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Review of control models for human pilot behavior

机译:审查人类飞行员行为的控制模型

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Pilot modeling techniques, have played a crucial role in manned aviation and have also, as a consequence, generated major advances in human control behavior research. This paper presents a review of control models for human pilot behavior. The purposes of the models are to analyze the characteristics of the pilot-aircraft system, and to provide valuable guidance in the flight control system design. Existing human pilot models are classified into three types. The first category of models; based on control theory, can only be used to describe the control functions of human pilot. The typical models include McRuer quasi-linear models and optimal control models. Then the principle of human pilot control behavior was revealed from the physiological perspective, the Hess structural model being the most common one. Hos-man's descriptive model and biodynamic model are also summarized. The paper also proposes that the development of artificial intelligence technology has enabled the study of nonlinear characteristics of pilot behavior in manual control. Models based on intelligence techniques. are briefly introduced, e.g.; fuzzy control models, neural network models. Finally, the paper outlines several typical and future applications of the techniques in the pilot modeling field. However, as the presented discussion is limited to a small area of pilot modeling, many other challenges remain open for further research and development. (C) 2017 Elsevier Ltd. All rights reserved.
机译:飞行员建模技术在有人驾驶航空中发挥了至关重要的作用,因此,在人类控制行为研究方面也取得了重大进展。本文介绍了人类飞行员行为的控制模型。该模型的目的是分析飞行员飞机系统的特性,并为飞行控制系统设计提供有价值的指导。现有的人类飞行员模型分为三种类型。第一类模型;基于控制理论,只能用来描述飞行员的控制功能。典型模型包括McRuer拟线性模型和最优控制模型。然后从生理学角度揭示了人类驾驶员控制行为的原理,最常见的是赫斯结构模型。还总结了霍斯曼的描述模型和生物动力学模型。本文还提出,人工智能技术的发展已使人们能够研究手动控制中飞行员行为的非线性特征。基于情报技术的模型。简要介绍,例如;模糊控制模型,神经网络模型。最后,本文概述了该技术在试点建模领域中的几种典型和未来应用。但是,由于目前的讨论仅限于飞行员模型的一小部分,因此还有许多其他挑战需要进一步研究和开发。 (C)2017 Elsevier Ltd.保留所有权利。

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