A parametric building energy cost optimization tool based on a genetic algorithm /

Bibliographic Details
Main Author: Tan, Xiaowei, 1973-
Other Authors: Phillips, Timothy D. (Thesis advisor)
Format: Thesis eBook
Language:English
Published: [College Station, Tex.] : [Texas A&M University], [2007]
Subjects:
Online Access:Link to OAK Trust copy
Description
Abstract:This record of study summarizes the work accomplished during the internship at the Energy Systems Laboratory of the Texas Engineering Experiment Station. The internship project was to develop a tool to optimize the building parameters so that the overall building energy cost is minimized. A metaheuristic: genetic algorithm was identified as the solution algorithm and was implemented in the problem under study. Through two case studies, the impacts of the three genetic algorithm parameters, namely population size, crossover and mutation rates, on the algorithm's overall performance are also studied through statistical tests. Through these statistical tests, the optimum combination of above the mentioned parameters is also identified and applied. Finally, a performance analysis based on the case studies show that the tool achieved satisfactory results.
Item Description:"Major Subject: Engineering"
Title from author supplied metadata (automated record created on Nov. 2, 2007.)
Vita.
Abstract.
Electronic resource.
Format:Mode of access: World Wide Web.
System requirements: World Wide Web access and Adobe Acrobat Reader.
Bibliography:Includes bibliographical references.