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dc.contributor.authorAl-Moadhen, Ahmed Abdulhadien
dc.contributor.authorPackianather, Michaelen
dc.contributor.authorSetchi, Rossitzaen
dc.contributor.authorQiu, Renxien
dc.date.accessioned2018-11-19T13:52:34Z
dc.date.available2018-11-19T13:52:34Z
dc.date.issued2016-01-01
dc.identifier.citationAl-Moadhen AA, Packianather M, Setchi R, Qiu R (2016) 'Robot task planning in deterministic and probabilistic conditions using semantic knowledge base', International Journal of Knowledge and Systems Science, 7 (1), pp.56-77.en
dc.identifier.issn1947-8208
dc.identifier.doi10.4018/IJKSS.2016010104
dc.identifier.urihttp://hdl.handle.net/10547/623003
dc.description.abstractA new method is proposed to increase the reliability of generating symbolic plans by extending the Semantic-Knowledge Based (SKB) plan generation to take into account the amount of information and uncertainty related to existing objects, their types and properties, as well as their relationships with each other. This approach constructs plans by depending on probabilistic values which are derived from learning statistical relational models such as Markov Logic Networks (MLN). An MLN module is established for probabilistic learning and inference together with semantic information to provide a basis for plausible learning and reasoning services in support of robot task-planning. The MLN module is constructed by using an algorithm to transform the knowledge stored in SKB to types, predicates and formulas which represent the main building block for this module. Following this, the semantic domain knowledge is used to derive implicit expectations of world states and the effects of the action which is nominated for insertion into the task plan. The expectations are matched with MLN output.
dc.language.isoenen
dc.publisherIGI Globalen
dc.relation.urlhttps://www.igi-global.com/gateway/article/142840en
dc.rightsWhite - archiving not formally supported
dc.subjectservice robotsen
dc.subjectsemantic-knowledge baseden
dc.subjectrobot task planningen
dc.subjectH671 Roboticsen
dc.titleRobot task planning in deterministic and probabilistic conditions using semantic knowledge baseen
dc.typeArticleen
dc.identifier.eissn1947-8216
dc.contributor.departmentCardiff Universityen
dc.contributor.departmentUniversity of Bedfordshireen
dc.identifier.journalInternational Journal of Knowledge and Systems Scienceen
dc.date.updated2018-11-19T13:49:55Z
dc.description.noteas pre April 2016, file not required - passing metadata only
html.description.abstractA new method is proposed to increase the reliability of generating symbolic plans by extending the Semantic-Knowledge Based (SKB) plan generation to take into account the amount of information and uncertainty related to existing objects, their types and properties, as well as their relationships with each other. This approach constructs plans by depending on probabilistic values which are derived from learning statistical relational models such as Markov Logic Networks (MLN). An MLN module is established for probabilistic learning and inference together with semantic information to provide a basis for plausible learning and reasoning services in support of robot task-planning. The MLN module is constructed by using an algorithm to transform the knowledge stored in SKB to types, predicates and formulas which represent the main building block for this module. Following this, the semantic domain knowledge is used to derive implicit expectations of world states and the effects of the action which is nominated for insertion into the task plan. The expectations are matched with MLN output.


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