Toggle Main Menu Toggle Search

Open Access padlockePrints

Optimization Control of a Fed-Batch Process Using an Improved Reinforcement Learning Algorithm

Lookup NU author(s): Peng Zhang, Dr Jie Zhang, Bingzhang Hu, Dr Yang Long

Downloads

Full text for this publication is not currently held within this repository. Alternative links are provided below where available.


Abstract

Batch processes are important manufacturing route for the agile manufacturing of high value added products and they are typically difficult to control due to highly non-linear characteristic, unknown disturbance and model plant mismatches. Neural networks and traditional reinforcement learning have been applied to control and optimize batch processes. However, they usually lack robustness and accuracy leading to unsatisfactory performance. To overcome these problems, this paper proposes a stochastic multi-step action Q-learning algorithm (SMSA) based on multiple step action Q-learning (MSA). In MSA, the action space is divided into some same time steps, which means that some non-optimal actions will be continuously and compulsively applied in a long time and the speed of learning might be slow. Compared with MSA, the modification of SMSA is that several time steps are different and a modified greedy algorithm is used to improve the speed, efficiency and flexibility of algorithm. The proposed method is applied to a simulated fed-batch process and it gives better optimization control performance than other control strategies.


Publication metadata

Author(s): Zhang P, Zhang J, Hu B, Long Y

Publication type: Conference Proceedings (inc. Abstract)

Publication status: Published

Conference Name: IEEE Conference on Control Technology and Applications (CCTA 2019)

Year of Conference: 2019

Pages: 314-319

Online publication date: 05/12/2019

Acceptance date: 30/04/2019

Publisher: IEEE

URL: https://doi.org/10.1109/CCTA.2019.8920472

DOI: 10.1109/CCTA.2019.8920472

Library holdings: Search Newcastle University Library for this item

ISBN: 9781728127675


Actions

Link to this publication


Share