Publication | Open Access
Graph-based software knowledge: Storage and semantic querying of domain models for run-time adaptation
12
Citations
18
References
2016
Year
Unknown Venue
Software MaintenanceArtificial IntelligenceEngineeringRobotic AgentIntelligent RoboticsSoftware EngineeringCognitive RoboticsGraph DatabaseIntelligent SystemsSemantic WebSoftware AnalysisData ScienceGraph-based Software KnowledgeKnowledge EngineeringModel-based Software DevelopmentData IntegrationRobot LearningRun-time AdaptationDomain ModelsComputer ScienceSoftware DesignDomain AnalysisSoftware DevelopmentKnowledge-based EngineeringKnowledge ModelingProgram AnalysisKnowledge Intensive ExerciseAutomationDomain-specific ModelingRoboticsDomain ModelSystem SoftwareData Modeling
Software development for robots is a knowledge intensive exercise. To capture this knowledge explicitly and formally in the form of various domain models, roboticists have recently employed model-driven engineering (MDE) approaches. However, these models are merely seen as a way to support humans during the robot's software design process. We argue that the robots themselves should be first-class consumers of this knowledge to autonomously adapt their software to the various and changing run-time requirements induced, for instance, by the robot's tasks or environment. Motivated by knowledge-enabled approaches, we address this problem by employing a graph-based knowledge representation that allows us not only to persistently store domain models, but also to formulate powerful queries for the sake of run time adaptation. We have evaluated our approach in an integrated, real-world system using the neo4j graph database and we report some lessons learned. Further, we show that the graph database imposes only little overhead on the system's overall performance.
| Year | Citations | |
|---|---|---|
Page 1
Page 1