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Autori principali: Pinero, JA Torrecilla, Martínez, JM Ceballos, Sáez, A Cuartero, Caballero, P Plaza, López, A Cruces
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2512.01795
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author Pinero, JA Torrecilla
Martínez, JM Ceballos
Sáez, A Cuartero
Caballero, P Plaza
López, A Cruces
author_facet Pinero, JA Torrecilla
Martínez, JM Ceballos
Sáez, A Cuartero
Caballero, P Plaza
López, A Cruces
contents Voronoi tessellations are standard in spatial planning for assigning service areas based on Euclidean proximity, underpinning regulatory frameworks like the proximity principle in waste management. However, in regions with complex topography, Euclidean distance poorly approximates functional accessibility, causing misallocations that undermine efficiency and equity. This paper develops a probabilistic framework to quantify misallocation risk by modeling travel distances as random scaling of Euclidean distances and deriving incorrect assignment probability as a function of local Voronoi geometry. Using plant-municipality observations (n=383) in Extremadura, Spain (41,635 km2), we demonstrate that the Log-Normal distribution provides best relative fit among alternatives (K-S statistic=0.110). Validation reveals 15.4% of municipalities are misallocated, consistent with the theoretical prediction interval (52-65 municipalities at 95% confidence). Our framework achieves 95% agreement with complex spatial models at O(n) complexity. Poor absolute fit of global distributions (p-values<0.01) reflects diverse topography (elevation 200-2,400m), motivating spatial stratification. Sensitivity analysis validates the fitted dispersion parameter (s=0.093) for predicting observed misallocation. We provide a calibration protocol requiring only 30-100 pilot samples per zone, enabling rapid risk assessment without full network analysis. This establishes the first probabilistic framework for Voronoi misallocation risk with practical guidelines emphasizing spatial heterogeneity and context-dependent calibration.
format Preprint
id arxiv_https___arxiv_org_abs_2512_01795
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle The Hidden Cost of Straight Lines: Quantifying Misallocation Risk in Voronoi-based Service Area Models
Pinero, JA Torrecilla
Martínez, JM Ceballos
Sáez, A Cuartero
Caballero, P Plaza
López, A Cruces
Physics and Society
Computational Geometry
Voronoi tessellations are standard in spatial planning for assigning service areas based on Euclidean proximity, underpinning regulatory frameworks like the proximity principle in waste management. However, in regions with complex topography, Euclidean distance poorly approximates functional accessibility, causing misallocations that undermine efficiency and equity. This paper develops a probabilistic framework to quantify misallocation risk by modeling travel distances as random scaling of Euclidean distances and deriving incorrect assignment probability as a function of local Voronoi geometry. Using plant-municipality observations (n=383) in Extremadura, Spain (41,635 km2), we demonstrate that the Log-Normal distribution provides best relative fit among alternatives (K-S statistic=0.110). Validation reveals 15.4% of municipalities are misallocated, consistent with the theoretical prediction interval (52-65 municipalities at 95% confidence). Our framework achieves 95% agreement with complex spatial models at O(n) complexity. Poor absolute fit of global distributions (p-values<0.01) reflects diverse topography (elevation 200-2,400m), motivating spatial stratification. Sensitivity analysis validates the fitted dispersion parameter (s=0.093) for predicting observed misallocation. We provide a calibration protocol requiring only 30-100 pilot samples per zone, enabling rapid risk assessment without full network analysis. This establishes the first probabilistic framework for Voronoi misallocation risk with practical guidelines emphasizing spatial heterogeneity and context-dependent calibration.
title The Hidden Cost of Straight Lines: Quantifying Misallocation Risk in Voronoi-based Service Area Models
topic Physics and Society
Computational Geometry
url https://arxiv.org/abs/2512.01795