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A Model-Driven Engineering Approach for ROS using Ontological Semantics

2016-01-15 16:53:37
Stefan Zander, Georg Heppner, Georg Neugschwandtner, Ramez Awad, Marc Essinger, Nadia Ahmed

Abstract

This paper presents a novel ontology-driven software engineering approach for the development of industrial robotics control software. It introduces the ReApp architecture that synthesizes model-driven engineering with semantic technologies to facilitate the development and reuse of ROS-based components and applications. In ReApp, we show how different ontological classification systems for hardware, software, and capabilities help developers in discovering suitable software components for their tasks and in applying them correctly. The proposed model-driven tooling enables developers to work at higher abstraction levels and fosters automatic code generation. It is underpinned by ontologies to minimize discontinuities in the development workflow, with an integrated development environment presenting a seamless interface to the user. First results show the viability and synergy of the selected approach when searching for or developing software with reuse in mind.

Abstract (translated)

URL

https://arxiv.org/abs/1601.03998

PDF

https://arxiv.org/pdf/1601.03998.pdf


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