Yang Wang, Zhidong Li, Bin Liang
Data Analytics for Smart Infrastructure
Asset Management and Network Performance
Yang Wang, Zhidong Li, Bin Liang
Data Analytics for Smart Infrastructure
Asset Management and Network Performance
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This book presents, for the first time, data analytics for smart infrastructures. The authors draw on over a decade's experience working with industry and demonstrating the capabilities of data analytics for infrastructure and asset management.
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This book presents, for the first time, data analytics for smart infrastructures. The authors draw on over a decade's experience working with industry and demonstrating the capabilities of data analytics for infrastructure and asset management.
Produktdetails
- Produktdetails
- Verlag: CRC Press
- Seitenzahl: 204
- Erscheinungstermin: 31. Januar 2025
- Englisch
- Abmessung: 240mm x 161mm x 16mm
- Gewicht: 476g
- ISBN-13: 9781032754161
- ISBN-10: 1032754168
- Artikelnr.: 71637849
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- gpsr@libri.de
- Verlag: CRC Press
- Seitenzahl: 204
- Erscheinungstermin: 31. Januar 2025
- Englisch
- Abmessung: 240mm x 161mm x 16mm
- Gewicht: 476g
- ISBN-13: 9781032754161
- ISBN-10: 1032754168
- Artikelnr.: 71637849
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- gpsr@libri.de
Yang Wang is a professor at UTS Data Science Institute, leading advanced data analytics for smart infrastructure. Yang keeps actively engaged with industry partners and delivers innovative data-driven solutions for critical infrastructures including supply water and transport network, structural health monitoring, etc. Yang has received various research and innovation awards including Eureka Prize, iAwards, and AWA water awards. Associate Professor Zhidong Li at UTS is an award-winning expert in data science and machine learning, with a notable tenure at Data61, CSIRO, and a history of significant contributions to translate machine learning into industrial fields, including infrastructure, finance, environment, and agriculture. Ting Guo is a senior research fellow in the Data Science Institute at UTS. He has years of experience in collaborative research with industry partners in infrastructure failure prediction and proactive maintenance. His research interests include deep learning, graph learning and data mining. Bin Liang, a senior lecturer at UTS, is an accomplished data scientist with extensive industry and research experience. With publications in top venues and successful industry project deliverables, his expertise in data analytics, AI, and computer vision has driven significant academic, social, and economic advancements. Hongda Tian is a research and innovation focused Senior Lecturer at the UTS Data Science Institute. By leveraging the power of artificial intelligence, he has been focusing on research translation through working with government and industry partners and providing data-driven solutions to real-world problems. Professor Fang Chen is the Executive Director at the UTS Data Science Institute. She is an award-winning, internationally recognised leader in AI and data science, having won the Australian Museum Eureka Prize 2018 for Excellence in Data Science, NSW Premier's Prize of Science and Engineering, and the Australia and New Zealand "Women in AI" Award in Infrastructure in 2021. Her extensive expertise is centered around developing data-driven innovations that address complex challenges across large-scale networks in different industry sectors.
1. AI Empowering Infrastructure: the Road to Smartness 2. Asset anomaly
identification - damage detection in structural health monitoring 3.
Network performance evaluation - Delay Propagation on Large Scale Railway
Systems 4. Network Status Monitoring - Signal Aspect Detection for Railway
Networks 5. Underground Vessel: Water Pipe Failure Prediction 6. Long-Term
Prediction of Water Supply Networks Condition 7. Service Demand Prediction
- passenger flow 8. Prioritising Risk Assets for Infrastructure Maintenance
9. Adapting dynamic behavior evolution in structural health monitoring 10.
Smart Sensing and Preventative Maintenance
identification - damage detection in structural health monitoring 3.
Network performance evaluation - Delay Propagation on Large Scale Railway
Systems 4. Network Status Monitoring - Signal Aspect Detection for Railway
Networks 5. Underground Vessel: Water Pipe Failure Prediction 6. Long-Term
Prediction of Water Supply Networks Condition 7. Service Demand Prediction
- passenger flow 8. Prioritising Risk Assets for Infrastructure Maintenance
9. Adapting dynamic behavior evolution in structural health monitoring 10.
Smart Sensing and Preventative Maintenance
1. AI Empowering Infrastructure: the Road to Smartness 2. Asset anomaly
identification - damage detection in structural health monitoring 3.
Network performance evaluation - Delay Propagation on Large Scale Railway
Systems 4. Network Status Monitoring - Signal Aspect Detection for Railway
Networks 5. Underground Vessel: Water Pipe Failure Prediction 6. Long-Term
Prediction of Water Supply Networks Condition 7. Service Demand Prediction
- passenger flow 8. Prioritising Risk Assets for Infrastructure Maintenance
9. Adapting dynamic behavior evolution in structural health monitoring 10.
Smart Sensing and Preventative Maintenance
identification - damage detection in structural health monitoring 3.
Network performance evaluation - Delay Propagation on Large Scale Railway
Systems 4. Network Status Monitoring - Signal Aspect Detection for Railway
Networks 5. Underground Vessel: Water Pipe Failure Prediction 6. Long-Term
Prediction of Water Supply Networks Condition 7. Service Demand Prediction
- passenger flow 8. Prioritising Risk Assets for Infrastructure Maintenance
9. Adapting dynamic behavior evolution in structural health monitoring 10.
Smart Sensing and Preventative Maintenance







