Energy-Efficient Neuromorphic Architectures for Nuclear Radiation Detection Applications

Sensors (Basel). 2024 Mar 27;24(7):2144. doi: 10.3390/s24072144.

Abstract

A comprehensive analysis and simulation of two memristor-based neuromorphic architectures for nuclear radiation detection is presented. Both scalable architectures retrofit a locally competitive algorithm to solve overcomplete sparse approximation problems by harnessing memristor crossbar execution of vector-matrix multiplications. The proposed systems demonstrate excellent accuracy and throughput while consuming minimal energy for radionuclide detection. To ensure that the simulation results of our proposed hardware are realistic, the memristor parameters are chosen from our own fabricated memristor devices. Based on these results, we conclude that memristor-based computing is the preeminent technology for a radiation detection platform.

Keywords: memristor arrays; neuromorphic computing; radioisotope classification; radionuclide detection; source localization.