Efficient Scheduling of Home Energy Management Controller (HEMC) Using Heuristic Optimization Techniques

The main problem for both the utility companies and the end-used is to efficiently schedule the home appliances using energy management to optimize energy consumption. The microgrid, macro grid, and Smart Grid (SG) are state-of-the-art technology that is user and environment-friendly, reliable, flex...

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Veröffentlicht in:Sustainability 2023-01, Vol.15 (2), p.1378
Hauptverfasser: Mahmood, Zafar, Cheng, Benmao, Butt, Naveed Anwer, Rehman, Ghani Ur, Zubair, Muhammad, Badshah, Afzal, Aslam, Muhammad
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container_end_page
container_issue 2
container_start_page 1378
container_title Sustainability
container_volume 15
creator Mahmood, Zafar
Cheng, Benmao
Butt, Naveed Anwer
Rehman, Ghani Ur
Zubair, Muhammad
Badshah, Afzal
Aslam, Muhammad
description The main problem for both the utility companies and the end-used is to efficiently schedule the home appliances using energy management to optimize energy consumption. The microgrid, macro grid, and Smart Grid (SG) are state-of-the-art technology that is user and environment-friendly, reliable, flexible, and controllable. Both utility companies and end-users are interested in effectively utilizing different heuristic optimization techniques to address demand-supply management efficiently based on consumption patterns. Similarly, the end-user has a greater concern with the electricity bills, how to minimize electricity bills, and how to reduce the Peak to Average Ratio (PAR). The Home Energy Management Controller (HEMC) is integrated into the smart grid, by providing many benefits to the end-user as well to the utility. In this research paper, we design an efficient HEMC system by using different heuristic optimization techniques such as Genetic Algorithm (GA), Binary Particle Swarm Optimization (BPSO), and Wind Driven Optimization (WDO), to address the problem stated above. We consider a typical home, to have a large number of appliances and an on-site renewable energy generation and storage system. As a key contribution, here we focus on incentive-based programs such as Demand Response (DR) and Time of Use (ToU) pricing schemes which restrict the end-user energy consumption during peak demands. From the results figures, it is clear that our HEMC not only schedules all the appliances but also generates optimal patterns for energy consumption based on the ToU pricing scheme. As a secondary contribution, deploying an efficient ToU scheme benefits the end-user by paying minimum electricity bills, while considering user comfort, at the same time benefiting utilities by reducing the peak demand. From the graphs, it is clear that HEMC using GA shows better results than WDO and BPSO, in energy consumption and electricity cost, while BPSO is more prominent than WDO and GA by calculating PAR.
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source MDPI - Multidisciplinary Digital Publishing Institute; EZB-FREE-00999 freely available EZB journals
subjects Algorithms
Alternative energy
Communication
Controllability
Controllers
Costs
Demand side management
Distributed generation
Electric power demand
Electric utilities
Electricity
Electricity distribution
Energy consumption
Energy management
Energy storage
Genetic algorithms
Household appliances
Linear programming
Onsite
Optimization
Optimization techniques
Peak demand
Problem solving
Public utilities
Renewable resources
Residential energy
Schedules
Smart grid technology
Sustainability
Time of use electricity pricing
title Efficient Scheduling of Home Energy Management Controller (HEMC) Using Heuristic Optimization Techniques
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