Evolutionary neural architecture search for surrogate models to enable optimization of industrial continuous crystallization process

被引:18
作者
Miriyala, Srinivas Soumitri [1 ]
Pujari, Keerthi NagaSree [1 ]
Naik, Sakshi [1 ]
Mitra, Kishalay [1 ]
机构
[1] Indian Inst Technol Hyderabad, Dept Chem Engn, Global Optimizat & Knowledge Unearthing Lab, Kandi 502284, Telangana, India
关键词
Crystallization; Surrogate assisted optimization; Artificial neural networks; Neural architecture search; Evolutionary algorithms; Multi objective optimization; ASPECT-RATIO CRYSTALS; POPULATION; NETWORK;
D O I
10.1016/j.powtec.2022.117527
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
Optimal performance of the crystallization process is of utmost importance for industries handling bulk commodity chemicals to pharmaceuticals. Such an optimization exercise becomes extremely time expensive as the mathematical models mimicking such complex processes involve the solution of Integro-Differential Population Balance Equations using High Resolution Finite Volume Methods. In order to build a fast and robust data based alternative model, a surrogate assisted approach using Artificial Neural Networks has been proposed here. To overcome the heuristics-based estimation of the hyper-parameters in ANNs, we aim to contribute a novel Neural Architecture Search strategy for the auto-tuning of hyper-parameters integrated with sample size determination techniques. While solving a multi-objective optimization of crystallization process ensuring maximum productivity, the results from surrogates are compared with those of a high-fidelity physics driven model, which reports five order of magnitude speed improvement without sacrificing much on accuracy.(c) 2022 Elsevier B.V. All rights reserved.
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页数:16
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