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A Review on Gas Turbine Gas-Path Diagnostics: State-of-the-Art Methods, Challenges and Opportunities

机译:燃气轮机气路诊断研究综述:最新方法,挑战和机遇

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Gas-path diagnostics is an essential part of gas turbine (GT) condition-based maintenance (CBM). There exists extensive literature on GT gas-path diagnostics and a variety of methods have been introduced. The fundamental limitations of the conventional methods such as the inability to deal with the nonlinear engine behavior, measurement uncertainty, simultaneous faults, and the limited number of sensors available remain the driving force for exploring more advanced techniques. This review aims to provide a critical survey of the existing literature produced in the area over the past few decades. In the first section, the issue of GT degradation is addressed, aiming to identify the type of physical faults that degrade a gas turbine performance, which gas-path faults contribute more significantly to the overall performance loss, and which specific components often encounter these faults. A brief overview is then given about the inconsistencies in the literature on gas-path diagnostics followed by a discussion of the various challenges against successful gas-path diagnostics and the major desirable characteristics that an advanced fault diagnostic technique should ideally possess. At this point, the available fault diagnostic methods are thoroughly reviewed, and their strengths and weaknesses summarized. Artificial intelligence (AI) based and hybrid diagnostic methods have received a great deal of attention due to their promising potentials to address the above-mentioned limitations along with providing accurate diagnostic results. Moreover, the available validation techniques that system developers used in the past to evaluate the performance of their proposed diagnostic algorithms are discussed. Finally, concluding remarks and recommendations for further investigations are provided.
机译:气路诊断是燃气轮机(GT)基于状态的维护(CBM)的重要组成部分。有大量关于GT气路诊断的文献,并且已经介绍了多种方法。常规方法的基本局限性,例如无法处理非线性发动机性能,测量不确定性,同时发生的故障以及可用传感器的数量有限,仍然是探索更先进技术的驱动力。这篇综述旨在对过去几十年来该地区的现有文献进行重要的调查。在第一部分中,解决了GT退化的问题,目的是确定导致燃气轮机性能下降的物理故障类型,哪些气体路径故障对整体性能损失的影响更大,哪些特定组件经常遇到这些故障。 。然后简要概述了有关气路诊断的文献中的矛盾之处,然后讨论了成功进行气路诊断所面临的各种挑战以及先进故障诊断技术理想地应具备的主要理想特性。此时,将对可用的故障诊断方法进行全面的回顾,并总结其优缺点。由于基于人工智能(AI)的混合诊断方法具有解决上述局限性并提供准确诊断结果的潜力,因此备受关注。此外,还讨论了系统开发人员过去用来评估其提出的诊断算法性能的可用验证技术。最后,提供了总结意见和建议,以供进一步研究。

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