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APPLICATION OF MARKOV CHAINS TO IDENTIFICATION OF TURBINE ENGINE DYNAMIC MODELS

机译:马尔可夫链在涡轮发动机动力模型辨识中的应用

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The paper addresses the problem of dynamic modelling of gas turbines for condition monitoring purposes. Identification of dynamic models is performed using a novel Markov chain technique. This includes identifiability analysis and model estimation. When identifying the model, experimental data should be sufficiently informative for identification. So far, identifiability analysis is weak formed and workable solutions are still to be developed. A possible technique is proposed based on non-parametric models in the form of controllable Markov chains. The second step in systems identification is the model estimation. At this stage, Markov chains are introduced to provide more functionality and versatility for dynamic modelling of gas turbines. The Markov chain model combines the deterministic and stochastic components of the engine dynamics within a single model, thus providing more exact and adequate description of the real system behaviour and leading to far more accurate health monitoring.
机译:本文解决了用于状态监测目的的燃气轮机动态建模的问题。动态模型的识别是使用新颖的马尔可夫链技术进行的。这包括可识别性分析和模型估计。在识别模型时,实验数据应足以为识别提供信息。到目前为止,可识别性分析的形式薄弱,尚需开发可行的解决方案。提出了一种基于非参数模型的可控马尔可夫链形式的可行技术。系统识别的第二步是模型估计。在此阶段,引入马尔可夫链为燃气轮机的动态建模提供更多的功能和多功能性。马尔可夫链模型在单个模型中结合了发动机动力学的确定性和随机性,从而提供了对实际系统行为的更准确和充分的描述,并导致更加精确的健康状况监控。

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