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Application of Artificial Intelligence on Design Strategies to Optimize Urban Wind Energy

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Application of Artificial Intelligence on Design Strategies to Optimize Urban Wind Energy

Higgins, Stéphanie (2020) Application of Artificial Intelligence on Design Strategies to Optimize Urban Wind Energy. Masters thesis, Concordia University.

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Abstract

Maximizing urban wind energy capture constitutes a step towards self-sufficient buildings. Optimizing urban wind power requires knowledge of the environmental and building parameters modifying energy capture and tools for predicting urban wind behaviors. This thesis main objective is to build a database to develop artificial intelligence (AI) programs to evaluate different design strategies and optimize urban wind energy. The database includes experimental wind tunnel velocities and turbulence intensities for terrain roughness, channeling effect, typical building shapes and several city configurations for several turbine locations. Wind velocities and turbulence intensities measured at the street-level and rooftop turbines on rectangular, U-shaped, and L-shaped buildings are further investigated with literature CFD results. Through the different combinations of experimental results and literature, a total of over 150 cases are added to the database. A decisional flow chart is developed using the results database and served as a results summary and an aid for programming the artificial intelligence (AI) networks. The elaborated database is implemented in an expert system and an artificial neural network. The AI programs are tested with city configurations models and a real case study, René-Lévesque Boulevard in downtown Montreal. Comparing the testing set to the actual experimental values, the data expert system predicts the modification in wind velocities with 68% - 98%accuracy. The feedforward artificial neural network developed is slightly more accurate than the expert system, showing success rates from 76% to 99%. Thus, AI tools and the decisional flow chart approach may be used for a preliminary assessment of the different design strategies power capture in urban environment.

Divisions:Concordia University > Gina Cody School of Engineering and Computer Science > Building, Civil and Environmental Engineering
Item Type:Thesis (Masters)
Authors:Higgins, Stéphanie
Institution:Concordia University
Degree Name:M.A. Sc.
Program:Building Engineering
Date:4 December 2020
Thesis Supervisor(s):Theodore, Stathopoulos
ID Code:987833
Deposited By: STEPHANIE HIGGINS
Deposited On:23 Jun 2021 16:41
Last Modified:23 Jun 2021 16:41
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