E-MPC: Edge-assisted Model Predictive Control
Lou, Yuan-Yao, Spencer, Jonathan, Kim, Kwang Taik, Chiang, Mung
–arXiv.org Artificial Intelligence
Model predictive control (MPC) has become the de facto standard action space for local planning and learning-based control in many continuous robotic control tasks, including autonomous driving. MPC solves a long-horizon cost optimization as a series of short-horizon optimizations based on a global planner-supplied reference path. The primary challenge in MPC, however, is that the computational budget for re-planning has a hard limit, which frequently inhibits exact optimization. Modern edge networks provide low-latency communication and heterogeneous properties that can be especially beneficial in this situation. We propose a novel framework for edge-assisted MPC (E-MPC) for path planning that exploits the heterogeneity of edge networks in three important ways: 1) varying computational capacity, 2) localized sensor information, and 3) localized observation histories. Theoretical analysis and extensive simulations are undertaken to demonstrate quantitatively the benefits of E-MPC in various scenarios, including maps, channel dynamics, and availability and density of edge nodes. The results confirm that E-MPC has the potential to reduce costs by a greater percentage than standard MPC does.
arXiv.org Artificial Intelligence
Oct-1-2024
- Country:
- North America > United States (0.14)
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- Research Report > New Finding (0.34)
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- Energy > Oil & Gas > Downstream (1.00)
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