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小波包方法在车载FSK信号中的应用

Applications of wavelet packet theory on cab FSK signals

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【作者】 孙艳朋贾利民范明

【Author】 SUN Yan peng, JIA Li min, FAN Ming (Signal & Communication Research Institute, China Academy of Railway Sciences, Beijing 100081, China)

【机构】 铁道科学研究院通信信号研究所!北京100081

【摘要】 FSK信号作为保障铁路安全运行的主要信号制式 ,在国内铁路上现在有两种 ,是法国引进的 UT信号和国内自主开发的 YP信号。小波变换是继傅里叶变换之后的重大突破 ,而小波包则是小波变换的进一步发展 ,克服了小波变换的一些不足。本文首先研究了车载 FSK信号的特征 ,再利用小波包对车载 FSK信号进行滤波处理。文中 ,给出了如何确定给定频率的信号在小波包分解树各个分解层中对应节点的算法 ,在滤波处理过程中 ,为了处理带内的噪声 ,也给出了采用阈值的方法来减少带内白噪声 ,阈值的选取充分应用到 FSK信号的小波包分解的特点。最后 ,我们给出了计算机产生的仿真 FSK信号和现场采集的 FSK信号的两种仿真 ,仿真结果表明 ,根据车载 FSK信号的特性 ,小波包方法是处理车载 FSK信号的有效方法。

【Abstract】 As the key signal system guaranteeing the safety for the railway, there are two types of FSK system used now by China railway: UT signal imported from France and the homemade YP signal. Wavelet transform is a big breakthrough after Fourier transforms, and the wavelet packet theory is the further development for wavelet transform, for it overcomes some shortcomings of wavelet transform. In this article, we study first the main characters of cab FSK signal, then the wavelet packets method is applied to the FSK signal filtering. We give an algorithm that determines the corresponding decomposition node for a signal with a pre specified frequency in the decomposition tree. In order to reduce the in band white noise in the denoising process, we give an algorithm based on threshold technology, and we also give a method to calculate the threshold that takes full advantage of the character of the wavelet packet decomposition of the FSK signal. In the last part of the article,a simulations on both computer simulation data and field data are given, and the simulation results show that the wavelet packet theory is an effective filtering method.

【关键词】 小波包FSK信号处理滤波
【Key words】 wavelet packetFSKsignal processingfiltering
  • 【文献出处】 铁道学报 ,Journal of The China Railway Society , 编辑部邮箱 ,2001年02期
  • 【分类号】U284
  • 【被引频次】13
  • 【下载频次】129
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