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Advances in uncertainty representation and management for particle filtering applied to prognostics

机译:应用于预测的粒子过滤的不确定表现与管理的进展

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Particle filters (PF) have been established as the de facto state of the art in failure prognosis. They combine advantages of the rigors of Bayesian estimation to nonlinear prediction while also providing uncertainty estimates with a given solution. Within the context of particle filters, this paper introduces several novel methods for uncertainty representations and uncertainty management. The prediction uncertainty is modeled via a rescaled Epanechnikov kernel and is assisted with resampling techniques and regularization algorithms. Uncertainty management is accomplished through parametric adjustments in a feedback correction loop of the state model and its noise distributions. The correction loop provides the mechanism to incorporate information that can improve solution accuracy and reduce uncertainty bounds. In addition, this approach results in reduction in computational burden. The scheme is illustrated with real vibration feature data from a fatigue-driven fault in a critical aircraft component.
机译:已经建立了颗粒滤波器(PF)作为故障预后的最具事实状态。它们将严格的贝叶斯估计对非线性预测的优点相结合,同时还提供了具有给定解决方案的不确定性估计。在粒子过滤器的背景下,本文介绍了几种不确定表示和不确定性管理的新方法。预测不确定性通过Rescaled Epanechnikov内核进行建模,并辅助重采样技术和正则化算法。通过在状态模型的反馈校正环路和其噪声分布中的参数调整来实现不确定性管理。校正循环提供了包含可以提高解决方案准确性和减少不确定性范围的信息的机制。此外,这种方法导致计算负担减少。该方案用来自关键飞机组件的疲劳驱动故障的真实振动特征数据示出。

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