ARTÍCULO
TITULO

Method of Dynamic Identification of Traffic Flow Conditions According to the Floating Cars Speed Vector

Andrey Kosolapov    

Resumen

The article considers different approaches to justify the possibility of using actual navigation information obtained from public transportation buses in order to identify a new energy criterion, i.e. speed vector of ?floating? cars. Under certain circumstances, this approach would provide both a dynamic evaluation of urban traffic flows and a dynamic redistribution of traffic flows across the network with a course of time, which is a precondition for autonomous vehicle control.

 Artículos similares

       
 
Jianfeng Wang, Gaowei Jia, Zheng Guo and Zhongxi Hou    
Heterogeneous multi-UAV systems offer distinct advantages through their complementary and coordinated use of their diverse capabilities. However, this complexity poses significant challenges in task planning, particularly in considering temporal constrai... ver más
Revista: Aerospace

 
Daniele Granata, Alberto Savino and Alex Zanotti    
The present study aimed to investigate the capability of mid-fidelity aerodynamic solvers in performing a preliminary evaluation of the static and dynamic stability derivatives of aircraft configurations in their design phase. In this work, the mid-fidel... ver más
Revista: Aerospace

 
Yixiao Li, Fang Zhang and Jinhui Jiang    
Dynamic load localization and identification technology is very important in the structural design and optimization of aircraft. This paper proposes a non-global traversal method (NTM) for the fast positioning and recognition of dynamic loads on continuo... ver más
Revista: Aerospace

 
Jun Dai, Chunfeng Zhang, Songlin Liu, Xiangyang Hao, Zongbin Ren and Yunzhu Lv    
Autonomous navigation and localization are the foundations of unmanned intelligent systems, therefore, continuous, stable, and reliable position services in unknown environments are especially important for autonomous navigation and localization. Aiming ... ver más
Revista: Applied Sciences

 
Chenchen Jiao, Xiaoxia Wan, Houpu Li and Shaofeng Bian