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Degradation Prediction Model Based on a Neural Network with Dynamic Windows

机译:基于动态Windows神经网络的性能退化预测模型

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摘要

Tracking degradation of mechanical components is very critical for effective maintenance decision making. Remaining useful life (RUL) estimation is a widely used form of degradation prediction. RUL prediction methods when enough run-to-failure condition monitoring data can be used have been fully researched, but for some high reliability components, it is very difficult to collect run-to-failure condition monitoring data, i.e., from normal to failure. Only a certain number of condition indicators in certain period can be used to estimate RUL. In addition, some existing prediction methods have problems which block RUL estimation due to poor extrapolability. The predicted value converges to a certain constant or fluctuates in certain range. Moreover, the fluctuant condition features also have bad effects on prediction. In order to solve these dilemmas, this paper proposes a RUL prediction model based on neural network with dynamic windows. This model mainly consists of three steps: window size determination by increasing rate, change point detection and rolling prediction. The proposed method has two dominant strengths. One is that the proposed approach does not need to assume the degradation trajectory is subject to a certain distribution. The other is it can adapt to variation of degradation indicators which greatly benefits RUL prediction. Finally, the performance of the proposed RUL prediction model is validated by real field data and simulation data.
机译:跟踪机械组件的退化对于有效的维护决策至关重要。剩余使用寿命(RUL)估计是退化预测的一种广泛使用的形式。已经充分研究了可以使用足够的运行至故障状态监视数据的RUL预测方法,但是对于某些高可靠性组件,很难收集运行至故障状态监视数据,即从正常到故障。在一定时期内只能使用一定数量的状态指标来估计RUL。另外,一些现有的预测方法由于可推断性差而具有阻碍RUL估计的问题。预测值收敛到某个常数或在一定范围内波动。此外,波动条件特征对预测也有不利影响。为了解决这些难题,本文提出了一种基于带有动态窗口的神经网络的RUL预测模型。该模型主要包括三个步骤:通过增加速率确定窗口大小,变化点检测和滚动预测。所提出的方法具有两个优势。一个是,所提出的方法不需要假设退化轨迹服从某种分布。另一个是它可以适应降级指标的变化,这大大有利于RUL预测。最后,通过实际数据和仿真数据验证了所提出的RUL预测模型的性能。

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