There is a newer version of the record available.

Published May 30, 2023 | Version v1.1.0
Dataset Open

Large-scale Ridesharing DARP Instances Based on Real Travel Demand

  • 1. Czech Technical University in Prague

Description

This repository presents a set of large-scale Dial-a-Ride Problem (DARP) instances. The instances were created as a standardized set of ridesharing DARP problems for the purpose of benchmarking and comparing different solution methods.

The instances are based on real demand and realistic travel time data from 3 different US cities, Chicago, New York City and Washington, DC. The instances consist of real travel requests from the selected period, positions of vehicles with their capacities and realistic shortest travel times between all pairs of locations in each city.

The instances and results of two solution methods, the Insertion Heuristic, and the optimal Vehicle-group Assignment method, can be found in the linked dataset. The dataset and methodology used to create it are described in the paper Large-scale Ridesharing DARP Instances Based on Real Travel Demand.

Files

CHANGELOG.md

Files (41.2 GB)

Name Size Download all
md5:8dfd4f8c37b6c52414fd529d9c16bfa4
539 Bytes Preview Download
md5:559881cd1614dd4367f2ee59f14773d5
4.7 GB Download
md5:6d7ac3063b3247b7503f9061ff3b478c
4.7 GB Download
md5:e6e8864ef2cd2b7e1359a5752e9e2140
4.7 GB Download
md5:a34717f1b3daa3dbe9131d40c48c754d
4.7 GB Download
md5:f3937c5912cbb2643221d9d4aaf19412
4.7 GB Download
md5:8daf8e4ab1db8e6997213f068ff96716
2.3 GB Download
md5:6456ead4104f77a2d92ed1a94337e90d
1.1 GB Download
md5:dc3f6abee86f02f19db60362d0b67326
31.3 MB Download
md5:759f2c77f0ef422e4e181c47ed3f95a4
4.7 GB Download
md5:e109a421fd3bdbbd974d1e10d0b5ed9e
4.7 GB Download
md5:e67e5d8df0b9b505b577c3b68e85c8ed
4.6 GB Download
md5:4bed0cf3b715bc74a2e858d8ee48e4df
123.7 MB Download
md5:ebe755163e960a6c4cc0e983ee107649
16.2 kB Preview Download
md5:1afd02026519b7fde5e564db7734b5f8
110.6 MB Download
md5:8bb14f6ea996996b184ebec4b8817f8e
61.6 kB Preview Download

Additional details

Related works

Is compiled by
Software: https://github.com/aicenter/Ridesharing_DARP_instances (URL)
Is supplement to
Preprint: https://arxiv.org/abs/2305.18859 (URL)