TY - JOUR
T1 - Analyzing the Impacts of a Deep-Learning Based Day-Ahead Residential Demand Response Model on The Jordanian Power Sector in Winter Season
AU - Shaqour, Ayas
AU - Farzaneh, Hooman
N1 - Publisher Copyright:
© 2023 Kyushu University. All rights reserved.
PY - 2021
Y1 - 2021
N2 - In this paper, a detailed analysis of the impact of a day-ahead residential demand response model on the winter season of Jordan’s power sector is presented and discussed. The model used is based on a deep neural network that was trained on four years of Jordan’s electrical demand data and a profit-based day-ahead demand response optimization. The day-ahead demand response model was established based on the predicted day-ahead demand and a demand response model conducted by Jordan’s Grid operator (GO) being NEPCO to reduce its energy costs from the power Generator (PGs) by applying a day-ahead peak period pricing scheme on the service providers (SPs). The results of applying the DR model on the winter season showed that a potential peak reduction of 4.49% to 8.19% could be achieved as well as a cost reduction of 64,263$ to 265,411$ per day.
AB - In this paper, a detailed analysis of the impact of a day-ahead residential demand response model on the winter season of Jordan’s power sector is presented and discussed. The model used is based on a deep neural network that was trained on four years of Jordan’s electrical demand data and a profit-based day-ahead demand response optimization. The day-ahead demand response model was established based on the predicted day-ahead demand and a demand response model conducted by Jordan’s Grid operator (GO) being NEPCO to reduce its energy costs from the power Generator (PGs) by applying a day-ahead peak period pricing scheme on the service providers (SPs). The results of applying the DR model on the winter season showed that a potential peak reduction of 4.49% to 8.19% could be achieved as well as a cost reduction of 64,263$ to 265,411$ per day.
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U2 - 10.5109/4738595
DO - 10.5109/4738595
M3 - Conference article
AN - SCOPUS:85171888000
SN - 2434-1436
SP - 247
EP - 254
JO - International Exchange and Innovation Conference on Engineering and Sciences
JF - International Exchange and Innovation Conference on Engineering and Sciences
T2 - 7th International Exchange and Innovation Conference on Engineering and Sciences, IEICES 2021
Y2 - 21 October 2021 through 22 October 2021
ER -