Show/Hide Menu
Hide/Show Apps
Logout
Türkçe
Türkçe
Search
Search
Login
Login
OpenMETU
OpenMETU
About
About
Open Science Policy
Open Science Policy
Open Access Guideline
Open Access Guideline
Postgraduate Thesis Guideline
Postgraduate Thesis Guideline
Communities & Collections
Communities & Collections
Help
Help
Frequently Asked Questions
Frequently Asked Questions
Guides
Guides
Thesis submission
Thesis submission
MS without thesis term project submission
MS without thesis term project submission
Publication submission with DOI
Publication submission with DOI
Publication submission
Publication submission
Supporting Information
Supporting Information
General Information
General Information
Copyright, Embargo and License
Copyright, Embargo and License
Contact us
Contact us
Time Series Prediction of Solar Power Generation Using Trend Decomposition
Download
Energy Tech - 2023 - Kavakci - Time Series Prediction of Solar Power Generation Using Trend Decomposition.pdf
Date
2023-01-01
Author
Kavakci, Gurcan
Cicekdag, Begum
Ertekin Bolelli, Şeyda
Metadata
Show full item record
This work is licensed under a
Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License
.
Item Usage Stats
47
views
12
downloads
Cite This
High-accuracy predictions of future solar power generations are important for monitoring, maintenance, dispatching, and scheduling. The goal of this study is to create a forecasting workflow that increases prediction accuracy independent of the machine learning method and has minimal computational requirements. The proposed trend decomposition method incorporates irradiance and seasonal features as exogenous inputs. In order to extract the linear part of the data, a moving average filter is used. The nonlinear (stable) component of the time series is then calculated by subtracting this linear part from the original data. The stable portion is modeled using several machine learning methods, while the ordinary least squares method is applied to the linear series. By aggregating both results, the final forecast is obtained. The forecasting performances of the machine learning algorithms on unprocessed data are used as baselines for evaluations. Improvements up to 39% in the mean absolute error and up to 31% in the root mean square error metrics are observed compared to the baselines. Experimental results show that the proposed trend decomposition with extrapolation method increases the forecasting performance and generalization capacity of machine learning algorithms.
Subject Keywords
machine learning
,
solar energy
,
solar forecasting
,
solar power generation
,
time series
,
trend decomposition
URI
https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85178931391&origin=inward
https://hdl.handle.net/11511/107096
Journal
Energy Technology
DOI
https://doi.org/10.1002/ente.202300914
Collections
Department of Computer Engineering, Article
Citation Formats
IEEE
ACM
APA
CHICAGO
MLA
BibTeX
G. Kavakci, B. Cicekdag, and Ş. Ertekin Bolelli, “Time Series Prediction of Solar Power Generation Using Trend Decomposition,”
Energy Technology
, pp. 0–0, 2023, Accessed: 00, 2023. [Online]. Available: https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85178931391&origin=inward.