prony 工具箱(in matlab)

上传者: zhaoj1123 | 上传时间: 2019-12-21 22:19:39 | 文件大小: 686KB | 文件类型: zip
Prony Toolbox is a software tool in MATLAB which performs Prony analysis. Prony Toolbox (PTbox) is designed based on several considerations including data preprocessing, model order selection, model order selection criteria, signal subspace selection, signal and noise separation, root inspection and assessing residuals. The PTbox provides flexibility to compare and display analysis results simultaneously for several parameter variations.

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评论信息

  • tanmeizhan2514 :
    还不错,值得研究
    2017-10-24
  • qq_34865776 :
    好东西,很好用
    2017-10-01
  • jilaizhi :
    R2016a 会提示有一个&quot;xlate&quot;函数没有定义,不知道是怎么搞,暂时把那一行程序换掉了。另外我的数据分析结果拟合很好,但是选择相应模式显示时发现不能正确显示,不知何故。
    2017-02-23
  • xiesivan :
    好资料,有详细使用说明就更好。学习中。。。
    2016-07-07
  • qq_32124243 :
    好东西的确是 但是不知道怎么用
    2015-12-15

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