Stochastic Decision Optimisation Based On Deterministic Approximations Of Processes Described As Closed-Form Arithmetic Simulation

JOURNAL OF DECISION SYSTEMS(2018)

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摘要
We propose an efficient one-stage stochastic optimisation algorithm for the problem of finding process controls that minimise the expectation of cost while satisfying multiple deterministic and stochastic feasibility constraints with a given high probability. The proposed algorithm is based on a series of deterministic approximations to produce a candidate solution set and on a refinement step using stochastic simulations with optimal simulation budget allocation. We conduct an experimental study for a real-world manufacturing service network, which shows that the proposed algorithm significantly outperforms four popular simulation-based stochastic optimisation algorithms.
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关键词
Decision support, decision guidance, deterministic approximations, stochastic simulation optimisation, heuristic algorithm
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