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Harnessing a Novel Machine-Learning-Assisted Evolutionary Algorithm to Co-optimize Three Characteristics of an Electrospun Oil Sorbent

机译:利用一种新型机器学习辅助进化算法,共同优化电纺器油吸附剂的三种特性

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摘要

The optimization of materials is challenging as it often involves simultaneous manipulation of an assembly of condition parameters, which generates an enormous combinational space. Thus, optimization models and algorithms are widely adopted to accelerate material design and optimization. However, most optimization strategies can poorly handle multiple parameters simultaneously with limited prior knowledge. Herein, we describe a novel systematic optimization strategy, namely, machine-learning-assisted differential evolution, which combines machine learning and the evolutionary algorithm together, for zero-prior-data, rapid, and simultaneous optimization of multiple objectives. The strategy enables the evolutionary algorithm to "learn" so as to accelerate the optimization process, and also to identify quantitative interactions between the condition parameters and functional characteristics of the material. The performance of the strategy is verified by in silico simulations, as well as an application on simultaneously optimizing three characteristics, namely, water contact angle, oil absorption capacity, and mechanical strength, of an electrospun polystyrene/polyacrylonitrile (PS/PAN) material as a potential sorbent for a marine oil spill. With only 50 tests, the optimal fabrication parameters were successfully located from a combinatorial space of 50 000 possibilities. The presented platform technique offers a universal enabling technology to identify the optimal conditions rapidly from a daunting parameter space to synthesize materials with multiple desired functionalities.
机译:材料的优化是具有挑战性的,因为它通常涉及同时操纵条件参数的组装,其产生巨大的组合空间。因此,广泛采用优化模型和算法来加速材料设计和优化。然而,大多数优化策略可以在有限的先前知识同时处理多个参数。在此,我们描述了一种新颖的系统优化策略,即机器学习辅助差分演进,它将机器学习和进化算法结合在一起,用于多个目标的零数据,快速和同时优化。该策略使进化算法能够“学习”以加速优化过程,以及识别物料条件参数和功能特性之间的定量相互作用。在Silico模拟中验证了该策略的性能,以及同时优化了电纺聚苯乙烯/聚丙烯腈(PS / PAN)材料的三种特性,即水接触角,吸油能力和机械强度的应用。海洋漏油的潜在吸附剂。只有50个测试,最佳的制造参数成功地位于5万种可能性的组合空间。呈现的平台技术提供了通用的能力技术,可以从令人生畏的参数空间迅速识别最佳条件,以合成具有多种所需功能的材料。

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