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Feasibility of Machine Learning Methods for Predictive Alerting of the Energy State for Aircraft

机译:机器学习方法预测飞机能量状态的可行性

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This paper discusses the feasibility of using machine learning methods, including deep model architectures, for the prediction of near future hazardous energy states (i.e., stall, overspeed, high and fast, low and slow, unstable approaches). Aircraft state prediction and specifically energy state prediction is an important step in providing the flight crew with visual and aural cues to improve their Aircraft State Awareness (ASA). Lack of ASA has been identified as one of the leading contributing factors in commercial aviation accidents, thus improving ASA has the potential to enhance aviation safety. In previous research, various Predictive Alerting of Energy (PAE) methods for flight crew information management and decision support (IMDS) were developed and tested with data from a NASA flight simulator study (AIME-l) in which eleven commercial airline crews (22 pilots) completed more than 230 flights. The previously tested aircraft state prediction methods included predictor stages of: (i) sequential stochastic filters, (ii) batch estimators and (iii) fast-time 3DOF model simulations. Successful predictions of stall, overspeed and high-fast/low-slow conditions were generated with these methods for time horizons ranging up to 300s. The paper discusses the use of machine learning techniques for energy state prediction, and considers its fundamental safety implications and algorithmic limitations, such as a lack of off-nominal training data, while also examining performance characteristics and providing insight into the underlying structure of the algorithms used.
机译:本文讨论了使用机器学习方法(包括深度模型架构)来预测近期危险能源状态(即失速,超速,高和快速,低和缓慢,不稳定的方法)的可行性。飞机状态预测,特别是能量状态预测,是向飞行机组提供视觉和听觉提示以改善其飞机状态意识(ASA)的重要步骤。缺乏ASA已被确定为商业航空事故的主要促成因素之一,因此改善ASA具有增强航空安全的潜力。在先前的研究中,开发了多种用于飞行机组人员信息管理和决策支持(IMDS)的能源预测警报(PAE)方法,并通过NASA飞行模拟器研究(AIME-1)的数据进行了测试,其中11名商业航空公司机组人员(22名飞行员) )完成了超过230个航班。先前测试过的飞机状态预测方法包括以下预测器阶段:(i)顺序随机滤波器,(ii)批次估计器,以及(iii)快速3DOF模型仿真。使用这些方法可以成功地预测失速,超速以及高速/低速慢速情况,时间范围可达300s。本文讨论了将机器学习技术用于能量状态预测的问题,并考虑了其基本的安全隐患和算法局限性,例如缺乏非标称训练数据,同时还研究了性能特征并提供了对算法底层结构的深入了解用过的。

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