A platform for research: civil engineering, architecture and urbanism
Heuristic scheduling of multiple smart home appliances: Utility planning perspective
Electric utilities are increasingly incorporating Demand Side Management (DSM) approaches in their energy networks to help compensate for increased levels of uncertainty arising from renewable energy production. Demand Response (DR) is one such approach. DR aims to encourage shifts in residential load by using pricing signals and dynamic tariff mechanisms which are provided in real-time by the utility company. The goal is to shift energy consumption patterns to off-peak times and hence reduce the Peak-to-Average Ratio (PAR) of the daily electricity demand. In this paper, the effects of multiple households using a fast heuristic algorithm for scheduling smart appliances is simulated from a utility planning perspective. It explores the aggregated response of the de-centralized heuristic algorithms to events signaled by the utility, when the primary focus of each heuristic is upon minimization of end-user economic costs. The performance of the heuristic algorithm for DR events under normal and stringent conditions is explored under simulation. Results confirm that the aggregated demand can potentially respond to DR signals, although the choice of price signals plays a major role in the depth and nature of the response and requires further investigation.
Heuristic scheduling of multiple smart home appliances: Utility planning perspective
Electric utilities are increasingly incorporating Demand Side Management (DSM) approaches in their energy networks to help compensate for increased levels of uncertainty arising from renewable energy production. Demand Response (DR) is one such approach. DR aims to encourage shifts in residential load by using pricing signals and dynamic tariff mechanisms which are provided in real-time by the utility company. The goal is to shift energy consumption patterns to off-peak times and hence reduce the Peak-to-Average Ratio (PAR) of the daily electricity demand. In this paper, the effects of multiple households using a fast heuristic algorithm for scheduling smart appliances is simulated from a utility planning perspective. It explores the aggregated response of the de-centralized heuristic algorithms to events signaled by the utility, when the primary focus of each heuristic is upon minimization of end-user economic costs. The performance of the heuristic algorithm for DR events under normal and stringent conditions is explored under simulation. Results confirm that the aggregated demand can potentially respond to DR signals, although the choice of price signals plays a major role in the depth and nature of the response and requires further investigation.
Heuristic scheduling of multiple smart home appliances: Utility planning perspective
Ogwumike, Chris (author) / Short, Michael (author) / Abugchem, Fathi (author)
2016-10-20
Ogwumike , C , Short , M & Abugchem , F 2016 , ' Heuristic scheduling of multiple smart home appliances: Utility planning perspective ' , Paper presented at International Conference for Students on Applied Engineering 2016 , Newcastle upon Tyne , United Kingdom , 20/10/16 - 21/10/16 . https://doi.org/10.1109/ICSAE.2016.7810195
Conference paper
Electronic Resource
English
DDC:
690
Home Appliances in the Smart Grid: A Heuristic Algorithm-Based Dynamic Scheduling Model
BASE | 2021
|Curtain control mechanism based on smart home appliances
European Patent Office | 2021
|