2019
DOI: 10.48550/arxiv.1907.09454
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A Fog Computing Framework for Autonomous Driving Assist: Architecture, Experiments, and Challenges

Abstract: Autonomous driving is expected to provide a range of far-reaching economic, environmental and safety benefits. In this study, we propose a fog computing based framework to assist autonomous driving. Our framework relies on overhead views from cameras and data streams from vehicle sensors to create a network of distributed digital twins, called an edge twin, on fog machines. The edge twin will be continuously updated with the locations of both autonomous and human-piloted vehicles on the road segments. The vehi… Show more

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“…As a result, defense and optimization strategies are retrieved for the physical system to form a self-healing grid. By combining with edge computing technology, Maheswaran et al [7] introduce a distributed DT network deployed at the edge machine where multiple AI models are hosted to solve different application problems, which enables the autonomous vehicle assistance system with low-latency and multiple applications. In the field of medical health, as a future development direction, [8] also mentions that as a further development of current medical simulation such as monitoring of macro-physical indicators and the prevention of dominant diseases, a complete DT based human body can be realized to simulate medication and to monitor the body reaction, which is a powerful tool to promote drug research, epidemic treatment and disease prediction, etc.…”
Section: B Simulation and Predictionmentioning
confidence: 99%
“…As a result, defense and optimization strategies are retrieved for the physical system to form a self-healing grid. By combining with edge computing technology, Maheswaran et al [7] introduce a distributed DT network deployed at the edge machine where multiple AI models are hosted to solve different application problems, which enables the autonomous vehicle assistance system with low-latency and multiple applications. In the field of medical health, as a future development direction, [8] also mentions that as a further development of current medical simulation such as monitoring of macro-physical indicators and the prevention of dominant diseases, a complete DT based human body can be realized to simulate medication and to monitor the body reaction, which is a powerful tool to promote drug research, epidemic treatment and disease prediction, etc.…”
Section: B Simulation and Predictionmentioning
confidence: 99%