数学优化
可扩展性
线性规划
计算机科学
交流电源
背景(考古学)
节点(物理)
网格
凸优化
放松(心理学)
正多边形
功率(物理)
数学
心理学
古生物学
社会心理学
物理
几何学
结构工程
量子力学
数据库
工程类
生物
作者
Rahul R Jha,Adedoyin Inaolaji,Biswajit Dipan Biswas,Arun Suresh,Anamika Dubey,Sumit Paudyal,Sukumar Kamalasadan
标识
DOI:10.1109/tpwrs.2022.3204227
摘要
In the power distribution systems, optimal power flow (D-OPF) is formulated as a non-convex and non-linear programming (NLP) problem. Convex relaxation and linear approximation models have been increasingly adopted to achieve computational efficiency for D-OPF. Despite the benefits of scalability and global optimality, each method is based on certain assumptions, performs differently, and may lead to solutions that are physically not meaningful. In this context, this work numerically evaluates the relative performance of second-order cone programming (SOCP), semi-definite programming (SDP), and linear programming (LP) formulations of D-OPF in terms of their feasibility, optimality, and scalability with respect to NLP-based formulations. We also compare the bus injection (in bus voltage and current variables) and branch flow (in active and reactive power flow variables) based on NLP formulations. The performance is evaluated using small (123-node), medium (730-node), and large (2522-node) sized distribution feeders. Case studies, which are backed up by visualization of the analytical models for the solution space to the extent possible, show that (1) the feasibility and exactness of relaxed D-OPF formulations depend upon the problem type, (2) some NLP formulations are computationally more tractable than others, (3) different NLP formulations can converge to different local solutions, and (4) the approximate linear model may underestimate or overestimate the cost function (depending upon the problem type) and may lead to AC-infeasible solutions.
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