Intermittent Inference with Nonuniformly Compressed Multi-Exit Neural Network for Energy Harvesting Powered Devices

04/23/2020
by   Wu Yawen, et al.
0

This work aims to enable persistent, event-driven sensing and decision capabilities for energy-harvesting (EH)-powered devices by deploying lightweight DNNs onto EH-powered devices. However, harvested energy is usually weak and unpredictable and even lightweight DNNs take multiple power cycles to finish one inference. To eliminate the indefinite long wait to accumulate energy for one inference and to optimize the accuracy, we developed a power trace-aware and exit-guided network compression algorithm to compress and deploy multi-exit neural networks to EH-powered microcontrollers (MCUs) and select exits during execution according to available energy. The experimental results show superior accuracy and latency compared with state-of-the-art techniques.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/25/2020

Learning to Charge RF-Energy Harvesting Devices in WiFi Networks

In this paper, we consider a solar-powered Access Point (AP) that is tas...
research
08/24/2023

DiCA: A Hardware-Software Co-Design for Differential Checkpointing in Intermittently Powered Devices

Intermittently powered devices rely on opportunistic energy-harvesting t...
research
05/25/2023

SoundSieve: Seconds-Long Audio Event Recognition on Intermittently-Powered Systems

A fundamental problem of every intermittently-powered sensing system is ...
research
11/28/2021

Enabling Fast Deep Learning on Tiny Energy-Harvesting IoT Devices

Energy harvesting (EH) IoT devices that operate intermittently without b...
research
09/28/2018

Intelligence Beyond the Edge: Inference on Intermittent Embedded Systems

Energy-harvesting technology provides a promising platform for future Io...
research
05/05/2019

Zygarde: Time-Sensitive On-Device Deep Intelligence on Intermittently-Powered Systems

In this paper, we propose a time-, energy-, and accuracy-aware schedulin...
research
08/05/2021

Memory-Aware Partitioning of Machine Learning Applications for Optimal Energy Use in Batteryless Systems

Sensing systems powered by energy harvesting have traditionally been des...

Please sign up or login with your details

Forgot password? Click here to reset