Comfort Control in Buildings Comfort Control in Buildings
Advances in Industrial Control

Comfort Control in Buildings

    • 87,99 €
    • 87,99 €

Publisher Description

The aim of this book is to research comfort control inside buildings, and how this can be achieved through low energy consumption. It presents a comprehensive exploration of the design, development and implementation of several advanced control systems that maintain users' comfort (thermal and indoor air quality) whilst minimizing energy consumption. The book includes a detailed account of the latest cutting edge developments in this area, and presents several control systems based on Model Predictive Control approaches. Real-life examples are provided, and the book is supplemented by illustrations, tables, all of which facilitate understanding of the text.

Energy consumption in buildings (residential and non-residential) represents almost the half of the total world energy consumption, and they are also responsible for approximately 35% of CO2 emissions. For these reasons, the reduction of energy consumption associated with the construction and use of buildings, and the increase of energy efficiency in their climatic refurbishment are frequently studied topics in academia and industry. As the productivity of users is directly related to their comfort, a middle ground needs to be found between comfort of users and energy efficiency. In order to achieve this, it is necessary to develop innovation and technology which can provide comfortable environments with minimum energy consumption. This book is intended for researchers interested in control engineering, energy and bioclimatic buildings, and for architects and process control engineers. It is also accessible to postgraduate students embarking on a career in this area, particularly those studying architecture.

GENRE
Business & Personal Finance
RELEASED
2014
30 June
LANGUAGE
EN
English
LENGTH
261
Pages
PUBLISHER
Springer London
SIZE
11.2
MB

Other Books in This Series

Practical Control of Electric Machines Practical Control of Electric Machines
2020
Integral and Inverse Reinforcement Learning for Optimal Control Systems and Games Integral and Inverse Reinforcement Learning for Optimal Control Systems and Games
2024
Process Control for Pumps and Compressors Process Control for Pumps and Compressors
2024
Control of Autonomous Aerial Vehicles Control of Autonomous Aerial Vehicles
2023
Reinforcement Learning Reinforcement Learning
2023
Control of Variable-Geometry Vehicle Suspensions Control of Variable-Geometry Vehicle Suspensions
2023