Dynamic Robust Transmission Expansion Planning
R. Garc\'ia-Bertrand, R. M\'inguez

TL;DR
This paper introduces an adaptive robust optimization approach for dynamic transmission expansion planning, effectively handling uncertainties over time and enabling realistic large-scale system planning.
Contribution
It proposes a novel formulation that overcomes computational challenges of dynamic TNEP, maintaining full complexity for practical applications.
Findings
Demonstrates improved planning accuracy over classical methods
Shows computational feasibility for large-scale systems
Highlights benefits of dynamic over static planning approaches
Abstract
Recent breakthroughs in Transmission Network Expansion Planning (TNEP) have demonstrated that the use of robust optimization, as opposed to stochastic programming methods, renders the expansion planning problem considering uncertainties computationally tractable for real systems. However, there is still a yet unresolved and challenging problem as regards the resolution of the dynamic TNEP problem (DTNEP), which considers the year-by-year representation of uncertainties and investment decisions in an integrated way. This problem has been considered to be a highly complex and computationally intractable problem, and most research related to this topic focuses on very small case studies or used heuristic methods and has lead most studies about TNEP in the technical literature to take a wide spectrum of simplifying assumptions. In this paper an adaptive robust transmission network expansion…
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