Article ID Journal Published Year Pages File Type
172634 Computers & Chemical Engineering 2013 9 Pages PDF
Abstract

This paper proposes a new robust distributed model predictive control framework that uses a closed-loop dual-mode approach to reduce the demanding computations required to solve the on-line constrained optimization problem. The proposed algorithm requires solving N convex optimization problems in parallel based on exchange of information among the controllers. A relaxation technique is also developed to overcome the problem of feasibility for the initial iteration. Two simulation examples are used to illustrate the new method and for comparing the proposed algorithm with a previously developed technique in terms of performance and maximum CPU time per control interval. The simulation results showed that the new algorithm provides a significant reduction in online computations while resulting in comparative performance as compared to a previously reported algorithm.

► A new robust distributed model predictive control framework is proposed. ► A combination of offline and online calculations to reduce the computations. ► The problems are solved in parallel based on exchange of information. ► A relaxation technique is developed to improve initial feasibility. ► Significant reduction in computations compared to a previously reported algorithm.

Related Topics
Physical Sciences and Engineering Chemical Engineering Chemical Engineering (General)
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