25–28 Sept 2023
Imperial College London
Europe/London timezone

Neuromorphic Computing for On-Sensor Data Filtering on Smart-Pixels

25 Sept 2023, 17:10
5m
Blackett Laboratory, Lecture Theatre 1 (Imperial College London)

Blackett Laboratory, Lecture Theatre 1

Imperial College London

Blackett Laboratory
Lightning Talk Contributed Talks Contributed Talks

Speaker

Shruti R Kulkarni (Oak Ridge National Laboratory)

Description

This work describes the investigation of neuromorphic computing--based spiking neural network (SNN) models used to filter data from sensor electronics in the CMS experiments experiments conducted at the High Luminosity Large Hadron Collider (HL-LHC). We present our approach for developing a compact neuromorphic model that filters out the sensor data based on the particle's transverse momentum with the goal of reducing the amount of data being sent to the downstream electronics. The incoming charge waveforms are converted to streams of binary-valued events, which are then processed by the SNN. We present our insights on the various system design choices---from data encoding to optimal hyperparameters of the training algorithm---for an accurate and compact SNN optimized for hardware deployment. Our results show that an SNN trained with an evolutionary algorithm and an optimized set of hyperparameters obtains a signal efficiency of about 91%, which is similar to that of a Deep Neural Network, but with nearly half the number of parameters.

Author

Shruti R Kulkarni (Oak Ridge National Laboratory)

Co-authors

Presentation materials