Summary
Smart devices constantly monitor the environment and analyse the resulting stream of information, waiting for wake-up events ranging from a skipped heartbeat in a pacemaker to a verbal command in an intelligent speaker. In electronic devices, such constant workload requires reliable power and leads to significant battery drainage. The aim of INFOPASS is to answer the need for zero standby power, always-on sensing and processing, by inventing novel components based on architected elastic microstructures. We will focus on passive speech recognition: Vibrating structures that respond with large amplitudes only when excited by a particular spoken word. The components will be based on artificial neural networks of mechanical resonators -- benefiting from their ultra-low power dissipation and bypassing the inefficient transduction between acoustic and electric signals. The goal of passive speech recognition is challenging due to the required device complexity. Conventional micromechanical systems consist of a few resonators, while neural networks require thousands of nodes, pushing the limits of design and fabrication technologies by orders of magnitude. The proposed work builds on my invention of a two-step structure design method: Advanced responses are engineered by first encoding the desired response in an effective mass-spring model, which is then translated into a structural geometry. Compared to full-wave simulations, mass-spring models speed-up the optimisation process by more than a thousand-fold, allowing us to 'train' the structures on realistic speech corpuses. The invention of devices that passively perform complex information processing tasks will lead to mobile devices with longer battery life, always-on Internet-Of-Things devices that consume no standby power, and battery-less health monitoring sensors ? potentially impacting billions of devices.
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Web resources: | https://cordis.europa.eu/project/id/101040117 |
Start date: | 01-06-2022 |
End date: | 31-05-2027 |
Total budget - Public funding: | 1 686 875,00 Euro - 1 686 875,00 Euro |
Cordis data
Original description
Smart devices constantly monitor the environment and analyse the resulting stream of information, waiting for wake-up events ranging from a skipped heartbeat in a pacemaker to a verbal command in an intelligent speaker. In electronic devices, such constant workload requires reliable power and leads to significant battery drainage. The aim of INFOPASS is to answer the need for zero standby power, always-on sensing and processing, by inventing novel components based on architected elastic microstructures. We will focus on passive speech recognition: Vibrating structures that respond with large amplitudes only when excited by a particular spoken word. The components will be based on artificial neural networks of mechanical resonators -- benefiting from their ultra-low power dissipation and bypassing the inefficient transduction between acoustic and electric signals. The goal of passive speech recognition is challenging due to the required device complexity. Conventional micromechanical systems consist of a few resonators, while neural networks require thousands of nodes, pushing the limits of design and fabrication technologies by orders of magnitude. The proposed work builds on my invention of a two-step structure design method: Advanced responses are engineered by first encoding the desired response in an effective mass-spring model, which is then translated into a structural geometry. Compared to full-wave simulations, mass-spring models speed-up the optimisation process by more than a thousand-fold, allowing us to 'train' the structures on realistic speech corpuses. The invention of devices that passively perform complex information processing tasks will lead to mobile devices with longer battery life, always-on Internet-Of-Things devices that consume no standby power, and battery-less health monitoring sensors ? potentially impacting billions of devices.Status
SIGNEDCall topic
ERC-2021-STGUpdate Date
09-02-2023
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