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首页> 外文期刊>Chemical engineering journal >Machine learning meets continuous flow chemistry: Automated optimization towards the Pareto front of multiple objectives
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Machine learning meets continuous flow chemistry: Automated optimization towards the Pareto front of multiple objectives

机译:机器学习符合连续流动化学:对多目标的帕累托前面的自动优化

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Automated development of chemical processes requires access to sophisticated algorithms for multi-objective optimization, since single-objective optimization fails to identify the trade-offs between conflicting performance criteria. Herein we report the implementation of a new multi-objective machine learning optimization algorithm for self-optimization, and demonstrate it in two exemplar chemical reactions performed in continuous flow. The algorithm successfully identified a set of optimal conditions corresponding to the trade-off curve (Pareto front) between environmental and economic objectives in both cases. Thus, it reveals the complete underlying trade-off and is not limited to one compromise as is the case in many other studies. The machine learning algorithm proved to be extremely data efficient, identifying the optimal conditions for the objectives in a lower number of experiments compared to single-objective optimizations. The complete underlying trade-off between multiple objectives is identified without arbitrary weighting factors, but via true multi-objective optimization.
机译:化学过程的自动开发需要访问多目标优化的复杂算法,因为单目标优化无法识别相互冲突性能标准之间的权衡。在此我们报告了用于自我优化的新的多目标机器学习优化算法的实施,并在连续流动中进行的两个示例性化学反应中证明它。该算法成功地确定了一系列与两种情况下的环境和经济目标之间的权衡曲线(Pareto正面)对应的一组最佳条件。因此,它揭示了完全的潜在权衡,并不限于许多其他研究中的情况。与单目标优化相比,机器学习算法被证明是极其高效的,识别在较低的实验中的目标的最佳条件。在没有任意加权因素的情况下识别多目标之间的完整潜在权衡,但通过真正的多目标优化。

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