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首页> 外文期刊>Journal of turbomachinery >Assessing Convergence in Predictions of Periodic-Unsteady Flowfields
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Assessing Convergence in Predictions of Periodic-Unsteady Flowfields

机译:评估非定常流场预测的收敛性

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摘要

Predictions of time-resolved flowfields are now commonplace within the gas-turbine industry, and the results of such simulations are often used to make design decisions during the development of new products. Hence it is necessary for design engineers to have a robust method to determine the level of convergence in design predictions. Here we report on a method developed to determine the level of convergence in a predicted flowfield that is characterized by periodic unsteadiness. The method relies on fundamental concepts from digital signal processing including the discrete Fourier transform, cross correlation, and Parseval's theorem. Often in predictions of vane-blade interaction in turbomachines, the period of the unsteady fluctuations is expected. In this method, the development of time-mean quantities, Fourier components (both magnitude and phase), cross correlations, and integrated signal power are tracked at locations of interest from one period to the next as the solution progresses. Each of these separate quantities yields some relative measure of convergence that is subsequently processed to form a fuzzy set. Thus the overall level of convergence in the solution is given by the intersection of these sets. Examples of the application of this technique to several predictions of unsteady flows from two separate solvers are given. These include a prediction of hot-streak migration as well as more typical cases. It is shown that the method yields a robust determination of convergence. Also, the results of the technique can guide further analysis and/or post-processing of the flowfield. Finally, the method is useful for the detection of inherent unsteadiness in the flowfield, and as such it can be used to prevent design escapes.
机译:在燃气轮机行业中,时间分辨流场的预测现在很普遍,这种模拟的结果通常用于开发新产品时做出设计决策。因此,设计工程师有必要采用一种可靠的方法来确定设计预测中的收敛水平。在这里,我们报告一种方法,该方法用于确定以周期性不稳定为特征的预测流场中的收敛水平。该方法依赖于数字信号处理的基本概念,包括离散傅立叶变换,互相关和Parseval定理。通常在涡轮机叶片叶片相互作用的预测中,会出现不稳定波动的时期。在这种方法中,随着解决方案的发展,从一个周期到下一个周期在目标位置跟踪时间平均值,傅立叶分量(幅度和相位),互相关和积分信号功率的发展。这些单独的数量中的每一个都会产生一些相对收敛的度量,然后对其进行处理以形成模糊集。因此,解决方案的总体收敛水平由这些集合的交集给出。给出了将该技术应用于来自两个单独求解器的非恒定流的几种预测的示例。这些包括对热条纹迁移的预测以及更典型的案例。结果表明,该方法可以很好地确定收敛性。而且,该技术的结果可以指导流场的进一步分析和/或后处理。最后,该方法可用于检测流场中的固有不稳定性,因此可用于防止设计泄漏。

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