Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
4943021 | Expert Systems with Applications | 2018 | 25 Pages |
Abstract
Buildings are an essential part of our social life. People spend a substantial fraction of their time and spend a high amount of energy in them. There is a grand variety of systems and services related to buildings, in order to better control and monitoring. The prompt taking of decisions may prevent costs and contamination. This paper proposes a method for energy consumption forecasting in public buildings, and thus, achieve energy savings, in order to improve the energy efficiency, without affecting the comfort and wellness. The prediction of the energy consumption is indispensable for the intelligent systems operations and planning. We propose an Elman neural network for forecasting such consumption and we use a genetic algorithm to optimize the weight of the models. This paper concludes that the proposed method optimizes the energy consumption forecasting and improves results attained in previous studies.
Keywords
UGRANNNARSVRMLPARIMAMSENARXElman neural networkMemetic algorithmEvolutionary algorithmGenetic algorithmEnergy efficiencymean squared errorSupport vector regressionNeural networkArtificial Neural NetworkNeural networksNonlinear autoregressive modelAuto-regressive integrated moving averageEnnTime series forecasting
Related Topics
Physical Sciences and Engineering
Computer Science
Artificial Intelligence
Authors
L.G.B. Ruiz, R. Rueda, M.P. Cuéllar, M.C. Pegalajar,