Two-sided linear chance constraints and extensions
classification
🧮 math.OC
keywords
chanceconstraintsapproximationtwo-sidedclassconstraintlinearmodel
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We examine the convexity and tractability of the two-sided linear chance constraint model under Gaussian uncertainty. We show that these constraints can be applied directly to model a larger class of nonlinear chance constraints as well as provide a reasonable approximation for a challenging class of quadratic chance constraints of direct interest for applications in power systems. With a view towards practical computations, we develop a second-order cone outer approximation of the two-sided chance constraint with provably small approximation error.
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