Chenji Jayanth, Harshavardhan (2014-05). A Fog Computing Architecture for Disaster Response Networks. Doctoral Dissertation. Thesis uri icon

abstract

  • In the aftermath of a disaster, the impacted communication infrastructure is unable to provide first responders with a reliable medium of communication. Delay tolerant networks that leverage mobility in the area have been proposed as a scalable solution that can be deployed quickly. Such disaster response networks (DRNs) typically have limited capacity due to frequent disconnections in the network, and under-perform when saturated with data. On the other hand, there is a large amount of data being produced and consumed due to the recent popularity of smartphones and the cloud computing paradigm. Fog Computing brings the cloud computing paradigm to the complex environments that DRNs operate in. The proposed architecture addresses the key challenges of ensuring high situational awareness and energy efficiency when such DRNs are saturated with large amounts of data. Situational awareness is increased by providing data reliably, and at a high temporal and spatial resolution. A waypoint placement algorithm places hardware in the disaster struck area such that the aggregate good-put is maximized. The Raven routing framework allows for risk-averse data delivery by allowing the user to control the variance of the packet delivery delay. The Pareto frontier between performance and energy consumption is discovered, and the DRN is made to operate at these Pareto optimal points. The FuzLoc distributed protocol enables mobile self-localization in indoor environments. The architecture has been evaluated in realistic scenarios involving deployments of multiple vehicles and devices.
  • In the aftermath of a disaster, the impacted communication infrastructure is
    unable to provide first responders with a reliable medium of communication. Delay
    tolerant networks that leverage mobility in the area have been proposed as a scalable
    solution that can be deployed quickly. Such disaster response networks (DRNs)
    typically have limited capacity due to frequent disconnections in the network, and
    under-perform when saturated with data. On the other hand, there is a large amount
    of data being produced and consumed due to the recent popularity of smartphones
    and the cloud computing paradigm.

    Fog Computing brings the cloud computing paradigm to the complex environments
    that DRNs operate in. The proposed architecture addresses the key challenges
    of ensuring high situational awareness and energy efficiency when such DRNs are saturated
    with large amounts of data. Situational awareness is increased by providing
    data reliably, and at a high temporal and spatial resolution. A waypoint placement
    algorithm places hardware in the disaster struck area such that the aggregate good-put
    is maximized. The Raven routing framework allows for risk-averse data delivery
    by allowing the user to control the variance of the packet delivery delay. The Pareto
    frontier between performance and energy consumption is discovered, and the DRN
    is made to operate at these Pareto optimal points. The FuzLoc distributed protocol
    enables mobile self-localization in indoor environments. The architecture has
    been evaluated in realistic scenarios involving deployments of multiple vehicles and
    devices.

publication date

  • May 2014