Knowledge Agora



Similar Articles

Title Fake it till you make it: Synthetic data for emerging carsharing programs
ID_Doc 76463
Authors Albrecht, T; Keller, R; Rebholz, D; Röglinger, M
Title Fake it till you make it: Synthetic data for emerging carsharing programs
Year 2024
Published
Abstract Carsharing is an integral part of the transformation toward flexible and sustainable mobility. New carsharing programs are entering the market to challenge large operators by offering innovative services. This study investigates the use of generative machine learning models for creating synthetic data to support carsharing decision-making when data access is limited. To this end, it explores the evaluation, selection, and implementation of leading-edge methods, such as generative adversarial networks (GANs) and variational autoencoders (VAEs), to generate synthetic tabular transaction data of carsharing trips. The study analyzes usage data of an emerging carsharing program that is expanding its services to include free-floating electric vehicles (EVs). The results show that augmenting real training data with synthetic samples improves predictive modeling of upcoming trips by up to 4.63%. These results support carsharing researchers and practitioners in generating and leveraging synthetic mobility data to develop solutions to realworld decision support problems in carsharing.
PDF https://doi.org/10.1016/j.trd.2024.104067
No similar articles found.
Scroll