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An Erosion Aggressiveness Index (EAI) Based on Pressure Load Estimation Due to Bubble Collapse in Cavitating Flows Within the RANS Solvers

机译:基于压力负荷估计的侵蚀侵袭性指数(EAI)由于汽油坍塌而在RANS溶剂中的空化流动

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Despite numerous research efforts, there is no reliable and widely accepted tool for the prediction of erosion prone material surfaces due to collapse of cavitation bubbles. In the present paper an Erosion Aggressiveness Index (EAI) is proposed, based on the pressure loads which develop on the material surface and the material yield stress. EAI depends on parameters of the liquid quality and includes the fourth power of the maximum bubble radius and the bubble size number density distribution. Both the newly proposed EAI and the Cavitation Aggressiveness Index (CAI), which has been previously proposed by the authors based on the total derivative of pressure at locations of bubble collapse (DP/Dt>0, Dα/Dt<0), are computed for a cavitating flow orifice, for which experimental and numerical results on material erosion have been published. The predicted surface area prone to cavitation damage, as shown by the CAI and EAI indexes, is correlated with the experiments. EAI predictions indicate the minimum bubble size above which erosion starts as also its location along the injector wall. The proposed methodology is also tested in an actual Diesel injector, operating under realistic injection cycles and pressure levels for which erosion data are available.
机译:尽管有许多研究努力,但由于空化泡沫塌陷,仍然没有可靠且广泛接受的工具用于预测侵蚀易受材料表面。在本文中,提出了一种基于在材料表面上产生的压力负荷和材料屈服应力的压力载荷来提出侵蚀侵蚀性指数(EAI)。 EAI取决于液体质量的参数,包括最大气泡半径的第四功率和气泡尺寸密度分布。基于泡沫崩溃位置的基于压力的总衍生(DP / DT> 0,Dα/ DT <0)的基于作者之前提出的新提出的EAI和空化侵蚀性指数(CAI)都是先前已经提出的对于空腔流动孔,已经发表了对材料侵蚀的实验和数值结果。如CAI和EAI指数所示,预测的表面积容易损坏,如CAI和EAI指标,与实验相关联。 EAI预测指示最小气泡尺寸,侵蚀从沿喷射器墙壁开始的位置。所提出的方法也在实际的柴油喷射器中进行测试,在现实的注射循环和可用的压力水平下进行操作。

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