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Pro Utility Pro Consumer Comfort Demand Side Management in Smart Grid

  • Waleed Ahmad
  • Nadeem JavaidEmail author
  • Basit Karim
  • Syed Qasim Jan
  • Muhammad Ali
  • Raza Abid Abbasi
  • Sajjad Khan
Conference paper
Part of the Advances in Intelligent Systems and Computing book series (AISC, volume 927)

Abstract

Now a days, energy is the essential resource and due to increase in power demand, traditional resources are not enough to fulfill the requirement of todays need. The researchers are working on new approaches to enhance and improve the power load demand. The increasing demand of electricity creates peaks on utility. Therefore an improved Home Energy Management System (HEMS) is necessary for the automation of smart home to reduce the cost and peaks on utility. In this paper work, our objective is pro utility and pro-consumer comfort which means, the decrease in Peak to Average Ratio (PAR) in order to reduce the stress on the utility while increasing user comfort. In this Research, we have proposed a new technique called Random Cell Elimination Scheme (RCES) with Demand Side Management (DSM) for a home appliance scheduling. To make the system more effective, we have utilized two pricing systems: Time of Use (ToU) and Real Time Pricing (RTP) in our experiment. The simulation results are compared with two heuristic optimization schemes: Bacterial Foraging (BFA) and Firefly Algorithm (FA). The experimental results shows that the proposed scheme performed 80% better than BFA and FA in reducing PAR and user discomfort.

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Copyright information

© Springer Nature Switzerland AG 2019

Authors and Affiliations

  • Waleed Ahmad
    • 1
  • Nadeem Javaid
    • 1
    Email author
  • Basit Karim
    • 2
  • Syed Qasim Jan
    • 3
  • Muhammad Ali
    • 4
  • Raza Abid Abbasi
    • 1
  • Sajjad Khan
    • 1
  1. 1.COMSATS UniversityIslamabadPakistan
  2. 2.COMSATS University IslamabadAbbotabadPakistan
  3. 3.University of Engineering and TechnologyPeshawarPakistan
  4. 4.King Saud UniversityRiyadhSaudi Arabia

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