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High-dimensional, unsupervised cell clustering for computationally efficient engine simulations with detailed combustion chemistry

机译:高维,无监督单元聚类,可通过详细的燃烧化学对计算进行有效的发动机模拟

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摘要

A novel approach for computationally efficient clustering of chemically reacting environments with similar reactive conditions is presented, and applied to internal combustion engine simulations. The methodology relies on a high-dimensional representation of the chemical state space, where the independent variables (i.e. temperature and species mass fractions) are normalized over the whole data-set space. An efficient bounding-box-constrained k-means algorithm has been developed and used for obtaining optimal clustering of the dataset points in the high-dimensional domain box with maximum computational accuracy, and with no need to iterate the algorithm in order to identify the desired number of clusters. The procedure has been applied to diesel engine simulations carried out with a custom version the KIVA4 code, provided with detailed chemistry capability. Here, the cells of the computational grid are clustered at each time step, in order to reduce the computational time needed by the integration of the chemistry ODE system. After the integration, the changes in species mass fractions of the clusters are redistributed to the cells accordingly. The numerical results, tested over a variety of engine conditions featuring both single- and multiple-pulse injection operation with fuel being injected at 50° BTDC allowed significant computational time savings of the order of 3-4 times, showing the accuracy of the high-dimensional clustering approach in catching the variety of reactive conditions within the combustion chamber.
机译:提出了一种对具有相似反应条件的化学反应环境进行高效计算聚类的新方法,并将其应用于内燃机仿真。该方法依赖于化学状态空间的高维表示,其中独立变量(即温度和物种质量分数)在整个数据集空间上进行了归一化。已经开发了一种有效的边界框约束k均值算法,该算法用于以最大的计算精度来获得高维域框中数据集点的最佳聚类,并且无需迭代该算法即可确定所需的目标集群数。该程序已应用于使用自定义版本KIVA4代码进行的柴油发动机模拟,并提供了详细的化学功能。在此,计算网格的单元在每个时间步聚类,以减少化学ODE系统集成所需的计算时间。整合后,簇的物种质量分数的变化会相应地重新分配给细胞。数值结果在各种发动机工况下进行了测试,包括单脉冲和多脉冲喷射操作,燃油以BTDC 50°喷射,可节省大约3-4倍的计算时间,显示了高燃油效率的准确性。维聚类方法可捕获燃烧室内的各种反应条件。

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