relation: https://khub.utp.edu.my/scholars/17656/ title: Disturbance-Kalman state for linear offset free MPC creator: Tuan, T.T. creator: Zabiri, H. creator: Mutalib, M.I.A. creator: VO, D.-V.N. description: In model predictive control (MPC), methods of linear offset free MPC are well established such as the disturbance model, the observer method and the state disturbance observer method. However, the observer gain in those methods is difficult to define. Based on the drawbacks observed in those methods, a novel algorithm is proposed to guarantee offset-free MPC under model-plant mismatches and disturbances by combining the two proposed methods which are the proposed Recursive Kalman estimated state method and the proposed Disturbance-Kalman state method. A comparison is made from existing methods to assess the ability of providing offset-free MPC onWood-Berry distillation column. Results shows that the proposed offset free MPC algorithm has better disturbance rejection performance than the existing algorithms. © 2022. The Author(s). publisher: Polska Akademia Nauk date: 2022 type: Article type: PeerReviewed identifier: Tuan, T.T. and Zabiri, H. and Mutalib, M.I.A. and VO, D.-V.N. (2022) Disturbance-Kalman state for linear offset free MPC. Archives of Control Sciences, 32 (1). pp. 153-173. ISSN 12302384 relation: https://www.scopus.com/inward/record.uri?eid=2-s2.0-85130290108&doi=10.24425%2facs.2022.140869&partnerID=40&md5=d55940b2ab86eccbcfd2d41d9822d878 relation: 10.24425/acs.2022.140869 identifier: 10.24425/acs.2022.140869