飞机状态感知与预测技术的飞行仿真研究

S. Young, T. Daniels, Emory T. Evans, Evan Dill, M. U. de Haag, T. Etherington
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引用次数: 13

摘要

飞机状态感知(ASA)是一种飞行员性能属性,派生自更通用的态势感知属性。飞机状态主要暗示姿态和能量状态,但也推断出其他状态变量,如自动或自主系统的状态,可以影响姿态或能量状态。认识到ASA的缺失是最近事故的一个重要因素,一个行业团队推荐了几种安全增强(SEs)来解决或缓解问题。其中两项要求研究和开发新技术,以预测能源和/或自动飞行系统状态,并直观地通知或提醒机组人员未来的不安全或其他不希望的状态。此外,希望未来的飞行器能够在高度意识到自身健康的情况下运行。这种形式的ASA需要机载预测功能,可以告知关键标记走向不安全状态的决策功能。本文描述了一项高保真度飞行模拟研究,旨在解决当前飞机的两种行业推荐的se,以及未来飞机所需的这种自我意识能力。11名商业航空公司机组人员参加了测试,完成了220多次飞行。飞行场景涵盖了一系列广泛的条件,包括几个模拟最近事故的飞行场景。收集了广泛的数据集,包括来自飞行员的定性数据和来自一套独特仪器设备的定量数据。后者包括头部/眼球追踪系统和生理测量系统。评估了最先进的飞行甲板系统和指标,以及一系列新技术。这些措施包括增强倾斜角度指示器;预测算法和指示,自动飞行系统将把飞机带到哪里,自动模式何时发生变化,或者与能源有关的问题可能发生在哪里;对飞行关键数据丢失的影响进行概括性(即图形化)描述,并结合简化的电子检查清单。本文涵盖的主题包括研究计划背景、测试目标、测试技术描述、平台和操作环境设置、研究结果总结和未来工作。
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Flight simulation study of airplane state awareness and prediction technologies
Airplane state awareness (ASA) is a pilot performance attribute derived from the more general attribute known as situation awareness. Airplane state alludes primarily to attitude and energy state, but also infers other state variables, such as the state of automated or autonomous systems, that can affect attitude or energy state. Recognizing that loss of ASA has been a contributing factor to recent accidents, an industry-wide team has recommended several Safety Enhancements (SEs) to resolve or mitigate the problem. Two of these SEs call for research and development of new technology that can predict energy and/or auto-flight system states, and intuitively notify or alert flight crews to future unsafe or otherwise undesired states. In addition, it is desired that future air vehicles will be able to operate with a high degree of awareness of their own well-being. This form of ASA requires onboard predictive capabilities that can inform decision-making functions of critical markers trending to unsafe states. This paper describes a high-fidelity flight simulation study designed to address the two industry-recommended SEs for current aircraft, as well as this desired self-awareness capability for future aircraft. Eleven commercial airline crews participated in the testing, completing more than 220 flights. Flight scenarios were utilized that span a broad set of conditions including several that emulated recent accidents. An extensive data set was collected that includes both qualitative data from the pilots, and quantitative data from a unique set of instrumentation devices. The latter includes a head-/eye-tracking system and a physiological measurement system. State-of-the-art flight deck systems and indicators were evaluated, as were a set of new technologies. These included an enhancement to the bank angle indicator; predictive algorithms and indications of where the auto-flight system will take the aircraft and when automation mode changes will occur or where energy-related problems may occur; and synoptic (i.e., graphical) depictions of the effects of loss of flight critical data, combined with streamlined electronic checklists. Topics covered by this paper include the research program context, test objectives, descriptions of the technologies under test, platform and operational environment setup, a summary of findings, and future work.
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