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An improvement in MATSim computing time for large-scale travel behaviour microsimulation

Published version
Peer-reviewed

Type

Article

Change log

Authors

Zhuge, C 
Bithell, M 
Shao, C 
Li, X 
Gao, J 

Abstract

jats:titleAbstract</jats:title>jats:pCoupling activity-based models with dynamic traffic assignment appears to form a promising approach to investigating travel demand. However, such an integrated framework is generally time-consuming, especially for large-scale scenarios. This paper attempts to improve the performance of these kinds of integrated frameworks through some simple adjustments using MATSim as an example. We focus on two specific areas of the model—replanning and time stepping. In the first case we adjust the scoring system for agents to use in assessing their travel plans to include only agents with low plan scores, rather than selecting agents at random, as is the case in the current model. Secondly, we vary the model time step to account for network loading in the execution module of MATSim. The city of Baoding, China is used as a case study. The performance of the proposed methods was assessed through comparison between the improved and original MATSim, calibrated using Cadyts. The results suggest that the first solution can significantly decrease the computing time at the cost of slight increase of model error, but the second solution makes the improved MATSim outperform the original one, both in terms of computing time and model accuracy; Integrating all new proposed methods takes still less computing time and obtains relatively accurate outcomes, compared with those only incorporating one new method.</jats:p>

Description

Keywords

Activity-based model, Dynamic traffic assignment, MATSim, Computing time, Agent-based model, Varying time step-based approach, Large-scale simulation

Journal Title

Transportation

Conference Name

Journal ISSN

0049-4488
1572-9435

Volume Title

48

Publisher

Springer Science and Business Media LLC
Sponsorship
This research was supported by the National Natural Science Foundation of China (grant numbers 51678044; 71401012), the Fundamental Research Funds for the Central Universities (NO. 2017JBZ106), China, the Hong Kong Polytechnic University [1- BE2J], the Hebei Natural Science Foundation (grant number E2016513016) and ERC Starting Grant #678799 for the SILCI project (Social Influence and disruptive Low Carbon Innovation).