Admissible Heuristics for Automated Planning

The problem of domain-independent automated planning has been a topic of research in Artificial Intelligence since the very beginnings of the field. Due to the desire not to rely on vast quantities of problem specific knowledge, the most widely adopted approach to automated planning is search. The t...

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Main Author: Haslum, Patrik
Format: Doctoral Thesis
Language:English
Published: Linköpings universitet, KPLAB - Laboratoriet för kunskapsbearbetning 2006
Subjects:
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-6042
http://nbn-resolving.de/urn:isbn:91-85497-28-2
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spelling ndltd-UPSALLA1-oai-DiVA.org-liu-60422013-01-08T13:04:57ZAdmissible Heuristics for Automated PlanningengHaslum, PatrikLinköpings universitet, KPLAB - Laboratoriet för kunskapsbearbetningLinköpings universitet, Tekniska högskolanInstitutionen för datavetenskap2006AI planningoptimal planningtemporal planningheuristic searchComputer scienceDatalogiThe problem of domain-independent automated planning has been a topic of research in Artificial Intelligence since the very beginnings of the field. Due to the desire not to rely on vast quantities of problem specific knowledge, the most widely adopted approach to automated planning is search. The topic of this thesis is the development of methods for achieving effective search control for domain-independent optimal planning through the construction of admissible heuristics. The particular planning problem considered is the so called “classical” AI planning problem, which makes several restricting assumptions. Optimality with respect to two measures of plan cost are considered: in planning with additive cost, the cost of a plan is the sum of the costs of the actions that make up the plan, which are assumed independent, while in planning with time, the cost of a plan is the total execution time – makespan – of the plan. The makespan optimization objective can not, in general, be formulated as a sum of independent action costs and therefore necessitates a problem model slightly different from the classical one. A further small extension to the classical model is made with the introduction of two forms of capacitated resources. Heuristics are developed mainly for regression planning, but based on principles general enough that heuristics for other planning search spaces can be derived on the same basis. The thesis describes a collection of methods, including the hm, additive hm and improved pattern database heuristics, and the relaxed search and boosting techniques for improving heuristics through limited search, and presents two extended experimental analyses of the developed methods, one comparing heuristics for planning with additive cost and the other concerning the relaxed search technique in the context of planning with time, aimed at discovering the characteristics of problem domains that determine the relative effectiveness of the compared methods. Results indicate that some plausible such characteristics have been found, but are not entirely conclusive. Doctoral thesis, monographinfo:eu-repo/semantics/doctoralThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-6042urn:isbn:91-85497-28-2Linköping Studies in Science and Technology. Dissertations, 0345-7524 ; 1004application/pdfinfo:eu-repo/semantics/openAccess
collection NDLTD
language English
format Doctoral Thesis
sources NDLTD
topic AI planning
optimal planning
temporal planning
heuristic search
Computer science
Datalogi
spellingShingle AI planning
optimal planning
temporal planning
heuristic search
Computer science
Datalogi
Haslum, Patrik
Admissible Heuristics for Automated Planning
description The problem of domain-independent automated planning has been a topic of research in Artificial Intelligence since the very beginnings of the field. Due to the desire not to rely on vast quantities of problem specific knowledge, the most widely adopted approach to automated planning is search. The topic of this thesis is the development of methods for achieving effective search control for domain-independent optimal planning through the construction of admissible heuristics. The particular planning problem considered is the so called “classical” AI planning problem, which makes several restricting assumptions. Optimality with respect to two measures of plan cost are considered: in planning with additive cost, the cost of a plan is the sum of the costs of the actions that make up the plan, which are assumed independent, while in planning with time, the cost of a plan is the total execution time – makespan – of the plan. The makespan optimization objective can not, in general, be formulated as a sum of independent action costs and therefore necessitates a problem model slightly different from the classical one. A further small extension to the classical model is made with the introduction of two forms of capacitated resources. Heuristics are developed mainly for regression planning, but based on principles general enough that heuristics for other planning search spaces can be derived on the same basis. The thesis describes a collection of methods, including the hm, additive hm and improved pattern database heuristics, and the relaxed search and boosting techniques for improving heuristics through limited search, and presents two extended experimental analyses of the developed methods, one comparing heuristics for planning with additive cost and the other concerning the relaxed search technique in the context of planning with time, aimed at discovering the characteristics of problem domains that determine the relative effectiveness of the compared methods. Results indicate that some plausible such characteristics have been found, but are not entirely conclusive.
author Haslum, Patrik
author_facet Haslum, Patrik
author_sort Haslum, Patrik
title Admissible Heuristics for Automated Planning
title_short Admissible Heuristics for Automated Planning
title_full Admissible Heuristics for Automated Planning
title_fullStr Admissible Heuristics for Automated Planning
title_full_unstemmed Admissible Heuristics for Automated Planning
title_sort admissible heuristics for automated planning
publisher Linköpings universitet, KPLAB - Laboratoriet för kunskapsbearbetning
publishDate 2006
url http://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-6042
http://nbn-resolving.de/urn:isbn:91-85497-28-2
work_keys_str_mv AT haslumpatrik admissibleheuristicsforautomatedplanning
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