Dataset for the metamodeling of naturally ventilated Brazilian low-cost houses to assess thermal performance

Main Author: Favretto, Ana Paula
Other Authors: Grassi, Camila, Rossi, Michele Marta, Thomas, Jeffrey , Yang, Yifan, DeCarolis, Joseph, Cho, Soolyeon, Hill, David, Ranjithan, Ranji, Chvatal, Karin
Format: Dataset
Terbitan: Mendeley , 2019
Subjects:
Online Access: https:/data.mendeley.com/datasets/ckync9yvvr
ctrlnum 0.17632-ckync9yvvr.2
fullrecord <?xml version="1.0"?> <dc><creator>Favretto, Ana Paula</creator><title>Dataset for the metamodeling of naturally ventilated Brazilian low-cost houses to assess thermal performance</title><publisher>Mendeley</publisher><description>Research objective: This study aimed to develop metamodels to assess the thermal discomfort in naturally ventilated Brazilian low-cost houses during early design as a decision-making support framework, and for educational purposes. Method overview: The method encompassed a large number of simulations of the software EnergyPlus [EP] 8.1 using the Monte Carlo method. These simulations were used to develop a set of regression-based mathematical relationships between the inputs and the outputs. The Monte Carlo method was selected to help sample the many independent input variables, each with its own range of values, and form equally likely random combinations of input conditions for the energy simulation. The EnergyPlus outputs were post processed to assess the thermal comfort by means of the degree hours of discomfort by heat and by cold. Files description: The following data items were made available. (a) Parameter_Domains: Curitiba_parameterdomains.csv; Manaus_parameterdomains.csv and Sao_Paulo_parametersdomains.csv: CSV files created for each location. They contain a list of the 24 key parameters and random combinations of their values to create the input data for the 10,000 simulations. (b) Performance_Metrics: Curitiba_performancemetrics.csv; Manaus_performancemetrics.csv and Sao_Paulo_performancemetrics.csv: CSV files created for each location. They contain output values (outdoor and indoor discomfort by heat and by cold) for 10,000 simulations. (c) Sandbox: Sandbox.xlsx: Excel file for the application of the metamodels. It enables a quick and easy assessment of discomfort by heat and by cold for specific combinations of parameters, for each location. (d) Python_Codes: Python_Codes.zip: Compressed file consisting of the codes used to 1) run the simulations randomly combining values for each selected parameter within their specified ranges, and 2) to calculate the hours of discomfort by heat and by cold for each of the parameters&#x2019; combinations (10,000 simulations for each studied climate). (e) IDFs_Base: Curitiba_idfbase.idf; Manaus_idfbase.idf; Sao_Paulo_idfbase.idf : Input Data File (IDF) created for each location. They contain the description of all input data considered in an annual building performance simulation. </description><subject>Metamodeling</subject><subject>Thermal Comfort</subject><subject>Natural Ventilation</subject><subject>Building Envelope</subject><subject>Building Simulation</subject><subject>Shading</subject><subject>Application of Monte Carlo Method</subject><contributor>Grassi, Camila</contributor><contributor>Rossi, Michele Marta</contributor><contributor>Thomas, Jeffrey </contributor><contributor>Yang, Yifan</contributor><contributor>DeCarolis, Joseph</contributor><contributor>Cho, Soolyeon</contributor><contributor>Hill, David</contributor><contributor>Ranjithan, Ranji</contributor><contributor>Chvatal, Karin</contributor><type>Other:Dataset</type><identifier>10.17632/ckync9yvvr.2</identifier><rights>Creative Commons Attribution 4.0 International</rights><rights>http://creativecommons.org/licenses/by/4.0</rights><relation>https:/data.mendeley.com/datasets/ckync9yvvr</relation><date>2019-09-10T20:03:58Z</date><recordID>0.17632-ckync9yvvr.2</recordID></dc>
format Other:Dataset
Other
author Favretto, Ana Paula
author2 Grassi, Camila
Rossi, Michele Marta
Thomas, Jeffrey
Yang, Yifan
DeCarolis, Joseph
Cho, Soolyeon
Hill, David
Ranjithan, Ranji
Chvatal, Karin
title Dataset for the metamodeling of naturally ventilated Brazilian low-cost houses to assess thermal performance
publisher Mendeley
publishDate 2019
topic Metamodeling
Thermal Comfort
Natural Ventilation
Building Envelope
Building Simulation
Shading
Application of Monte Carlo Method
url https:/data.mendeley.com/datasets/ckync9yvvr
contents Research objective: This study aimed to develop metamodels to assess the thermal discomfort in naturally ventilated Brazilian low-cost houses during early design as a decision-making support framework, and for educational purposes. Method overview: The method encompassed a large number of simulations of the software EnergyPlus [EP] 8.1 using the Monte Carlo method. These simulations were used to develop a set of regression-based mathematical relationships between the inputs and the outputs. The Monte Carlo method was selected to help sample the many independent input variables, each with its own range of values, and form equally likely random combinations of input conditions for the energy simulation. The EnergyPlus outputs were post processed to assess the thermal comfort by means of the degree hours of discomfort by heat and by cold. Files description: The following data items were made available. (a) Parameter_Domains: Curitiba_parameterdomains.csv; Manaus_parameterdomains.csv and Sao_Paulo_parametersdomains.csv: CSV files created for each location. They contain a list of the 24 key parameters and random combinations of their values to create the input data for the 10,000 simulations. (b) Performance_Metrics: Curitiba_performancemetrics.csv; Manaus_performancemetrics.csv and Sao_Paulo_performancemetrics.csv: CSV files created for each location. They contain output values (outdoor and indoor discomfort by heat and by cold) for 10,000 simulations. (c) Sandbox: Sandbox.xlsx: Excel file for the application of the metamodels. It enables a quick and easy assessment of discomfort by heat and by cold for specific combinations of parameters, for each location. (d) Python_Codes: Python_Codes.zip: Compressed file consisting of the codes used to 1) run the simulations randomly combining values for each selected parameter within their specified ranges, and 2) to calculate the hours of discomfort by heat and by cold for each of the parameters’ combinations (10,000 simulations for each studied climate). (e) IDFs_Base: Curitiba_idfbase.idf; Manaus_idfbase.idf; Sao_Paulo_idfbase.idf : Input Data File (IDF) created for each location. They contain the description of all input data considered in an annual building performance simulation.
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institution Universitas Islam Indragiri
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first_indexed 2020-04-08T08:30:01Z
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