Ultra-High-Energy Neutrino Astronomy through Radio Detection and Deep Learning
- Colloquium

Ultra-High-Energy Neutrino Astronomy through Radio Detection and Deep Learning
Detecting neutrinos at ultra-high energies (UHE, _E_ > 10¹⁷ eV) would mark one of the major breakthroughs in astroparticle physics of the 21st century, opening a new observational window to the most violent processes in our universe. However, the extremely small flux and cross-section of cosmic neutrinos make their detection extraordinarily challenging and demand the instrumentation of enormous target volumes.
In this colloquium, I will discuss how sparse arrays of radio detector stations, deployed in the polar ice sheets, can achieve unprecedented sensitivity to UHE cosmic neutrinos. I will explain the detection
principle and will introduce the Radio Neutrino Observatory Greenland (RNO-G)—currently under construction—and outline the plans for the next-generation IceCube-Gen2 observatory at the South Pole.
I will also present how my new research group at TU Dortmund aims to make significant contributions to this international effort. A particular focus will be on leveraging recent advances in deep learning and differentiable programming to enhance the performance of future radio detectors. In particular, real-time AI-based triggering may double the neutrino detection rate, while end-to-end detector optimization
through differentiable programming promises substantial improvements in reconstruction accuracy and overall sensitivity.
![Band structure of 2D semimetal based on HgTe quantum well. Experimental points are obtained from the analysis of the cyclotron resonance in the quasi-classical approximation. Solid lines are predictions of the kp theory with no free parameters. Splitting of the conduction (e1,2) and valence (h1) band is due to the quantum confinement. [J. Gospodaric, AP, et al., PRB 104, 115307].](/storages/physik/_processed_/b/5/csm_Kolloquium_Pimenov_0fa7761647.png)





