Adaptive stochastic resonance based on output autocorrelations
Patrick Krauss, Claus Metzner, Konstantin Tziridis, Holger Schulze

TL;DR
This paper introduces an adaptive stochastic resonance method using output autocorrelations to optimize weak signal detection without prior knowledge of the signal, applicable across various systems including biological and technological contexts.
Contribution
It demonstrates that output autocorrelation can replace traditional measures for optimizing stochastic resonance in unknown signal scenarios, supported by analytical proof and numerical tests.
Findings
Output autocorrelation closely matches mutual information in identifying optimal noise levels.
The approach is effective across different systems and input signals.
Potential applications in neural systems and future technical devices.
Abstract
Successful detection of weak signals is a universal challenge for numerous technical and biological systems and crucially limits signal transduction and transmission. Stochastic resonance (SR) has been identified to have the potential to tackle this problem, namely to enable non-linear systems to detect small, otherwise sub-threshold signals by means of added non-zero noise. This has been demonstrated within a wide range of systems in physical, technological and biological contexts. Based on its ubiquitous importance, numerous theoretical and technical approaches aim at an optimization of signal transduction based on SR. Several quantities like mutual information, signal-to-noise-ratio, or the cross-correlation between input stimulus and resulting detector response have been used to determine optimal noise intensities for SR. The fundamental shortcoming with all these measures is that…
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Taxonomy
Topicsstochastic dynamics and bifurcation · Ecosystem dynamics and resilience · Diffusion and Search Dynamics
