Chance-Constrained AC Optimal Power Flow Integrating HVDC Lines and Controllability
Andreas Venzke, Lejla Halilbasic, Adelie Barre, Line Roald, Spyros, Chatzivasileiadis

TL;DR
This paper presents a chance-constrained AC optimal power flow model that integrates HVDC lines and controllability, effectively managing renewable uncertainty and transmission capacity expansion.
Contribution
It introduces a novel HVDC line model with participation factors within a chance-constrained AC-OPF framework and optimizes these factors to reduce uncertainty costs.
Findings
Optimized participation factors significantly lower uncertainty costs.
The proposed model maintains system reliability under renewable variability.
Good in- and out-of-sample performance demonstrated on benchmark systems.
Abstract
The integration of large-scale renewable generation has major implications on the operation of power systems, two of which we address in this work. First, system operators have to deal with higher degrees of uncertainty due to forecast errors and variability in renewable energy production. Second, with abundant potential of renewable generation in remote locations, there is an increasing interest in the use of High Voltage Direct Current lines (HVDC) to increase transmission capacity. These HVDC transmission lines and the flexibility and controllability they offer must be incorporated effectively and safely into the system. In this work, we introduce an optimization tool that addresses both challenges by incorporating the full AC power flow equations, chance constraints to address the uncertainty of renewable infeed, modelling of point-to-point HVDC lines, and optimized corrective…
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