A Deep Learning Approach to Short-term PV Power Generation Forecasting
Poster
Authors/Editors
Strategic Research Themes
Publication Details
Author list: Chamnan Limsakul, Anawach Sangswang, Itsara Masiri, Poj Tangamchi, Ballang Muenpinij, Gavin Fungtammasan, Somjet Pattarapanitchai, Dhirayut Chenvidhya, Tanokkorn Chenvidhya and Yaowanee Sangpongsanont
Publication year: 2022
Title of series: Area 1: Policy, market, deployment, energy management, and related technologies, Sub-area 1-2: Energy management and related technologies, [TuP-12] PV system and forest
Volume number: TuP-12-18
Languages: English-United States (EN-US)
Abstract
This paper presents PV power generation forecasting. The proposed forecasting model is based on long short-term memory (LSTM) model. PV power plant datasets, and cloud covers are used as input for training the model. Cloud cover was estimated from the all-sky images. Images taken from all-sky camera feature details of cloud movement and the sun’s position over the sky hemisphere. To evaluate the performance of the developed model, the mean absolute error (MAE) and the skill score (SS) are measured. The comparison results between the persistent, MLP, CNN, and LSTM (without cloud cover) illustrate that the LSTM model has the most accurate. However, the difference in performance between LSTM (without cloud cover) and LSTM (with cloud cover) is ambiguous.
Keywords
Deep learning, forecasting, Photovoltaic systems