شماره ركورد كنفرانس :
3222
عنوان مقاله :
AASVMES: An Intelligent Expert System for Realization of Adaptive Autonomy Using Support Vector Machine
پديدآورندگان :
Hassanpour N Systems and Machines Research Laboratory - Control and Intelligent Processing Center of Excellence - School of Electrical and Computer Engineering - College of Engineering - University of Tehran , Zamani M.A Systems and Machines Research Laboratory - Control and Intelligent Processing Center of Excellence - School of Electrical and Computer Engineering - College of Engineering - University of Tehran , Fereidunian A Systems and Machines Research Laboratory - Control and Intelligent Processing Center of Excellence - School of Electrical and Computer Engineering - College of Engineering - University of Tehran , Lesani H Systems and Machines Research Laboratory - Control and Intelligent Processing Center of Excellence - School of Electrical and Computer Engineering - College of Engineering - University of Tehran
كليدواژه :
(Support Vector Machine (SVM , ( Adaptive Autonomy (AA , Expert System , ( Human Automation Interaction (HAI , Experts’ Judgment , Power System , Distribution Automation
عنوان كنفرانس :
دومين كنفرانس بين المللي كنترل، ابزار دقيق و اتوماسيون
چكيده لاتين :
We earlier introduced a novel framework for realization of Adaptive Autonomy (AA) in human-automation
interaction (HAI) systems. This study presents an expert system for realization of AA, using Support Vector Machine
(SVM), referred to as Adaptive Autonomy Support Vector Machine Expert System (AASVMES). The proposed system
prescribes proper Levels of Automation (LOAs) for various environmental conditions, here modeled as Performance
Shaping Factors (PSFs), based on the extracted rules from the experts’ judgments. SVM is used as an expert system inference engine. The practical list of PSFs and the judgments of GTEDC’s (the Greater Tehran Electric Distribution
Company) experts are used as expert system database. The results of implemented AASVMES in response to GTEDC’s
network are evaluated against the GTEDC experts’ judgment. Evaluations show that AASVMES has the ability to predict the
proper LOA for GTEDC’s Utility Management Automation (UMA) system, which changes in relevance to the changes in
PSFs; thus providing an adaptive LOA scheme for UMA.