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%蚂蚁算法test
%用产生的一个圆上的十个点来检验蚂蚁算法
clc
clear
%参数
alpha = 1 ; %信息素指数
beta = 5 ; %启发指数
rho = 0.5 ; %挥发系数
n = 16 ; %城市个数
k = 20 ; %迭代次数
m = n - 1 ; %蚂蚁只数,这里取比城市数目少一的蚂蚁只数
Q = 100 ;
bestr = inf ;
%产生一个圆上的十个点
x = zeros(1,n) ;
y = x ;
for i = 1 : (n/2)
x(i) = rand * 20 ;
y(i) = sqrt(100 - (x(i) - 10) ^ 2) + 10;
end
for i = (n/2 + 1) : n
x(i) = rand * 20 ;
y(i) = - sqrt(100 - (x(i) - 10) ^ 2) + 10;
end
plot(x,y,‘.‘) ;
%计算距离
d = zeros(n,n) ;
for i = 1 : n
for j = 1 : n
d(i,j) = sqrt( ( x(i) - x(j) ) ^ 2 + ( y(i) - y(j) ) ^ 2) ;
end
end
temp = min(d) ;
dmin = temp(1) ;
tau = ones(n,n) ;
%tau = tau ./ (n * dmin) ; %初始化tau信息素矩阵
%开始迭代
for i = 1 : k
%初始化
visited = zeros(m,n) ; %用visited 来储存所有蚂蚁走过的城市 m×n 其中未到达的城市为0
visited(:,1) = (randperm(n,m))‘; %将m只蚂蚁随机放在n座城市 即产生一列1到n的随机数进行第一列数据的更新
for b = 2 : n %所有蚂蚁都走到第b个城市时
current = visited(:,(b-1)) ; %所有蚂蚁现在所在城市 m×1
allow = zeros(m,(n - b + 1)) ;
for a = 1 : m
j = 1 ;
for s = 1 : n
if length(find(visited(a,:) == s)) == 0
allow(a,j) = s ;
j = j + 1 ;
end
end
end
l = n-b+1 ;
for a = 1 : m %分析第a只蚂蚁
p = zeros(1,l) ;
for j = 1 : l %根据下式来选择下一个城市
p(j) = ( ( tau( current(a,1) , allow(a,j) ) ) ^ alpha ) * ( ( 1 / d( current(a,1) , allow(a,j) ) ) ^ beta ) ;
end
p = p ./ sum(p) ; %采用轮盘赌的方式
p = cumsum(p) ;
pick = rand ;
for c = 1 : l
if pick < p(c)
visited(a,b) = allow(a,c) ; %找到符合要求的城市 并 记入蚂蚁a的路径中
break ;
end
end
end
end
%计算每只蚂蚁所走的路径总长
L = zeros(1,m) ;
for a = 1 : m
t = d(visited(a,n),visited(a,1)) ;
for b = 1 : (n - 1)
t = t + d(visited(a,b),visited(a,(b + 1)));
end
L(a) = t ;
end
[newbestr,newbestant] = min(L) ; %寻本次迭代最短路径及其相应蚂蚁
if newbestr < bestr %到目前为止最优值的保存
bestr = newbestr ;
bestroad = visited(newbestant,:) ;
end
%离线更新信息素矩阵
%挥发
for a = 1 : m
tau(visited(a,n),visited(a,1)) = tau(visited(a,n),visited(a,1)) * (1 - rho) ;
for b = 1 : (n - 1)
tau(visited(a,b),visited(a,(b + 1))) = tau(visited(a,b),visited(a,(b + 1))) * (1 - rho) ;
end
end
%加强
tau(visited(newbestant,n),visited(newbestant,1)) = tau(visited(newbestant,n),visited(newbestant,1)) + Q / L(newbestant) ;
for b = 1 : (n - 1)
tau(visited(newbestant,b),visited(newbestant,(b + 1))) = tau(visited(newbestant,b),visited(newbestant,(b + 1))) + Q / L(newbestant) ;
end
end
bestr
bestx = zeros(1,n) ;
besty = zeros(1,n) ;
for i = 1 : n
bestx(i) = x(bestroad(i)) ;
besty(i) = y(bestroad(i)) ;
end
bestx = [bestx,bestx(1)] ;
besty = [besty,besty(1)] ;
plot(bestx,besty,‘-‘) ;
蚁群算法matlab实现
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原文地址:http://www.cnblogs.com/xiaoyajiang/p/5950389.html