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- Title
Biomimetic model-based advanced control strategy integrated with multi-agent optimization for nonlinear chemical processes.
- Authors
Mirlekar, Gaurav; Gebreslassie, Berhane; Diwekar, Urmila; Lima, Fernando V.
- Abstract
Highlights • BIO-CS is integrated with MAO algorithms for process systems applications. • BIO-CS is cast as MPC for the first time and compared to the agent-based BIO-CS. • Proposed framework is implemented on nonlinear process for various scenarios. • Tradeoffs between the computational time and desired performance are analyzed. Abstract In this paper, a novel framework is proposed for integrating biomimetic-based advanced control and multi-agent optimization approaches for nonlinear chemical process applications. In particular, a Biologically-Inspired Optimal Control Strategy, denoted as BIO-CS, is combined with multi-agent optimization (MAO) techniques to provide optimal solutions for dynamic systems. In this combined framework, the BIO-CS algorithm employs gradient-based optimal control solvers for the intermediate problems associated with the leader-follower agents' local interactions. Also, the MAO uses the capabilities of heuristic-based optimization techniques by sharing process information to obtain optimal operating setpoints for the controller considering an overall process objective. The applicability of the proposed method is demonstrated using a nonlinear, multivariable, process model of a fermentation system. Specifically, the optimal operating points are computed by the MAO implementation for setpoint tracking, trajectory tracking and plant-model mismatch scenarios for BIO-CS application. Results of the developed framework are compared to a gradient-based Sequential Quadratic Programming (SQP) technique and a classical proportional-integral (PI) controller in terms of optimization and control studies, respectively. As an additional contribution, BIO-CS is also cast as a model predictive controller (MPC) for the first time and compared to the agent-based BIO-CS approach in terms of computational time and tracking error. Closed-loop control results show up to 46% improvement in tracking performance during transient for the multi-agent BIO-CS when compared to BIO-CS as MPC for additional computational expense. The obtained results illustrate the capabilities of this novel integrated framework including BIO-CS as MPC to achieve desired nonlinear system performance for various scenarios.
- Subjects
BIOMIMETIC chemicals; MULTIAGENT systems; NONLINEAR chemical kinetics; NONLINEAR systems; PID controllers; QUADRATIC programming
- Publication
Chemical Engineering Research & Design: Transactions of the Institution of Chemical Engineers Part A, 2018, Vol 140, p229
- ISSN
0263-8762
- Publication type
Article
- DOI
10.1016/j.cherd.2018.10.005