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A multi-feature fusion model based on BRB of health state prediction for aeroengine gas path system

机译:基于FRB的航空发动机气道系统BRB的多特征融合模型

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The health of an aeroengine gas path system is essential to the reliable flight of the aircraft. Due to the complexity and coupling of aeroengine gas path systems, the establishment of a dynamic and comprehensive model for the health state prediction is difficult. It is very necessary to establish the prediction model by fusing multiple features instead of using a single feature such as exhaust temperature. A belief rule base (BRB) shows outstanding performance in modeling complex systems. This paper proposes a multi-feature fusion model based on BRB of health state prediction for aeroengine gas path system. In this model, firstly, the health characteristics of the aeroengine gas path system with different physical characteristics is taken. Secondly, a time series prediction model of the health characteristics based on BRB is established. Finally, the evidence reasoning (ER) algorithm is used to fuse these health characteristics to achieve the comprehensive health state prediction of the aeroengine gas path system. The BRB health state prediction model combines both quantitative information and expert knowledge to remedy deficiency of effective data and improve the prediction accuracy. Considering the initial parameters given by experts are subjective and may not be appropriate for engineering practice. The projection covariance matrix adaptive evolution strategy (P-CMA-ES) is selected as the optimization algorithm for training the initial parameters. Finally, a certain type of aeroengine is taken as a case to verify the effectiveness of the proposed model. The results show that the health state prediction model based on BRB with multi-feature fusion can accurately predict the health states of aeroengine gas path system.
机译:航空发动机气体道路系统的健康对飞机的可靠飞行至关重要。由于航空发动机气体路径系统的复杂性和耦合,难以建立动态和综合模型的健康状态预测。通过熔化多个特征而不是使用诸如排气温度的单个特征来建立预测模型是非常必要的。信仰规则基础(BRB)在建模复杂系统中表现出出色的性能。本文提出了一种基于FRB对航空发动机气道系统BRB的多特征融合模型。在该模型中,首先,采取具有不同物理特性的航空发动机路径系统的健康特性。其次,建立了基于BRB的健康特性的时间序列预测模型。最后,证据推理(ER)算法用于熔断这些健康特性以实现航空发动机气道系统的综合健康状态预测。 BRB健康状态预测模型将定量信息和专家知识结合在弥补有效数据的缺陷并提高预测准确性。考虑专家给出的初始参数是主观的,可能不适合工程实践。选择投影协方差矩阵自适应演化策略(P-CMA-ES)作为训练初始参数的优化算法。最后,采取某种类型的航空发动机作为验证所提出的模型的有效性的情况。结果表明,基于BRB的具有多种特征融合的健康状态预测模型可以准确地预测航空发动机气道系统的健康状态。

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