Solar Power Time Series Forecasting Utilising Wavelet Coefficients
- URL: http://arxiv.org/abs/2210.00269v1
- Date: Sat, 1 Oct 2022 13:02:43 GMT
- Title: Solar Power Time Series Forecasting Utilising Wavelet Coefficients
- Authors: Sarah Almaghrabi, Mashud Rana, Margaret Hamilton and Mohammad Saiedur
Rahaman
- Abstract summary: The aim of this study is to improve the efficiency of applying Wavelet Transform (WT) by proposing a new method that uses a single simplified model.
Given a time series and its Wavelet Transform (WT) coefficients, it trains one model with the coefficients as features and the original time series as labels.
The proposed approach is evaluated using 17 months of aggregated solar Photovoltaic (PV) power data from two real-world datasets.
- Score: 0.8602553195689513
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Accurate and reliable prediction of Photovoltaic (PV) power output is
critical to electricity grid stability and power dispatching capabilities.
However, Photovoltaic (PV) power generation is highly volatile and unstable due
to different reasons. The Wavelet Transform (WT) has been utilised in time
series applications, such as Photovoltaic (PV) power prediction, to model the
stochastic volatility and reduce prediction errors. Yet the existing Wavelet
Transform (WT) approach has a limitation in terms of time complexity. It
requires reconstructing the decomposed components and modelling them separately
and thus needs more time for reconstruction, model configuration and training.
The aim of this study is to improve the efficiency of applying Wavelet
Transform (WT) by proposing a new method that uses a single simplified model.
Given a time series and its Wavelet Transform (WT) coefficients, it trains one
model with the coefficients as features and the original time series as labels.
This eliminates the need for component reconstruction and training numerous
models. This work contributes to the day-ahead aggregated solar Photovoltaic
(PV) power time series prediction problem by proposing and comprehensively
evaluating a new approach of employing WT. The proposed approach is evaluated
using 17 months of aggregated solar Photovoltaic (PV) power data from two
real-world datasets. The evaluation includes the use of a variety of prediction
models, including Linear Regression, Random Forest, Support Vector Regression,
and Convolutional Neural Networks. The results indicate that using a
coefficients-based strategy can give predictions that are comparable to those
obtained using the components-based approach while requiring fewer models and
less computational time.
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