Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

An Experimental Comparison of Uncertainty Sets for Robust Shortest Path Problems

About

Through the development of efficient algorithms, data structures and preprocessing techniques, real-world shortest path problems in street networks are now very fast to solve. But in reality, the exact travel times along each arc in the network may not be known. This lead to the development of robust shortest path problems, where all possible arc travel times are contained in a so-called uncertainty set of possible outcomes. Research in robust shortest path problems typically assumes this set to be given, and provides complexity results as well as algorithms depending on its shape. However, what can actually be observed in real-world problems are only discrete raw data points. The shape of the uncertainty is already a modelling assumption. In this paper we test several of the most widely used assumptions on the uncertainty set using real-world traffic measurements provided by the City of Chicago. We calculate the resulting different robust solutions, and evaluate which uncertainty approach is actually reasonable for our data. This anchors theoretical research in a real-world application and allows us to point out which robust models should be the future focus of algorithmic development.

Trivikram Dokka, Marc Goerigk• 2017

Related benchmarks

TaskDatasetResultRank
Fleet Requirement EstimationStockholm city center network
Fleet Size48
40
Travel Time PerformanceStockholm city center network
Travel Time (s)1.09e+3
20
RoutingSynthetic network high demand, high obstacle
Average Delay0.448
7
RoutingSynthetic network high demand, medium obstacle
Average Delay0.468
7
RoutingSynthetic network high demand, low obstacle
Average Delay0.441
7
RoutingSynthetic network medium demand, high obstacle
Average Delay0.356
7
RoutingSynthetic network medium demand, low obstacle
Average Delay0.361
7
RoutingSynthetic network low demand, medium obstacle
Average Delay0.223
7
RoutingSynthetic network medium demand, medium obstacle
Average Delay0.361
7
RoutingSynthetic network low demand, high obstacle
Average Delay0.235
7
Showing 10 of 11 rows

Other info

Follow for update