Escaping Depressions in LRTS Based on Incremental Refinement of Encoded Quad-Trees

In the context of robot navigation, game AI, and so on, real-time search is extensively used to undertake motion planning. Though it satisfies the requirement of quick response to users’ commands and environmental changes, learning real-time search (LRTS) suffers from the heuristic depressions where...

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Main Authors: Yue Hu, Long Qin, Quanjun Yin, Lin Sun
Format: Article
Language:English
Published: Hindawi Limited 2017-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2017/1850678
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spelling doaj-29c8877ab96144828ba7c9b2763137ed2020-11-24T21:39:27ZengHindawi LimitedMathematical Problems in Engineering1024-123X1563-51472017-01-01201710.1155/2017/18506781850678Escaping Depressions in LRTS Based on Incremental Refinement of Encoded Quad-TreesYue Hu0Long Qin1Quanjun Yin2Lin Sun3College of Information Systems and Management, National University of Defense Technology, Changsha 410073, ChinaCollege of Information Systems and Management, National University of Defense Technology, Changsha 410073, ChinaCollege of Information Systems and Management, National University of Defense Technology, Changsha 410073, ChinaCollege of Information Systems and Management, National University of Defense Technology, Changsha 410073, ChinaIn the context of robot navigation, game AI, and so on, real-time search is extensively used to undertake motion planning. Though it satisfies the requirement of quick response to users’ commands and environmental changes, learning real-time search (LRTS) suffers from the heuristic depressions where agents behave irrationally. There have introduced several effective solutions, such as state abstractions. This paper combines LRTS and encoded quad-tree abstraction which represent the search space in multiresolutions. When exploring the environments, agents are enabled to locally repair the quad-tree models and incrementally refine the spatial cognition. By virtue of the idea of state aggregation and heuristic generalization, our EQ LRTS (encoded quad-tree based LRTS) possesses the ability of quickly escaping from heuristic depressions with less state revisitations. Experiments and analysis show that (a) our encoding principle for quad-trees is a much more memory-efficient method than other data structures expressing quad-trees, (b) EQ LRTS differs a lot in several characteristics from classical PR LRTS which represent the space and refine the paths hierarchically, and (c) EQ LRTS substantially reduces the planning amount and curtails heuristic updates compared with LRTS on uniform cells.http://dx.doi.org/10.1155/2017/1850678
collection DOAJ
language English
format Article
sources DOAJ
author Yue Hu
Long Qin
Quanjun Yin
Lin Sun
spellingShingle Yue Hu
Long Qin
Quanjun Yin
Lin Sun
Escaping Depressions in LRTS Based on Incremental Refinement of Encoded Quad-Trees
Mathematical Problems in Engineering
author_facet Yue Hu
Long Qin
Quanjun Yin
Lin Sun
author_sort Yue Hu
title Escaping Depressions in LRTS Based on Incremental Refinement of Encoded Quad-Trees
title_short Escaping Depressions in LRTS Based on Incremental Refinement of Encoded Quad-Trees
title_full Escaping Depressions in LRTS Based on Incremental Refinement of Encoded Quad-Trees
title_fullStr Escaping Depressions in LRTS Based on Incremental Refinement of Encoded Quad-Trees
title_full_unstemmed Escaping Depressions in LRTS Based on Incremental Refinement of Encoded Quad-Trees
title_sort escaping depressions in lrts based on incremental refinement of encoded quad-trees
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1024-123X
1563-5147
publishDate 2017-01-01
description In the context of robot navigation, game AI, and so on, real-time search is extensively used to undertake motion planning. Though it satisfies the requirement of quick response to users’ commands and environmental changes, learning real-time search (LRTS) suffers from the heuristic depressions where agents behave irrationally. There have introduced several effective solutions, such as state abstractions. This paper combines LRTS and encoded quad-tree abstraction which represent the search space in multiresolutions. When exploring the environments, agents are enabled to locally repair the quad-tree models and incrementally refine the spatial cognition. By virtue of the idea of state aggregation and heuristic generalization, our EQ LRTS (encoded quad-tree based LRTS) possesses the ability of quickly escaping from heuristic depressions with less state revisitations. Experiments and analysis show that (a) our encoding principle for quad-trees is a much more memory-efficient method than other data structures expressing quad-trees, (b) EQ LRTS differs a lot in several characteristics from classical PR LRTS which represent the space and refine the paths hierarchically, and (c) EQ LRTS substantially reduces the planning amount and curtails heuristic updates compared with LRTS on uniform cells.
url http://dx.doi.org/10.1155/2017/1850678
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AT quanjunyin escapingdepressionsinlrtsbasedonincrementalrefinementofencodedquadtrees
AT linsun escapingdepressionsinlrtsbasedonincrementalrefinementofencodedquadtrees
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