Short-Term Load Forecasting in Power System Using CNN-LSTM Neural Network

Jan 25, 2024ยท
Truong Hoang Bao Huy
Truong Hoang Bao Huy
,
Dieu Ngoc Vo
,
Khai Phuc Nguyen
,
Viet Quoc Huynh
,
Minh Quang Huynh
,
Khoa Hoang Truong
ยท 0 min read
Abstract
The accurate forecasting of short-term load plays a significant role in power systems operation and planning. This paper suggests a short-term load forecasting model combining Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM). The developed CNN-LSTM aims to capture both spatial and temporal dependencies within the load data, leveraging the strengths of both architectures. Simulations are performed using real-world power system load data. Comparative analyses are carried out against standalone CNN and LSTM models. The CNN-LSTM has significantly better forecasting accuracy than other models, showcasing its effectiveness in short-term load forecasting.
Type
Publication
In 2023 Asia Meeting on Environment and Electrical Engineering (EEE-AM)