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Position calculation models by neural computing and online learning methods for high-speed train

机译:基于神经计算和在线学习方法的高速列车位置计算模型

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摘要

For high-speed trains, high precision of train positioning is important to guarantee train safety and operational efficiency. By analyzing the operational data of Beijing-Shanghai high-speed railway, we find that the currently used average speed model (ASM) is not good enough as the relative error is about 2.5 %. To reduce the positioning error, we respectively establish three models for calculating train positions by advanced neural computing methods, including back-propagation (BP), radial basis function (RBF) and adaptive network-based fuzzy inference system (ANFIS). Furthermore, six indices are defined to evaluate the performance of the three established models. Compared with ASM, the positioning error can be reduced by about 50 % by neural computing models. Then, to increase the robustness of neural computing models and real-time response, online learning methods are developed to update the parameters in the last layer of neural computing models by the gradient descent method. With the online learning methods, the positioning error of neural computing models can be further reduced by about 10 %. Among the three models, the ANFIS model is the best in both training and testing. The BP model is better than the RBF model in training, but worse in testing. In a word, the three models can reduce the half number of transponders to save the cost under the same positioning error or reduce the positioning error about 50 % in the case of the same number of transponders.
机译:对于高速火车,火车定位的高精度对于保证火车安全和运行效率很重要。通过对京沪高铁运行数据的分析,发现目前使用的平均速度模型(ASM)还不够好,相对误差约为2.5%。为了减少定位误差,我们分别通过先进的神经计算方法建立了三个用于计算列车位置的模型,包括反向传播(BP),径向基函数(RBF)和基于自适应网络的模糊推理系统(ANFIS)。此外,定义了六个指标来评估三个已建立模型的性能。与ASM相比,通过神经计算模型可以将定位误差降低约50%。然后,为了提高神经计算模型的鲁棒性和实时响应,开发了在线学习方法,以通过梯度下降法更新神经计算模型最后一层的参数。使用在线学习方法,可以将神经计算模型的定位误差进一步降低约10%。在这三个模型中,ANFIS模型在训练和测试方面都是最好的。 BP模型在训练方面优于RBF模型,但在测试方面却较差。简而言之,在相同定位误差的情况下,这三种模型可以减少一半的转发器以节省成本,或者在相同数量的转发器的情况下将定位误差降低约50%。

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