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首页> 外文期刊>Aerospace science and technology >Optimization configuration of gas path sensors using a hybrid method based on tabu search artificial bee colony and improved genetic algorithm in turbofan engine
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Optimization configuration of gas path sensors using a hybrid method based on tabu search artificial bee colony and improved genetic algorithm in turbofan engine

机译:基于禁忌搜索人工蜂菌落的混合方法的气体路径传感器优化配置及改进涡轮机发动机遗传算法

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摘要

The gas turbine engine is usually working in extreme engine conditions, especially the components along the gas path are bearing the harsh environments, such as high temperature, high pressure, strong vibration and so on, which are prone to failures. The need for security and safety makes it necessary to develop an accurate and efficient monitoring and diagnostic scheme for the gas turbine components. Sensors along the gas path provide the health status information that plays an important role in the monitoring and diagnostic scheme. Owing to the harsh installation environments, the gas path sensors are so limited that it is critical to choose the optimal sensors combination to provide rich and effective status information for health monitoring and fault diagnosis. In this study, the sensitivity of gas path parameters under various gas path component faults is firstly analyzed in a turbofan engine, which verifies that diagnosis results depend sensitively on the types and orders of sensors chosen along gas path. Therefore, an optimization scheme of gas path sensors for fault diagnosis is designed and implemented using three different meta-heuristic global optimization algorithms. The genetic algorithm (GA) is firstly exploited and improved to adapt to the real problem of sensors optimization, which has been shown to be with strong convergence ability but low computation efficiency. The artificial bee colony algorithm combining tabu search (TSABC) has the characteristics of easily realization, less parameters tuning and fast searching speed, which will be seen as a more effective meta-heuristic and proved to achieve good performance of sensors optimization and fault diagnosis, however, this algorithm still exists the defect of slow convergence. Therefore, a hybrid algorithm based on TSABC and IGA (TSABCIGA) has been then presented and compared, in which the TSABC with fast searching speed is used to obtain the initial optimal population and the IGA with strong convergence ability is exploited to choose the ultimate optimal sensors combination. The experimental studies show that the hybrid algorithm is capable of producing better or at least promising results compared to the mentioned optimization techniques for all of the fault scenarios. (C) 2021 Elsevier Masson SAS. All rights reserved.
机译:燃气轮机发动机通常在极端发动机条件下工作,尤其是沿着气体路径的部件承载严苛的环境,例如高温,高压,强烈的振动等,易于失败。对安全和安全的需求使得有必要为燃气轮机组件开发准确和有效的监控和诊断方案。沿着气体路径的传感器提供了在监测和诊断方案中发挥着重要作用的健康状况信息。由于苛刻的安装环境,气体路径传感器如此限制,选择最佳传感器组合,为健康监测和故障诊断提供丰富和有效的状态信息至关重要。在该研究中,首先在涡轮机发动机中分析了各种气体路径部件故障下的气体路径参数的灵敏度,这验证了诊断结果敏感地依赖于沿着气体路径所选择的传感器的类型和订单。因此,使用三种不同的元启发式全局优化算法设计和实现用于故障诊断的气体路径传感器的优化方案。首先利用遗传算法(GA)并改进以适应传感器优化的真正问题,这已被证明具有强大的收敛能力,但计算效率低。结合禁忌搜索(TSABC)的人造蜂殖民地算法具有易于实现的特点,较少参数调整和快速搜索速度,这将被视为更有效的元启发式,并证明了实现了传感器优化和故障诊断的良好性能,然而,该算法仍然存在缓慢收敛的缺陷。因此,已经呈现并比较了基于TSABC和IGA(TSABCIGA)的混合算法,其中使用快速搜索速度的TSABC用于获得初始最佳群体,并且利用具有强大收敛能力的IGA来选择最终的最佳传感器组合。实验研究表明,与所有故障场景的所述优化技术相比,混合算法能够产生更好或至少有希望的结果。 (c)2021 Elsevier Masson SAS。版权所有。

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