A Low Complexity Radioisotope Identification System Using An Integrated Multichannel Analyzer And Embedded Neural Network

2019 IEEE INTERNATIONAL SYMPOSIUM ON CIRCUITS AND SYSTEMS (ISCAS)(2019)

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摘要
A standalone radiation detection and identification system is designed and tested which quantizes gamma ray energies with a scintillator, photomultiplier tube, and a custom multichannel analyzer chip to construct a gamma ray energy histogram. The histogram is used as the input to a fast, low memory, versatile neural network that runs in software on a microcontroller and identifies in real time which radioisotopes are present in the radiation source. The neural network accurately identifies the radioisotopes for which it has been trained, running in under 91.4 ms, consuming less than 6.2 kB of memory, and expending 274 mu J of energy each time it is executed.
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关键词
Radiation detection, Gamma ray spectroscopy, Radioisotope identification, Multichannel analyzer, Neural network
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