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www.eeworm.com/read/152779/12085734

m pathdef.m

function p = pathdef %PATHDEF Search path defaults. % PATHDEF returns a string that can be used as input to MATLABPATH % in order to set the path. % Copyright 1984-2000 The MathWorks,
www.eeworm.com/read/255284/12090546

m fig2_2.m

% This program can be used tore-produce Figure 2.2 of text clear all close all xg = linspace(-6,6,1500); % randowm variable between -4 and 4 xr = linspace(0,6,1500); % randowm variable between 0 a
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dat bookinfo.dat

[General Information] 书名=应用MATLAB建模与仿真 作者=陈桂明等编著 页数=398 SS号=10331931 出版日期=2001年3月第1版
www.eeworm.com/read/152580/12101027

m pathdef.m

function p = pathdef %PATHDEF Search path defaults. % PATHDEF returns a string that can be used as input to MATLABPATH % in order to set the path. % Copyright 1984-2000 The MathWorks,
www.eeworm.com/read/152430/12115066

txt readme.txt

Updated: January 11, 2002 To execute the Matlab version simply execute gui.m Enjoy. Greg Welch
www.eeworm.com/read/152112/12138986

m gseid.m

function X=gseid(A,B,P,delta, max1) % Input - A is an N x N nonsingular matrix % - B is an N x 1 matrix % - P is an N x 1 matrix; the initial guess % - delta is the tolerance for P %
www.eeworm.com/read/152112/12139011

m taylor.m

function T4=taylor(df,a,b,ya,M) %Input - df=[y' y'' y''' y'''']entered as a string 'df' % where y'=f(t,y) % - a and b are the left and right endpoints % - ya is the initial c
www.eeworm.com/read/152112/12139014

m gauss.m

function quad=gauss(f,a,b,A,W) %Input - f is the integrand input as a string 'f' % - a and b upper and lower limits of integration % - A is the 1 x N vector of abscissas from Table 7.
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m crnich.m

function U=crnich(f,c1,c2,a,b,c,n,m) %Input - f=u(x,0) as a string 'f' % - c1=u(0,t) and c2=u(a,t) % - a and b right endpoints of [0,a] and [0,b] % - c the constant in the heat equatio
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m jacobi.m

function X=jacobi(A,B,P,delta, max1) % Input - A is an N x N nonsingular matrix % - B is an N x 1 matrix % - P is an N x 1 matrix; the initial guess % - delta is the tolerance fo