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引用次数: 4
摘要
当前涡轮发动机的精密性和复杂性要求对涡轮发动机的健康状况进行先进的故障诊断。这些先进的诊断系统的一个关键组成部分是决策融合软件。决策融合软件系统的目的是提高诊断的可靠性、准确性,提高发动机运行的安全性。它还有助于减少诊断误报,从而节省维护时间。本文重点研究了提高涡轮发动机诊断能力的决策融合软件系统的开发与实现。本文介绍了如何利用模糊逻辑系统,根据涡轮发动机的健康参数,即效率和流量,对涡轮发动机不同层次的健康状态进行预测和诊断。本文将决策融合软件系统分解为两个子系统,即决策制定子系统(decision Making Subsystem, DMS)和决策融合子系统(decision fusion Subsystem, DFS)。DMS的目标是预测发动机部件的健康状况。而DFS的目的是根据DMS提供的信息对发动机的整体健康状况进行评估。所开发的融合软件系统的试验结果表明,该系统可以为涡轮发动机提供可靠的诊断,从而降低维修成本。本文将介绍商用级涡轮发动机C-MAPSS的所有系统开发步骤和测试结果。
Decision fusion software system for turbine engine fault diagnostics
Sophistication and complexity of current turbine engines have mandated the need for advanced fault diagnostic for monitoring the health condition of turbine engines. A critical component of these advanced diagnostic systems is the decision fusion software. The purpose of the decision fusion software system is to increase diagnostic reliability, accuracy, and improve safety of the engine operation. It also helps decrease diagnostic false alarms hence save maintenance time. This paper focuses on the development and implementation of decision-fusion software system for enhancing the diagnosis of turbine engines. The paper describes how a fuzzy logic system is used to predict and diagnose turbine engine health conditions at different levels based on the health parameters, i.e., efficiency and flow. In this paper, the decision fusion software system was broken down into two subsystems namely, Decision Making Subsystem (DMS) and Decision Fusion Subsystem (DFS). The goal of the DMS is to predict the health condition of the engine components. While the objective of DFS is to assess the overall health condition of the engine based on information provided by the DMS. The test results of developed fusion software system are promising in providing reliable diagnostics for turbine engine, subsequently reducing maintenance cost. All the system development steps and testing results on the commercial grade turbine engine model C-MAPSS will be presented in this paper.