Search Results for author: Meiyi Li

Found 5 papers, 0 papers with code

Learning to Solve Optimization Problems with Hard Linear Constraints

no code implementations22 Aug 2022 Meiyi Li, Soheil Kolouri, Javad Mohammadi

We demonstrate the performance of our proposed method in quadratic programming in the context of the optimal power dispatch (critical to the resiliency of our electric grid) and a constrained non-convex optimization in the context of image registration problems.

Decision Making Image Registration

Numerical Comparisons of Linear Power Flow Approximations: Optimality, Feasibility, and Computation Time

no code implementations11 Jul 2022 Meiyi Li, Yuhan Du, Javad Mohammadi, Constance Crozier, Kyri Baker, Soummya Kar

Linear approximations of the AC power flow equations are of great significance for the computational efficiency of large-scale optimal power flow (OPF) problems.

A Fully Decentralized Tuning-free Inexact Projection Method for P2P Energy Trading

no code implementations12 Feb 2022 Meiyi Li, Javad Mohammadi, Soummya Kar

Agent-based solutions lend themselves well to address privacy concerns and the computational scalability needs of future distributed electric grids and end-use energy exchanges.

Decision Making energy trading

Teaching Networks to Solve Optimization Problems

no code implementations8 Feb 2022 Xinran Liu, Yuzhe Lu, Ali Abbasi, Meiyi Li, Javad Mohammadi, Soheil Kolouri

In addition, we propose two alternative approaches for learning such parametric functions, with and without a solver in the LOOP.


Virtual Inertia Control of the Virtual Synchronous Generator: A Review

no code implementations15 Sep 2021 Meiyi Li, Wentao Huang, Nengling Tai, Dongliang Duan

With the increasing impact of low inertia due to the high penetration of distributed generation, virtual synchronous generator (VSG) technology has been proposed to improve the stability of the inverter-interfaced distributed generator by providing "virtual inertia".

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