Abstract

Background: In four-step travel demand models, average trip generation rates are traditionally applied to static household type definitions. In reality, however, trip generation is more heterogeneous with some households making no trips and other households making more than a dozen trips, even if they are of the same household type. Objective: This paper aims at improving trip-generation methods without jumping all the way to an activity-based model, which is a very costly form of modeling travel demand both in terms of development and computer processing time. Method: Two fundamental improvements in trip generation are presented in this paper. First, the definition of household types, which traditionally is based on professional judgment rather than science, is revised to optimally reflect trip generation differences between the household types. For this purpose, over 67 million definitions of household types were analyzed econometrically in a Big-Data exercise. Secondly, a microscopic trip generation module was developed that specifies trip generation individually for every household. Results: This new module allows representing the heterogeneity in trip generation found in reality, with the ability to maintain all household attributes for subsequent models. Even though the following steps in a trip-based model used in this research remained unchanged, the model was improved by using microscopic trip generation. Mode-specific constants were reduced by 9%, and the Root Mean Square Error of the assignment validation improved by 7%.

Highlights

  • The traditional travel demand model is a series of models commonly described as a 4-step process: trip generation, trip distribution, mode choice, and trip assignment [1]

  • Even though the following steps in a trip-based model used in this research remained unchanged, the model was improved by using microscopic trip generation

  • Mode-specific constants were reduced by 9%, and the Root Mean Square Error of the assignment validation improved by 7%

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Summary

Introduction

The traditional travel demand model is a series of models commonly described as a 4-step process: trip generation, trip distribution, mode choice, and trip assignment [1]. The trip generation model provides an estimated number of trips generated and. Modeled transportation volumes are driven by the first step, i.e. trip generation. Trip rates are calculated either by cross-classification or (though less common nowadays [2]) by regression analysis. Cross-classification models condense the diversity in trip making into one single average trip rate by household type and by trip purpose. While the observed number of trips ranges from 0 to 5, the cross-classification model uses the average of 1.24 trips for all households of this type. In four-step travel demand models, average trip generation rates are traditionally applied to static household type definitions. Trip generation is more heterogeneous with some households making no trips and other households making more than a dozen trips, even if they are of the same household type

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