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arxiv: 1903.00643 · v1 · pith:XUHB4FTHnew · submitted 2019-03-02 · 🧮 math.OC

An analytical safe approximation to joint chance-constrained programming with additive Gaussian noises

classification 🧮 math.OC
keywords approximationsafeanalyticalchance-constrainedjointprogrammingbooleinequality
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We propose a safe approximation to joint chance-constrained programming where the constraint functions are additively dependent on a normally-distributed random vector. The approximation is analytical, meaning that it requires neither numerical integrations nor sampling-based probability approximations. Under mild assumptions, the approximation is a standard nonlinear program. We compare this new safe approximation to another analytical safe approximation for joint chance-constrained programming based on Boole's inequality through two examples representing the constrained control of linear Gaussian-Markov models. It is shown that our proposed safe approximation has a lower degree of conservatism compared to the one based on Boole's inequality.

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