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Deep Spatio-Temporal Neural Networks for Risk Prediction and Decision Support in Aviation Operations

机译:航空运营中风险预测和决策支持的深蓝色时间网络

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摘要

The maintenance and improvement of safety are among the most critical concerns in civil aviation operations. Due to the increased availability of data and improvements in computing power, applying artificial intelligence technologies to reduce risk in aviation safety has gained momentum. In this paper, a framework is developed to build a predictive model of future aircraft trajectory that can be utilized online to assist air crews in their decision-making during approach. Flight data parameters from the approach phase between certain approach altitudes (also called gates) are utilized for training an offline model that predicts the aircraft's ground speed at future points. This model is developed by combining convolutional neural networks (CNNs) and long short-term memory (LSTM) layers. Due to the myriad of model combinations possible, hyperband algorithm is used to automate the hyperparameter tuning process to choose the best possible model. The validated offline model can then be used to predict the aircraft's future states and provide decision-support to air crews. The method is demonstrated using publicly available Flight Operations Quality Assurance (FOQA) data from the National Aeronautics and Space Administration (NASA). The developed model can predict the ground speed at an accuracy between 1.27% and 2.69% relative root-mean-square error. A safety score is also evaluated considering the upper and lower bounds of variation observed within the available data set. Thus, the developed model represents an improved performance over existing techniques in literature and shows significant promise for decision-support in aviation operations.
机译:维护和提高安全是民用航空业务中最关键的问题之一。由于增加了数据的可用性和计算能力的改进,应用人工智能技术来降低航空安全风险已经获得了势头。在本文中,开发了一个框架,以构建未来飞机轨道的预测模型,这些飞机轨迹可以在线使用,以协助空中机组在方法中的决策。从某些方法平均(也称为栅极)之间的接近相位的飞行数据参数用于培训一个离线模型,该模型预测飞机在未来点的地面速度。该模型是通过组合卷积神经网络(CNNS)和长短期存储器(LSTM)层来开发的。由于MISRIAD的模型组合可能,HyperBand算法用于自动化超参数调整过程以选择最佳模型。然后可以使用验证的离线模型来预测飞机的未来状态,并为空中机组人员提供决策支持。通过来自美国国家航空航天局(NASA)的公开航班运营质量保证(FOQA)数据来证明该方法。开发的模型可以以1.27%和2.69%相对根均方误差的精度预测地速度。考虑到在可用数据集中观察到的变化的上限和下限,还评估安全分数。因此,开发的模型代表了对文献中现有技术的改进性能,并且对航空运营中的决策支持显示了重要的承诺。

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