首页> 外文会议>ASME Turbo Expo: Turbomachinery Technical Conference and Exposition >EFFICIENT ROBUST DESIGN FOR THERMOACOUSTIC INSTABILITY ANALYSIS: A GAUSSIAN PROCESS APPROACH
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EFFICIENT ROBUST DESIGN FOR THERMOACOUSTIC INSTABILITY ANALYSIS: A GAUSSIAN PROCESS APPROACH

机译:热声不稳定分析的高效稳健设计:一种高斯过程方法

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In the preliminary phase of analysing the thermoacoustic characteristics of a gas turbine combustor, implementing robust design principles is essential to minimize detrimental variations of its thermoacoustic performance under various sources of uncertainties. In the current study, we systematically explore different aspects of robust design in thermoacoustic instability analysis, including risk analysis, control design and inverse tolerance design. We simultaneously take into account multiple thermoacoustic modes and uncertainty sources from both the flame and acoustic boundary parameters. In addition, we introduce the concept of a "risk diagram " based on specific statistical descriptions of the underlying uncertain parameters, which allows practitioners to conveniently visualize the distribution of the modal instability risk over the entire parameter space. Throughout the present study, a machine learning method called "Gaussian Process" (GP) modeling approach is employed to efficiently tackle the challenge posed by the large parameter variational ranges, various statistical descriptions of the parameters as well as the multifaceted nature of robust design analysis. For each of the investigated robust design tasks, we propose an efficient solution strategy and benchmark the accuracy of the results delivered by GP models. We demonstrate that GP models can be flexibly adjusted to various tasks while only requiring one-time training. Their adaptability and efficiency make this modeling approach very appealing for industrial practices.
机译:在分析燃气轮机燃烧器热声特性的初步阶段,实施鲁棒的设计原则对于在各种不确定性因素下最大程度地减小其热声性能的有害变化至关重要。在当前的研究中,我们系统地探讨了热声不稳定性分析中稳健设计的各个方面,包括风险分析,控制设计和逆公差设计。我们同时考虑了来自火焰和声学边界参数的多种热声模式和不确定性来源。此外,我们基于对潜在不确定性参数的特定统计描述引入“风险图”的概念,这使从业人员可以方便地可视化整个参数空间上的模态不稳定风险的分布。在整个研究过程中,采用了一种称为“高斯过程”(GP)建模方法的机器学习方法,以有效解决大参数变化范围,参数的各种统计描述以及健壮设计分析的多面性带来的挑战。 。对于每个调查的稳健设计任务,我们提出了一种有效的解决方案策略,并对GP模型提供的结果的准确性进行了基准测试。我们证明了GP模型可以灵活地适应各种任务,而只需要一次培训。它们的适应性和效率使这种建模方法对工业实践非常有吸引力。

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