CUDA-bigPSF: An optimized version of bigPSF accelerated with Graphics Processing Unit
Metadatos
Mostrar el registro completo del ítemEditorial
Elsevier
Materia
Time series forecasting Hybrid models CUDA Energy Big Data
Fecha
2023-11-15Referencia bibliográfica
D. Criado-Ramón, L.B.G. Ruiz, M.C. Pegalajar, CUDA-bigPSF: An optimized version of bigPSF accelerated with graphics processing Unit, Expert Systems with Applications, Volume 230, 2023, 120661, ISSN 0957-4174, https://doi.org/10.1016/j.eswa.2023.120661.
Patrocinador
Funding for open access charge: Universidad de Granada / CBUA; Grant PID2020-112495RB-C21 funded by MCIN/ AEI /10.13039/501100011033; I + D + i FEDER 2020 project B-TIC-42-UGR20Resumen
Accurate and fast short-term load forecasting is crucial in efficiently managing energy production and distribution. As such, many different algorithms have been proposed to address this topic, including hybrid models that combine clustering with other forecasting techniques. One of these algorithms is bigPSF, an algorithm that combines K-means clustering and a similarity search optimized for its use in distributed environments. The work presented in this paper aims to improve the time required to execute the algorithm with two main contributions. First, some of the issues of the original proposal that limited the number of cores simultaneously used are studied and highlighted. Second, a version of the algorithm optimized for Graphics Processing Unit (GPU) is proposed, solving the previously mentioned issues while taking into account the GPU architecture and memory structure. Experimentation was done with seven years of real-world electric demand data from Uruguay. Results show that the proposed algorithm executed consistently faster than the original version, achieving speedups up to 500 times faster during the training phase.





