Title:    Raw data supporting the results presented in the article "A Zone-Level, Building Energy Optimisation Combining an Artificial Neural Network, a Genetic Algorithm, and Model Predictive Control"


Citation
Reynolds J, Rezgui Y, Kwan ASK, et al.  (2018). Raw data supporting the results presented in the article "A Zone-Level, Building Energy Optimisation Combining an Artificial Neural Network, a Genetic Algorithm, and Model Predictive Control"Cardiff Universityhttps://doi.org/10.17035/d.2018.0047045867



Access RightsCreative Commons Attribution 4.0 International

Access Method:  https://doi.org/10.17035/d.2018.0047045867 will take you to the repository page for this dataset, where you will be able to download the data or find further access information, as appropriate.


Dataset Details

PublisherCardiff University

Date (year) of data becoming publicly available2018

Data format.idf, .xlsx, .csv

Software RequiredEnergyPlus V8.3 - Open Access software publicly available at https://energyplus.net/ is required to run the model. Any text editor can be used to simply view the model.

Estimated total storage size of datasetLess than 100 megabytes

Number of Files In Dataset30

DOI 10.17035/d.2018.0047045867

DOI URLhttp://doi.org/10.17035/d.2018.0047045867

Related URLhttps://doi.org/10.1016/j.energy.2018.03.113


Description

The dataset includes an EnergyPlus energy model of a small office building based in Cardiff, UK. From this energy model, several simulations were run with varying heating set point temperatures to produce a training dataset for an artificial neural network. The training dataset is comprised of weather, occupancy, time and date information to predict the indoor temperature of all 6 occupied zones as well as the heating energy consumption of each.

The dataset also contains the results of an optimisation strategy designed to minimise the energy consumption of the building. This shows the baseline energy consumption, energy consumption due to day ahead optimisation, energy consumption due to model predictive control. This is broken down for 5 test days, each zone, and under a standard and time of use tariff.

Research results based upon these data are published at https://doi.org/10.1016/j.energy.2018.03.113


Keywords

Energy minimizationmachine learningmetaheuristic algorithms

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Last updated on 2024-19-04 at 09:20