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On the Feasibility of Social Network-based Pollution Sensing in ITSs

Abstract : Intense vehicular traffic is recognized as a global societal problem, with a multifaceted influence on the quality of life of a person. Intelligent Transportation Systems (ITS) can play an important role in combating such problem, decreasing pollution levels and, consequently, their negative effects. One of the goals of ITSs, in fact, is that of controlling traffic flows, measuring traffic states, providing vehicles with routes that globally pursue low pollution conditions. How such systems measure and enforce given traffic states has been at the center of multiple research efforts in the past few years. Although many different solutions have been proposed, very limited effort has been devoted to exploring the potential of social network analysis in such context. Social networks, in general, provide direct feedback from people and, as such, potentially very valuable information. A post that tells, for example, how a person feels about pollution at a given time in a given location, could be put to good use by an environment aware ITS aiming at minimizing contaminant emissions in residential areas. This work verifies the feasibility of using pollution related social network feeds into ITS operations. In particular, it concentrates on understanding how reliable such information is, producing an analysis that confronts over 1,500,000 posts and pollution data obtained from on-the- field sensors over a one-year span.
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Preprints, Working Papers, ...
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Submitted on : Tuesday, March 31, 2015 - 6:54:15 PM
Last modification on : Sunday, June 26, 2022 - 9:47:55 AM

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  • HAL Id : hal-01137980, version 1
  • ARXIV : 1411.6573


Rita Tse, Yubin Xiao, Giovanni Pau, Marco Roccetti, Serge Fdida, et al.. On the Feasibility of Social Network-based Pollution Sensing in ITSs. 2014. ⟨hal-01137980⟩



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