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A Hybrid Deliberative Layer For Robotic Agents Fusing Dl Reasoning With Htn Planning In Autonomous Robots 1st Edition Ronny Hartanto Auth

  • SKU: BELL-2450232
A Hybrid Deliberative Layer For Robotic Agents Fusing Dl Reasoning With Htn Planning In Autonomous Robots 1st Edition Ronny Hartanto Auth
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A Hybrid Deliberative Layer For Robotic Agents Fusing Dl Reasoning With Htn Planning In Autonomous Robots 1st Edition Ronny Hartanto Auth instant download after payment.

Publisher: Springer-Verlag Berlin Heidelberg
File Extension: PDF
File size: 4.55 MB
Pages: 215
Author: Ronny Hartanto (auth.)
ISBN: 9783642225796, 3642225799
Language: English
Year: 2011
Edition: 1

Product desciption

A Hybrid Deliberative Layer For Robotic Agents Fusing Dl Reasoning With Htn Planning In Autonomous Robots 1st Edition Ronny Hartanto Auth by Ronny Hartanto (auth.) 9783642225796, 3642225799 instant download after payment.

The Hybrid Deliberative Layer (HDL) solves the problem that an intelligent agent faces in dealing with a large amount of information which may or may not be useful in generating a plan to achieve a goal. The information, that an agent may need, is acquired and stored in the DL model. Thus, the HDL is used as the main knowledge base system for the agent.

In this work, a novel approach which amalgamates Description Logic (DL) reasoning with Hierarchical Task Network (HTN) planning is introduced. An analysis of the performance of the approach has been conducted and the results show that this approach yields significantly smaller planning problem descriptions than those generated by current representations in HTN planning.

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