Improving Commute Experience for Private Car Users via Blockchain-Enabled Multitask Learning

With deepening urbanization and Internet of Vehicles (IoV) applications, the number of private cars has been increasing in recent years. However, because the surging number of private cars is not compatible with limited road resources, private car users have had unsatisfactory commute experiences du...

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Veröffentlicht in:IEEE internet of things journal 2023-12, Vol.10 (24), p.21656-21669
Hauptverfasser: Yang, Jiali, Yang, Kehua, Xiao, Zhu, Jiang, Hongbo, Xu, Shenyuan, Dustdar, Schahram
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Sprache:eng
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Zusammenfassung:With deepening urbanization and Internet of Vehicles (IoV) applications, the number of private cars has been increasing in recent years. However, because the surging number of private cars is not compatible with limited road resources, private car users have had unsatisfactory commute experiences during their daily travel. In this work, we focus on improving private car users' commute experience based on an analysis of IoV trajectory data in a privacy-preserving way. Our idea is based on the following observations: 1) the commute experience of private car users is closely related to the departure time and the travel cost and 2) most travel costs are spent on urban hot zones. Motivated by these findings, we propose a novel blockchain-enabled model named Deep Improving Commute Experience (DeepICE) to improve private car users' commute experience by predicting when to depart and when to arrive. In this model, a blockchain with a consensus mechanism is developed to address private car user privacy concerns. In addition, we propose a multitask learning-enabled graph convolution network (GCN) method to capture the highly complex features and relations between two tasks, i.e., the departure time and travel cost, and then develop the model to predict these two tasks. The experimental results demonstrate the superior performance of our proposed model compared to existing approaches. Our model can be applied to efficiently enhance private car users' commute experience.
ISSN:2327-4662
2327-4662
DOI:10.1109/JIOT.2023.3317639