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adaptive-filter-matlab-code

于 2014-12-17 发布 文件大小:40KB
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代码说明:

  自适应滤波器原理,第四版计算机实验matlab源程序。(Adaptive filter theory, fourth edition computer matlab source code.)

文件列表:

自适应滤波器原理(Fourth)matlab源程序
......................................\Chap_11
......................................\.......\batch.m,560,2001-03-19
......................................\.......\make_rp.m,316,1999-10-11
......................................\.......\plot_11_5_abc.m,583,2001-03-11
......................................\.......\plot_mvdr.m,391,2001-07-06
......................................\.......\qrd_rls_AR_pred.m,3235,1999-10-06
......................................\.......\run_qrd_rls_mvdr.m,1495,1999-10-11
......................................\Chap_12
......................................\.......\batch.m,202,2001-07-04
......................................\.......\batch1.m,202,2001-08-10
......................................\.......\batch2.m,202,2001-08-10
......................................\.......\make_rp.m,346,2001-07-04
......................................\.......\ms.m,28,2001-07-04
......................................\.......\ns.m,28,2001-07-04
......................................\.......\plot12_1.m,306,2001-07-05
......................................\.......\plot12_2.m,215,2001-07-05
......................................\.......\plot12_3.m,968,2001-07-05
......................................\.......\qrd_lsl.m,5916,2001-07-04
......................................\.......\run_qrd_lsl.m,1070,2001-07-04
......................................\Chap_16
......................................\.......\plot_16_12.m,750,2001-08-10
......................................\.......\plot_16_13.m,826,2001-08-10
......................................\.......\plot_16_14.m,824,2001-08-10
......................................\.......\plot_16_14.m~,826,2001-08-10
......................................\Chap_4
......................................\......\batch.m,371,2001-03-19
......................................\......\make_plot.m,1599,2001-05-25
......................................\......\make_rp.m,474,2001-03-19
......................................\......\plot_4_10.m,1183,2001-06-22
......................................\......\plot_4_11a_and_4_12a.m,263,2001-03-19
......................................\......\plot_4_11b_and_4_12b.m,264,2001-03-19
......................................\......\plot_4_8a_and_4_9a.m,258,2001-08-10
......................................\......\plot_4_8b_and_4_9b.m,258,2001-08-10
......................................\......\plot_4_8c_and_4_9c.m,262,2001-08-10
......................................\......\plot_4_8d_and_4_9d.m,330,2001-08-10
......................................\......\steepest_descent.m,718,2001-06-22
......................................\Chap_5_EQ
......................................\.........\batch.m,829,2001-03-22
......................................\.........\lms_eq.m,1372,1999-10-10
......................................\.........\make_rp.m,326,1999-10-11
......................................\.........\mksstrndata.m,451,1999-10-09
......................................\.........\plot_5_22.m,182,2001-05-24
......................................\.........\plot_5_23.m,350,2001-05-24
......................................\.........\plot_5_24.m,163,2001-05-24
......................................\.........\run_lms_eq.m,988,1999-10-10
......................................\Chap_5_MVDR
......................................\...........\batch.m,1228,2001-03-19
......................................\...........\lms.m,1255,1999-09-28
......................................\...........\make_rp.m,292,1999-10-10
......................................\...........\plot_5_25_abc.m,468,2001-05-24
......................................\...........\plot_5_26.m,152,2001-05-24
......................................\...........\plot_mvdr.m,387,1999-10-10
......................................\...........\run_lms_mvdr.m,1276,1999-10-10
......................................\Chap_5_Pred
......................................\...........\batch.m,626,2001-03-19
......................................\...........\lms_AR_pred.m,1400,1999-10-09
......................................\...........\make_plots.m,1627,2001-01-30
......................................\...........\make_rp.m,271,2001-01-08
......................................\...........\plot_5_15.m,280,2001-05-24
......................................\...........\plot_5_16.m,382,2001-05-24
......................................\...........\plot_5_17.m,436,2001-05-25
......................................\...........\plot_5_18.m,395,2001-05-24
......................................\...........\plot_5_19_ab.m,699,2001-05-24
......................................\...........\plot_P.m,436,2001-05-25
......................................\...........\run_lms_pred.m,828,1999-10-09
......................................\Chap_7
......................................\......\batch.m,282,2001-03-19
......................................\......\dct_lms.m,2715,2001-05-24
......................................\......\dct_lms_C.m,3076,1999-11-29
......................................\......\go.m,174,1999-11-30
......................................\......\make_plots.m,1346,2001-01-11
......................................\......\make_rp.m,372,1999-11-29
......................................\......\plot_7_7.m,279,2001-05-24
......................................\......\plot_7_8.m,315,2001-04-28
......................................\......\plot_7_9_abcd.m,545,2001-03-12
......................................\......\run_dctlmseq.m,1083,1999-12-01
......................................\Chap_9
......................................\......\batch.m,270,2001-03-19
......................................\......\make_plots.m,400,2001-01-12
......................................\......\make_rp.m,281,1999-10-11
......................................\......\mksstrndata.m,452,1999-09-19
......................................\......\plot_9_6.m,188,2001-03-11
......................................\......\plot_9_7.m,256,2001-05-24
......................................\......\rls_AR_pred.m,1900,1999-10-04
......................................\......\run_rls_eq.m,979,2001-06-06

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