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Scenario reduction in stochastic programming - An approach using probability metrics

机译:减少随机规划中的场景-一种使用概率指标的方法

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摘要

Given a convex stochastic programming problem with a discrete initial probability distribution, the problem of optimal scenario reduction is stated as follows: Determine a scenario subset of prescribed cardinality and a probability measure based on this set that is the closest to the initial distribution in terms of a natural (or canonical) probability metric. Arguments from stability analysis indicate that Fortet-Mourier type probability metrics may serve as such canonical metrics. Efficient algorithms are developed that determine optimal reduced measures approximately. Numerical experience is reported for reductions of electrical load scenario trees for power management under uncertainty. For instance, it turns out that after 50% reduction of the scenario tree the optimal reduced tree still has about 90% relative accuracy. [References: 25]
机译:给定具有离散初始概率分布的凸型随机规划问题,最优方案减少的问题如下:确定预定基数的方案子集,并基于该集合确定一个与初始分布最接近的概率度量。自然(或规范)概率度量。稳定性分析的论据表明,Fortet-Mourier类型概率度量可以用作此类规范度量。开发了有效的算法,可大致确定最佳的减少措施。据报道,在减少不确定性下用于电源管理的电力负荷情景树方面,已有经验。例如,事实证明,在场景树减少50%之后,最佳的减少树仍然具有约90%的相对准确度。 [参考:25]

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