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Correlation Coefficient Based Cluster Data Preprocessing and LSTM Prediction Model for Time Series Data in Large Aircraft Test Flights

机译:基于相关系数基于系数的集群数据预处理和LSTM预测模型在大型飞机测试航班中的时间序列数据

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The Long Short-Term Memory (LSTM) model has been applied in recent years to handle time series data in multiple application domains, such as speech recognition and financial prediction. While the LSTM prediction model has shown promise in anomaly detection in previous research, uncorrelated features can lead to unsatisfactory analysis result and can complicate the prediction model due to the curse of dimensionality. This paper proposes a novel method of clustering and predicting multidimensional aircraft time series. The purpose is to detect anomalies in flight vibration in the form of high dimensional data series, which are collected by dozens of sensors during test flights of large aircraft. The new method is based on calculating the Spearman's rank correlation coefficient between two series, and on a hierarchical clustering method to cluster related time series. Monotonically similar series are gathered together and each cluster of series is trained to predict independently. Thus series which are uncorrelated or of low relevance do not influence each other in the LSTM prediction model. The experimental results on COMAC's (Commercial Aircraft Corporation of China Ltd) C919 flight test data show that our method of combining clustering and LSTM model significantly reduces the root mean square error of predicted results.
机译:近年来已经应用了长短期内存(LSTM)模型,以处理多个应用领域中的时间序列数据,例如语音识别和财务预测。虽然LSTM预测模型在先前的研究中显示了异常检测中的承诺,但不相关的特征可能导致不令人满意的分析结果,并且由于维度的诅咒,可以使预测模型复杂化。本文提出了一种聚类和预测多维飞机时间序列的新方法。目的是以高维数据系列的形式检测飞行振动中的异常,这在大型飞机的测试飞行期间由数十个传感器收集。新方法基于计算Spearman的秩相关系数在两个系列之间,以及在分层聚类方法上到群集相关时间序列。单调相似的系列聚集在一起,每个系列系列均受到培训以便独立预测。因此,不相关或低相关性的系列不会在LSTM预测模型中彼此影响。 COMAC(中国商业飞机公司有限公司)的实验结果C919飞行试验数据表明,我们组合聚类和LSTM模型的方法显着降低了预测结果的根均方误差。

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