Sensor Co-design for smartpixels
October 8, 2025·,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,·
0 min read
Danush shekar
Ben weiss
Morris swartz
Corrinne mills
Jennet dickinson
Lindsey gray
David jiang
Mohammad abrar wadud
Daniel abadjiev
Anthony badea
Douglas berry
Alec cauper
Arghya ranjan das
Giuseppe di guglielmo
Karri folan dipetrillo
Farah fahim
Rachel kovach fuentes
Abhijith gandrakota
James hirschauer
Eliza howard
Shiqi kuang
Carissa kumar
Ron lipton
Mia liu
Petar maksimovic
Nick manganelli
Mark s neubauer
Aidan nicholas
Emily pan
Benjamin parpillon
Jannicke pearkes
Gauri pradhan
Shruti r kulkarni
Ricardo silvestre
Chinar syal
Nhan tran
Amit trivedi
Keith ulmer
Manuel blanco valentin
Dahai wen
Jieun yoo
Eric you
Aaron young
Abstract
Pixel tracking detectors at upcoming collider experiments will see unprecedented charged-particle densities. Real-time data reduction on the detector will enable higher granularity and faster readout, possibly enabling the use of the pixel detector in the first level of the trigger for a hadron collider. This data reduction can be accomplished with a neural network (NN) in the readout chip bonded with the sensor that recognizes and rejects tracks with low transverse momentum (p_T) based on the geometrical shape of the charge deposition (“cluster”). To design a viable detector for deployment at an experiment, the dependence of the NN as a function of the sensor geometry, external magnetic field, and irradiation must be understood. In this paper, we present first studies of the efficiency and data reduction for planar pixel sensors exploring these parameters. A smaller sensor pitch in the bending direction improves the p_T discrimination, but a larger pitch can be partially compensated with detector depth. An external magnetic field parallel to the sensor plane induces Lorentz drift of the electron-hole pairs produced by the charged particle, broadening the cluster and improving the network performance. The absence of the external field diminishes the background rejection compared to the baseline by O(10%). Any accumulated radiation damage also changes the cluster shape, reducing the signal efficiency compared to the baseline by ~30-60%, but nearly all of the performance can be recovered through retraining of the network and updating the weights. Finally, the impact of noise was investigated, and retraining the network on noise-injected datasets was found to maintain performance within 6% of the baseline network trained and evaluated on noiseless data.
Type
Publication
arXiv:2510.06588 [physics.ins-det; hep-ex]
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors
Authors