Faculty of Computer Science and Information Technology, Universiti Tun Hussein Onn Malaysia, Johor, Malaysia.
Planning and Follow Up Department, University Headquarter, University of Anbar, Anbar, Iraq.
Int J Med Inform. 2018 Apr;112:173-184. doi: 10.1016/j.ijmedinf.2018.02.001. Epub 2018 Feb 6.
Autonomous agents are being widely used in many systems, such as ambient assisted-living systems, to perform tasks on behalf of humans. However, these systems usually operate in complex environments that entail uncertain, highly dynamic, or irregular workload. In such environments, autonomous agents tend to make decisions that lead to undesirable outcomes. In this paper, we propose a fuzzy-logic-based adjustable autonomy (FLAA) model to manage the autonomy of multi-agent systems that are operating in complex environments. This model aims to facilitate the autonomy management of agents and help them make competent autonomous decisions. The FLAA model employs fuzzy logic to quantitatively measure and distribute autonomy among several agents based on their performance. We implement and test this model in the Automated Elderly Movements Monitoring (AEMM-Care) system, which uses agents to monitor the daily movement activities of elderly users and perform fall detection and prevention tasks in a complex environment. The test results show that the FLAA model improves the accuracy and performance of these agents in detecting and preventing falls.
自主代理在许多系统中得到了广泛的应用,例如环境辅助生活系统,代表人类执行任务。然而,这些系统通常在复杂的环境中运行,需要不确定、高度动态或不规则的工作负载。在这种环境下,自主代理往往会做出导致不良后果的决策。在本文中,我们提出了一种基于模糊逻辑的可调整自主性(FLAA)模型,用于管理在复杂环境中运行的多代理系统的自主性。该模型旨在促进代理的自主性管理,帮助他们做出有能力的自主决策。FLAA 模型使用模糊逻辑根据代理的性能对多个代理的自主性进行定量测量和分配。我们在 Automated Elderly Movements Monitoring (AEMM-Care)系统中实现和测试了该模型,该系统使用代理来监测老年用户的日常活动,并在复杂环境中执行跌倒检测和预防任务。测试结果表明,FLAA 模型提高了这些代理在检测和预防跌倒方面的准确性和性能。