Using the concept of data enclosing tunnel as an online feedback tool for simulator training

L. Marcano, A. Yazidi, D. Manca, Tiina Komulainen
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引用次数: 3

Abstract

Feedback is one of the key factors that makes industrial simulator training an effective learning tool. Usually, the trainees receive feedback from the instructor, who guides them through the simulation tasks. However, nowadays the availability of expert instructors is scarce while the training demand is increasing. Therefore, there is a need for new simulator training practices that could allow the trainees to be more independent and decrease the need to rely so often on the instructor. This could be achieved by offering the trainees online automated feedback. This article presents a method for developing a tool meeting those requirements is presented. Simulation data were gathered representing different execution paths of the same scenario. Data were then analyzed and clustered using different clustering techniques. Interestingly, “good” and “bad” performances are shown to be separable using different techniques for clustering multivariate time series. Furthermore, we introduce the concept of enclosing data tunnel representing the trajectory of well-behaving execution paths in a reduced dimensional space. By conditioning the mal-behaving performances to be less than 20 % of the total simulation time inside the tunnel, an accuracy on 68 % was obtained. Being more flexible and allowing the mal-behaving performances to be inside the tunnel for a maximum of 35 % of the total simulation time, the accuracy of the enclosing tunnel was increased to 84 %.
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利用数据封闭隧道的概念作为模拟器训练的在线反馈工具
反馈是使工业模拟器培训成为有效学习工具的关键因素之一。通常,受训者会从指导者那里得到反馈,指导者会指导他们完成模拟任务。然而,在培训需求日益增长的今天,专业教师却十分稀缺。因此,有必要进行新的模拟器训练实践,以使受训者更加独立,减少对教练的依赖。这可以通过向学员提供在线自动反馈来实现。本文提出了一种开发满足这些需求的工具的方法。收集模拟数据,表示同一场景的不同执行路径。然后使用不同的聚类技术对数据进行分析和聚类。有趣的是,使用不同的聚类多变量时间序列技术,“好”和“坏”性能被证明是可分离的。此外,我们引入了封闭数据隧道的概念,表示在降维空间中行为良好的执行路径的轨迹。通过将隧道内的异常行为控制在总模拟时间的20%以下,获得了68%的精度。由于更灵活,并且允许不良行为在隧道内的时间最多占总模拟时间的35%,封闭隧道的准确性提高到84%。
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