With the increasing availability of mobility-related data, such as GPS-traces, Web queries and climate conditions, there is a growing demand to utilize this data
to better understand and support urban mobility needs.
However, data available from the individual actors, such as providers of information, navigation and transportation systems, is mostly restricted to isolated mobility modes, whereas holistic data analytics over integrated data sources is not sufficiently supported. In this paper we present our ongoing research in the
context of holistic data analytics to support urban mobility
applications in the Data4UrbanMobility (D4UM) project.
First, we discuss challenges in urban mobility analytics and present the D4UM platform we are currently developing to facilitate holistic urban data analytics over integrated heterogeneous data sources along with the available data sources.
Second, we present the MiC app - a tool we developed to complement available datasets with intermodal mobility data (i.e. data about journeys that involve more than one mode of mobility) using a citizen science approach.
Finally, we present selected use cases and discuss our future work.
%0 Conference Paper
%1 tempelmeier2019data4urbanmobility
%A Tempelmeier, Nicolas
%A Rietz, Yannick
%A Lishchuk, Iryna
%A Kruegel, Tina
%A Mumm, Olaf
%A Carlow, Vanessa Miriam
%A Dietze, Stefan
%A Demidova, Elena
%B Companion Proceedings of the Web Conference
%D 2019
%I ACM
%K data4urbanmobility myown tempelmeier
%T Data4UrbanMobility: Towards Holistic Data Analytics for Mobility Applications in Urban Regions
%X With the increasing availability of mobility-related data, such as GPS-traces, Web queries and climate conditions, there is a growing demand to utilize this data
to better understand and support urban mobility needs.
However, data available from the individual actors, such as providers of information, navigation and transportation systems, is mostly restricted to isolated mobility modes, whereas holistic data analytics over integrated data sources is not sufficiently supported. In this paper we present our ongoing research in the
context of holistic data analytics to support urban mobility
applications in the Data4UrbanMobility (D4UM) project.
First, we discuss challenges in urban mobility analytics and present the D4UM platform we are currently developing to facilitate holistic urban data analytics over integrated heterogeneous data sources along with the available data sources.
Second, we present the MiC app - a tool we developed to complement available datasets with intermodal mobility data (i.e. data about journeys that involve more than one mode of mobility) using a citizen science approach.
Finally, we present selected use cases and discuss our future work.
@inproceedings{tempelmeier2019data4urbanmobility,
abstract = {With the increasing availability of mobility-related data, such as GPS-traces, Web queries and climate conditions, there is a growing demand to utilize this data
to better understand and support urban mobility needs.
However, data available from the individual actors, such as providers of information, navigation and transportation systems, is mostly restricted to isolated mobility modes, whereas holistic data analytics over integrated data sources is not sufficiently supported. In this paper we present our ongoing research in the
context of holistic data analytics to support urban mobility
applications in the Data4UrbanMobility (D4UM) project.
First, we discuss challenges in urban mobility analytics and present the D4UM platform we are currently developing to facilitate holistic urban data analytics over integrated heterogeneous data sources along with the available data sources.
Second, we present the MiC app - a tool we developed to complement available datasets with intermodal mobility data (i.e. data about journeys that involve more than one mode of mobility) using a citizen science approach.
Finally, we present selected use cases and discuss our future work. },
added-at = {2019-02-24T20:09:57.000+0100},
author = {Tempelmeier, Nicolas and Rietz, Yannick and Lishchuk, Iryna and Kruegel, Tina and Mumm, Olaf and Carlow, Vanessa Miriam and Dietze, Stefan and Demidova, Elena},
biburl = {https://www.bibsonomy.org/bibtex/2c08bf82df73d6808b8576356093a2303/demidova},
booktitle = {Companion Proceedings of the Web Conference},
interhash = {8a81a23047268663ce9aff0035cba266},
intrahash = {c08bf82df73d6808b8576356093a2303},
keywords = {data4urbanmobility myown tempelmeier},
publisher = {ACM},
timestamp = {2019-05-20T13:40:52.000+0200},
title = {Data4UrbanMobility: Towards Holistic Data Analytics for Mobility Applications in Urban Regions},
year = 2019
}