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257 lines
6.2 KiB
Lua
257 lines
6.2 KiB
Lua
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--[[ $Id: x21.lua 9533 2009-02-16 22:18:37Z smekal $
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Grid data demo
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Copyright (C) 200 Werner Smekal
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This file is part of PLplot.
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PLplot is free software you can redistribute it and/or modify
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it under the terms of the GNU General Library Public License as published
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by the Free Software Foundation either version 2 of the License, or
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(at your option) any later version.
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PLplot is distributed in the hope that it will be useful,
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but WITHOUT ANY WARRANTY without even the implied warranty of
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MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
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GNU Library General Public License for more details.
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You should have received a copy of the GNU Library General Public License
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along with PLplot if not, write to the Free Software
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Foundation, Inc., 51 Franklin Street, Fifth Floor, Boston, MA 02110-1301 USA
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--]]
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-- initialise Lua bindings for PLplot examples.
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dofile("plplot_examples.lua")
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-- bitwise or operator from http://lua-users.org/wiki/BaseSixtyFour
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-- (c) 2006-2008 by Alex Kloss
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-- licensed under the terms of the LGPL2
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-- return single bit (for OR)
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function bit(x,b)
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return (math.mod(x, 2^b) - math.mod(x,2^(b-1)) > 0)
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end
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-- logic OR for number values
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function lor(x,y)
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result = 0
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for p=1,8 do result = result + (((bit(x,p) or bit(y,p)) == true) and 2^(p-1) or 0) end
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return result
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end
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-- Options data structure definition.
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pts = 500
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xp = 25
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yp = 20
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nl = 16
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knn_order = 20
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threshold = 1.001
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wmin = -1e3
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randn = 0
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rosen = 0
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function cmap1_init()
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i = { 0, 1 } -- left and right boundary
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h = { 240, 0 } -- blue -> green -> yellow -> red
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l = { 0.6, 0.6 }
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s = { 0.8, 0.8 }
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pl.scmap1n(256)
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pl.scmap1l(0, i, h, l, s)
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end
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function create_grid(px, py)
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local x = {}
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local y = {}
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for i = 1, px do
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x[i] = xm + (xM-xm)*(i-1)/(px-1)
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end
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for i = 1, py do
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y[i] = ym + (yM-ym)*(i-1)/(py-1)
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end
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return x, y
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end
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function create_data(pts)
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local x = {}
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local y = {}
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local z = {}
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for i = 1, pts do
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xt = (xM-xm)*pl.randd()
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yt = (yM-ym)*pl.randd()
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if randn==0 then
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x[i] = xt + xm
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y[i] = yt + ym
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else -- std=1, meaning that many points are outside the plot range
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x[i] = math.sqrt(-2*math.log(xt)) * math.cos(2*math.pi*yt) + xm
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y[i] = math.sqrt(-2*math.log(xt)) * math.sin(2*math.pi*yt) + ym
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end
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if rosen==0 then
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r = math.sqrt(x[i]^2 + y[i]^2)
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z[i] = math.exp(-r^2) * math.cos(2*math.pi*r)
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else
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z[i] = math.log((1-x[i])^2 + 100*(y[i] - x[i]^2)^2)
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end
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end
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return x, y, z
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end
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title = { "Cubic Spline Approximation",
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"Delaunay Linear Interpolation",
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"Natural Neighbors Interpolation",
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"KNN Inv. Distance Weighted",
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"3NN Linear Interpolation",
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"4NN Around Inv. Dist. Weighted" }
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xm = -0.2
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ym = -0.2
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xM = 0.6
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yM = 0.6
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pl.parseopts(arg, pl.PL_PARSE_FULL)
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opt = { 0, 0, wmin, knn_order, threshold, 0 }
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-- Initialize plplot
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pl.init()
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-- Initialise random number generator
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pl.seed(5489)
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x, y, z = create_data(pts) -- the sampled data
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zmin = z[1]
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zmax = z[1]
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for i=2, pts do
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if z[i]>zmax then zmax = z[i] end
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if z[i]<zmin then zmin = z[i] end
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end
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xg, yg = create_grid(xp, yp) -- grid the data at
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clev = {}
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pl.col0(1)
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pl.env(xm, xM, ym, yM, 2, 0)
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pl.col0(15)
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pl.lab("X", "Y", "The original data sampling")
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pl.col0(2)
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pl.poin(x, y, 5)
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pl.adv(0)
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pl.ssub(3, 2)
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for k = 1, 2 do
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pl.adv(0)
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for alg=1, 6 do
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zg = pl.griddata(x, y, z, xg, yg, alg, opt[alg])
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--[[
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- CSA can generate NaNs (only interpolates?!).
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- DTLI and NNI can generate NaNs for points outside the convex hull
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of the data points.
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- NNLI can generate NaNs if a sufficiently thick triangle is not found
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PLplot should be NaN/Inf aware, but changing it now is quite a job...
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so, instead of not plotting the NaN regions, a weighted average over
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the neighbors is done. --]]
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if alg==pl.GRID_CSA or alg==pl.GRID_DTLI or alg==pl.GRID_NNLI or alg==pl.GRID_NNI then
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for i = 1, xp do
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for j = 1, yp do
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if zg[i][j]~=zg[i][j] then -- average (IDW) over the 8 neighbors
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zg[i][j] = 0
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dist = 0
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for ii=i-1, i+1 do
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if ii<=xp then
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for jj=j-1, j+1 do
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if jj<=yp then
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if ii>=1 and jj>=1 and zg[ii][jj]==zg[ii][jj] then
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if (math.abs(ii-i) + math.abs(jj-j)) == 1 then
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d = 1
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else
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d = 1.4142
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end
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zg[i][j] = zg[i][j] + zg[ii][jj]/(d^2)
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dist = dist + d
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end
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end
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end
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end
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end
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if dist~=0 then
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zg[i][j] = zg[i][j]/dist
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else
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zg[i][j] = zmin
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end
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end
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end
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end
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end
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lzM, lzm = pl.MinMax2dGrid(zg)
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if lzm~=lzm then lzm=zmin else lzm = math.min(lzm, zmin) end
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if lzM~=lzM then lzM=zmax else lzM = math.max(lzM, zmax) end
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-- Increase limits slightly to prevent spurious contours
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-- due to rounding errors
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lzm = lzm-0.01
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lzM = lzM+0.01
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pl.col0(1)
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pl.adv(alg)
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if k==1 then
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for i = 1, nl do
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clev[i] = lzm + (lzM-lzm)/(nl-1)*(i-1)
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end
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pl.env0(xm, xM, ym, yM, 2, 0)
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pl.col0(15)
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pl.lab("X", "Y", title[alg])
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pl.shades(zg, xm, xM, ym, yM, clev, 1, 0, 1, 1)
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pl.col0(2)
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else
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for i = 1, nl do
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clev[i] = lzm + (lzM-lzm)/(nl-1)*(i-1)
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end
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cmap1_init()
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pl.vpor(0, 1, 0, 0.9)
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pl.wind(-1.1, 0.75, -0.65, 1.20)
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-- For the comparison to be fair, all plots should have the
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-- same z values, but to get the max/min of the data generated
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-- by all algorithms would imply two passes. Keep it simple.
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--
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-- pl.w3d(1, 1, 1, xm, xM, ym, yM, zmin, zmax, 30, -60)
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pl.w3d(1, 1, 1, xm, xM, ym, yM, lzm, lzM, 30, -40)
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pl.box3("bntu", "X", 0, 0,
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"bntu", "Y", 0, 0,
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"bcdfntu", "Z", 0.5, 0)
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pl.col0(15)
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pl.lab("", "", title[alg])
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pl.plot3dc(xg, yg, zg, lor(lor(pl.DRAW_LINEXY, pl.MAG_COLOR), pl.BASE_CONT), clev)
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end
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end
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end
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pl.plend()
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