Probable Event Constrained Optimization and A Data-embedded Solution Paradigm
Probable Event Constrained Optimization and A Data-embedded Solution Paradigm
This paper solves a new class of optimization problems under uncertainty, called Probable Event Constrained Optimization (PECO), which optimizes an objective function of decision variables and subjects to a set of Probable Event Constraints (PEC). This new type of constraint guarantees that optimal solutions are feasible for all uncertain events whose joint probabilities are greater than a user-defined threshold. The PEC can be used as an alternative to the conventional chance constraint, while the latter cannot guarantee the solution's feasibility to high-probability uncertain events. Given that the existing solution methods of optimization problems under uncertainty are not suitable for solving PECO problems, we develop a novel data-embedded solution paradigm that uses historical measurements/data of the uncertain parameters as input samples. This solution paradigm is conceptually simple and allows us to develop effective data-reduction schemes which reduce computational burden while preserving high accuracy.
Qifeng Li
计算技术、计算机技术数学自动化基础理论
Qifeng Li.Probable Event Constrained Optimization and A Data-embedded Solution Paradigm[EB/OL].(2022-09-02)[2025-04-29].https://arxiv.org/abs/2209.01119.点此复制
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