Optimizing Alternative Routes Retrieval in an Agent-based Transportation Management System

Author(s):  
Alexios Lazanas ◽  
George Megalokonomos
Complexity ◽  
2021 ◽  
Vol 2021 ◽  
pp. 1-11
Author(s):  
Zhi-guang Jiang ◽  
Xiao-tian Shi

The intelligent transportation system under the big data environment is the development direction of the future transportation system. It effectively integrates advanced information technology, data communication transmission technology, electronic sensing technology, control technology, and computer technology and applies them to the entire ground transportation management system to establish a real-time, accurate, and efficient comprehensive transportation management system that works on a large scale and in all directions. Intelligent video analysis is an important part of smart transportation. In order to improve the accuracy and time efficiency of video retrieval schemes and recognition schemes, this article firstly proposes a segmentation and key frame extraction method for video behavior recognition, using a multi-time scale dual-stream network to extract video features, improving the efficiency and efficiency of video behavior detection. On this basis, an improved algorithm for vehicle detection based on Faster R-CNN is proposed, and the Faster R-CNN network feature extraction layer is improved by using the principle of residual network, and a hole convolution is added to the network to filter out the redundant features of high-resolution video images to improve the problem of vehicle missed detection in the original algorithm. The experimental results show that the key frame extraction technology combined with the optimized Faster R-CNN algorithm model greatly improves the accuracy of detection and reduces the leakage. The detection rate is satisfactory.


Author(s):  
Carlos M. Toledo ◽  
Omar Chiotti ◽  
María R. Galli

This chapter presents an agent-based architecture for integrating organizational knowledge repositories and business processes orchestrated by a workflow management system. This architecture proactively provides relevant knowledge to workflow tasks considering their context, and stores the information generated by its execution for future requirements. It describes components of the architecture, models a multi-agent system that enables the integration, presents a strategy to annotate and retrieval knowledge of non-structured information sources, and defines a new workflow pattern to be used in knowledge intensive tasks in order to make possible the knowledge provision. This architecture allows workers to count, in a proactive way, with all necessary information for the task executions without suspending their activities to retrieve information scattered in the organization. It reduces the wasted time in manual knowledge searches included in mostly knowledge management approaches.


Author(s):  
Constanţa-Nicoleta Bodea ◽  
Stancu Stelian ◽  
Radu-Ioan Mogos

The chapter proposes an e-Learning solution for the entrepreneurship education, based on several simulation modules integrated into a classical learning management system. The originality of the approach is that the solution is domain independent and applied advanced IT technologies, such as agent-based simulations and extended graphical support. Using this e-learning solution, the students can learn how to choose characteristics/aspects for particular type of business and how important is each of them according specific criteria; how to set realistic values for different characteristics/aspects of the business, how a business scenario can be changed in order to fit better to the business context (business reality), modeled through by the scenario pattern and how to assess/evaluate business scenarios.


Author(s):  
H.V.V. Priyadarshana ◽  
K.T.M. U Hemapala ◽  
W.D.A. S Wijayapala ◽  
V. Saravanan ◽  
M.A. Kalhan S. Boralessa

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