Corrective Control to Handle Forecast Uncertainty: A Chance Constrained Optimal Power Flow
Line Roald, Sidhant Misra, Thilo Krause, Goran Andersson

TL;DR
This paper introduces a chance constrained optimal power flow method incorporating corrective control of PSTs and HVDCs to manage forecast uncertainty, reducing costs while ensuring system security in large power systems.
Contribution
It extends corrective control strategies to handle uncertainty using affine policies within a chance constrained framework, solved efficiently as a second-order cone problem.
Findings
Reduces operational costs with corrective control under uncertainty.
Maintains system security with probabilistic constraint enforcement.
Scalable to large power system test cases.
Abstract
Higher shares of electricity generation from renewable energy sources and market liberalization is increasing uncertainty in power systems operation. At the same time, operation is becoming more flexible with improved control systems and new technology such as phase shifting transformers (PSTs) and high voltage direct current connections (HVDC). Previous studies have shown that the use of corrective control in response to outages contributes to a reduction in operating cost, while maintaining N-1 security. In this work, we propose a method to extend the use of corrective control of PSTs and HVDCs to react to uncertainty. We characterize the uncertainty as continuous random variables, and define the corrective control actions through affine control policies. This allows us to efficiently model control reactions to a large number of uncertainty sources. The control policies are then…
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