Atjaunināt sīkdatņu piekrišanu

Social Sensing and Big Data Computing for Disaster Management [Hardback]

Edited by , Edited by , Edited by (George Mason University)
  • Formāts: Hardback, 192 pages, height x width: 246x174 mm, weight: 526 g
  • Izdošanas datums: 23-Nov-2020
  • Izdevniecība: Routledge
  • ISBN-10: 036761765X
  • ISBN-13: 9780367617653
  • Hardback
  • Cena: 191,26 €
  • Grāmatu piegādes laiks ir 3-4 nedēļas, ja grāmata ir uz vietas izdevniecības noliktavā. Ja izdevējam nepieciešams publicēt jaunu tirāžu, grāmatas piegāde var aizkavēties.
  • Daudzums:
  • Ielikt grozā
  • Piegādes laiks - 4-6 nedēļas
  • Pievienot vēlmju sarakstam
  • Formāts: Hardback, 192 pages, height x width: 246x174 mm, weight: 526 g
  • Izdošanas datums: 23-Nov-2020
  • Izdevniecība: Routledge
  • ISBN-10: 036761765X
  • ISBN-13: 9780367617653

Social Sensing and Big Data Computing for Disaster Management

captures recent advancements in leveraging social sensing and big data computing for supporting disaster management. Specifically, analysed within this book are some of the promises and pitfalls of social sensing data for disaster relevant information extraction, impact area assessment, population mapping, occurrence patterns, geographical disparities in social media use, and inclusion in larger decision support systems.

Traditional data collection methods such as remote sensing and field surveying often fail to offer timely information during or immediately following disaster events. Social sensing enables all citizens to become part of a large sensor network which is low cost, more comprehensive, and always broadcasting situational awareness information. However, data collected with social sensing is often massive, heterogeneous, noisy, and unreliable in some aspects. It comes in continuous streams, and often lacks geospatial reference information. Together, these issues represent a grand challenge toward fully leveraging social sensing for emergency management decision making under extreme duress. Meanwhile, big data computing methods and technologies such as high-performance computing, deep learning, and multi-source data fusion become critical components of using social sensing to understand the impact of and response to the disaster events in a timely fashion.

This book was originally published as a special issue of the International Journal of Digital Earth.

Citation Information vii
Notes on Contributors ix
1 Introduction to social sensing and big data computing for disaster management
1(7)
Zhenlong Li
Qunying Huang
Christopher T. Emrich
2 Identifying disaster-related tweets and their semantic, spatial and temporal context using deep learning, natural language processing and spatial analysis: a case study of Hurricane Irma
8(25)
Muhammed Ali Sit
Caglar Koylu
Ibrahim Demir
3 Deep learning for real-time social media text classification for situation awareness - using Hurricanes Sandy, Harvey, and Irma as case studies
33(18)
Manzhu Yu
Qunying Huang
Han Qin
Chris Scheele
Chaowei Yang
4 A visual-textual fused approach to automated tagging of flood-related tweets during a flood event
51(17)
Xiao Huang
Cuizhen Wang
Zhenlong Li
Huan Ning
5 Rapid estimation of an earthquake impact area using a spatial logistic growth model based on social media data
68(20)
Yandong Wang
Shisi Ruan
Teng Wang
Mengling Qiao
6 Mapping near-real-time power outages from social media
88(15)
Huina Mao
Gautam Thakur
Kevin Sparks
Jibonananda Sanyal
Budhendra Bhaduri
7 Social and geographical disparities in Twitter use during Hurricane Harvey
103(19)
Lei Zou
Nina S. N. Lam
Shayan Shams
Heng Cai
Michelle A. Meyer
Seungwon Yang KisungLee
Seung-Jong Park
Margaret A. Reams
8 Population distribution modelling at fine spatio-temporal scale based on mobile phone data
122(22)
Petr Kubicek
Milan Konecny
Zdenik Stachon
Jie Shen
Lukdl Herman
Tomds Reznik
Karel Stanik
Radim Stampach
Simon Leitgeb
9 Discovering the relationship of disasters from big scholar and social media news datasets
144(23)
Liang Zheng
Fei Wang
Xiaocui Zheng
Binbin Liu
10 A cyberGIS-enabled multi-criteria spatial decision support system: A case study on flood emergency management
167(18)
Zhe Zhang
Hao Hu
Dandong Yin
Shakil Kashem
Ruopu Li
Heng Cai
Dylan Perkins
Shaowen Wang
Index 185
Zhenlong Li is Associate Professor in the Department of Geography at the University of South Carolina, USA where he established and leads the Geoinformation and Big Data Research Laboratory. His primary research focuses on geospatial big data analytics, spatiotemporal analysis/modelling, and CyberGIS/GeoAI. By synthesizing advanced computing technologies, geospatial methods, and spatiotemporal principles, his research aims to advance knowledge discovery and decision making to support domain applications including disaster management, climate change, human mobilities, and public health.

Qunying Huang is Associate Professor in the Department of Geography at the University of WisconsinMadison, USA. Her fields of expertise include spatial computing, spatial data mining, and spatial data analytics. Dr. Huangs research bridges the gap between computer and information science (CIScience) and GIScience by generating new computational algorithms and methods to make sense of complex big spatial datasets obtained from both the physical sensing (e.g. remote sensing) and social (e.g. social media) sensing networks. The problem domains of her research are related to natural hazards and human mobility.

Christopher T. Emrich is Endowed Associate Professor of Environmental Science and Public Administration within the School of Public Administration and a founding member of the newly formed National Center for Integrated Coastal Research at the University of Central Florida (UCF Coastal), USA. His research/practical service includes applying geospatial technologies to emergency management planning and practice, long-term disaster recovery, and the intersection of social vulnerability and community resilience in the face of catastrophe.