Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Ontology-Based Introspection in Support of Stream Reasoning

View through CrossRef
Building complex systems such as autonomous robots usually require the integration of a wide variety of components including high-level reasoning functionalities. One important challenge is integrating the information in a system by setting up the data flow between the components. This paper extends our earlier work on semantic matching with support for adaptive on-demand semantic information integration based on ontology-based introspection. We take two important standpoints. First, we consider streams of information, to handle the fact that information often becomes continually and incrementally available. Second, we explicitly represent the semantics of the components and the information that can be provided by them in an ontology. Based on the ontology our custom-made stream configuration planner automatically sets up the stream processing needed to generate the streams of information requested. Furthermore, subscribers are notified when properties of a stream changes, which allows them to adapt accordingly. Since the ontology represents both the systems information about the world and its internal stream processing many other powerful forms of introspection are also made possible. The proposed semantic matching functionality is part of the DyKnow stream reasoning framework and has been integrated in the Robot Operating System (ROS).
Title: Ontology-Based Introspection in Support of Stream Reasoning
Description:
Building complex systems such as autonomous robots usually require the integration of a wide variety of components including high-level reasoning functionalities.
One important challenge is integrating the information in a system by setting up the data flow between the components.
This paper extends our earlier work on semantic matching with support for adaptive on-demand semantic information integration based on ontology-based introspection.
We take two important standpoints.
First, we consider streams of information, to handle the fact that information often becomes continually and incrementally available.
Second, we explicitly represent the semantics of the components and the information that can be provided by them in an ontology.
Based on the ontology our custom-made stream configuration planner automatically sets up the stream processing needed to generate the streams of information requested.
Furthermore, subscribers are notified when properties of a stream changes, which allows them to adapt accordingly.
Since the ontology represents both the systems information about the world and its internal stream processing many other powerful forms of introspection are also made possible.
The proposed semantic matching functionality is part of the DyKnow stream reasoning framework and has been integrated in the Robot Operating System (ROS).

Related Results

Introspection
Introspection
Abstract This book is about introspection and its use in scientific theorising about the mind. It deals with two connected questions: What is introspection? Does int...
Development and Evaluation of an Adolescents' Depression Ontology for Analyzing Social Data
Development and Evaluation of an Adolescents' Depression Ontology for Analyzing Social Data
This study aims to develop and evaluate an ontology for adolescents' depression to be used for collecting and analyzing social data. The ontology was developed according to the &am...
Extracting and Merging Contextualized Ontology Modules
Extracting and Merging Contextualized Ontology Modules
Ontology module extraction, from a large ontology, leads to the generation of a specialized knowledge model that is pertinent to specific problems. Existing ontology module extract...
Approaching the Construction of Arguments in Postgraduate Education Programs
Approaching the Construction of Arguments in Postgraduate Education Programs
Constructing arguments, applying logical reasoning, and developing intellectual skills are fundamental to academic success in postgraduate education and qualitative research. The s...
Optimisation in Neurosymbolic Learning Systems
Optimisation in Neurosymbolic Learning Systems
In the last few years, Artificial Intelligence (AI) has reached the public consciousness through high-profile applications such as chatbots, image generators, speech synthesis and ...
Exploiting Modularity for Ontology Verification
Exploiting Modularity for Ontology Verification
Within knowledge representation, ontologies are logical theories that support software integration and decision support systems. Ontology verification is concerned with the relatio...
A concept analysis of abductive reasoning
A concept analysis of abductive reasoning
AbstractAimTo describe an analysis of the concept of abductive reasoning.BackgroundIn the discipline of nursing, abductive reasoning has received only philosophical attention and r...

Back to Top