Experimental study and clustering of operating staff of search systems in the sense of stress resistance

Author:

Shakhovska Nataliya,Kaminskyi Roman,Khudoba Bohdan

Abstract

IntroductionThe main goal of this study is to develop a methodology for the organization of experimental selection of operator personnel based on the analysis of their behavior under the influence of micro-stresses.MethodsA human-machine interface model has been developed, which considers the change in the functional state of the human operator. The presented concept of the difficulty of detecting the object of attention contributed to developing a particular sequence of ordinary test images with stressor images included in it and presented models of the flow of presenting test images to the recipient.ResultsWith the help of descriptive statistics, the parameters of individual box-plot diagrams were determined, and the recipient group was clustered.DiscussionOverall, the proposed approach based on the example of the conducted grouping makes it possible to ensure the objectivity and efficiency of the professional selection of applicants for operator specialties.

Publisher

Frontiers Media SA

Subject

Artificial Intelligence,Information Systems,Computer Science (miscellaneous)

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