Activity-Based Analysis

Reference work entry

Abstract

Activity-based analysis (ABA) is an approach to understanding transportation, communication, urban, and related social and physical systems using individual actions in space and time as the basis. Although the conceptual foundations, theory, and methodology have a long tradition, until recently an aggregate trip-based approach dominated transportation science and planning. Changes in the business and policy environment for transportation and the increasingly availability of disaggregate mobility data have led to ABA emerging as the dominant approach. This chapter reviews the ABA conceptual foundations and methodologies. ABA techniques include data-driven methods that analyze mobility data directly as well as develop inputs for ABA modeling. ABA models include econometric models, rule-based models and microsimulation/agent-based models. This chapter concludes by identifying major research frontiers in ABA.

Keywords

Communication Behavior Time Path Mobile Object Microsimulation Model Time Geography 
These keywords were added by machine and not by the authors. This process is experimental and the keywords may be updated as the learning algorithm improves.

Notes

Acknowledgments

Dr. Walied Othman (University of Zurich) provided the Mathematica code to generate the network time prism (Fig. 37.4); this is available at http://othmanw.submanifold.be/. Ying Song (University of Utah) generated some of the graphics. Ying Song and Calvin Tribby (University of Utah) provided valuable comments on this chapter.

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Copyright information

© Springer-Verlag Berlin Heidelberg 2014

Authors and Affiliations

  1. 1.Department of GeographyUniversity of UtahSalt Lake CityUSA

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