A platform for research: civil engineering, architecture and urbanism
Unveiling large-scale commuting patterns based on mobile phone cellular network data
Abstract In this study, with Estonia as an example,we established an approach based on Hidden Markov Model to extract large-scale commuting patterns at different geographical levels using a massive amount of mobile phone cellular network data, which is referred to as Call detail record (CDR). The proposed model is designed for reconstructing and transforming the trajectories extracted from the CDR data. This step allowed us to perform origin-destination matrix extraction among different geographical levels, which helped in depicting the commuting patterns. Besides, we introduced different techniques for analyzing the commuting at the urban level. Our results unveiled that there is great potential behind mobile data of the cellular networks after transforming it into meaningful mobility patterns. That can easily be used for understanding urban dynamics, large-scale daily commuting and mobility. The aggressive development and growth of ubiquitous mobile sensing have generated valuable data that can be used with our approach for providing answers and solutions to the growing problems of transportation, urbanization and sustainability.
Unveiling large-scale commuting patterns based on mobile phone cellular network data
Abstract In this study, with Estonia as an example,we established an approach based on Hidden Markov Model to extract large-scale commuting patterns at different geographical levels using a massive amount of mobile phone cellular network data, which is referred to as Call detail record (CDR). The proposed model is designed for reconstructing and transforming the trajectories extracted from the CDR data. This step allowed us to perform origin-destination matrix extraction among different geographical levels, which helped in depicting the commuting patterns. Besides, we introduced different techniques for analyzing the commuting at the urban level. Our results unveiled that there is great potential behind mobile data of the cellular networks after transforming it into meaningful mobility patterns. That can easily be used for understanding urban dynamics, large-scale daily commuting and mobility. The aggressive development and growth of ubiquitous mobile sensing have generated valuable data that can be used with our approach for providing answers and solutions to the growing problems of transportation, urbanization and sustainability.
Unveiling large-scale commuting patterns based on mobile phone cellular network data
Hadachi, Amnir (author) / Pourmoradnasseri, Mozhgan (author) / Khoshkhah, Kaveh (author)
2020-09-30
Article (Journal)
Electronic Resource
English
Estimating Commuting Patterns from High Resolution Phone GPS Data
British Library Conference Proceedings | 2019
|Deriving Operational Origin-Destination Matrices From Large Scale Mobile Phone Data
DOAJ | 2013
|British Library Conference Proceedings | 2021
|Mining Daily Activity Chains from Large-Scale Mobile Phone Location Data
Elsevier | 2020
|Changing Metropolitan Commuting Patterns
British Library Conference Proceedings | 1995
|