A conceptual model of layered adjustable autonomy
Autonomy and autonomous agents are currently the most researched topics in autonomous systems. Issues like autonomy adjustment, autonomy level, and the required degree of autonomy to be performed are investigated. Abstracting an autonomy model poses the problem of identifying specific aspects that m...
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2023
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my.uniten.dspace-301802024-04-18T11:04:27Z A conceptual model of layered adjustable autonomy Mostafa S.A. Ahmad M.S. Annamalai M. Ahmad A. Gunasekaran S.S. 37036085800 56036880900 36138644000 55390963300 55652730500 adjustable autonomy autonomous systems decision-making Layered Adjustable Autonomy (LAA) Multi-agent system (MAS) Software agent Decision making Information systems Multi agent systems Software agents Adjustable autonomy Autonomous systems Autonomy spectrums Decision making process Degree of autonomy Layered Structures Multi agent system (MAS) Multi-agent environment Autonomous agents Autonomy and autonomous agents are currently the most researched topics in autonomous systems. Issues like autonomy adjustment, autonomy level, and the required degree of autonomy to be performed are investigated. Abstracting an autonomy model poses the problem of identifying specific aspects that merit an autonomous system. In this paper, we propose another model of autonomy that conceptualizes autonomy as a spectrum, which is constructed in a layered structure of a multi-agent environment called Layered Adjustable Autonomy (LAA). The autonomy spectrum of the LAA is divided into adjustable-leveled layers. Each of which has distinct attributes and properties that assist an agent in managing the influences of the environment during its decision-making process. The LAA structure is designed to endorse an agent's qualification to make a decision by setting the degree of autonomy to the agent's choice of decision-making. An Autonomy Analysis Module (AAM) is also proposed to control and delegate the agent's actions at specific autonomy levels. Hence, the AAM determines the threshold of the agent autonomy level to act in its qualified layer. Ultimately, the proposed LAA model will be implemented on an air drone for the purpose of testing and refinement. � 2013 Springer-Verlag. Final 2023-12-29T07:45:16Z 2023-12-29T07:45:16Z 2013 Conference Paper 10.1007/978-3-642-36981-0_57 2-s2.0-84876261673 https://www.scopus.com/inward/record.uri?eid=2-s2.0-84876261673&doi=10.1007%2f978-3-642-36981-0_57&partnerID=40&md5=91e67fdc8b902261c9dd558a69b333b9 https://irepository.uniten.edu.my/handle/123456789/30180 206 AISC 619 630 Springer Verlag Scopus |
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adjustable autonomy autonomous systems decision-making Layered Adjustable Autonomy (LAA) Multi-agent system (MAS) Software agent Decision making Information systems Multi agent systems Software agents Adjustable autonomy Autonomous systems Autonomy spectrums Decision making process Degree of autonomy Layered Structures Multi agent system (MAS) Multi-agent environment Autonomous agents |
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adjustable autonomy autonomous systems decision-making Layered Adjustable Autonomy (LAA) Multi-agent system (MAS) Software agent Decision making Information systems Multi agent systems Software agents Adjustable autonomy Autonomous systems Autonomy spectrums Decision making process Degree of autonomy Layered Structures Multi agent system (MAS) Multi-agent environment Autonomous agents Mostafa S.A. Ahmad M.S. Annamalai M. Ahmad A. Gunasekaran S.S. A conceptual model of layered adjustable autonomy |
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Autonomy and autonomous agents are currently the most researched topics in autonomous systems. Issues like autonomy adjustment, autonomy level, and the required degree of autonomy to be performed are investigated. Abstracting an autonomy model poses the problem of identifying specific aspects that merit an autonomous system. In this paper, we propose another model of autonomy that conceptualizes autonomy as a spectrum, which is constructed in a layered structure of a multi-agent environment called Layered Adjustable Autonomy (LAA). The autonomy spectrum of the LAA is divided into adjustable-leveled layers. Each of which has distinct attributes and properties that assist an agent in managing the influences of the environment during its decision-making process. The LAA structure is designed to endorse an agent's qualification to make a decision by setting the degree of autonomy to the agent's choice of decision-making. An Autonomy Analysis Module (AAM) is also proposed to control and delegate the agent's actions at specific autonomy levels. Hence, the AAM determines the threshold of the agent autonomy level to act in its qualified layer. Ultimately, the proposed LAA model will be implemented on an air drone for the purpose of testing and refinement. � 2013 Springer-Verlag. |
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37036085800 |
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37036085800 Mostafa S.A. Ahmad M.S. Annamalai M. Ahmad A. Gunasekaran S.S. |
format |
Conference Paper |
author |
Mostafa S.A. Ahmad M.S. Annamalai M. Ahmad A. Gunasekaran S.S. |
author_sort |
Mostafa S.A. |
title |
A conceptual model of layered adjustable autonomy |
title_short |
A conceptual model of layered adjustable autonomy |
title_full |
A conceptual model of layered adjustable autonomy |
title_fullStr |
A conceptual model of layered adjustable autonomy |
title_full_unstemmed |
A conceptual model of layered adjustable autonomy |
title_sort |
conceptual model of layered adjustable autonomy |
publisher |
Springer Verlag |
publishDate |
2023 |
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1806425498462453760 |
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13.214268 |