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A Hybrid TLBO-Particle Filter Algorithm Applied to Remaining Useful Life Prediction in the Presence of Multiple Degradation Factors

机译:混合TLBO粒子滤波算法在多个降解因子存在下的剩余使用寿命预测中的应用。

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One of the end goals of a Prognostic and Health Monitoring (PHM) algorithm is to provide accurate Remaining Useful Life (RUL) predictions for the monitored component or system. Most of the PHM algorithms found in the literature are based on the assumption that the degradation process is governed by only one degradation factor. However, some components and systems may be subject to multiple degradation factors. In this paper, we propose a hybrid algorithm that incorporates a Teaching-Learning Based optimization (TLBO) step into a Particle Filter (PF) framework. PF is an algorithm that can handle multiple degradation factors. However, it has some drawbacks such as sample degeneracy and sample impoverishment. The hybrid TLBO-PF algorithm proposed in this paper improves the performance of the standard PF algorithm by reducing the effects of sample degeneracy and sample impoverishment. A case study is presented to evaluate the performance of the proposed algorithm for estimating the degradation factors and predicting the RUL of a Lithium-ion battery, which is affected by two degradation factors. The results show that the proposed algorithm presented a better performance for both the tasks (degradation factor estimation and RUL prediction) when compared with the standard Particle Filter algorithm.
机译:预后和健康监视(PHM)算法的最终目标之一是为受监视的组件或系统提供准确的剩余使用寿命(RUL)预测。文献中发现的大多数PHM算法都是基于这样的假设,即降级过程仅由一个降级因子控制。但是,某些组件和系统可能会受到多种降级因素的影响。在本文中,我们提出了一种混合算法,该算法将基于教学学习的优化(TLBO)步骤整合到了粒子过滤器(PF)框架中。 PF是一种可以处理多个降级因素的算法。但是,它具有一些缺点,例如样品的简并性和样品的贫困性。本文提出的混合TLBO-PF算法通过减少样本退化和样本贫困的影响来提高标准PF算法的性能。进行了一个案例研究,以评估所提出算法的性能,该算法可估算受两个退化因子影响的锂离子电池的退化因子和预测RUL。结果表明,与标准的粒子滤波算法相比,该算法在两种任务(降级因子估计和RUL预测)上均表现出更好的性能。

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