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Iterative learning control based tools to learn from human error

机译:基于迭代学习控制的工具,可从人为错误中学习

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摘要

This paper proposes a new alternative to identify and predict intentional human errors based on benefits, costs and deficits (BCD) associated to particular human deviations. It is based on an iterative learning system. Two approaches are proposed. These approaches consist in predicting barrier removal, i.e., non-respect of rules, achieved by human operators and in using the developed iterative learning system to learn from barrier removal behaviours. The first approach reinforces the parameters of a utility function associated to the respect of this rule. This reinforcement affects directly the output of the predictive tool. The second approach reinforces the knowledge of the learning tool stored into its database. Data from an experimental study related to driving situation in car simulator have been used for both tools in order to predict the behaviour of drivers. The two predictive tools make predictions from subjective data coming from drivers. These subjective data concern the subjective evaluation of BCD related to the respect of the right priority rule.
机译:本文提出了一种新的替代方法,用于根据与特定人为偏差相关的收益,成本和缺陷(BCD)来识别和预测人为错误。它基于迭代学习系统。提出了两种方法。这些方法包括预测由操作员实现的障碍消除,即不遵守规则,以及使用发达的迭代学习系统来学习障碍消除行为。第一种方法加强了与此规则相关的效用函数的参数。这种增强直接影响预测工具的输出。第二种方法增强了存储在其数据库中的学习工具的知识。两种工具都使用了与汽车模拟器中的驾驶状况相关的实验研究数据,以预测驾驶员的行为。这两个预测工具根据来自驾驶员的主观数据进行预测。这些主观数据涉及与尊重权利优先权规则相关的BCD的主观评估。

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