Predicting building energy utilization with energy plus simulation and advanced sea lion optimization algorithm based on Elman neural network

Mohammed Saud Ali Al-Fadheeli, Yassine Bouteraa, Adil Hussein Mohammed, Hayder Mahmood Salman, Ghadir Ghasemi

Research output: Contribution to journalArticlepeer-review

1 Scopus citations

Abstract

There are different methods for modeling a structure and the building with the heat from the exterior and interior sources for evaluating a good performance, predicting energy utilization. Various methods, differing from simple regression to techniques, which are according to the physical ideology, could be utilized in simulation. There is a prevalent explanation for whole these methods, in which the input parameters are according to an actual database when they are accessible, or else, the energy utilization assessment would be underestimated or over-estimated. In this investigation, two procedures have been presented that one is according to Elman neural network based on advanced sea lion optimization algorithm and the other one is according to physical ideology, that is, energy plus, which is prediction equipment for predicting building energy utilization. It can be seen that both methods can be proper for energy utilization prediction. In addition, an analysis that is parametric is implemented for the reflected structure on energy plus for evaluating the impact of some variables like the occupation of the building profile and weather database on predicting.

Original languageEnglish
Article numbere7645
JournalConcurrency Computation Practice and Experience
Volume35
Issue number10
DOIs
StatePublished - 1 May 2023

Keywords

  • ASLOA-ENN
  • bio-inspired algorithms
  • building energy utilization prediction
  • building simulation
  • prediction

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