AI-in-the-Loop Sensing and Communication Joint Design for Edge Intelligence
Zhijie Cai, Xiaowen Cao, Xu Chen, Yuanhao Cui, Guangxu Zhu, Kaibin, Huang, Shuguang Cui

TL;DR
This paper introduces an AI-in-the-loop joint sensing and communication framework that optimizes resource use in edge intelligence, significantly reducing energy, sensing costs, and validation loss through adaptive control strategies.
Contribution
It presents a novel closed-loop control architecture that jointly optimizes sensing and communication parameters to improve system performance and model generalization in edge intelligence.
Findings
Reduces communication energy by up to 77%.
Lowers sensing costs by up to 52%.
Decreases validation loss by up to 58%.
Abstract
Recent breakthroughs in artificial intelligence (AI), wireless communications, and sensing technologies have accelerated the evolution of edge intelligence. However, conventional systems still grapple with issues such as low communication efficiency, redundant data acquisition, and poor model generalization. To overcome these challenges, we propose an innovative framework that enhances edge intelligence through AI-in-the-loop joint sensing and communication (JSAC). This framework features an AI-driven closed-loop control architecture that jointly optimizes system resources, thereby delivering superior system-level performance. A key contribution of our work is establishing an explicit relationship between validation loss and the system's tunable parameters. This insight enables dynamic reduction of the generalization error through AI-driven closed-loop control. Specifically, for sensing…
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Taxonomy
TopicsDistributed Sensor Networks and Detection Algorithms · Age of Information Optimization
