FPGA-Based Real-Time Waveform Classification
- URL: http://arxiv.org/abs/2511.05479v1
- Date: Fri, 07 Nov 2025 18:44:50 GMT
- Title: FPGA-Based Real-Time Waveform Classification
- Authors: Alperen Aksoy, Ilja Bekman, Chimezie Eguzo, Christian Grewing, Andre Zambanini,
- Abstract summary: We consider look-up-table-based neural-networks and address challenges of binary multi-layer neural networks' layout, footprint, performance and training.<n>We show that these structures can be trained using a genetic algorithm and achieve the inference latency compatible with dead-time free processing online.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: For self-triggered readout of SiPM sum signals, a waveform classification can aid a simple threshold trigger to reliably extract calorimetric particle hit information online at an early stage and thus reduce the volume of transmitted data. Typically, the ADC data acquisition is based on FPGAs for edge data processing. In this study, we consider look-up-table-based neural-networks and address challenges of binary multi-layer neural networks' layout, footprint, performance and training. We show that these structures can be trained using a genetic algorithm and achieve the inference latency compatible with dead-time free processing online.
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