The Triggerless Data Acquisition System of the XENONnT Experiment
E. Aprile, J. Aalbers, K. Abe, F. Agostini, S. Ahmed Maouloud, L., Althueser, B. Andrieu, E. Angelino, J. R. Angevaare, V. C. Antochi, D., Ant\'on Martin, F. Arneodo, L. Baudis, A. L. Baxter, L. Bellagamba, R., Biondi, A. Bismark, E. J. Brookes, A. Brown, S. Bruenner, G. Bruno

TL;DR
The paper presents the design, implementation, and successful operation of a triggerless, high-rate data acquisition system for the XENONnT experiment, enabling efficient detection of rare particle events with high livetime.
Contribution
It introduces a novel triggerless DAQ system for XENONnT, integrating multiple subsystems with commercial hardware and open-source software for continuous, high-rate data collection.
Findings
Operates at readout rates exceeding 500 MB/s
Achieves over 99% livetime during normal operation
Collected over 2 PB of data during commissioning and science runs
Abstract
The XENONnT detector uses the latest and largest liquid xenon-based time projection chamber (TPC) operated by the XENON Collaboration, aimed at detecting Weakly Interacting Massive Particles and conducting other rare event searches. The XENONnT data acquisition (DAQ) system constitutes an upgraded and expanded version of the XENON1T DAQ system. For its operation, it relies predominantly on commercially available hardware accompanied by open-source and custom-developed software. The three constituent subsystems of the XENONnT detector, the TPC (main detector), muon veto, and the newly introduced neutron veto, are integrated into a single DAQ, and can be operated both independently and as a unified system. In total, the DAQ digitizes the signals of 698 photomultiplier tubes (PMTs), of which 253 from the top PMT array of the TPC are digitized twice, at and gain. The…
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