Energy-Efficient Autonomous Driving with Adaptive Perception and Robust Decision
Yuyang Xia, Zibo Liang, Liwei Deng, Yan Zhao, Han Su, Kai Zheng

TL;DR
This paper introduces EneAD, an energy-efficient autonomous driving framework that adaptively manages perception models and robust decision-making to significantly reduce energy consumption and extend driving range.
Contribution
The paper presents a novel adaptive perception and decision framework that dynamically tunes perception models and enhances robustness, improving energy efficiency and driving performance.
Findings
Perception consumption reduced by 1.9x to 3.5x
Driving range improved by 3.9% to 8.5%
Framework outperforms existing methods in energy efficiency
Abstract
Autonomous driving is an emerging technology that is expected to bring significant social, economic, and environmental benefits. However, these benefits come with rising energy consumption by computation engines, limiting the driving range of vehicles, especially electric ones. Perception computing is typically the most power-intensive component, as it relies on largescale deep learning models to extract environmental features. Recently, numerous studies have employed model compression techniques, such as sparsification, quantization, and distillation, to reduce computational consumption. However, these methods often result in either a substantial model size or a significant drop in perception accuracy compared to high-computation models. To address these challenges, we propose an energy-efficient autonomous driving framework, called EneAD. In the adaptive perception module, a…
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