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首页> 外文期刊>Journal of propulsion and power >Performance Enhancement of Global Optimization-Based Gas Turbine Fault Diagnosis Systems
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Performance Enhancement of Global Optimization-Based Gas Turbine Fault Diagnosis Systems

机译:基于全局优化的燃气轮机故障诊断系统的性能增强

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摘要

Fault detection and identification of gas turbines is a crucial process for providing engine safe operation and decreasing the maintenance costs. In studies conducted in the field of global optimization-based gas turbine fault diagnosis, the genetic algorithm as the most well-known evolutionary optimization algorithm is usually employed to identify the engine health parameters. However, because of the evolutionary and stochastic nature of this algorithm, the genetic-algorithm-based diagnosis usually suffers from computational burden and reliability. To mitigate this problem, in the present work, a comparative study has been performed on the global optimization-based gas turbine fault diagnosis, and it is shown that an innovative hybrid optimization algorithm as a fault detection and identification system can significantly enhance the performance of the conventional optimization-based diagnosis systems, even in the presence of measurement noise. The results obtained indicate that the fault detection and identification system based on the hybrid invasive weed optimization/particle swarm optimization algorithm outperforms all the examined diagnosis systems (i.e., the genetic-algorithm-based, particle-swarm-optimization-based, and invasive weed-optimization-based fault detection and identification system) in terms of accuracy, reliability, and especially computational cost. The results demonstrate that the genetic-algorithm-based fault detection and identification system showed the weakest performance among all the examined diagnosis systems.
机译:燃气轮机的故障检测和识别是确保发动机安全运行并降低维护成本的关键过程。在基于全局优化的燃气轮机故障诊断领域中的研究中,通常采用遗传算法作为最著名的进化优化算法来识别发动机健康参数。然而,由于该算法的进化和随机性质,基于遗传算法的诊断通常遭受计算量和可靠性的困扰。为了缓解这个问题,在目前的工作中,对基于全局优化的燃气轮机故障诊断进行了比较研究,结果表明,作为故障检测和识别系统的创新混合优化算法可以显着提高柴油机的性能。传统的基于优化的诊断系统,即使存在测量噪声也是如此。所得结果表明,基于混合入侵杂草优化/粒子群优化算法的故障检测与识别系统优于所有检查的诊断系统(即基于遗传算法,基于粒子群优化和入侵杂草的诊断系统) -基于优化的故障检测和识别系统)的准确性,可靠性,尤其是计算成本。结果表明,基于遗传算法的故障检测和识别系统在所有检查的诊断系统中表现最弱。

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