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In-Sensor Computing for MEMS Sensors: Toward an Electromechanical Neural Network


Thesis topic details

General information

Organisation

The French Alternative Energies and Atomic Energy Commission (CEA) is a key player in research, development and innovation in four main areas :
• defence and security,
• nuclear energy (fission and fusion),
• technological research for industry,
• fundamental research in the physical sciences and life sciences.

Drawing on its widely acknowledged expertise, and thanks to its 16000 technicians, engineers, researchers and staff, the CEA actively participates in collaborative projects with a large number of academic and industrial partners.

The CEA is established in ten centers spread throughout France
  

Reference

SL-DRT-25-0432  

Direction

DRT

Thesis topic details

Category

Technological challenges

Thesis topics

In-Sensor Computing for MEMS Sensors: Toward an Electromechanical Neural Network

Contract

Thèse

Job description

The rise of machine learning models for processing sensor data has led to the development of Edge-AI, which aims to perform these data processing tasks locally, directly at the sensor level. This approach reduces the amount of data transmitted and eases the load on centralized computing centers, providing a solution to decrease the overall energy consumption of systems. In this context, the concept of in-sensor computing has emerged, integrating data acquisition and processing within the sensor itself. By leveraging the physical properties of sensors and alternative computing paradigms, such as reservoir computing and neuromorphic computing, in-sensor computing eliminates the energy-intensive steps of signal conversion and processing.

Applying this concept to MEMS sensors enables the processing of signals such as acceleration, strain, or acoustic signals, with a significant reduction, or even elimination, of traditional electronic components. This has rekindled interest in mechanical computing devices and their integration into MEMS sensors like microphones and accelerometers. Recent research explores innovative MEMS devices integrating recurrent neural networks or reservoir computing, showing promising potential for energy efficiency. However, these advancements are still limited to proof-of-concept demonstrations for simple classification tasks with a very low number of neurons.

Building on our expertise in MEMS-based computing, this doctoral work aims to push these concepts further by developing a MEMS device that integrates a reprogrammable neural network with learning capabilities. The objective is to design an intelligent sensor that combines detection and preprocessing on a single chip, optimized to operate with extremely low energy consumption, in the femtoJoule range per activation. This thesis will focus on the design, fabrication, and validation of this new device, targeting low-frequency signal processing applications in high-temperature environments, paving the way for a new generation of intelligent and autonomous sensors.

University / doctoral school

Ecole Doctorale de Physique de Grenoble (EdPHYS)
Université Grenoble Alpes

Thesis topic location

Site

Grenoble

Requester

Position start date

01/09/2025

Person to be contacted by the applicant

PILLONNET Gael gael.pillonnet@cea.fr
CEA
DRT/DCOS
Minatec Campus, 38054 Grenoble cedex 9, France
0438780215

Tutor / Responsible thesis director

PILLONET Gael gael.pillonnet@cea.fr
CEA
DRT/DCOS//LGECA
Minatec Campus, 38054 Grenoble cedex 9, France
0438780215

En savoir plus

https://www.linkedin.com/in/gaelpillonnet/