Logo image
Robust Optimal Microgrid Planning Considering a Day-Ahead Market Based on the Linear Column-and-Constraint Generation Method
Journal article   Peer reviewed

Robust Optimal Microgrid Planning Considering a Day-Ahead Market Based on the Linear Column-and-Constraint Generation Method

Ali Azizivahed, Khalil Gholami and Ali Arefi
Electric power systems research, Vol.250, 112080
2026

Abstract

Column-and-Constraint Generation algorithm Day-ahead market Energy storage systems Linear programming Mirogrid Optimal Planning PV generation
As the load and some photovoltaic (PV) resources of microgrids (MGs) bring uncertainty to the system, they potentially affect the solution of conventional optimal MG planning. The scenario-based models do not guarantee the provision of continuous power in the possible worst-case scenario. This paper therefore develops a robust framework to address the uncertainty caused by load and PV generation. The operational constraints are also considered where the MG is connected to the grid and participates in the day-ahead market. Considering an energy storage system (ESS) and its sizing in the MG planning problem makes the determination of the worst-case scenario more challenging. A bi-level optimization framework is used to address this issue. One level tries to find the worst case through those variables directly being affected by uncertainties. The other level attempts to optimize the solutions to the MG planning problem. The Column-and-Constraint Generation algorithm is utilized to solve the proposed two-stage problem. The non-linearity involved in the model is transformed into linear equivalents to reduce complexity. It has been applied to a real case in Western Australia, and the results are discussed for both grid-connected and islanded modes by incorporating the effect of a PV tracker system in the planning problem.

Details

UN Sustainable Development Goals (SDGs)

This output has contributed to the advancement of the following goals:

#7 Affordable and Clean Energy

Source: InCites

Metrics

InCites Highlights

These are selected metrics from InCites Benchmarking & Analytics tool, related to this output

Collaboration types
Domestic collaboration
Citation topics
4 Electrical Engineering, Electronics & Computer Science
4.18 Power Systems & Electric Vehicles
4.18.204 Smart Grid Optimization
Web Of Science research areas
Engineering, Electrical & Electronic
ESI research areas
Engineering
Logo image