首页> 外文会议>ASME Internal Combustion Engine Division technical conference >COMPUTATIONALLY EFFICIENT SIMULATION OF MULTI-COMPONENT FUEL COMBUSTION USING A SPARSE ANALYTICAL JACOBIAN CHEMISTRY SOLVER AND HIGH-DIMENSIONAL CLUSTERING
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COMPUTATIONALLY EFFICIENT SIMULATION OF MULTI-COMPONENT FUEL COMBUSTION USING A SPARSE ANALYTICAL JACOBIAN CHEMISTRY SOLVER AND HIGH-DIMENSIONAL CLUSTERING

机译:稀疏解析雅可比化学解法和高维聚类算法对多组分燃料燃烧的高效模拟

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The need for more efficient and environmentally sustainable internal combustion engines is driving research towards the need to consider more realistic models for both fuel physics and chemistry. As far as compression ignition engines are concerned, phenomenological or lumped fuel models are unreliable to capture spray and combustion strategies outside of their validation domains - typically, high-pressure injection and high-temperature combustion. Furthermore, the development of variable-reactivity combustion strategies also creates the need to model comprehensively different hydrocarbon families even in single fuel surrogates. From the computational point of view, challenges to achieving practical simulation times arise from the dimensions of the reaction mechanism, that can be of hundreds species even if hydrocarbon families are lumped into representative compounds, and thus modeled with non-elementary, skeletal reaction pathways. In this case, it is also impossible to pursue further mechanism reductions to lower dimensions. CPU times for integrating chemical kinetics in internal combustion engine simulations ultimately scale with the number of cells in the grid, and with the cube number of species in the reaction mechanism. In the present work, two approaches to reduce the demands of engine simulations with detailed chemistry are presented. The first one addresses the demands due to the solution of the chemistry ODE system, and features the adoption of SpeedCHEM, a newly developed chemistry package that solves chemical kinetics using sparse analytical Jacobians. The second one aims to reduce the number of chemistry calculations by binning the CFD cells of the engine grid into a subset of clusters, where chemistry is solved and then mapped back to the original domain. In particular, a high-dimensional representation of the chemical state space is adopted for keeping track of the different fuel components, and a newly developed bounding-box-constrained k-means algorithm is used to subdivide the cells into reactively homogeneous clusters. The approaches have been tested on a number of simulations featuring multi-component diesel fuel surrogates, and different engine grids. The results show that significant CPU time reductions, of about one order of magnitude, can be achieved without loss of accuracy in both engine performance and emissions predictions, prompting for their applicability to more refined or full-sized engine grids.
机译:对更高效,环境可持续发展的内燃发动机的需求正推动研究朝着考虑为燃料物理和化学两者考虑更现实的模型的需求发展。就压燃式发动机而言,现象学或集总燃料模型不可靠地在其验证范围之外捕获喷雾和燃烧策略,通常是高压喷射和高温燃烧。此外,可变反应性燃烧策略的发展也提出了即使在单一燃料替代物中也需要对完全不同的碳氢化合物族进行建模的需求。从计算的角度来看,实现实际模拟时间的挑战来自于反应机理的维度,即使将烃族混入代表性化合物中,也可能是数百种物种,因此使用非基本的骨架反应途径进行建模。在这种情况下,也不可能进一步将机构减小到较小的尺寸。将化学动力学集成到内燃机模拟中的CPU时间最终与网格中的单元数以及反应机理中物种的立方数成正比。在当前的工作中,提出了两种方法来减少具有详细化学作用的发动机仿真的需求。第一个解决了由于化学ODE系统解决方案引起的需求,并采用了SpeedCHEM,这是一种新开发的化学软件包,可使用稀疏的分析Jacobian求解化学动力学。第二个目标是通过将引擎网格的CFD单元划分为一组子集来减少化学计算的数量,在该子集中,化学被求解然后映射回原始域。特别地,采用化学状态空间的高维表示来跟踪不同的燃料成分,并使用新开发的边界框约束k均值算法将细胞细分为反应均匀的簇。该方法已在许多模拟试验中进行了测试,这些模拟以多组分柴油替代品和不同的发动机格栅为特色。结果表明,可以显着减少CPU时间约一个数量级,而不会降低发动机性能和排放预测的准确性,从而促使其适用于更精细或更大尺寸的发动机网格。

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