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Uncertainty Analysis of Middleware Services for Streaming Smart Grid Applications
Ilge Akkaya, Yan Liu, Edward A. Lee

Citation
Ilge Akkaya, Yan Liu, Edward A. Lee. "Uncertainty Analysis of Middleware Services for Streaming Smart Grid Applications". IEEE Transactions on Services Computing, September 2015.

Abstract
Accuracy and responsiveness are two key properties of emerging cyber-physical energy systems (CPES) that need to incorporate high throughput sensor streams for distributed monitoring and control applications. The electric power grid, which is a prominent example of such systems, is being integrated with high throughput sensors in order to support stable system dynamics that are provisioned to be utilized in real-time supervisory control applications. The end-to-end performance and overall scalability of cyber-physical energy applications depend on robust middleware services that are able to operate with variable resources and multi-source sensor data. This leads to uncertain behavior under highly variable sensor and middleware topologies. We present a parametric approach to modeling the middleware service architecture for distributed power applications and account for temporal satisfiability of system properties under network resource and data volume uncertainty. We present a heterogeneous modeling framework that combines Monte Carlo simulations of uncertainty parameters within an executable Discrete-Event (DE) middleware service model. By employing Monte Carlo simulations followed by regression analysis, we quantify system parameters that significantly affect behavior of middleware services and the achievability of temporal requirements.

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Citation formats  
  • HTML
    Ilge Akkaya, Yan Liu, Edward A. Lee. <a
    href="http://chess.eecs.berkeley.edu/pubs/1149.html"
    >Uncertainty Analysis of Middleware Services for
    Streaming Smart Grid Applications</a>, <i>IEEE
    Transactions on Services Computing</i>, September 2015.
  • Plain text
    Ilge Akkaya, Yan Liu, Edward A. Lee. "Uncertainty
    Analysis of Middleware Services for Streaming Smart Grid
    Applications". <i>IEEE Transactions on Services
    Computing</i>, September 2015.
  • BibTeX
    @article{AkkayaLiuLee15_UncertaintyAnalysisOfMiddlewareServicesForStreamingSmart,
        author = {Ilge Akkaya and Yan Liu and Edward A. Lee},
        title = {Uncertainty Analysis of Middleware Services for
                  Streaming Smart Grid Applications},
        journal = {IEEE Transactions on Services Computing},
        number = {X},
        month = {September},
        year = {2015},
        abstract = {Accuracy and responsiveness are two key properties
                  of emerging cyber-physical energy systems (CPES)
                  that need to incorporate high throughput sensor
                  streams for distributed monitoring and control
                  applications. The electric power grid, which is a
                  prominent example of such systems, is being
                  integrated with high throughput sensors in order
                  to support stable system dynamics that are
                  provisioned to be utilized in real-time
                  supervisory control applications. The end-to-end
                  performance and overall scalability of
                  cyber-physical energy applications depend on
                  robust middleware services that are able to
                  operate with variable resources and multi-source
                  sensor data. This leads to uncertain behavior
                  under highly variable sensor and middleware
                  topologies. We present a parametric approach to
                  modeling the middleware service architecture for
                  distributed power applications and account for
                  temporal satisfiability of system properties under
                  network resource and data volume uncertainty. We
                  present a heterogeneous modeling framework that
                  combines Monte Carlo simulations of uncertainty
                  parameters within an executable Discrete-Event
                  (DE) middleware service model. By employing Monte
                  Carlo simulations followed by regression analysis,
                  we quantify system parameters that significantly
                  affect behavior of middleware services and the
                  achievability of temporal requirements.},
        URL = {http://chess.eecs.berkeley.edu/pubs/1149.html}
    }
    

Posted by Mary Stewart on 5 Nov 2015.
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