Systematic Literature Review on Adjustable Robust Shortest Path Problem

Wida Nurul Fauziyah, D. Chaerani, H. Napitupulu
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Abstract

In real-world optimization problems, effective path planning is important. The Shortest Path Problem (SPP) model is a classical operations research that can be applied to determine an efficient path from the starting point to the end point in a plan. However, in the real world, uncertainty is often encountered and must be faced. Significant uncertainty factors in the problem of determining the shortest path are problems that are difficult to predict, therefore new criteria and appropriate models are needed to deal with uncertainty along with the required efficient solution. The uncertainty factor can be formulated using an uncertain SPP optimization model, assuming parameters that are not known with certainty but are in an uncertain set. Problems with uncertainty in mathematical optimization can be solved using Robust Optimization (RO). RO is a methodology in dealing with the problem of data uncertainty caused by errors in data measurement. The uncertainty in the linear optimization problem model can be formed by loading the uncertainty that only exists in the constraint function by assuming its uncertainty using the Robust Counterpart (RC) methodology. In this paper, we will review the literature on the two-stage optimization model for the SPP problem using an Adjustable Robust Counterpart (ARC).
鲁棒可调最短路径问题的系统文献综述
在现实世界的优化问题中,有效的路径规划是很重要的。最短路径问题(SPP)模型是一种经典的运筹学模型,用于确定规划中从起点到终点的有效路径。然而,在现实世界中,不确定性是经常遇到的,也是必须面对的。确定最短路径问题中的重大不确定性因素是难以预测的问题,因此需要新的准则和适当的模型来处理不确定性以及所需的有效解决方案。不确定因素可以使用不确定SPP优化模型来表示,该模型假设参数不确定但处于不确定集合中。数学优化中的不确定性问题可以用鲁棒优化(RO)来解决。RO是一种处理由于数据测量误差引起的数据不确定性问题的方法。线性优化问题模型中的不确定性可以通过鲁棒对等体(RC)方法假定约束函数的不确定性来加载约束函数中只存在的不确定性来形成。在本文中,我们将回顾使用可调鲁棒对偶(ARC)的SPP问题的两阶段优化模型的文献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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