RESEARCH NEWS STORY
Chung-Ang University Researchers Use Deep Learning to Develop a
Forecasting Model for Efficiently Managing Electric Grids
The model accurately predicts uncertain parameters
related to renewable energy sources for microgrid operation, their energy
demand, and market prices
The increasing emphasis on green energy has led to
the development of renewable energy sources (RESs). RESs are integrated into
power supply systems via microgrids (MGs) whose efficient and profitable
operation requires handling uncertainties associated with RESs, energy demand,
and market prices. To this end, researchers have recently developed a novel
deep learning-based forecasting model. It employs a long short-term memory
network and demand response program to handle these uncertainties better than
existing prediction models.
Title: A microgrid network consisting of integrated solar panels.
Caption:
Researchers from Chung-Ang
University in Korea have proposed a novel deep learning-based forecasting model
for optimal microgrid energy management. It employs a long short-term memory network
and incentive-based demand response program to predict uncertainties in renewable energy sources implemented
in microgrids, their energy demand, and market prices.
Credit: Idaho National
Laboratory from Flickr (https://www.flickr.com/photos/30369883@N03/33439203925)
License type: CC BY 2.0
Climate change is a major environmental challenge of
our time. It is accelerating due to excessive carbon emissions from
non-renewable energy sources, including fossil fuels. Given these
circumstances, governments worldwide are framing policies to achieve carbon
neutrality by promoting green energy. This has led to the development of
various renewable energy sources (RESs) – solar panels, windmills, and turbines
– as a substitute for fossil fuels. Interconnecting these RESs to power supply
networks is necessary. In this regard, microgrids (MGs), which integrate
renewable and non-renewable energy sources and energy storage systems, are a
promising solution. But, their efficient operation is challenging owing to the
unsteady availability and uncertainties of RESs. For instance, RESs based on solar
energy cannot perform efficiently on cloudy days.
As a result, MG operators cannot bid profitably in
the day-ahead energy market where they must promise energy supply for the next
day. Thus, there exists an evident need to precisely predict uncertainties in RESs,
their energy demand, and the market prices. Existing conventional prediction
methods consider various possible future scenarios and their probabilities.
This approach has several drawbacks, including a low prediction accuracy. To
overcome them, researchers have resorted to deep learning-based models. While
they make accurate predictions, their hyperparameters – variables that control
the learning process – must be appropriately optimized.
Against this backdrop, Professor Mun-Kyeom Kim of
the Department of Energy System Engineering at Chung-Ang University, Korea, in
collaboration with Mr. Hyung-Joon Kim, recently proposed a novel deep
learning-based forecasting model to accurately predict the uncertain parameters
for optimal and profitable microgrid operation. Their work was made available
online on 21 December 2022 and published in
Volume 332 of the journal Applied Energy on 15 February 2023.
“The proposed data-driven forecasting method employs
a long short-term memory (LSTM) model, an artificial neural network with
feedback connections. Its hyperparameters are optimized by a genetic algorithm-adaptive
weight particle swarm optimization (GA-AWPSO) algorithm, while a global
attention mechanism (GAM) identifies important features from input parameter
data,” explains Prof. Kim. “Both
these algorithms can help overcome the limitations of the conventional methods
and improve the prediction accuracy and efficiency of the LSTM model.”
In their work, the researchers also developed a data
mining and incentive-based demand response (DM-CIDR) program for handling
uncertainties pertaining to energy demand and market prices. Herein, ordering
points to identify the clustering structure (OPTICS) and k-nearest
neighbor (k-NN)
algorithms were used to determine the optimal incentive rates for customers in
the day-ahead energy market.
To demonstrate the performance of their
GA-AWPSO-LSTM-GAM model and DM-CIDR program, the researchers implemented them
on the historical Pennsylvania-New Jersey-Maryland(PJM) Interconnection energy
market data. The model had a lower forecasting error than existing prediction
models and provided the best correlation values for predicting the availability
of RESs. In particular, it obtained a coefficient of determination value of
0.96 for solar panels, surpassing that obtained from the existing models.
With these findings, the researchers have high hopes
for their proposed prediction model. “It will accelerate the integration of
renewable resources in power supply networks while enabling MG operators to
solve day-ahead energy management issues. This, in turn, will improve the regional
electric grid reliability, provide low-cost clean energy to people, and promote
local sustainability. Ultimately, it can open doors to zero-emission electricity
sources that can make carbon neutrality by 2050 a realistic goal to achieve,” concludes
an optimistic Prof. Kim.
Here’s hoping for a realization of his vision in the
not-too-distant future!
Reference
Authors
Title of original paper
Journal |
H.J. Kim1, M.K. Kim1
A novel deep learning-based forecasting model optimized by
heuristic algorithm for energy management of microgrid
Applied
Energy |
|
|
DOI
Affiliations |
10.1016/j.apenergy.2022.120525
Department of Energy System Engineering, Chung-Ang University,
Republic of Korea |
Media
Contact
M. K. Kim: mkim@cau.ac.kr
Your Press Release Source
Chung-Ang University
About Chung-Ang University
Chung-Ang University is a private
comprehensive research university located in Seoul, South Korea. It was started
as a kindergarten in 1916 and attained university status in 1953. It is fully
accredited by the Ministry of Education of Korea. Chung-Ang University conducts
research activities under the slogan of “Justice and Truth.” Its new vision for
completing 100 years is “The Global Creative Leader.” Chung-Ang University
offers undergraduate, postgraduate, and doctoral programs, which encompass a
law school, management program, and medical school; it has 16 undergraduate and
graduate schools each. Chung-Ang University’s culture and arts programs are
considered the best in Korea.
Website: https://neweng.cau.ac.kr/index.do
About Professor Mun-Kyeom Kim
Mun-Kyeom Kim received his Ph.D. degree in
Electrical and Computer Engineering from Seoul National University. He is
currently a professor at the School of Energy System Engineering at Chung-Ang
University in Korea. During the last 15 years, he has published 77 research
articles with nearly 1000 citations to his credit. His research interests
include AI-based smart power networks, low carbon net-zero grid design, smart
integrated AC/DC power system, real-time energy management, big-data
based-renewable energy forecasting, autonomous distributed energy system, and
multi agent-based smart city intelligence.
CAU Scholar's
Space: https://scholarworks.bwise.kr/cau/researcher-profile?ep=934