Knowledge-based reactive planning and replanning

When a disaster strikes; man-made or natural–evacuation plans are put under immediate constraints, including topological, temporal, and spontaneously occurring events such as fire, smoke and obstacles introducing bottlenecks and impeding ingress and egress. Planning for uncertainties arising from in...

Full description

Bibliographic Details
Main Authors: Djemai, Ramzi, Vassilev, Vassil, Ouazzane, Karim, Dey, Maitreyee
Format: Conference or Workshop Item
Language:English
Published: 2024
Subjects:
Online Access:https://repository.londonmet.ac.uk/9318/1/VV-40-Knowledge_based_Reactive_Planning_and_Re_planning_A_Case_Study_Approach.pdf
_version_ 1804073001374711808
author Djemai, Ramzi
Vassilev, Vassil
Ouazzane, Karim
Dey, Maitreyee
author_facet Djemai, Ramzi
Vassilev, Vassil
Ouazzane, Karim
Dey, Maitreyee
author_sort Djemai, Ramzi
collection LMU
description When a disaster strikes; man-made or natural–evacuation plans are put under immediate constraints, including topological, temporal, and spontaneously occurring events such as fire, smoke and obstacles introducing bottlenecks and impeding ingress and egress. Planning for uncertainties arising from indoor evacuations can be complex as there’s a fine balance to strike between a too-detailed plan and one that’s too vague. Such constraints apply to office and residential buildings, airports, mining sites, stadiums, ships, etc. Although some indoor spatial models have been developed, many are complex, and their applicability is non-universal. This paper proposes an innovative approach that harnesses the power of the Semantic Web Rule Language (SWRL) based on Web Ontology Language (OWL) to enhance existing evacuation planning methods through data-rich modelling. The OWL ontology serves as a formal representation of real-world concepts, their relationships, and properties. To demonstrate its application, the ontology is implemented in a case study involving London Metropolitan University’s Tower Building, and its design is elucidated in this paper.
first_indexed 2024-07-09T04:08:06Z
format Conference or Workshop Item
id oai:repository.londonmet.ac.uk:9318
institution London Metropolitan University
language English
last_indexed 2024-07-09T04:08:06Z
publishDate 2024
record_format eprints
spelling oai:repository.londonmet.ac.uk:93182024-04-16T09:48:49Z http://repository.londonmet.ac.uk/9318/ Knowledge-based reactive planning and replanning Djemai, Ramzi Vassilev, Vassil Ouazzane, Karim Dey, Maitreyee 000 Computer science, information & general works When a disaster strikes; man-made or natural–evacuation plans are put under immediate constraints, including topological, temporal, and spontaneously occurring events such as fire, smoke and obstacles introducing bottlenecks and impeding ingress and egress. Planning for uncertainties arising from indoor evacuations can be complex as there’s a fine balance to strike between a too-detailed plan and one that’s too vague. Such constraints apply to office and residential buildings, airports, mining sites, stadiums, ships, etc. Although some indoor spatial models have been developed, many are complex, and their applicability is non-universal. This paper proposes an innovative approach that harnesses the power of the Semantic Web Rule Language (SWRL) based on Web Ontology Language (OWL) to enhance existing evacuation planning methods through data-rich modelling. The OWL ontology serves as a formal representation of real-world concepts, their relationships, and properties. To demonstrate its application, the ontology is implemented in a case study involving London Metropolitan University’s Tower Building, and its design is elucidated in this paper. 2024-03-25 Conference or Workshop Item PeerReviewed text en https://repository.londonmet.ac.uk/9318/1/VV-40-Knowledge_based_Reactive_Planning_and_Re_planning_A_Case_Study_Approach.pdf Djemai, Ramzi, Vassilev, Vassil, Ouazzane, Karim and Dey, Maitreyee (2024) Knowledge-based reactive planning and replanning. In: IEEE CAI 2024 - Conference on Artificial Intelligence, 25-27 June 2024, Marina Bay Sands, Singapore. (In Press)
spellingShingle 000 Computer science, information & general works
Djemai, Ramzi
Vassilev, Vassil
Ouazzane, Karim
Dey, Maitreyee
Knowledge-based reactive planning and replanning
title Knowledge-based reactive planning and replanning
title_full Knowledge-based reactive planning and replanning
title_fullStr Knowledge-based reactive planning and replanning
title_full_unstemmed Knowledge-based reactive planning and replanning
title_short Knowledge-based reactive planning and replanning
title_sort knowledge based reactive planning and replanning
topic 000 Computer science, information & general works
url https://repository.londonmet.ac.uk/9318/1/VV-40-Knowledge_based_Reactive_Planning_and_Re_planning_A_Case_Study_Approach.pdf
work_keys_str_mv AT djemairamzi knowledgebasedreactiveplanningandreplanning
AT vassilevvassil knowledgebasedreactiveplanningandreplanning
AT ouazzanekarim knowledgebasedreactiveplanningandreplanning
AT deymaitreyee knowledgebasedreactiveplanningandreplanning