Litcius/Paper detail

Toward Reference Architectures: A Cloud-Agnostic Data Analytics Platform Empowering Autonomous Systems

Attila Csaba Marosi, Márk Emődi, Attila Farkas, Róbert Lovas, Richárd Beregi, Gianfranco Pedone, Balázs Németh, Péter Gáspár

2022IEEE Access16 citationsDOIOpen Access PDF

Abstract

This work introduces a scalable, cloud-agnostic and fault-tolerant data analytics platform for state-of-the-art autonomous systems that is built from open-source, reusable building blocks. As the baseline for further new reference architectures, it represents an architecture blueprint for processing, enriching and analyzing various feeds of structured and non-structured input data from advanced Internet-of-Things (IoT) based use cases. The platform builds on industry best practices, leverages on solid open-source components in a reusable fashion, and is based on our experience gathered from numerous IoT and Big Data research projects. The platform is currently used in the framework of the National Laboratory for Autonomous Systems in Hungary (abbreviated as ARNL). The platform is demonstrated through selected use cases from ARNL including the areas of smart/autonomous production systems (collaborative robotic assembly) and autonomous vehicles (mobile robots with smart vehicle control). Finally, we validate the platform through the evaluation of its streaming ingestion capabilities.

Topics & Concepts

Computer scienceCloud computingScalabilityAnalyticsOpen platformBig dataArchitectureReference architectureSoftware engineeringEmbedded systemData scienceDatabaseOperating systemSoftware architectureSoftwareVisual artsArtCloud Computing and Resource ManagementIoT and Edge/Fog ComputingGraph Theory and Algorithms
Toward Reference Architectures: A Cloud-Agnostic Data Analytics Platform Empowering Autonomous Systems | Litcius