Unsupervised data analysis of direct numerical simulation of a turbulent flame via local principal component analysis and procustes analysis

G D'Alessio, A Attili, A Cuoci, H Pitsch… - … Conference on Soft …, 2021 - Springer
15th International Conference on Soft Computing Models in Industrial and …, 2021Springer
Abstract Direct Numerical Simulations (DNS) of reacting flows provide high-fidelity data for
combustion model reduction and validation, although their interpretation is not always
straightforward because of the massive amount of information and the data high-
dimensionality. In this work, a completely unsupervised algorithm for data analysis is
investigated on a data-set obtained from a temporally-evolving DNS simulation of a reacting
n-heptane jet in air. The proposed algorithm combines the Local Principal Component …
Abstract
Direct Numerical Simulations (DNS) of reacting flows provide high-fidelity data for combustion model reduction and validation, although their interpretation is not always straightforward because of the massive amount of information and the data high-dimensionality.
In this work, a completely unsupervised algorithm for data analysis is investigated on a data-set obtained from a temporally-evolving DNS simulation of a reacting n-heptane jet in air. The proposed algorithm combines the Local Principal Component Analysis (LPCA) clustering algorithm with a variables selection algorithm via dimensionality reduction and Procustes Analysis. Unlike other data-analysis algorithms, it requires null or limited user expertise as all of its steps are unsupervised and solely entrusted to mathematical objective functions, without any hyperparameter tuning step required.
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