1 research outputs found
Label-free timing analysis of modularized nuclear detectors with physics-constrained deep learning
Pulse timing is an important topic in nuclear instrumentation, with
far-reaching applications from high energy physics to radiation imaging. While
high-speed analog-to-digital converters become more and more developed and
accessible, their potential uses and merits in nuclear detector signal
processing are still uncertain, partially due to associated timing algorithms
which are not fully understood and utilized. In this paper, we propose a novel
method based on deep learning for timing analysis of modularized nuclear
detectors without explicit needs of labelling event data. By taking advantage
of the inner time correlation of individual detectors, a label-free loss
function with a specially designed regularizer is formed to supervise the
training of neural networks towards a meaningful and accurate mapping function.
We mathematically demonstrate the existence of the optimal function desired by
the method, and give a systematic algorithm for training and calibration of the
model. The proposed method is validated on two experimental datasets. In the
toy experiment, the neural network model achieves the single-channel time
resolution of 8.8 ps and exhibits robustness against concept drift in the
dataset. In the electromagnetic calorimeter experiment, several neural network
models (FC, CNN and LSTM) are tested to show their conformance to the
underlying physical constraint and to judge their performance against
traditional methods. In total, the proposed method works well in either ideal
or noisy experimental condition and recovers the time information from waveform
samples successfully and precisely.Comment: 25 pages, 10 figure