• DocumentCode
    3604601
  • Title

    Lean Sensing: Exploiting Contextual Information for Most Energy-Efficient Sensing

  • Author

    Martinez, Borja ; Vilajosana, Xavier ; Vilajosana, Ignasi ; Dohler, Mischa

  • Author_Institution
    Univ. Autonoma de Barcelona (UAB), Barcelona, Spain
  • Volume
    11
  • Issue
    5
  • fYear
    2015
  • Firstpage
    1156
  • Lastpage
    1165
  • Abstract
    Cyber-physical technologies enable event-driven applications, which monitor in real-time the occurrence of certain inherently stochastic incidents. Those technologies are being widely deployed in cities around the world and one of their critical aspects is energy consumption, as they are mostly battery powered. The most representative examples of such applications today is smart parking. Since parking sensors are devoted to detect parking events in almost-real time, strategies like data aggregation are not well suited to optimize energy consumption. Furthermore, data compression is pointless, as events are essentially binary entities. Therefore, this paper introduces the concept of Lean Sensing, which enables the relaxation of sensing accuracy at the benefit of improved operational costs. To this end, this paper departs from the concept of instantaneous randomness and it explores the correlation structure that emerges from it in complex systems. Then, it examines the use of this system-wide aggregated contextual information to optimize power consumption, thus going in the opposite way; from the system-level representation to individual device power consumption. The discussed techniques include customizing the data acquisition to temporal correlations (i.e, to adapt sensor behavior to the expected activity) and inferring the system-state from incomplete information based on spatial correlations. These techniques are applied to real-world smart-parking application deployments, aiming to evaluate the impact that a number of system-level optimization strategies have on devices power consumption.
  • Keywords
    data compression; large-scale systems; optimisation; power consumption; real-time systems; stochastic processes; traffic engineering computing; battery powered; complex systems; contextual information; cyber-physical technologies; data aggregation; data compression; energy consumption; energy-efficient sensing; event-driven applications; lean sensing; power consumption; smart parking; stochastic incidents; system-level optimization; Cities and towns; Energy consumption; Informatics; Monitoring; Optimization; Sensor systems; Advanced sensing; advanced sensing; data analytics; energy consumption optimization; smart city; smart parking;
  • fLanguage
    English
  • Journal_Title
    Industrial Informatics, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1551-3203
  • Type

    jour

  • DOI
    10.1109/TII.2015.2469260
  • Filename
    7206592