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Data-Driven Methods for Optimization Under Uncertainty with Application to Water Allocation

机译:数据驱动的不确定性优化方法在水分配中的应用

摘要

Stochastic programming is a mathematical technique for decision making under uncertainty using probabilistic statements in the problem objective and constraints. In practice, the distribution of the unknown quantities are often known only through observed or simulated data. This dissertation discusses several methods of using this data to formulate, solve, and evaluate the quality of solutions of stochastic programs. The central contribution of this dissertation is to investigate the use of techniques from simulation and statistics to enable data-driven models and methods for stochastic programming. We begin by extending the method of overlapping batches from simulation to assessing solution quality in stochastic programming. The Multiple Replications Procedure, where multiple stochastic programs are solved using independent batches of samples, has previously been used for assessing solution quality. The Overlapping Multiple Replications Procedure overlaps the batches, thus losing the independence between samples, but reducing the variance of the estimator without affecting its bias. We provide conditions under which the optimality gap estimators are consistent, the variance reduction benefits are obtained, and give a computational illustration of the small-sample behavior. Our second result explores the use of phi-divergences for distributionally robust optimization, also known as ambiguous stochastic programming. The phi-divergences provide a method of measuring distance between probability distributions, are widely used in statistical inference and information theory, and have recently been proposed to formulate data-driven stochastic programs. We provide a novel classification of phi-divergences for stochastic programming and give recommendations for their use. A value of data condition is derived and the asymptotic behavior of the phi-divergence constrained stochastic program is described. Then a decomposition-based solution method is proposed to solve problems computationally. The final portion of this dissertation applies the phi-divergence method to a problem of water allocation in a developing region of Tucson, AZ. In this application, we integrate several sources of uncertainty into a single model, including (1) future population growth in the region, (2) amount of water available from the Colorado River, and (3) the effects of climate variability on water demand. Estimates of the frequency and severity of future water shortages are given and we evaluate the effectiveness of several infrastructure options.
机译:随机规划是一种数学技术,用于在不确定性下使用问题目标和约束中的概率陈述进行决策。在实践中,未知量的分布通常仅通过观察或模拟数据才能知道。本文讨论了使用这些数据来制定,求解和评估随机程序解的质量的几种方法。本文的主要贡献是研究模拟和统计技术的应用,以使数据驱动的模型和方法能够用于随机编程。我们首先将重叠批处理的方法从模拟扩展到评估随机编程中的解决方案质量。以前使用多重复制程序(其中使用独立的一批样品解决了多个随机程序)来评估解决方案质量。重叠多重复制过程使批次重叠,从而失去了样本之间的独立性,但在不影响估计量偏差的情况下减小了估计量的方差。我们提供了最优缺口估计量一致的条件,获得了方差减少的收益,并给出了小样本行为的计算例证。我们的第二个结果探索了使用phi-散度进行分布鲁棒优化,也称为模糊随机规划。 phi散度提供了一种测量概率分布之间的距离的方法,被广泛用于统计推断和信息论中,并且最近被提出来构造数据驱动的随机程序。我们为随机编程提供了phi发散的新颖分类,并提供了使用建议。推导了数据条件的取值,并描述了phi发散约束随机程序的渐近行为。然后提出了一种基于分解的求解方法来计算问题。本文的最后部分将phi散度法应用于亚利桑那州图森市发展中地区的水分配问题。在此应用程序中,我们将多个不确定性来源整合到一个模型中,包括(1)该地区未来的人口增长,(2)科罗拉多河可用水量,以及(3)气候多变性对需水量的影响。给出了未来缺水的频率和严重性的估计,我们评估了几种基础设施选择的有效性。

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