Published April 10, 2023 | Version v1
Conference paper Open

Energy-efficient Edge Approximation for Connected Vehicular Services

  • 1. Delft University of Technology

Description

Connected vehicular services depend heavily on communication as they frequently transmit data and AI models/weights within the vehicular ecosystem. Energy efficiency in vehicles is crucial to keep up with the fast-growing demand for vehicular data processing and communication. To tackle this rising challenge, we explore approximation and edge AI techniques for achieving energy efficiency for vehicular services. Focusing on data-intensive vehicular services, we present an experimental case study on the high-definition (HD) map using the model partition approach. Our study compares the AI model energy consumption using multiple approximation ratios over embedded edge devices. Based on experimental insights, we further discuss an envisioned approximate Edge AI pipeline for developing and deploying energy-efficient vehicular services.

Files

Publication_EE_CISS.pdf

Files (3.1 MB)

Name Size Download all
md5:014e3d16281c0632359fb85d771c7168
3.1 MB Preview Download

Additional details

Funding

APROPOS – Approximate Computing for Power and Energy Optimisation 956090
European Commission