location: Current position: Prof. Tao Liu >> Scientific Research >> Paper Publications

Kinetic parameter estimation for cooling crystallization process based on cell average technique and automatic differentiation

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Indexed by:期刊论文

Date of Publication:2020-06-01

Journal:CHINESE JOURNAL OF CHEMICAL ENGINEERING

Volume:28

Issue:6

Page Number:1637-1651

ISSN No.:1004-9541

Key Words:Cooling crystallization; Population balance model; Cell average technique; Parameter estimation; Automatic differentiation

Abstract:In this paper, a cell average technique (CAT) based parameter estimation method is proposed for cooling crystallization involved with particle growth, aggregation and breakage, by establishing a more efficient and accurate solution in terms of the automatic differentiation (AD) algorithm. To overcome the deficiency of CAT that demands high computation cost for implementation, a set of ordinary differential equations (ODEs) entailed from CAT based discretized population balance equation (PBE) are solved by using the AD based high-order Taylor expansion. Moreover, an AD based trust-region reflective (TRR) algorithm and another interior-point (IP) algorithm are established for estimating the kinetic parameters associated with partide growth, aggregation and breakage. As a result, the estimation accuracy can be further improved while the computation cost can be significantly reduced, compared to the existing algorithms. Benchmark examples from the literature are used to illustrate the accuracy and efficiency of the AD-based CAT, TRR and IP algorithms in comparison with the existing algorithms. Moreover, seeded batch cooling crystallization experiments beta form L-glutamic acid are performed to validate the proposed method. (C) 2020 The Chemical Industry and Engineering Society of China, and Chemical Industry Press Co., Ltd. All rights reserved.

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