Send Less, Save More: Energy-Efficiency Benchmark of Embedded CNN Inference vs. Data Transmission in IoTOpen Access

Benjamin Karic, Nina Herrmann, Jan Stenkamp, Paula Scharf, Fabian Gieseke, Angela Schwering

Research article in digital collection | Preprint

Abstract

The integration of the Internet of Things (IoT) and Artificial Intelligence offers significant opportunities to enhance our ability to monitor and address ecological changes. As environmental challenges become increasingly pressing, the need for effective remote monitoring solutions is more critical than ever. A major challenge in designing IoT applications for environmental monitoring - particularly those involving image data - is to create energy-efficient IoT devices capable of long-term operation in remote areas with limited power availability. Advancements in the field of Tiny Machine Learning allow the use of Convolutional Neural Networks (CNNs) on resource-constrained, battery-operated microcontrollers. Since data transfer is energy-intensive, performing inference directly on microcontrollers to reduce the message size can extend the operational lifespan of IoT nodes. This work evaluates the use of common Low Power Wide Area Networks and compressed CNNs trained on domain specific datasets on an ESP32-S3. Our experiments demonstrate, among other things, that executing CNN inference on-device and transmitting only the results reduces the overall energy consumption by a factor of up to five compared to sending raw image data. These findings advocate the development of IoT applications with reduced carbon footprint and capable of operating autonomously in environmental monitoring scenarios by incorporating EmbeddedML.

Details about the publication

Name of the repositoryarXiv:2510.24829
Article number:2510.24829
Version2
StatusPublished
Release year2025 (28/10/2025)
Link to the full texthttps://arxiv.org/abs/2510.24829
KeywordsIoT, Tiny AI, edge computing

Authors from the University of Münster

Gieseke, Fabian
Herrmann, Nina
Karic, Benjamin
Schwering, Angela
Stenkamp, Jan

Projects the publication originates from

Duration: 01/01/2023 - 31/12/2025
Funded by: Federal Ministry for the Environment, Climate Action, Nature Conservation and Nuclear Safety
Type of project: Participation in other joint projects