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NUMERICAL PREDICTION OF CCV IN A PFI ENGINE USING A PARALLEL LES APPROACH

机译:基于并行LES方法的PFI发动机CCV数值预测

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Cycle-to-cycle variability (CCV) is detrimental to IC engine operation and can lead to partial burn, misfire, and knock. Predicting CCV numerically is extremely challenging due to two key reasons. Firstly, high-fidelity methods such as large eddy simulation (LES) are required to accurately resolve the in-cylinder turbulent flowfield both spatially and temporally. Secondly, CCV is experienced over long timescales and hence the simulations need to be performed for hundreds of consecutive cycles. Ameen et al. (Int. J. Eng. Res., 2017) developed a parallel perturbation model (PPM) approach to dissociate this long time-scale problem into several shorter time-scale problems. The strategy is to perform multiple single-cycle simulations in parallel by effectively perturbing the initial velocity field based on the intensity of the in-cylinder turbulence. This strategy was demonstrated for motored engine and it was shown that the mean and variance of the in-cylinder flowfield was captured reasonably well by this approach. In the present study, this PPM approach is extended to simulate the CCV in a fired port-fuel injected (PFI) spark ignition (SI) engine. Two operating conditions are considered - a medium CCV operating case corresponding to 2500 rpm and 16 bar BMEP and a low CCV case corresponding to 4000 rpm and 12 bar BMEP. The predictions from this approach are also shown to be similar to the consecutive LES cycles. Both the consecutive and PPM LES cycles are observed to under-predict the variability in the early stage of combustion. The parallel approach slightly under-predicts the cyclic variability at all stages of combustion as compared to the consecutive LES cycles. However, it is shown that the parallel approach is able to predict the coefficient of variation (COV) of the in-cylinder pressure and burn rate related parameters with sufficient accuracy, and is also able to predict the qualitative trends in CCV with changing operating conditions. The convergence of the statistics predicted by the PPM approach with respect to the number of consecutive cycles required for each parallel simulation is also investigated. It is shown that this new approach is able to give accurate predictions of the CCV in fired engines in less than one-tenth of the time required for the conventional approach of simulating consecutive engine cycles.
机译:周期变化(CCV)对IC发动机的运行有害,并可能导致部分燃烧,失火和爆震。由于两个关键原因,以数字方式预测CCV极具挑战性。首先,需要诸如大涡模拟(LES)之类的高保真度方法来在空间和时间上精确地解析缸内湍流场。其次,CCV经历了很长的时间,因此需要对数百个连续周期执行仿真。 Ameen等。 (Int。J.Eng.Res。,2017)开发了一种并行摄动模型(PPM)方法,可以将这个较长的时间尺度问题分解为几个较短的时间尺度问题。该策略是通过基于缸内湍流的强度有效地扰动初始速度场来并行执行多个单周期模拟。该策略已在机动发动机上得到了证明,并且表明该方法可以很好地捕获缸内流场的均值和方差。在本研究中,此PPM方法已扩展为模拟内燃式燃油喷射(PFI)火花点火(SI)发动机中的CCV。考虑了两种运行条件-中型CCV工况对应于2500 rpm和16 bar BMEP,而低CCV工况对应于4000 rpm和12 bar BMEP。该方法的预测也显示出与连续的LES周期相似。观察到连续和PPM LES循环都低估了燃烧早期的变化性。与连续的LES循环相比,并行方法稍微低估了燃烧所有阶段的循环变异性。然而,表明并行方法能够以足够的精度预测缸内压力和燃烧率相关参数的变异系数(COV),并且还能够随着操作条件的变化而预测CCV的定性趋势。 。还研究了通过PPM方法预测的统计数据相对于每个并行模拟所需的连续循环数的收敛性。结果表明,这种新方法能够在不到模拟常规连续发动机循环的常规方法所需时间的十分之一的情况下,即可准确预测出发动机中的CCV。

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