A Deep Hybrid CNNDBiLSTM Model for Short-Term Wind Speed Forecasting in Wind-Rich Regions of Tasmania, Australia
Article
| Article Title | A Deep Hybrid CNNDBiLSTM Model for Short-Term Wind Speed Forecasting in Wind-Rich Regions of Tasmania, Australia |
|---|---|
| ERA Journal ID | 123161 |
| Article Category | Article |
| Authors | Neupane, Ananta, Raj, Nawin and Deo, Ravinesh |
| Journal Title | Energies |
| Journal Citation | 18 (24) |
| Article Number | 6390 |
| Number of Pages | 26 |
| Year | 2025 |
| Publisher | MDPI AG |
| Place of Publication | Switzerland |
| ISSN | 1996-1073 |
| Digital Object Identifier (DOI) | https://doi.org/10.3390/en18246390 |
| Web Address (URL) | https://www.mdpi.com/1996-1073/18/24/6390 |
| Abstract | Accurate and reliable short-term wind speed forecasting plays a crucial role in efficient operation and integration of wind energy generation. This research study introduces an innovative deep hybrid model that combines Convolutional Neural Networks (CNN) with Double Bidirectional Long Short-Term Memory (DBiLSTM) networks to enhance wind speed forecasting accuracy in Australia. Thirteen years of hourly wind speed data were collected from two wind-rich potential sites in Tasmania, Australia. The CNN component effectively captures local temporal patterns, while the DBiLSTM layers model long-range dependencies in both forward and backward directions. The proposed CNNDBiLSTM model was compared against three traditional benchmark models: Multiple Linear Regression (MLR), Support Vector Regression (SVR), and Categorical Boosting (CatBoost). The proposed framework can effectively support wind farm planning, operational reliability, and grid integration strategies within the renewable energy sector. A comprehensive evaluation framework across both Australian study sites (Flinders Island Airport, Scottsdale) showed that the CNNDBiLSTM consistently outperformed the baseline models. It achieved the highest correlation coefficients (r = 0.987–0.988), the lowest error rates (RMSE = 0.392–0.402, MAE = 0.294–0.310), and superior scores across multiple efficiency metrics (ENS, WI, LM). The CNNDBiLSTM demonstrated strong adaptability across coastal and inland environments, showing potential for real-world use in renewable-energy resource forecasting. The wind speed analysis and forecasting show Flinders with higher and consistent wind speed as a more viable option for large-scale wind energy generation than Scottsdale in Tasmania. |
| Keywords | wind speed forecasting; deep learning; CNNBiLSTM hybrid model; renewable energy; time series forecasting |
| Article Publishing Charge (APC) Amount Paid | 2600.0 |
| Article Publishing Charge (APC) Funding | Researcher |
| Contains Sensitive Content | Does not contain sensitive content |
| ANZSRC Field of Research 2020 | 460207. Modelling and simulation |
| 490199. Applied mathematics not elsewhere classified | |
| 410404. Environmental management | |
| Byline Affiliations | School of Science, Engineering & Digital Technologies- Maths,Physics & Computing |
| School of Science, Engineering and Digital Technologies |
https://research.usq.edu.au/item/10128z/a-deep-hybrid-cnndbilstm-model-for-short-term-wind-speed-forecasting-in-wind-rich-regions-of-tasmania-australia
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