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Efficiently Approximating the Pareto Frontier: Hydropower Dam Placement in the Amazon Basin

机译:有效地近似帕累托前沿:亚马逊盆地中的水电坝放置

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Real-world problems are often not fully characterized by a single optimal solution, as they frequently involve multiple competing objectives; it is therefore important to identify the so-called Pareto frontier, which captures solution trade-offs. We propose a fully polynomial-time approximation scheme based on Dynamic Programming (DP) for computing a polynomially succinct curve that approximates the Pareto frontier to within an arbitrarily small ∈ > 0 on tree-structured networks. Given a set of objectives, our approximation scheme runs in time polynomial in the size of the instance and 1/∈. We also propose a Mixed Integer Programming (MIP) scheme to approximate the Pareto frontier. The DP and MIP Pareto frontier approaches have complementary strengths and are surprisingly effective. We provide empirical results showing that our methods outperform other approaches in efficiency and accuracy. Our work is motivated by a problem in computational sustainability concerning the proliferation of hydropower dams throughout the Amazon basin. Our goal is to support decision-makers in evaluating impacted ecosystem services on the full scale of the Amazon basin. Our work is general and can be applied to approximate the Pareto frontier of a variety of multiobjective problems on tree-structured networks.
机译:现实世界的问题通常没有完全由一个最佳解决方案完全表征,因为它们经常涉及多个竞争目标;因此,重要的是要识别所谓的帕累托前沿,捕获解决方案权衡。我们提出了一种基于动态编程(DP)的完全多项式时间近似方案,用于计算多项式简洁的曲线,该曲线近似于树结构网络上的任意小的∈> 0中的帕吻O前沿。给定一组目标,我们的近似方案在实例大小和1 /∈的时间多项式中运行。我们还提出了一种混合整数编程(MIP)方案来近似帕累托前沿。 DP和MIP Pareto前沿方法具有互补的优势,并且令人惊讶地有效。我们提供了实证结果,显示我们的方法以效率和准确性越来越优于其他方法。我们的作品受到在整个亚马逊盆地中水电坝的扩散的计算可持续性问题的推动。我们的目标是支持决策者在亚马逊盆地的全规模上评估受影响的生态系统服务。我们的工作是一般的,可以应用于在树结构网络上近似帕累托前沿各种多目标问题。

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