项目名称: |
Large network multi-level control for CAV and Smart Infrastructure: AI-based fog-cloud collaboration |
摘要: |
The vast expanse of prospective CAV traffic networks is expected to exponentially increase the information availability and complexity of inter-agent interactions. In such an environment, a single system is inadequate to make decisions for all the agents individually, and therefore, multilevel system decomposition is needed. Further, due to the large amount of generated information that is redundant and therefore irrelevant to the specific decisions, the overall effectiveness and efficiency of the decision processors may be compromised. Thus, it is essential to design the subsystems that are capable of automatically identifying relevant data to make operational decisions based on the tasks and goals. To address this issue, the proposed research proposes a framework to decompose large transportation networks using a Fog-Cloud collaboration up to larger transportation networks with minimal compromises being made in real-time decision making. In effect, the multi-scale architecture of Fog-Cloud collaboration causes separation of the tasks based on their respective scales and decision levels, decomposes the large network, and decentralizes the computation. This research will address regional decision tasks (which require low latency) and network decision tasks (which require high computational capacity). By assigning regional decision tasks to the fog layer and network decision tasks to the cloud layer, we anticipate that systemic efficiency can be improved. |
状态: |
Active |
资金: |
300,000($150KCCAT, $150K Cost Share) |
资助组织: |
Office of the Assistant Secretary for Research and Technology<==>Center for Connected and Automated Transportation |
项目负责人: |
Tucker-Thomas, Dawn;Bezzina, Debra |
执行机构: |
Purdue University, Lyles School of Civil Engineering |
开始时间: |
20210101 |
预计完成日期: |
20211221 |
主题领域: |
Vehicles and Equipment |