Abstract

This paper addresses the relationship between land use and mobility patterns. Since each particular zone directly feeds the global mobility once acting as origin of trips and others as destination, both roles are simultaneously used for predicting land uses. Specifically this investigation uses mobility data derived from mobile phones, a technology that emerges as a useful, quick data source on people’s daily mobility, collected during two weeks over the urban area of Malaga (Spain). This allows exploring the relevance of integrating weekday-weekend trip information to better determine the category of land use. First, this work classifies patterns on trips originated and terminated in each zone into groups by means of a clustering approach. Based on identifiable relationships between activity and times when travel peaks appear, a preliminary categorization of uses is provided. Then, both grouping results are used as input variables in a K-nearest neighbors (KNN) classification model to determine the exact land use. The KNN method assumes that the category of an object must be similar to the category of the closest neighbors. After training the models, the findings reveal that this approach provides a precise land use categorization, yielding the best accuracy results for the major categories of land uses in the studied area. Moreover, as a result, the weekend data certainly contributes to finding more precise land uses as those obtained by just weekday data. In particular, the percentage of correctly predicted categories using both weekday and weekend is around 80%, while just weekday data reach 67%. The comparison with actual land uses also demonstrates that this approach is able to provide useful information, identifying zones with a specific clear dominant use (residential, industrial, and commercial), as well as multiactivity zones (mixed). This fact is especially useful in the context of urban environments where multiple activities coexist.

Highlights

  • People perform different activities throughout the day over a region

  • This study aims to reveal mobility patterns created by people when they perform different activities throughout the day, bearing in mind that the urban travel behavior is very complex in terms of ODpatterns

  • Exploring mobility patterns generated by sequences of activities performed by individuals during a day can help planners identify how a particular zone is being used, with the final purpose of detecting land uses

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Summary

Introduction

People perform different activities throughout the day over a region. Many of these activities are repeated on daily basis, producing recognizable patterns in time. Mobility is closely linked with the structure of cities, which have to serve a variety of human needs (housing, working, shopping, leisure, and other activities). This land use planning affects travel behavior (e.g., dense and mixed-use environments tend to produce short trip lengths); land use and mobility are indirectly related. Weekend travel behavior is expected to be substantially dissimilar from weekday due to differences in spatial and temporal constraints. Since surveys are costly and time consuming, besides the abovementioned major concentration of home-work commuting trips, many travel studies only collect information about weekday behavior and ignore weekend days. The pervasive use of mobile phones has made this technology emerge as a promising alternative in travel behavior studies [1,2,3,4]; and this idea has inspired intensive research to conduct the analysis of weekday

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