m基于负价环N算法的无线传感器网络性能matlab仿真

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1.算法仿真效果

matlab2022a仿真结果如下:

1.png

2.png

3.png

4.png  

2.算法涉及理论知识概要

负环的定义:负环是指权值和为负数的环。负环会使图的最短路径计算陷入死循环,因此,存在负环的图不存在最短路。

 

负环的计算方法:

负环有两种计算方法,都是基于Bellman-Ford算法或者SPFA算法。

第一种算法是:统计每个点的入队次数,如果某个点入队大于等于n次,则说明有负环

第二种算法是:统计到某个点的最短路所经过点的个数,如果经过n个点,则说明存在负环。

(一般情况下,我们使用第二种算法)

由于当负环存在时,SPFA会陷入死循环,且n是非死循环的最坏情况。所以以上两种算法是正确的。

 

求负环算法的编程实现

首先将所有点的距离都赋值为0

然后将所有的点入队。

 

         在100m*100m随机构建12个节点,节点距离在30m内通过有向线相连,仿真独立进行1000循环。其中N_j可设置为500~1000随机数。

 

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        通过使用N算法进行求解,具体N算法流程已在文中介绍,主要针对111.pdf中2,3部分进行仿真,即单用户,具有优先级的多用户,没有区别的多用户,其中针对多用户,源节点目的节点可按:s_1=1,d_1=12;s_2=2,d_2=10;s_3=3,d_3=9;s_4=5,d_5=11进行设置。

 

3.MATLAB核心程序 `USER            = [2,3,5];

for jks = 1:length(USER);

 

Traffic_VolumeS = [20];

SR              = [10:10:60];

Es3 = [];

for jjj = 1:length(SR)

    Traffic_Volume = Traffic_VolumeS;

    Loop           = 9;

    Es             = zeros(MTKL,Loop);

    rng(5*jjj);

    for i = 1:MTKL

        i

 

        %随机12个节点

        X      = SCALE*rand(1,Note);

        Y      = SCALE*rand(1,Note);

        %30以内有相线相连接

        xk_ij = zeros(Note,Note);

        w_ij  = zeros(Note,Note);

        b_ij  = zeros(Note,Note);

        for j1 = 1:Note

            for j2 = 1:Note

                dist = sqrt((X(j1)-X(j2))^2 + (Y(j1)-Y(j2))^2);

                if dist <= Dis_R & j1~=j2

                   %Select a feasible route with f = fij,这里构造一个连接矩阵,将相互连接的用1表示

                   xk_ij(j1,j2) = 1;

                   %随机分配cost

                   b_ij(j1,j2)  = 50*randn-30;

                end

            end

        end

        EZ = 0;

        for js2 = 1:USER(jks)

            %初始值

            fij        = (1+rand/5)Traffic_Volume + 2randn(Note,Note);

            fijmax0    = max(max(fij));

            %选择一个路径

            [f,flag]   = func_sel_route(xk_ij,X,Y,fij,b_ij,Dis_R);

 

            %开始迭代

            E_1 = zeros(1,Loop);

            for j = 1:Loop

                if flag == 1

                   %补图

                   Nj    = 500 + 500*rand;

                   Ys    = func_complementary_graph(xk_ij,f);

                   [R,C] = size(Ys);

                   a     = randperm(10);

                   SR_(jjj) = SR(jjj);%模拟in的Rate

                   Ri_in    = 1e6*SR_(jjj);%转换为M,

                   Ri_out   = 1e6*SR(jjj);%转换为M,

                   if j == 1

                      E_1(1,j) = Traffic_Volume;%初始值

                   else

                      Ej_proc  = Nj/2*ECMP_max + ECMP_min;

                      Ei_out   = frp(Ri_out) * (MOEC_min+(MOEC_max-MOEC_min)*rand);

                      Ej_in    = frp(Ri_in) * (MIEC_min+(MIEC_max-MIEC_min)*rand);

                      E_1(1,j) = Ei_out + Ej_in + Ej_proc;

                   end

                  

                   for k1 = 1:R

                       for k2 = 1:C

                           E(k1,k2) =E_1(1,j)*(1+randn/5);

                       end

                   end

                   %再将M除掉

                   E=E/1e6;

                   fijmax_ = zeros(R,C);

                   for k1 = 1:R

                       for k2 = 1:C

                           if Ys(k1,k2) == 1

                              fijmax_(k1,k2) =  fijmax0 - fij(k1,k2);

                              fij(k2,k1)     =  fijmax_(k1,k2);

                              E_(k1,k2)      =  E(k1,k2);

                              E(k2,k1)       = -E_(k1,k2);

                           end

                       end

                   end

                   E_=-E;

                   E = 7*E/sqrt(SR(jjj));

                   %negative cost cycle

                   [flags2]  = func_negative_cost_cycle(Ys,xk_ij,X,Y,fij,Dis_R,E,E_,f);

               

                   if flags2 == 1%算法结束

                      break;

                   end

                   f_=f.*E;

                   for k1 = 1:R

                       for k2 = 1:C

                           tmps = fijmax0 - fij;

                           [xc,yc] = find(tmps==0);

                           tmps(xc,yc)=fijmax0;

                           delta = min([min(min(tmps)),min(min(fij))]);

                           if E_(k1,k2) > 0

                              fij(k2,k1) = fij(k2,k1)+delta;

                           else

                              fij(k2,k1) = fij(k2,k1)-delta;

                           end

                       end

                   end

 

                   E_1(1,j) = sum(sum(f_.*fij));

                else

                   E_1(1,j) = 0;

                end

            end

        EZ = EZ + E_1(end);  

        end

        Es(i,:) = EZ;

    end

    %对1000迭代进行平均

    Es2 = [];

    for i = 1:Loop

        tmps = Es(:,i);

        index= find(tmps==0);

        tmps(index)=[];

 

        Es2  = [Es2,mean(tmps)];

    end

Es3 = [Es3,Es2(end)];    

end

   if jks == 1

      Eas = Es3;

      save R1.mat Eas SR

   end

   if jks == 2

      Ebs = Es3;  

      save R2.mat Ebs SR

   end   

   if jks == 3

      Ecs = Es3;

      save R3.mat Ecs SR

   end

end`