基于残差的制动系统时空数据预测

Jiaxin Wan, K. Zhou, Pei Xu, M. Tong
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引用次数: 0

摘要

随着工业智能化水平的提高,列车制动系统也迎来了更加快速的发展,然而,制动系统实验平台建设所需的巨额资金消耗让研究人员望而却步,灵活性低也阻碍了这一领域的研究。近年来,半实物仿真平台被引入到制动系统的研究领域。采用级联策略,小列车可以模拟大列车的工况。在此过程中,有一个非常重要的环节:预测相同试验时间下后续列车的压力值。我们发现,同一次试验中属于不同位置列车时间序列数据的气压值仍然具有空间性。因此,这些都是具有时空特征的数据。不仅如此,我们还将不同试验室的时空特征联系起来,作为测试的一个新的考虑点。本文提出了一种基于残差(R-LSTM)思想的长短期记忆(LSTM)网络,用于预测不同试验中不同地点列车间的气压,使用的RMSE指数达到2.7938。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatio-Temporal Data Prediction of Braking System Based on Residual Error
With the improvement of industrial intelligence, the train braking system has also ushered in a more rapid development, however, the huge consumption of funds required for the construction of the brake system experimental platform has discouraged researchers, and the low flexibility also hinders the research of this region. In the recent years, the hardware-in-the-loop (HIL) simulation platform was introduced into the field of braking system research. With the cascade strategy, small trains can simulate the working conditions of large trains. In this process, there is a very important link: predict the pressure value of subsequent trains under the same test time. We found that the air pressure values which belong to time-series data of trains at different locations in one experiment still have spatiality. Therefore, these are data with temporal and spatial characteristics. Not only that, we will connect the temporal and spatial characteristics of different test rooms as a new consideration point for testing. In this paper, we propose a long short-term memory (LSTM) network based on the idea of residual error (R-LSTM), which predicts the air pressure between trains at different locations in different trials, and the RMSE index used has reached 2.7938.
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