隐马尔可夫模型在无人机系统训练操作分析中的扩展

V. Rodríguez-Fernández
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引用次数: 0

摘要

随着无人驾驶飞机系统的日益广泛应用,训练科学还没有得到适当的整合。由于目前缺乏能够大规模自动进行评估和分析的方法和工具,在培训期间由讲师进行的大多数评估和分析任务仍然是对每个操作员进行初步和单独的执行。这项工作的重点是提供智能和自动化的方法来训练无人机的操作,通过支持教官完成一些汇报任务,比如行为模式的提取。在这方面,目前基于隐马尔可夫模型(hmm)的方法被用来创建操作员行为的预测模型。对这些方法进行了两种不同的扩展:首先,利用任务日志的并行信息源,提出使用多通道hmm来丰富模型状态的意义;其次,考虑了hmm模型的内部建模局限性,在此基础上,研究了基于高阶双链马尔可夫模型(DCMMs)的更灵活方法的适用性。为了证明每种方法的有效性,在一个轻量级的模拟环境中进行了几次实验,没有经验的操作员。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extensions of Hidden Markov Models for supporting instructors in the analysis of training operations in an Unmanned Aircraft System
The increasing use of Unmanned Aircraft Systems has not been met with appropriate integration of training science. Most of the tasks of evaluation and analysis carried out by an instructor during the debriefing of a training session are still performed rudimentarily and individually for each operator, due to the current lack of methods and tools capable of doing it automatically on a large scale. This work is focused on providing intelligent and automated methods to training operations in a UAS by supporting instructors in some debriefing tasks, such as the extraction of behavioural patterns. In this regard, the current methods based on Hidden Markov Models (HMMs) are used to create predictive models of the operator’s behaviour. These methods have been extended in two different ways: first, the use of Multichannel HMMs is proposed in order to enrich the meaningfulness of the model states with the usage of parallel sources of information from the mission logs; secondly, the inner modelling limitations of HMMs are considered, and based on this, the applicability of a more flexible approach based on high order Double Chain Markov Models (DCMMs) is studied. In order to demonstrate the effectiveness of each of the proposed approaches, several experiments have been carried out in a lightweight simulation environment, with inexperienced operators.
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