Saved in:
Bibliographic Details
Main Authors: Duarte, Mariana M. Garcez, Nugroho, Dwi P. A., Tod, Georges, Bevernage, Evert, Moelans, Pieter, Tas, Emine, Zimanyi, Esteban, Sakr, Mahmoud, Zeuch, Steffen, Markl, Volker
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.20084
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866908674034761728
author Duarte, Mariana M. Garcez
Nugroho, Dwi P. A.
Tod, Georges
Bevernage, Evert
Moelans, Pieter
Tas, Emine
Zimanyi, Esteban
Sakr, Mahmoud
Zeuch, Steffen
Markl, Volker
author_facet Duarte, Mariana M. Garcez
Nugroho, Dwi P. A.
Tod, Georges
Bevernage, Evert
Moelans, Pieter
Tas, Emine
Zimanyi, Esteban
Sakr, Mahmoud
Zeuch, Steffen
Markl, Volker
contents The increasing use of Internet-of-Things (IoT) sensors in moving objects has resulted in vast amounts of spatiotemporal streaming data. To analyze this data in situ, real-time spatiotemporal processing is needed. However, current stream processing systems designed for IoT environments often lack spatiotemporal processing capabilities, and existing spatiotemporal libraries primarily focus on analyzing historical data. This gap makes performing real-time spatiotemporal analytics challenging. In this demonstration, we present NebulaMEOS, which combines MEOS (Mobility Engine Open Source), a spatiotemporal processing library, with NebulaStream, a scalable data management system for IoT applications. By integrating MEOS into NebulaStream, NebulaMEOS utilizes spatiotemporal functionalities to process and analyze streaming data in real-time. We demonstrate NebulaMEOS by querying data streamed from edge devices on trains by the Société Nationale des Chemins de fer Belges (SNCB). Visitors can experience demonstrations of geofencing and geospatial complex event processing, visualizing real-time train operations and environmental impacts.
format Preprint
id arxiv_https___arxiv_org_abs_2511_20084
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Mobility Stream Processing on NebulaStream and MEOS
Duarte, Mariana M. Garcez
Nugroho, Dwi P. A.
Tod, Georges
Bevernage, Evert
Moelans, Pieter
Tas, Emine
Zimanyi, Esteban
Sakr, Mahmoud
Zeuch, Steffen
Markl, Volker
Databases
The increasing use of Internet-of-Things (IoT) sensors in moving objects has resulted in vast amounts of spatiotemporal streaming data. To analyze this data in situ, real-time spatiotemporal processing is needed. However, current stream processing systems designed for IoT environments often lack spatiotemporal processing capabilities, and existing spatiotemporal libraries primarily focus on analyzing historical data. This gap makes performing real-time spatiotemporal analytics challenging. In this demonstration, we present NebulaMEOS, which combines MEOS (Mobility Engine Open Source), a spatiotemporal processing library, with NebulaStream, a scalable data management system for IoT applications. By integrating MEOS into NebulaStream, NebulaMEOS utilizes spatiotemporal functionalities to process and analyze streaming data in real-time. We demonstrate NebulaMEOS by querying data streamed from edge devices on trains by the Société Nationale des Chemins de fer Belges (SNCB). Visitors can experience demonstrations of geofencing and geospatial complex event processing, visualizing real-time train operations and environmental impacts.
title Mobility Stream Processing on NebulaStream and MEOS
topic Databases
url https://arxiv.org/abs/2511.20084