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2024 | OriginalPaper | Buchkapitel

2. Recommendation System Using Spatial-Temporal Network for Vehicle Demand Prediction

verfasst von : Kishore Anthuvan Sahayaraj, G. Balamurugan

Erschienen in: Spatiotemporal Data Analytics and Modeling

Verlag: Springer Nature Singapore

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Abstract

Intelligent transportation and smart vehicle management research will be revolutionized by the introduction of spatiotemporal approaches. These approaches enable the analysis of object movement in time and space, prediction of traffic flow, optimization of transport routes, and understanding of driver and passenger behavior. The potential applications of spatiotemporal research extend to developing transportation-related games, IoT applications, and improving safety, pollution reduction, and vehicle demand. By leveraging spatiotemporal research, transportation professionals can gain a deeper understanding of complex transportation systems, device strategies for enhanced efficiency, emissions reduction, and accurate vehicle demand prediction. Additionally, spatiotemporal research can identify areas for improving public transportation and serve as a foundation for developing future systems. Its promise lies in boosting transportation efficiency, reducing environmental impact, and improving safety. Understanding human behavior and decision-making through spatiotemporal analysis offers insights for tailored infrastructure and services, addressing diverse needs like those of children, elderly, and disabled populations. Combining spatiotemporal data with demographic information aids in comprehending transportation equity issues, identifying service gaps, and driving improvement. Achieving sustainable transportation systems that cater to all members of society hinges on addressing these equity concerns. Ultimately, the utilization of spatiotemporal research for vehicle demand prediction has the power to transform the field, fostering efficient, equitable, and sustainable transportation systems.

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Metadaten
Titel
Recommendation System Using Spatial-Temporal Network for Vehicle Demand Prediction
verfasst von
Kishore Anthuvan Sahayaraj
G. Balamurugan
Copyright-Jahr
2024
Verlag
Springer Nature Singapore
DOI
https://doi.org/10.1007/978-981-99-9651-3_2

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