基于混合建模的高速列车速度控制研究

Q2 Engineering Archives of Transport Pub Date : 2023-06-30 DOI:10.5604/01.3001.0016.3132
T. Hou, Li Tang, Hongxia Niu, Tingyang Zhao
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引用次数: 0

摘要

随着列车速度的不断提高,为实现交通自动化,列车自动驾驶取代司机驾驶已成为轨道交通的发展方向。高速列车自动运行中速度控制建模方法单一,缺乏对列车运行数据信息与物理模型结合的探索,导致系统建模精度低,影响了速度控制的有效性和高速列车的运行。为了进一步提高高速列车运行的动态建模精度和高速列车的速度控制效果,提出了一种基于机构和数据驱动混合建模的高速列车速度控制方法。首先,通过对高速列车的动力学分析,建立了高速列车的机构模型。其次利用改进的kernel-主成分回归算法,利用“郑西高速铁路”华山北站至西安北站CRH3高速列车的实际运行数据,建立了数据驱动模型,完成了机构模型的补偿和实际运行速度的误差校正高速列车的过程,并实现了机构和数据驱动的混合建模。最后,基于自然线和列车特性,开发了预测模糊PID控制算法,分别在混合模型和机构模型下完成了列车速度控制仿真。此外,还进行了分析和比较分析。结果表明,与基于机构模型的高速列车速度控制相比,基于混合建模的高速列车转速控制更准确,平均速度控制误差降低了69.42%。这可以有效降低速度控制误差,提高速度控制效果和运行效率,并验证了混合建模和算法的有效性。研究结果可为高速列车运行动态建模提供一种新的多模型融合建模的理想,进一步提高高速列车运行的安全性、舒适性和效率等控制目标,为高速列车的自动驾驶和智能驾驶提供参考。
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Research on speed control of high-speed trains based on hybrid modeling
With the continuous improvement of train speed, the automatic driving of trains instead of driver driving has become the development direction of rail transit in order to realize traffic automation. The application of single modeling methods for speed control in the automatic operation of high-speed trains lacks exploration of the com-bination of train operation data information and physical model, resulting in low system modeling accuracy, which impacts the effectiveness of speed control and the operation of high-speed trains. To further increase the dynamic modeling accuracy of high-speed train operation and the high-speed train's speed control effect, a high-speed train speed control method based on hybrid modeling of mechanism and data drive is put forward. Firstly, a model of the high-speed train's mechanism was created by analyzing the train's dynamics. Secondly, the improved kernel-principal component regression algorithm was used to create a data-driven model using the actual opera-tion data of the CRH3 (China Railway High-speed 3) high-speed train from Huashan North Railway Station to Xi'an North Railway Station of "Zhengxi High-speed Railway," completing the mechanism model compensation and the error correction of the speed of the actual operation process of the high-speed train, and realizing the hybrid modeling of mechanism and data-driven. Finally, the prediction Fuzzy PID control algorithm was devel-oped based on the natural line and train characteristics to complete the train speed control simulation under the hybrid model and the mechanism model, respectively. In addition, analysis and comparison analysis were conduct-ed. The results indicate that, compared to the high-speed train speed control based on the mechanism model, the high-speed train speed control based on hybrid modeling is more accurate, with an average speed control error reduced by 69.42%. This can effectively reduce the speed control error, improve the speed control effect and oper-ation efficiency, and demonstrate the efficacy of the hybrid modeling and algorithm. The research results can provide a new ideal of multi-model fusion modeling for the dynamic modeling of high-speed train operation, further improve control objectives such as safety, comfort, and efficiency of high-speed train operation, and pro-vide a reference for automatic driving and intelligent driving of high-speed trains.
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来源期刊
Archives of Transport
Archives of Transport Engineering-Automotive Engineering
CiteScore
2.50
自引率
0.00%
发文量
26
审稿时长
24 weeks
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