Dynamic Decisions and Work Load in Multitask Supervisory Control

Abstract
A paradigm is developed for the problem of allocating in time a single resource to multiple simultaneous task demands which appear randomly, last for various periods, and offer varying rewards for service. Based upon a dynamic optimizing algorithm plus an estimator, and including response time and future discounting constraints, a model of the human decisionmaker is compared to experimental results for human subjects performing such a task at a computer-graphics terminal. Results indicate a reasonable fit, under various model parameters and task conditions, and suggest interesng hypotheses about the nature of human "planning ahead" and mental work load.

This publication has 18 references indexed in Scilit: