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edge

于 2018-09-05 发布 文件大小:95KB
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代码说明:

  工程算法 这是一个很有用的工程数值算法集锦(Engineering algorithm this is a useful collection of engineering numerical algorithms.)

文件列表:

NrhtMD\D02\D2R1.TXT, 1768 , 2002-06-07
NrhtMD\D02\D2R2.TXT, 874 , 2002-06-07
NrhtMD\D02\D2R7.TXT, 1715 , 2002-06-07
HNXj6C\C16\ADI.CPP, 3788 , 2002-04-13
HNXj6C\C11\AMOEBA.CPP, 3142 , 2002-04-12
HNXj6C\C04\ASS.CPP, 259 , 2002-04-04
HNXj6C\C13\AVEVAR.CPP, 330 , 2002-04-07
HNXj6C\C08\BALANC.CPP, 1196 , 2002-04-04
HNXj6C\C04\BESIAN.CPP, 2138 , 2002-04-04
HNXj6C\C04\BESJAN.CPP, 2170 , 2002-04-04
HNXj6C\C04\BESSI.CPP, 671 , 2002-04-04
HNXj6C\C04\BESSI0.CPP, 897 , 2002-04-03
HNXj6C\C04\BESSI1.CPP, 912 , 2002-04-03
HNXj6C\C04\BESSJ.CPP, 1328 , 2002-04-03
HNXj6C\C04\BESSJ0.CPP, 1327 , 2002-04-03
HNXj6C\C04\BESSJ1.CPP, 1454 , 2002-04-03
HNXj6C\C04\BESSK.CPP, 372 , 2002-04-04
HNXj6C\C04\BESSK0.CPP, 831 , 2002-04-03
HNXj6C\C04\BESSK1.CPP, 878 , 2002-04-03
HNXj6C\C04\BESSY.CPP, 370 , 2002-04-03
HNXj6C\C04\BESSY0.CPP, 1290 , 2002-04-03
HNXj6C\C04\BESSY1.CPP, 1417 , 2002-04-03
HNXj6C\C04\BETA.CPP, 127 , 2002-04-03
HNXj6C\C04\BETACF.CPP, 892 , 2002-04-10
HNXj6C\C04\BETAI.CPP, 539 , 2002-04-03
HNXj6C\C04\BICO.CPP, 119 , 2002-04-03
HNXj6C\C15\BKSUB.CPP, 775 , 2002-04-12
HNXj6C\C06\BNLDEV.CPP, 1302 , 2002-04-05
HNXj6C\C11\BRENT.CPP, 2507 , 2002-04-12
HNXj6C\C04\BS.CPP, 1321 , 2002-04-04
HNXj6C\C14\BSSTEP.CPP, 1972 , 2002-04-06
HNXj6C\C05\CHDER.CPP, 387 , 2002-04-02
HNXj6C\C05\CHEBEV.CPP, 402 , 2002-04-02
HNXj6C\C05\CHEBFT.CPP, 563 , 2002-04-10
HNXj6C\C05\CHEBPC.CPP, 567 , 2002-04-02
HNXj6C\C05\CHINT.CPP, 420 , 2002-04-02
HNXj6C\C01\CHOBSB.CPP, 585 , 2002-04-01
HNXj6C\C01\CHODCM.CPP, 748 , 2002-04-01
HNXj6C\C13\CHSONE.CPP, 443 , 2002-04-12
HNXj6C\C13\CHSTWO.CPP, 471 , 2002-04-12
HNXj6C\C12\CONVLV.CPP, 1749 , 2002-04-12
HNXj6C\C12\CORREL.CPP, 612 , 2002-04-06
HNXj6C\C12\COSFT.CPP, 1264 , 2002-04-12
HNXj6C\C09\COVSRT.CPP, 953 , 2002-04-04
NrhtMD\D10\D10R1.CPP, 314 , 2002-04-12
NrhtMD\D10\D10R10.CPP, 1479 , 2002-04-12
NrhtMD\D10\D10R11.CPP, 1687 , 2002-04-12
NrhtMD\D10\D10R12.CPP, 1497 , 2002-04-12
NrhtMD\D10\D10R13.CPP, 1770 , 2002-04-06
NrhtMD\D10\D10R2.CPP, 858 , 2002-04-12
NrhtMD\D10\D10R3.CPP, 844 , 2002-04-12
NrhtMD\D10\D10R4.CPP, 788 , 2002-04-12
NrhtMD\D10\D10R5.CPP, 795 , 2002-04-12
NrhtMD\D10\D10R6.CPP, 794 , 2002-04-12
NrhtMD\D10\D10R7.CPP, 793 , 2002-04-12
NrhtMD\D10\D10R8.CPP, 933 , 2002-04-12
NrhtMD\D10\D10R9.CPP, 933 , 2002-04-12
NrhtMD\D11\D11R1.CPP, 723 , 2002-04-12
NrhtMD\D11\D11R10.CPP, 2254 , 2002-04-12
NrhtMD\D11\D11R2.CPP, 1360 , 2002-04-12
NrhtMD\D11\D11R3.CPP, 1415 , 2002-04-12
NrhtMD\D11\D11R4.CPP, 1583 , 2002-04-12
NrhtMD\D11\D11R5.CPP, 1363 , 2002-04-12
NrhtMD\D11\D11R6.CPP, 1076 , 2002-04-12
NrhtMD\D11\D11R7.CPP, 1227 , 2002-04-12
NrhtMD\D11\D11R8.CPP, 1636 , 2002-04-12
NrhtMD\D11\D11R9.CPP, 1617 , 2002-04-12
NrhtMD\D12\D12R1.CPP, 3262 , 2002-04-12
NrhtMD\D12\D12R2.CPP, 1987 , 2002-04-12
NrhtMD\D12\D12R3.CPP, 1690 , 2002-04-12
NrhtMD\D12\D12R4.CPP, 1622 , 2002-04-12
NrhtMD\D12\D12R5.CPP, 1646 , 2002-04-12
NrhtMD\D12\D12R6.CPP, 1317 , 2002-04-12
NrhtMD\D12\D12R7.CPP, 1016 , 2002-04-12
NrhtMD\D12\D12R8.CPP, 1661 , 2002-04-12
NrhtMD\D13\D13R1.CPP, 1711 , 2002-04-12
NrhtMD\D13\D13R10.CPP, 973 , 2002-04-07
NrhtMD\D13\D13R11.CPP, 1001 , 2002-04-12
NrhtMD\D13\D13R12.CPP, 909 , 2002-04-07
NrhtMD\D13\D13R2.CPP, 887 , 2002-04-07
NrhtMD\D13\D13R3.CPP, 668 , 2002-04-07
NrhtMD\D13\D13R4.CPP, 1015 , 2002-04-12
NrhtMD\D13\D13R5.CPP, 778 , 2002-04-07
NrhtMD\D13\D13R6A.CPP, 1257 , 2002-04-12
NrhtMD\D13\D13R6B.CPP, 1684 , 2002-04-12
NrhtMD\D13\D13R7.CPP, 1091 , 2002-04-12
NrhtMD\D13\D13R8.CPP, 1123 , 2002-04-12
NrhtMD\D13\D13R9.CPP, 1186 , 2002-04-07
NrhtMD\D14\D14R1.CPP, 1272 , 2002-04-06
NrhtMD\D14\D14R2.CPP, 1296 , 2002-04-06
NrhtMD\D14\D14R3.CPP, 1293 , 2002-04-06
NrhtMD\D14\D14R4.CPP, 1280 , 2002-04-06
NrhtMD\D14\D14R5.CPP, 1352 , 2002-04-06
NrhtMD\D14\D14R6.CPP, 1192 , 2002-04-06
NrhtMD\D14\D14R7.CPP, 1267 , 2002-04-06
NrhtMD\D14\D14R8.CPP, 1185 , 2002-04-06
NrhtMD\D15\D15R1.CPP, 2216 , 2002-04-12
NrhtMD\D15\D15R2.CPP, 2473 , 2002-04-12
NrhtMD\D16\D16R1.CPP, 1341 , 2002-04-13
NrhtMD\D16\D16R2.CPP, 1612 , 2002-04-13

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