<span>Big Data Analytics for Smart Urban Systems aims to introduce Big data solutions for urban sustainability smart applications, particularly for smart urban systems. It focuses on intelligent big data which takes the benefits of machine learning to analyse large and rapidly changing datasets in s
Big Data for Urban Sustainability
β Scribed by Stephen Jia Wang, Patrick Moriarty
- Publisher
- Springer International Publishing
- Year
- 2018
- Tongue
- English
- Leaves
- 169
- Edition
- 1st ed.
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
This book presents a practical framework for the application of big data, cloud, and pervasive and complex systems to sustainable solutions for urban environmental challenges. It covers the technologies, potential, and possible and impact of big data on energy efficiency and the urban environment.
The book first introduces key aspects of big data, cloud services, pervasive computing, and mobile technologies from a pragmatic design perspective, including sample open source firmware. Cloud services, mobile and embedded platforms, interfaces, operating system design methods, networking, and middleware are all considered. The authors then explore in detail the framework, design principles, architecture and key components of developing energy systems to support sustainable urban environments. The included case study provides a pathway to improve the eco-efficiency of urban transport, demonstrating how to design an energy efficient next generation urban navigation system by leveraging vast cloud data sets on user-behavior. Ultimately, this resource maps big dataβs pivotal intersection with rapid global urbanization along the path to a sustainable future.
β¦ Table of Contents
Front Matter ....Pages i-xvi
The Urgent Need for Advancing Urban Sustainability (Stephen Jia Wang, Patrick Moriarty)....Pages 1-21
Urban Health and Well-Being Challenges (Stephen Jia Wang, Patrick Moriarty)....Pages 23-43
The Potential for Big data for Urban Sustainability (Stephen Jia Wang, Patrick Moriarty)....Pages 45-63
Barriers to the Implementation of Big Data (Stephen Jia Wang, Patrick Moriarty)....Pages 65-80
Big Data for Sustainable Urban Transport (Stephen Jia Wang, Patrick Moriarty)....Pages 81-103
Big Data for Urban Energy Reductions (Stephen Jia Wang, Patrick Moriarty)....Pages 105-118
Big Data for Urban Health and Well-Being (Stephen Jia Wang, Patrick Moriarty)....Pages 119-140
Big Data for a Future World (Stephen Jia Wang, Patrick Moriarty)....Pages 141-155
Back Matter ....Pages 157-160
β¦ Subjects
Energy; Renewable and Green Energy; Sustainable Development; Software Engineering; Transportation Technology and Traffic Engineering
π SIMILAR VOLUMES
<p><span>This book aims to introduce big data solutions in urban sustainability applicationsβmainly smart transportation and healthcare systems. It focuses on machine learning techniques and data processing approaches which have the capacity to handle/process huge, live, and complex datasets in real
<span><p>This book provides insight for researchers and decision-makers on the application of data in the entrepreneurship and sustainable development sector. This book covers how Big Data for Industry 4.0 and Entrepreneurship are effective in resolving business, social, and economic problems.</p><p
This book, Big Data for a Sustainable Smart City, is an overview of the role of big data in the sustainability of a smart city. The book looks at the future trends and challenges in the use of big data, with discussions on big data and its implementation contextually elaborated, touching on several
<p><p></p><p>We are living at the dawn of what has been termed βthe fourth paradigm of science,β a scientific revolution that is marked by both the emergence of big data science and analytics, and by the increasing adoption of the underlying technologies in scientific and scholarly research practice
This book considers the use of spatial data infrastructure in both the study and practice of urban regeneration. Topics range from the development of spatial data infrastructure to its application to urban regeneration studies, so that readers can grasp the whole process of urban regeneration with t