Spatiotemporal Clustering of Parking Lots at the City Level for Efficiently Sharing Occupancy Forecasting Models

Author:

Mufida Miratul Khusna12ORCID,Ait El Cadi Abdessamad1ORCID,Delot Thierry1,Trépanier Martin3ORCID,Zekri Dorsaf14ORCID

Affiliation:

1. Laboratoire d’Automatique, de Mecanique et d’Informatique Industrielles et Humaines (LAMIH)-UMR CNRS 8201, Universite Polytechnique Hauts de France (UPHF) Mont Houy, 59313 Valenciennes, France

2. State Polytechnique of Batam, Batam 29461, Kepulauan Riau, Indonesia

3. CIRRELT/Polytechnique Montréal, Department of Mathematics and Industrial Engineering, P.O. Box 6079, Station Centre-Ville, Montréal, QC H3C 3A7, Canada

4. ReDCAD Laboratory, University of Sfax, B.P. 1173, Sfax 3038, Tunisia

Abstract

This study aims to address the challenge of developing accurate and efficient parking occupancy forecasting models at the city level for autonomous vehicles. Although deep learning techniques have been successfully employed to develop such models for individual parking lots, it is a resource-intensive process that requires significant amounts of time and data for each parking lot. To overcome this challenge, we propose a novel two-step clustering technique that groups parking lots based on their spatiotemporal patterns. By identifying the relevant spatial and temporal characteristics of each parking lot (parking profile) and grouping them accordingly, our approach allows for the development of accurate occupancy forecasting models for a set of parking lots, thereby reducing computational costs and improving model transferability. Our models were built and evaluated using real-time parking data. The obtained correlation rates of 86% for the spatial dimension, 96% for the temporal one, and 92% for both demonstrate the effectiveness of the proposed strategy in reducing model deployment costs while improving model applicability and transfer learning across parking lots.

Funder

Indonesian Ministry of Education, Culture, Research, and Technology

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

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