Thomas Shering’s research while affiliated with City, University of London and other places

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Data pipeline used in this research. The LSTM model is explained in Section 2.2 and Section 2.3, with further details of hyperparameters used given in Section 3. The ‘Section 5 only’ data flow only applies to the research set out in Section 5 of this paper, with methods for this given in Section 2.4. Accuracy metrics computed are given in Section 2.5.
The data flow and operations within an LSTM block at time t.
LSTM model 1.
LSTM model 2.
The best observed MASE (y-axis) found for each LSTM architecture, for load, solar and wind generation forecasting. All exogenous weather variables were used for each of these experiments. Each given MASE represents the lowest value found out of all hyperparameter combinations tested. See Appendix A Table A1 for optimum hyperparameter combinations and the corresponding test loss and forecast bias values.

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Investigation of Load, Solar and Wind Generation as Target Variables in LSTM Time Series Forecasting, Using Exogenous Weather Variables
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April 2024

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11 Citations

Thomas Shering

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Dimitra Apostolopoulou

Accurately forecasting energy metrics is essential for efficiently managing renewable energy generation. Given the high variability in load and renewable energy power output, this represents a crucial area of research in order to pave the way for increased adoption of low-carbon energy solutions. Whilst the impact of different neural network architectures and algorithmic approaches has been researched extensively, the impact of utilising additional weather variables in forecasts have received far less attention. This article demonstrates that weather variables can have a significant influence on energy forecasting and presents methodologies for using these variables within a long short-term memory (LSTM) architecture to achieve improvements in forecasting accuracy. Moreover, we introduce the use of the seasonal components of the target time series, as exogenous variables, that are also observed to increase accuracy. Load, solar and wind generation time series were forecast one hour ahead using an LSTM architecture. Time series data were collected in five Spanish cities and aggregated for analysis, alongside five exogenous weather variables, also recorded in Spain. A variety of LSTM architectures and hyperparameters were investigated. By tuning exogenous weather variables, a 33% decrease in mean squared error was observed for solar generation forecasting. A 22% decrease in mean absolute squared error (MASE), compared to 24-h ahead forecasts made by the Transmission Service Operator (TSO) in Spain, was also observed for solar generation. Compared to using the target variable in isolation, utilising exogenous weather variables decreased MASE by approximately 10%, 15% and 12% for load, solar and wind generation, respectively. By using the seasonal component of the target variables as an exogenous variable itself, we demonstrated decreases in MASE of 19%, 12% and 8% for load, solar and wind generation, respectively. These results emphasise the significant benefits of incorporating weather and seasonal components into energy-related time series forecasts.

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Citations (1)


... This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/). Energies 2025, 18, 2842 2 of 21 power failures [1,2]. The improvement of computational efficiency has led to the application of machine learning (ML) and deep learning (DL) models in time series forecasting. ...

Reference:

Optimizing Smart Grid Load Forecasting via a Hybrid Long Short-Term Memory-XGBoost Framework: Enhancing Accuracy, Robustness, and Energy Management
Investigation of Load, Solar and Wind Generation as Target Variables in LSTM Time Series Forecasting, Using Exogenous Weather Variables