Optimal threshold resetting in collective diffusive search
Arup Biswas, Satya N Majumdar, and Arnab Pal

TL;DR
This paper investigates threshold resetting in diffusive search processes, demonstrating how optimal tuning of the threshold can significantly reduce search times and outperform traditional reset strategies.
Contribution
It introduces and analyzes threshold resetting as an event-driven optimization method for multiple diffusive searchers, revealing optimal parameters and performance benefits.
Findings
Optimal threshold tuning reduces mean first-passage time.
Existence of a critical population size for outperforming no-reset dynamics.
Non-monotonic dependence of search time on number of searchers.
Abstract
Stochastic resetting has attracted significant attention in recent years due to its wide-ranging applications across physics, biology, and search processes. In most existing studies, however, resetting events are governed by an external timer and remain decoupled from the system's intrinsic dynamics. In a recent Letter by Biswas et al, we introduced threshold resetting (TR) as an alternative, event-driven optimization strategy for target search problems. Under TR, the entire process is reset whenever any searcher reaches a prescribed threshold, thereby coupling the resetting mechanism directly to the internal dynamics. In this work, we study TR-enabled search by non-interacting diffusive searchers in a one-dimensional box , with the target at the origin and the threshold at . By optimally tuning the scaled threshold distance , the mean first-passage time can be…
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