A parallel solution with GPU technology to predict energy consumption in spatially distributed buildings using evolutionary optimization and artificial neural networks
Metadatos
Mostrar el registro completo del ítemAutor
Sánchez Iruela, José Rubén; Baca Ruiz, Luis Gonzaga; Pegalajar Jiménez, María Del Carmen; Capel Tuñón, Manuel IsidoroEditorial
Elsevier
Materia
Energy consumption forecasting Artificial neural networks GPU Evolutionary algorithm
Fecha
2020-01-18Referencia bibliográfica
Published version: J.R.S. Iruela, L.G.B. Ruiz, M.C. Pegalajar, M.I. Capel, A parallel solution with GPU technology to predict energy consumption in spatially distributed buildings using evolutionary optimization and artificial neural networks, Energy Conversion and Management, Volume 207, 2020, 112535, ISSN 0196-8904, https://doi.org/10.1016/j.enconman.2020.112535
Patrocinador
TIN201564776-C3-1-RResumen
Today all governments talk about climate change and its consequences. One of the ways to tackle this problem is by studying the energy consumption of the buildings around us. The study of energy consumption may give us relevant information to make better decisions, and thus reduce costs and pollution. However, ANNtraining models, in order to achieve those goals, has a high computational cost in terms of time. To solve that problem, this paper presents a GPU-based parallel implementation of NGSA-II to train ANNs whose evaluation has also been implemented in a parallel GPU scheme. Our methodology is designed to predict the energy consumption of a series of public buildings, and thus, to model consumption, save energy and improve the energy efficiency of these buildings without compromising their performance obtaining the prediction in a very short period of time. We compared the sequential implementation of the evolutionary algorithm NSGA-II with our new version developed in parallel and the parallel implementation gets better results in much faster execution time.