Vehicle mobility generates dynamic and complex patterns that are associated with our day-to-day activities in cities. To reveal the spatial-temporal complexity of such patterns, digital techniques, such as traffic-monitoring sensors, provide promising data-driven tools for city managers and urban planners. Although a large number of studies have been dedicated to investigating the sensing power of the traffic-monitoring sensors, there is still a lack of exploration of the resilient performance of sensor networks when multiple sensor failures occur. In this paper, we reveal the dynamic patterns of vehicle mobility in Cambridge, UK, and subsequently, explore the resilience of the sensor networks. The observability is adopted as the overall pe...
Improving the resilience of urban road networks suffering from various disruptions has been a centra...
Smart cities are nowadays equipped with pervasive networks of sensors that monitor traffic in real-t...
US Transportation Collection2020PDFTech ReportJin, LiFeng, ChenXie, QianXu, XuchuNew York University...
This thesis proposes a method to quantitatively measure the resilience of transportation systems usi...
Sensor data on traffic events have prompted a wide range of research issues, related with the so-cal...
Urban areas are seeing influx of population and therefore are experiencing increasing stress on the ...
We live in a world where demand for monitoring natural and artificial phenomena is growing. The prac...
Wireless sensor networks (WSN) employ self-powered sensing devices that are mutually interconnected ...
This thesis investigates the robustness and resilience of urban road networks (URNs) in the presence...
Nowadays, the effectiveness of any smart transportation management or control strategy would heavily...
Resilience in multimodal transportation systems can be impaired, resulting in temporary inefficiency...
This thesis explores ways to improve the self-organised urban traffic management system Organic Traf...
On-Road Sensor Networks (ORSNs) play an important role in capturing traffic flow data for predicting...
In a smart city, a large number of smart sensors are operating and creating a large amount of data f...
Road networks are critical to society as they support people's daily mobility, the freight industry,...
Improving the resilience of urban road networks suffering from various disruptions has been a centra...
Smart cities are nowadays equipped with pervasive networks of sensors that monitor traffic in real-t...
US Transportation Collection2020PDFTech ReportJin, LiFeng, ChenXie, QianXu, XuchuNew York University...
This thesis proposes a method to quantitatively measure the resilience of transportation systems usi...
Sensor data on traffic events have prompted a wide range of research issues, related with the so-cal...
Urban areas are seeing influx of population and therefore are experiencing increasing stress on the ...
We live in a world where demand for monitoring natural and artificial phenomena is growing. The prac...
Wireless sensor networks (WSN) employ self-powered sensing devices that are mutually interconnected ...
This thesis investigates the robustness and resilience of urban road networks (URNs) in the presence...
Nowadays, the effectiveness of any smart transportation management or control strategy would heavily...
Resilience in multimodal transportation systems can be impaired, resulting in temporary inefficiency...
This thesis explores ways to improve the self-organised urban traffic management system Organic Traf...
On-Road Sensor Networks (ORSNs) play an important role in capturing traffic flow data for predicting...
In a smart city, a large number of smart sensors are operating and creating a large amount of data f...
Road networks are critical to society as they support people's daily mobility, the freight industry,...
Improving the resilience of urban road networks suffering from various disruptions has been a centra...
Smart cities are nowadays equipped with pervasive networks of sensors that monitor traffic in real-t...
US Transportation Collection2020PDFTech ReportJin, LiFeng, ChenXie, QianXu, XuchuNew York University...