的组件运行状况趋势,并更好地估计当前的剩余使用寿命 (RUL)。

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