CYLGAug 29, 2020

Urban Sensing based on Mobile Phone Data: Approaches, Applications and Challenges

arXiv:2008.12992v185 citations
Originality Synthesis-oriented
AI Analysis

It provides a taxonomy and discussion of existing approaches for mobile data analysis, which is incremental as it synthesizes prior work without introducing new methods.

This paper reviews methods and techniques for analyzing mobile phone data to understand human behavior patterns, aiming to support applications in urban planning, transportation, and other fields.

Data volume grows explosively with the proliferation of powerful smartphones and innovative mobile applications. The ability to accurately and extensively monitor and analyze these data is necessary. Much concern in mobile data analysis is related to human beings and their behaviours. Due to the potential value that lies behind these massive data, there have been different proposed approaches for understanding corresponding patterns. To that end, monitoring people's interactions, whether counting them at fixed locations or tracking them by generating origin-destination matrices is crucial. The former can be used to determine the utilization of assets like roads and city attractions. The latter is valuable when planning transport infrastructure. Such insights allow a government to predict the adoption of new roads, new public transport routes, modification of existing infrastructure, and detection of congestion zones, resulting in more efficient designs and improvement. Smartphone data exploration can help research in various fields, e.g., urban planning, transportation, health care, and business marketing. It can also help organizations in decision making, policy implementation, monitoring and evaluation at all levels. This work aims to review the methods and techniques that have been implemented to discover knowledge from mobile phone data. We classify these existing methods and present a taxonomy of the related work by discussing their pros and cons.

Foundations

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