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Robust Optimization for Tree-Structured Stochastic Network Design

机译:树结构随机网络设计的鲁棒优化

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摘要

Stochastic network design is a general framework for optimizing network connectivity. It has several applications in computational sustainability including spatial conservation planning, pre-disaster network preparation, and river network optimization. A common assumption in previous work has been made that network parameters (e.g., probability of species colonization) are precisely known, which is unrealistic in real-world settings. We therefore address the robust river network design problem where the goal is to optimize river connectivity for fish movement by removing barriers. We assume that fish passability probabilities are known only imprecisely, but are within some interval bounds. We then develop a planning approach that computes the policies with either high robust ratio or low regret. Empirically, our approach scales well to large river networks. We also provide insights into the solutions generated by our robust approach, which has significantly higher robust ratio than the baseline solution with mean parameter estimates.
机译:随机网络设计是一种优化网络连接的一般框架。它在计算可持续发展中有几个应用程序,包括空间保护计划,灾区预网络准备和河网络优化。已经提出了以前的工作中的共同假设,即网络参数(例如,物种定植的概率)是精确的人知的,这在真实世界中是不现实的。因此,我们通过去除障碍来解决目标是优化鱼类运动的河流连通性。我们假设鱼类无能性概率仅仅是不切实际的,而且在某些间隔边界内。然后,我们开发一种规划方法,可以计算具有高强大比或低遗憾的政策。经验上,我们的方法对大型河流网络缩放得很好。我们还提供了稳健方法产生的解决方案的见解,这具有比具有平均参数估计的基线解决方案具有明显较高的鲁棒比。

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