Robust Transmission Network Expansion Planning in Energy Systems: Improving Computational Performance
Roberto Minguez, Raquel Garcia-Bertrand

TL;DR
This paper presents a novel computational approach for robust transmission network expansion planning that significantly reduces solution times by reformulating the problem and employing a primal cutting plane algorithm, demonstrated on standard test systems.
Contribution
It introduces a simplified bi-level reformulation with a primal cutting plane algorithm to improve computational efficiency in robust transmission expansion planning.
Findings
Solution times are drastically reduced compared to existing methods.
The approach is effective on IEEE-24 and IEEE 118-bus test systems.
The method outperforms traditional algorithms in computational performance.
Abstract
In recent advances in solving the problem of transmission network expansion planning, the use of robust optimization techniques has been put forward, as an alternative to stochastic mathematical programming methods, to make the problem tractable in realistic systems. Different sources of uncertainty have been considered, mainly related to the capacity and availability of generation facilities and demand, and making use of adaptive robust optimization models. The mathematical formulations for these models give rise to three-level mixed-integer optimization problems, which are solved using different strategies. Although it is true that these robust methods are more efficient than their stochastic counterparts, it is also correct that solution times for mixed-integer linear programming problems increase exponentially with respect to the size of the problem. Because of this, practitioners…
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