posted on 2021-02-02, 16:08authored byTaicheng Zheng, Huixia Feng, Bohong Wang, Jianqin Zheng, Yongtu Liang, Yingjie Ma, Thomas Keene, Jie Li
Following
the rapidly increasing global demand for natural gas,
many countries are launching projects to expand gas pipeline networks
(GPNs). As a result, more cyclic GPNs are under construction with
more rigorous physical constraints required, bringing new challenges
to GPN optimization. This paper proposes a novel nonconvex mixed-integer
nonlinear programming (MINLP) formulation for operational optimization
of the cyclic GPN with simultaneous consideration of thermal hydraulics
and flow direction reversibility, which has not been explored in the
literature. To solve the proposed MINLP model, a three-level decomposition
algorithm is proposed to generate an approximate solution, from which
the flow direction is extracted and used to fix all discrete variables
in the original MINLP model to construct two-stage NLP models. The
NLP models are then solved to improve solution feasibility and quality.
The computational results show that the proposed approach outweighs
several state-of-the-art commercial MINLP solvers with better solutions
and shorter computational time.