A feasible path-based branch and bound algorithm for strongly nonconvex MINLP problems

Chao Liu, Yingjie Ma, Dongda Zhang, Jie Li

Research output: Contribution to journalArticlepeer-review

Abstract

In this paper, a feasible path-based branch and bound (B&B) algorithm is proposed to solve mixed-integer nonlinear programming problems with highly nonconvex nature through integration of the previously proposed hybrid feasible-path optimisation algorithm and the branch and bound method. The main advantage of this novel algorithm is that our previously proposed hybrid steady-state and time-relaxation-based optimisation algorithm is employed to solve a nonlinear programming (NLP) subproblem at each node during B&B. The solution from a parent node in B&B is used to initialize the NLP subproblems at the child nodes to improve computational efficiency. This approach allows circumventing complex initialisation procedure and overcoming difficulties in convergence of process simulation. The capability of the proposed algorithm is illustrated by several process synthesis and intensification problems using rigorous models.
Original languageEnglish
JournalFrontiers in Chemical Engineering
Volume4
Early online date19 Sept 2022
DOIs
Publication statusE-pub ahead of print - 19 Sept 2022

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