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首页> 外文期刊>Computational intelligence and neuroscience >Hybrid Degradation Equipment Remaining Useful Life Prediction Oriented Parallel Simulation considering Model Soft Switch
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Hybrid Degradation Equipment Remaining Useful Life Prediction Oriented Parallel Simulation considering Model Soft Switch

机译:杂交降解设备剩余的使用寿命预测考虑模型软开关的平行模拟

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摘要

Equipment parallel simulation is an emerging simulation technology in recent years, and equipment remaining useful life (RUL) prediction oriented parallel simulation is an important branch of parallel simulation. An important concept in equipment parallel simulation is the model evolution driven by real-time data, including model selection and model parameter evolution. The current research on equipment RUL prediction oriented parallel simulation mainly focuses on a single continuous degradation mode, such as linear degradation and nonlinear degradation. Under this degradation condition, the model parameter evolution methods in parallel simulation can effectively predict equipment RUL. However, in practice, most of the equipment degradation processes exhibit a mixture of continuous degradation and discrete shock. So this requires adaptive selection of simulation models based on real-time degradation data. In this paper, the hybrid degradation equipment RUL prediction oriented parallel simulation considering model soft switch is studied. Firstly, under the modeling framework of the state space model (SSM), two kinds of degradation simulation models are established using the Wiener process and Poisson effect. Driven by the real-time degradation data, the model probability is calculated by using the forward interactive multiple model filtering algorithm to realize the model soft switch and data assimilation. On the basis of model soft switch, the expectation maximization algorithm is utilized to achieve model parameter evolution. Through the iteration between model soft switch and model parameter evolution, the simulation fidelity can be effectively improved and the actual equipment degradation state is continuously approached. According to the full probability theorem and the concept of first hitting time, the simulated degradation state distribution is integrated into the inverse Gaussian distribution. Then the analytical expression of the RUL probability density function is obtained to achieve RUL real-time prediction. Finally, a case study was conducted by using a bearing degradation data. The results show that the parallel simulation can effectively model the hybrid degradation process of the bearing. Compared with the single-model method that only considers the model parameter evolution, the RUL obtained by the method proposed in this paper has higher prediction accuracy and smaller uncertainty.
机译:设备平行仿真是近年来的新兴仿真技术,而且设备剩余的使用寿命(RUL)预测的并行模拟是并行仿真的重要分支。设备平行仿真中的一个重要概念是由实时数据驱动的模型演进,包括模型选择和模型参数演进。目前对设备RUL预测的并行模拟的研究主要集中在单一的连续劣化模式下,例如线性降解和非线性降解。在这种降级条件下,并行仿真中的模型参数演化方法可以有效地预测设备rul。然而,在实践中,大多数设备的降解过程表现出连续降解和离散冲击的混合物。因此,这需要基于实时劣化数据的仿真模型的自适应选择。本文研究了考虑模型软开关的混合降解设备RUL预测的并行仿真。首先,在状态空间模型(SSM)的建模框架下,使用维纳工艺和泊松效应建立两种劣化仿真模型。由实时劣化数据驱动,通过使用前向交互式多模型过滤算法来实现模型软交换和数据同化的模型概率。在模型软开关的基础上,利用期望最大化算法来实现模型参数演进。通过模型软交换和模型参数演化之间的迭代,可以有效地改善模拟保真度,并且不断接近实际设备劣化状态。根据完全概率定理和首次打击时间的概念,模拟的降级状态分布集成到逆高斯分布中。然后获得RUL概率密度函数的分析表达以实现RUL实时预测。最后,通过使用轴承劣化数据进行案例研究。结果表明,平行仿真可以有效地模拟轴承的混合劣化过程。与仅考虑模型参数演进的单模型方法相比,本文提出的方法获得的rul具有更高的预测精度和更小的不确定性。

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