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首页> 外文期刊>IEEE computational intelligence magazine >Modelling Behaviour in UAV Operations Using Higher Order Double Chain Markov Models
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Modelling Behaviour in UAV Operations Using Higher Order Double Chain Markov Models

机译:使用高阶双链马尔可夫模型的无人机作战行为建模

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Creating behavioural models of human operators engaged in supervisory control tasks with UAVs is of great value due to the high cost of operator failures. Recent works in the field advocate the use of Hidden Markov Models (HMMs) and derivatives to model the operator behaviour, since they offer interpretable patterns for a domain expert and, at the same time, provide valuable predictions which can be used to detect abnormal behaviour in time. However, the first order Markov assumption in which HMMs rely, and the assumed independence between the operator actions along time, limit their modelling capabilities. In this work, we extend the study of behavioural modelling in UAV operations by using Double Chain Markov Models (DCMMs), which provide a flexible modelling framework in which two higher order Markov Chains (one hidden and one visible) are combined. This work is focused on the development of a process flow to rank and select DCMMs based on a set of evaluation measures that quantify the predictability and interpretability of the models. To evaluate and demonstrate the possibilities of this modelling strategy over the classical HMMs, the proposed process has been applied in a multi-UAV simulation environment.
机译:由于操作员失灵的代价高昂,因此,为从事无人机监控任务的操作员创建行为模型具有巨大的价值。该领域的最新工作主张使用隐马尔可夫模型(HMM)和派生模型对操作员的行为进行建模,因为它们为领域专家提供了可解释的模式,同时提供了可用于检测异常行为的有价值的预测及时。但是,HMM所依赖的一阶马尔可夫假设以及操作员动作之间随时间的假设独立性限制了其建模能力。在这项工作中,我们通过使用双链马尔可夫模型(DCMM)扩展了无人机操作中行为建模的研究,该模型提供了一个灵活的建模框架,其中将两个较高阶的马尔可夫链(一个隐藏的和一个可见的)组合在一起。这项工作的重点是基于一组量化模型的可预测性和可解释性的评估方法,对DCMM进行排名和选择的流程开发。为了评估和证明这种建模策略在经典HMM上的可能性,所提出的过程已在多UAV仿真环境中应用。

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