Full counting statistics for unconventional superconductor junctions
Tim Kokkeler, Alexander Golubov, F. Sebastian Bergeret, Yukio, Tanaka

TL;DR
This paper develops a full counting statistics theory for unconventional superconductor/normal metal junctions, revealing how surface Andreev bound states influence noise and conductance, aiding in identifying pairing symmetries.
Contribution
It introduces a novel theoretical framework for analyzing noise in unconventional superconductor junctions, incorporating thermal effects and surface bound states.
Findings
Negative differential Fano factor in dispersionless surface Andreev bound states.
Voltage-dependent noise features linked to surface Andreev bound state spectrum.
Distinct noise signatures for different pairing symmetries in unconventional superconductors.
Abstract
Noise and current measurements are key tools for studying mesoscopic systems, revealing insights beyond conductance alone. For instance, noise measurements show that transport carriers in conventional superconductors have charge 2e. The noise power also depends on junction type, distinguishing different transport processes. Existing theories focus primarily on zero temperature shot noise in tunnel junctions with conventional superconductors, where transport is carried by quasiparticles and Cooper pairs. Here we develop a full counting statistics theory for unconventional superconductor / normal metal junctions of different types, incorporating the effect of thermal noise on the differential Fano factor, the ratio of differential noise power and conductance. In these junctions there is a third type of transport carrier, surface Andreev bound states. Our study reveals that junctions with…
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Taxonomy
TopicsAdvanced Electrical Measurement Techniques · Distributed Sensor Networks and Detection Algorithms
