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Main Authors: Deperle, Geoffrey, Fricker, Christine, Jacquet, Philippe, Rigonat, Alessia, Mans, Bernard
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.24821
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author Deperle, Geoffrey
Fricker, Christine
Jacquet, Philippe
Rigonat, Alessia
Mans, Bernard
author_facet Deperle, Geoffrey
Fricker, Christine
Jacquet, Philippe
Rigonat, Alessia
Mans, Bernard
contents We study the asymptotic behaviour of the distance to the first available parking slot in a recursive Manhattan street network endowed with a hyperfractal intensity structure, where slot-release events occur according to Poisson processes along the streets. We establish, by analysing the associated self-similar harmonic sums via Mellin-transform asymptotics, a power-law decay of the expected distance as the total intensity grows, with exponent equal to the inverse of the hyperfractal dimension. In particular, the scaling exponent depends only on the large-scale geometry of the network. We further prove that this exponent is robust under random multiplicative modulations of the street intensities: mild stochastic heterogeneity affects only the multiplicative constant. Similar scaling behaviour holds for the variance, the number of turns before parking, and for a jump-over variant of the search strategy.
format Preprint
id arxiv_https___arxiv_org_abs_2604_24821
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Asymptotics of Parking Search in Hyperfractal Networks
Deperle, Geoffrey
Fricker, Christine
Jacquet, Philippe
Rigonat, Alessia
Mans, Bernard
Probability
Information Theory
We study the asymptotic behaviour of the distance to the first available parking slot in a recursive Manhattan street network endowed with a hyperfractal intensity structure, where slot-release events occur according to Poisson processes along the streets. We establish, by analysing the associated self-similar harmonic sums via Mellin-transform asymptotics, a power-law decay of the expected distance as the total intensity grows, with exponent equal to the inverse of the hyperfractal dimension. In particular, the scaling exponent depends only on the large-scale geometry of the network. We further prove that this exponent is robust under random multiplicative modulations of the street intensities: mild stochastic heterogeneity affects only the multiplicative constant. Similar scaling behaviour holds for the variance, the number of turns before parking, and for a jump-over variant of the search strategy.
title Asymptotics of Parking Search in Hyperfractal Networks
topic Probability
Information Theory
url https://arxiv.org/abs/2604.24821