TY - JOUR
T1 - Using ga-based intelligent control means to enhance human-machine interfaces
AU - Repperger, D. W.
AU - Rothrock, Ling
N1 - Funding Information:
1 Supported, in part, by a grant from the Office of the Chief Scientist, Human Effectiveness Directorate, AFRL/HE with title,
PY - 2005/1
Y1 - 2005/1
N2 - A GA (genetic algorithm) search procedure was employed to explore a best set of sensory feedback parameters in designing ahuman-machine interface for improved performance. The optimization concerned two objective functions of interest, which incorporated tradeoffs between speed and accuracy in tracking. APareto-optimal front was calculated involving the two cost functions selected. This approach differs from the traditional minimum of anon-convex cost function (scalaz) describing the desired closed loop performance. Also, this methodology used a parsimonious experimental design method. By making a few runs with a limited number of subjects, a response model was first developed. This model was then simulated and a complex vector response surface was generated by the performance variables of interest. The GA seazch procedure was then used to locate the minimum of this response surface. Finally, in a post hoc experimental study to confirm that the selected design parameters were the best from the class selected, seven human subjects were evaluated at the most favorable experimental design pazameters and compared to alternative conditions.
AB - A GA (genetic algorithm) search procedure was employed to explore a best set of sensory feedback parameters in designing ahuman-machine interface for improved performance. The optimization concerned two objective functions of interest, which incorporated tradeoffs between speed and accuracy in tracking. APareto-optimal front was calculated involving the two cost functions selected. This approach differs from the traditional minimum of anon-convex cost function (scalaz) describing the desired closed loop performance. Also, this methodology used a parsimonious experimental design method. By making a few runs with a limited number of subjects, a response model was first developed. This model was then simulated and a complex vector response surface was generated by the performance variables of interest. The GA seazch procedure was then used to locate the minimum of this response surface. Finally, in a post hoc experimental study to confirm that the selected design parameters were the best from the class selected, seven human subjects were evaluated at the most favorable experimental design pazameters and compared to alternative conditions.
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U2 - 10.1080/10798587.2005.10642899
DO - 10.1080/10798587.2005.10642899
M3 - Article
AN - SCOPUS:17444390909
SN - 1079-8587
VL - 11
SP - 123
EP - 140
JO - Intelligent Automation and Soft Computing
JF - Intelligent Automation and Soft Computing
IS - 2
ER -