4.4 Review

A review on the application of machine learning for combustion in power generation applications

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An Automated Machine Learning-Genetic Algorithm Framework With Active Learning for Design Optimization

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Marco Ippolito et al.

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Ankun Xu et al.

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Ruikai Zhao et al.

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A systematic comparison of machine learning methods for modeling of dynamic processes applied to combustion emission rate modeling

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