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The Algorithm of Track Occupied Identification base on HMM

机译:HMM上轨道占用识别群的算法

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Precise location of a train on the rail network is important to train control system. The general problem of locating a train on closely-spaced parallel tracks is hard to determine the track occupied by train simply relying on GNSS. Hidden Markov Model (HMM) is widely used in speech processing of a time series model. This paper applied the HMM to the track occupied automatic identification, established the HMM of tracks, resolved the problem of track occupied identification using GNSS, and progressive studied the impact on identification, when changing the state number of the HMM, GNSS output frequency and train speed, then the optimal parameters are determined.
机译:轨道网络上火车的精确位置对于培训控制系统很重要。在紧密间隔的平行轨道上定位火车的一般问题很难确定火车占据的轨道,只需依赖于GNSS。隐马尔可夫模型(HMM)广泛用于时间序列模型的语音处理。本文将HMM应用于播放的自动识别,建立了曲目的恒生术,解决了使用GNSS的跟踪占用识别问题,并且逐步研究了对识别的影响,改变了HMM的状态数量,GNSS输出频率和火车速度,然后确定最佳参数。

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