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Research on Fault Recognition Method of On-board Equipment Based on BP Neural Network optimized by Bayesian Regularized

机译:基于BP Neural网络优化的基于BP神经网络的板载设备故障识别方法研究

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As the core of guaranteeing the safety of high-speed railway traffics and improving transportation efficiency, Chinese Train Control System (CTCS) is the nerve center of railway transportation. As the key component of the CTCS, the on-board equipment is of great significance to diagnose its fault location quickly and effectively. At present, the fault diagnosis method based on artificial intelligence of on-board equipment is few, and mainly depends on artificial experience. Taking the data of CTCS-300T as the research objects, this paper presented a fault classification and recognition method for the on-board equipment based on Back-Propagation (BP) neural network model, and then used Bayesian regularization algorithm to optimize neural network model. The simulation results shows that the optimized model has more stable performance and higher generalization ability, and has obvious superiority compared with the BP network. And the accuracy of the unknown samples' classification is improved significantly.
机译:作为保证高速铁路交通安全和提高运输效率的核心,中国火车控制系统(CTC)是铁路运输的神经中心。作为CTCS的关键组成部分,车载设备具有重要意义,可快速有效地诊断其故障位置。目前,基于板载设备人工智能的故障诊断方法很少,主要取决于人工经验。采用CTCS-300T的数据作为研究对象,本文提出了一种基于背部传播(BP)神经网络模型的板载设备的故障分类和识别方法,然后使用贝叶斯正则化算法优化神经网络模型。仿真结果表明,优化的模型具有更稳定的性能和更高的泛化能力,与BP网络相比具有明显的优势。未知样本分类的准确性显着提高。

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