Abstract

The emergence of large, fine-grained mobility datasets offers significant opportunities for the development and application of new methodologies for transportation analysis. In this paper, the link between routing behaviour and traffic patterns in urban areas is examined, introducing a method to derive estimates of traffic patterns from a large collection of fine-grained routing data. Using this dataset, the interconnectivity between road network junctions is extracted in the form of a Markov chain. This representation encodes the probability of the successive usage of adjacent road junctions, encoding routes as flows between decision points rather than flows along road segments. This network of functional interactions is then integrated within a modified Markov chain Monte Carlo (MCMC) framework, adapted for the estimation of urban traffic patterns. As part of this approach, the data-derived links between major junctions influence the movement of directed random walks executed across the network to model origin-destination journeys. The simulation process yields estimates of traffic distribution across the road network. The paper presents an implementation of the modified MCMC approach for London, United Kingdom, building an MCMC model based on a dataset of nearly 700000 minicab routes. Validation of the approach clarifies how each element of the MCMC framework contributes to junction prediction performance, and finds promising results in relation to the estimation of junction choice and minicab traffic distribution. The paper concludes by summarising the potential for the development and extension of this approach to the wider urban modelling domain.

Highlights

  • The recent emergence of new, large mobility datasets represents a significant opportunity for transportation researchers and engineers alike

  • This paper introduces a new methodology for the application of Markov chain Monte Carlo (MCMC) in estimating traffic patterns within urban areas

  • We must assess the ability of the model to predict observed junction-to-junction movement choices, including how each element of the model contributes to the prediction

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Summary

Introduction

The recent emergence of new, large mobility datasets represents a significant opportunity for transportation researchers and engineers alike. The work derives transition probabilities for movement between important locations on the urban road network from large granular routing datasets, extracting the inherent interconnectivity between these locations. The datasets and specifications used in constructing the Markov chain and random walk elements of the MCMC model are defined.

Results
Conclusion

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