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Applying Computational Fluid Dynamic Simulations and Predictive Models to Determine Control Schedules for Natural Ventilation

<p> This thesis investigates natural ventilation in building design, culminating in a final project to design optimal ventilation in an underground parking garage. The aim of this research is to explore a method combining computational fluid dynamic (CFD) simulations with neural networks as a means of performing a robust, yet computationally inexpensive simulation. The final project has the objective of simulating an annual operation schedule for louvers at the openings of the garage to achieve a desired airflow rate. Concepts in computational design and building science are explored to fully capture how the geometric domain of architectural modeling can be expressed in computational parameters to successfully perform effective simulations. It was important to make these workflows accessible to architects, so common software in the architecture industry was used. The results of this project support a coupled approach of using CFD simulations and neural networks to predict airflow parameters of interest. Validation CFD simulation results were compared to the results using the neural network and they were in good agreement. Ultimately, this project proves that using this approach is a relatively computationally inexpensive alternative to solely using CFD simulations, making design optimization possible. </p><p>

Identiferoai:union.ndltd.org:PROQUEST/oai:pqdtoai.proquest.com:10843192
Date17 October 2018
CreatorsHorin, Brett
PublisherIllinois Institute of Technology
Source SetsProQuest.com
LanguageEnglish
Detected LanguageEnglish
Typethesis

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