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Prognosis and Health Monitoring of Nonlinear Systems Using a Hybrid Scheme Through Integration of PFs and Neural Networks

机译:通过PF和神经网络集成的混合方案对非线性系统进行预测和健康监测。

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In this paper, a novel hybrid architecture is proposed for developing a prognosis and health monitoring methodology for nonlinear systems through integration of model-based and computationally intelligent-based techniques. In our proposed framework, the well-known particle filters (PFs) method is utilized to estimate the states as well as the health parameters of the system. Simultaneously, the system observations are predicted through an observation forecasting scheme that is developed based on neural networks (NNs) paradigms. The objective is to construct observation profiles that are to be used in future time horizons. Our proposed online training that is utilized for observation forecasting enables the NNs models to track nonergodic changes in the profiles that are present due to presence of hidden damage affecting the system health parameters. The forecasted observations are then utilized in the PFs to predict the evolution of the system states as well as the health parameters (which are considered to be time-varying due to effects of degradation and damage) into future time horizons. Our proposed hybrid architecture enables one to select health signatures for determining the remaining useful life of the system or its components not only based on the system observations but also by taking into account the system health parameters that are not physically measurable. Our proposed hybrid health monitoring methodology is constructed and developed by invoking a special framework where implementation of the observation forecasting scheme is not dependent on the structure of the utilized NNs model. In other words, changing the network structure will not significantly affect the prediction accuracy associated with the entire health prediction scheme. To verify and validate the above results and as a case study, our proposed hybrid approach is applied to predict the health condition of a gas turbine engine when it is affected by and subjected to fouling and erosion degradation and fault damages.
机译:在本文中,提出了一种新颖的混合体系结构,用于通过集成基于模型和基于计算智能的技术来开发非线性系统的预测和健康监测方法。在我们提出的框架中,众所周知的粒子过滤器(PFs)方法用于估计系统的状态以及健康参数。同时,通过基于神经网络(NN)范例开发的观察预测方案来预测系统观察。目的是构建将在未来时间范围内使用的观测资料。我们提出的用于观测预测的在线培训使NNs模型能够跟踪由于存在影响系统健康参数的隐藏损坏而导致的轮廓中的非遍历变化。然后,将预测的观测值用于PF中,以预测系统状态以及健康参数(由于降级和损坏的影响而被认为是随时间变化的)进入未来的时间范围。我们提出的混合体系结构使人们不仅可以根据系统观察结果,而且可以考虑无法物理测量的系统健康参数,来选择健康特征来确定系统或其组件的剩余使用寿命。我们提出的混合健康监控方法是通过调用一个特殊框架来构建和开发的,在该框架中,观察预测方案的实施不依赖于所利用的NNs模型的结构。换句话说,更改网络结构不会显着影响与整个运行状况预测方案关联的预测准确性。为了验证和验证上述结果,并作为案例研究,我们提出的混合方法用于预测燃气轮机受到结垢和腐蚀退化以及故障损害的影响时的健康状况。

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