Edge Learning with Unmanned Ground Vehicle: Joint Path, Energy and Sample Size Planning
Dan Liu, Shuai Wang, Zhigang Wen, Lei Cheng, Miaowen Wen, and, Yik-Chung Wu

TL;DR
This paper introduces a joint path, energy, and sample size planning framework for edge learning systems utilizing unmanned ground vehicles to improve data collection and machine learning performance in IoT environments.
Contribution
It proposes a novel integrated planning model and a tabu search algorithm to optimize UGV path, energy use, and sample sizes for edge learning, addressing data collection challenges.
Findings
Optimized schemes outperform fixed and full path EL schemes.
The proposed algorithm converges to the optimal solution.
Joint planning improves communication and learning efficiency.
Abstract
Edge learning (EL), which uses edge computing as a platform to execute machine learning algorithms, is able to fully exploit the massive sensing data generated by Internet of Things (IoT). However, due to the limited transmit power at IoT devices, collecting the sensing data in EL systems is a challenging task. To address this challenge, this paper proposes to integrate unmanned ground vehicle (UGV) with EL. With such a scheme, the UGV could improve the communication quality by approaching various IoT devices. However, different devices may transmit different data for different machine learning jobs and a fundamental question is how to jointly plan the UGV path, the devices' energy consumption, and the number of samples for different jobs? This paper further proposes a graph-based path planning model, a network energy consumption model and a sample size planning model that characterizes…
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Taxonomy
TopicsIoT and Edge/Fog Computing · UAV Applications and Optimization · Energy Efficient Wireless Sensor Networks
