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Improving the efficiency of robot task planning by automatically integrating its planner and common-sense knowledge base

  • ,
  • Ahmed Al-Moadhen
    ,
  • Michael Packianather
    ,
  • Rossi Setchi
    ,
  • Ze Ji
  • Cardiff University
Research Output: Chapter in Book/Report/Conference proceeding Chapter Peer-review

Abstract

This chapter presents a newly developed approach for intelligently generating symbolic plans for mobile robots acting in domestic environments, such as offices and houses. The significance of this approach lies in its novel framework which consists of new modelling of high-level robot actions and their integration with common-sense knowledge in order to support robotic task planner. This framework will enable direct interactions between the task planner and the semantic knowledge base. By using common-sense domain knowledge, the task planner will take into consideration the properties and relations of objects and places in its environment, before creating semantically related actions that will represent a plan. A new module has been appended to the framework which is called Semantic Realization and Refreshment Module (SRRM). This module has the ability to discover and select entities in the robot’s world (entities related to robot plan) which are semantically equivalent or have a degree of similarity (where they don’t exceed a predefined threshold) by using techniques and standards (metrics) for similarities. SRRM supports robotic task planning to generate approximate plans to solve its tasks when there is no exact plan can be generated according to initial and goal state by extending initial state and action details with similar or equivalent objects. The extended framework enables direct interactions between task planner, Semantic Action Models (SAMs) and knowledge-base through creating planning domain (or extended planning domain) with predicates (or semantically equivalent or similar predicates) which specify domain features. The proposed framework and approach are tested on some scenarios that cover most aspects of robot planning system.

Publication Information

Output type

Research Output: Chapter in Book/Report/Conference proceeding Chapter Peer-review

Original language

English

Publication milestones

  • Published - 31/12/2015

Publication status

Published - 31/12/2015

Volume

30

Publisher

Springer, Japan, India, Australia, Germany, United States, United Arab Emirates, Austria, Switzerland, Italy, China, United Kingdom, Netherlands, Brazil, France, Singapore

Publication series

  • Publication series name: Smart Innovation, Systems and Technologies
    Number: 30
9783319135441

External Publication IDs

  • handle.net: 10547/624341
  • Scopus: 84922059432

Host publication title

Knowledge-Based Information Systems in Practice

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