Data Mining and Machine Learning in Building Energy Analysis Data Mining and Machine Learning in Building Energy Analysis

Data Mining and Machine Learning in Building Energy Analysis

    • ¥21,800
    • ¥21,800

Publisher Description

The energy consumption of a building has, in recent years, become a determining factor during its design and construction. With carbon footprints being a growing issue, it is important that buildings be optimized for energy conservation and CO2 reduction. This book therefore presents AI models and optimization techniques related to this application.

The authors start with a review of recent models for the prediction of building energy consumption: engineering methods, statistical methods, artificial intelligence methods, ANNs and SVMs in particular. The book then focuses on SVMs, by first applying them to building energy consumption, then presenting the principles and various extensions, and SVR. The authors then move on to RDP, which they use to determine building energy faults through simulation experiments before presenting SVR model reduction methods and the benefits of parallel computing. The book then closes by presenting some of the current research and advancements in the field.

GENRE
Computers & Internet
RELEASED
2016
January 5
LANGUAGE
EN
English
LENGTH
186
Pages
PUBLISHER
Wiley
SELLER
John Wiley & Sons, Inc.
SIZE
4.7
MB
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