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AN EMPIRICAL PREDICTION METHOD FOR SECONDARY LOSSES IN TURBINES: PART Ⅰ - A NEW LOSS BREAKDOWN SCHEME AND PENETRATION DEPTH CORRELATION

机译:涡轮机中二次损耗的经验预测方法:第Ⅰ部分 - 一种新的损失击穿方案和渗透深度相关性

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Despite its wide use in meanline analyses, the conventional loss breakdown scheme is based on a number of assumptions that are known to be physically unsatisfactory. One of these assumptions states that the loss generated in the airfoil surface boundary layers is uniform across the span. The loss results at high positive incidence presented in a previous paper (Benner et al. [1]) indi-cate that this assumption causes the conventional scheme to produce erroneous values of the secondary loss component. A new empirical prediction method for secondary losses in turbines has been developed, and it is based on a new loss breakdown scheme. In the first part of this two-part paper, the new loss breakdown scheme is presented. Using data from the current authors' off-design cascade loss measurements (Benner et al. [1]), it is shown that the secondary losses obtained with the new scheme produce a trend with incidence that is physically more reasonable. Unlike the conventional loss breakdown scheme, the new scheme requires a correlation for the spanwise penetration depth of the passage vortex separation line at the trailing edge. One such correlation exists (Sharma and Butler); however, it was based on a small database. An improved correlation for penetration distance has been developed from a considerably larger database, and it is detailed in this paper.
机译:尽管在含义分析中广泛使用,但传统的损失故障方案基于许多已知物理上不令人满意的假设。其中一个假设指出翼型在翼型表面边界层中产生的损失在跨度之间是均匀的。在前一篇论文中呈现的高阳性发病率(Benner等人[1])Indi-Cate,该假设导致常规方案产生二次损失组分的错误值。已经开发出一种新的涡轮机中损耗的新经验预测方法,基于新的损失击穿方案。在这两篇论文的第一部分,提出了新的损失故障方案。使用当前作者的非设计级联损耗测量的数据(Benner等人。[1])显示,随着新方案获得的二次损失产生了具有物理更合理的发病率的趋势。与传统的损耗击穿方案不同,新方案需要在后缘处的通道涡流分离线的翼展渗透深度的相关性。存在一种这种相关性(Sharma和Butler);但是,它基于一个小型数据库。从相当大的数据库中开发了改进的渗透距离的相关性,并且本文详述。

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