Predictive maintenance systems have the potential to significantly reduce costs for maintaining aircraft fleets as well as provide improved safety by detecting maintenance issues before they come severe. However, the development of such systems has been limited due to a lack of publicly labeled multivariate time series (MTS) sensor data. MTS classification has advanced greatly over the past decade, but there is a lack of sufficiently challenging benchmarks for new methods. This work introduces the NGAFID Maintenance Classification (NGAFID-MC) dataset as a novel benchmark in terms of difficulty, number of samples, and sequence length. NGAFID-MC consists of over 7,500 labeled flights, representing over 11,500 hours of per second flight data recorder readings of 23 sensor parameters. Using this benchmark, we demonstrate that Recurrent Neural Network (RNN) methods are not well suited for capturing temporally distant relationships and propose a new architecture called Convolutional Multiheaded Self Attention (Conv-MHSA) that achieves greater classification performance at greater computational efficiency. We also demonstrate that image inspired augmentations of cutout, mixup, and cutmix, can be used to reduce overfitting and improve generalization in MTS classification. Our best trained models have been incorporated back into the NGAFID to allow users to potentially detect flights that require maintenance as well as provide feedback to further expand and refine the NGAFID-MC dataset.
翻译:预测性维修系统有可能大幅降低机队维修费用,并通过在维修问题严重之前发现维修问题来提高安全性;然而,由于缺乏公开标签的多变时间序列(MTS)的传感器数据,这类系统的开发有限;过去十年来,多边贸易体制的分类进展很大,但缺乏足够具有挑战性的新方法基准;这项工作采用NGAFID维修分类(NGAFID-MC)数据集,作为在难度、样品数量和序列长度方面提高分类性能的新基准;NGAFID-MC由7 500多次有标签的航班组成,代表每第二次飞行数据记录仪读取23个传感器参数超过11 500小时;我们通过这一基准表明,经常性神经网络(RNNN)方法不适合捕捉时间遥远的关系,但又提出一个称为Convolucialal-MHESA(Con-MHSA)的新结构,该结构在提高计算效率、样品和序列长度方面实现更高程度的分类。