Heuristic Optimization for Microload Shedding in Generation Constrained Power Systems

While the causes of power system outages are often complex and multi-faceted, an apparent deficit in generation compared to a known demand for electricity could be more alarming. A sudden hike in demand at any given time may ultimately result in the total failure of an electricity network. In this p...

Full description

Bibliographic Details
Main Authors: Julius Quarshie Azasoo, Triantafyllos Kanakis, Ali Al-Sherbaz, Michael Opoku Agyeman
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8955857/
id doaj-3e9f8cc8cbe84af9bae35a58d0fb4669
record_format Article
spelling doaj-3e9f8cc8cbe84af9bae35a58d0fb46692021-03-30T03:03:42ZengIEEEIEEE Access2169-35362020-01-018132941330410.1109/ACCESS.2020.29658198955857Heuristic Optimization for Microload Shedding in Generation Constrained Power SystemsJulius Quarshie Azasoo0https://orcid.org/0000-0002-5348-979XTriantafyllos Kanakis1https://orcid.org/0000-0002-3492-037XAli Al-Sherbaz2https://orcid.org/0000-0002-0995-1262Michael Opoku Agyeman3https://orcid.org/0000-0002-3734-4451Department of Computing, University of Northampton, Northampton, U.K.Department of Computing, University of Northampton, Northampton, U.K.Department of Computing, University of Northampton, Northampton, U.K.Department of Computing, University of Northampton, Northampton, U.K.While the causes of power system outages are often complex and multi-faceted, an apparent deficit in generation compared to a known demand for electricity could be more alarming. A sudden hike in demand at any given time may ultimately result in the total failure of an electricity network. In this paper, algorithms to efficiently allocate the available generation is investigated. Dynamic programming based algorithms are developed to achieve this constraint by uniquely controlling home appliances to reduce the overall demands for electricity by the consumers on the grid in context. To achieve this, heuristic optimization method (HOM) based on the consumers' comfort and the benefits to the electricity utility is proposed. This is then validated by simulating microload management in generation constrained power systems. Three techniques; General Shedding (GS), Priority Based Shedding (PBS) and Excess Reuse Shedding (ERS) techniques were studied for effecting efficient microload shedding. The research is aimed at reducing the burden imposed on the consumers in a generation constrained power system by the traditional load shedding approach. Additionally, the reduction of the excess curtailment is a prime objective in this paper as it helps the utility companies to reduce wastage and ultimately reduce losses resulting from over shedding. Reducing the peak-to-average ratios (PAR) on the entire network in context as a critical factor in the determination of the efficiency of an electricity network is also investigated. In the long run, the PAR affects the price charged to the final consumer. Simulation results show the associated benefits that include effectiveness, deployability, and scalability of the proposed HOM to reduce these burdens.https://ieeexplore.ieee.org/document/8955857/Demand-side management (DSM)microload managementsmart gridsmart meteringoptimizationpeak-to-average ratio (PAR)
collection DOAJ
language English
format Article
sources DOAJ
author Julius Quarshie Azasoo
Triantafyllos Kanakis
Ali Al-Sherbaz
Michael Opoku Agyeman
spellingShingle Julius Quarshie Azasoo
Triantafyllos Kanakis
Ali Al-Sherbaz
Michael Opoku Agyeman
Heuristic Optimization for Microload Shedding in Generation Constrained Power Systems
IEEE Access
Demand-side management (DSM)
microload management
smart grid
smart metering
optimization
peak-to-average ratio (PAR)
author_facet Julius Quarshie Azasoo
Triantafyllos Kanakis
Ali Al-Sherbaz
Michael Opoku Agyeman
author_sort Julius Quarshie Azasoo
title Heuristic Optimization for Microload Shedding in Generation Constrained Power Systems
title_short Heuristic Optimization for Microload Shedding in Generation Constrained Power Systems
title_full Heuristic Optimization for Microload Shedding in Generation Constrained Power Systems
title_fullStr Heuristic Optimization for Microload Shedding in Generation Constrained Power Systems
title_full_unstemmed Heuristic Optimization for Microload Shedding in Generation Constrained Power Systems
title_sort heuristic optimization for microload shedding in generation constrained power systems
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description While the causes of power system outages are often complex and multi-faceted, an apparent deficit in generation compared to a known demand for electricity could be more alarming. A sudden hike in demand at any given time may ultimately result in the total failure of an electricity network. In this paper, algorithms to efficiently allocate the available generation is investigated. Dynamic programming based algorithms are developed to achieve this constraint by uniquely controlling home appliances to reduce the overall demands for electricity by the consumers on the grid in context. To achieve this, heuristic optimization method (HOM) based on the consumers' comfort and the benefits to the electricity utility is proposed. This is then validated by simulating microload management in generation constrained power systems. Three techniques; General Shedding (GS), Priority Based Shedding (PBS) and Excess Reuse Shedding (ERS) techniques were studied for effecting efficient microload shedding. The research is aimed at reducing the burden imposed on the consumers in a generation constrained power system by the traditional load shedding approach. Additionally, the reduction of the excess curtailment is a prime objective in this paper as it helps the utility companies to reduce wastage and ultimately reduce losses resulting from over shedding. Reducing the peak-to-average ratios (PAR) on the entire network in context as a critical factor in the determination of the efficiency of an electricity network is also investigated. In the long run, the PAR affects the price charged to the final consumer. Simulation results show the associated benefits that include effectiveness, deployability, and scalability of the proposed HOM to reduce these burdens.
topic Demand-side management (DSM)
microload management
smart grid
smart metering
optimization
peak-to-average ratio (PAR)
url https://ieeexplore.ieee.org/document/8955857/
work_keys_str_mv AT juliusquarshieazasoo heuristicoptimizationformicroloadsheddingingenerationconstrainedpowersystems
AT triantafylloskanakis heuristicoptimizationformicroloadsheddingingenerationconstrainedpowersystems
AT alialsherbaz heuristicoptimizationformicroloadsheddingingenerationconstrainedpowersystems
AT michaelopokuagyeman heuristicoptimizationformicroloadsheddingingenerationconstrainedpowersystems
_version_ 1724184071502823424