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ÎҵijÌÐòÈçÏ ¸ÕѧÇë´óÉñÖ¸µã ˳±ã°ï¸ÄÕýÒ»Ï СµÜ²»Ê¤¸Ð¼¤£¡£¡£¡ input_train=[280,280,280,280,280,280,220,240,260,280,300,320,280,280,280,280,280,280,280,280,280,280,280,280,240,240,240,280,280,280,320,320,320,260,280,300,320,340,320,320,320,320,320,320,320,320,320,320,320,320,320,320,320;180,180,180,180,180,180,180,180,180,180,180,180,60,100,140,180,220,260,180,180,180,180,180,180,60,100,180,60,100,180,60,100,180,51,51,51,51,51,51,64,77,89,102,51,51,51,51,51,51,51,51,51,51;454,454,454,454,454,454,454,454,454,454,454,454,454,454,454,454,454,454,363,409,454,499,545,590,454,499,545,545,454,499,499,545,454,499,499,499,499,499,499,499,499,499,499,409,454,499,545,590,499,499,499,499,499;2,3,4,5,6,7,4,4,4,4,4,4,4,4,4,4,4,4,4,4,4,4,4,4,3,4,5,4,5,3,5,3,4,3,3,3,3,3,3,3,3,3,3,3,3,3,3,3,2,3,4,5,6]; output_train=[19,20,19,17,15,15.5,16,16.7,13,20,17.5,17.3,25.8,22.3,21.2,14.5,16,15.2,20,22,21.5,14.1,13.5,16.9,19.2,16.8,11.3,18.3,15.2,13.5,16.5,19.2,14.9,5.1,5.6,5.9,4.9,4.6,6.1,5.3,4.8,4.4,4.0,6.1,6.9,6.0,5.7,4.9,4.4,4.9,6.7,6.6,6.1]; [inputn,inputps]=mapminmax(input_train); net=feedforwardnet(13); net.trainFcn='trainr'; net.trainParam.mu=0.01; net.trainParam.mu_dec=0.2; net.trainParam.show=1; net.trainParam.epochs=100000; net.trainParam.mu_inc=10; net.trainParam.goal=0.1; net=train(net,input_train,output_train); |
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2Â¥2015-12-03 16:46:50
hjnwsuaf
½ð³æ (ÖøÃûдÊÖ)
- Ó¦Öú: 10 (Ó×¶ùÔ°)
- ½ð±Ò: 1675.1
- É¢½ð: 569
- ºì»¨: 11
- Ìû×Ó: 1069
- ÔÚÏß: 101.6Сʱ
- ³æºÅ: 3543986
- ×¢²á: 2014-11-18
- ÐÔ±ð: GG
- רҵ: ÍÁÈÀѧ
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Сľ³æ: ½ð±Ò+0.5, ¸ø¸öºì°ü£¬Ð»Ð»»ØÌû
Сľ³æ: ½ð±Ò+0.5, ¸ø¸öºì°ü£¬Ð»Ð»»ØÌû
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ÄãÊÔÊÔÕâ¸ö°É¡£ÓÃÕâ¸öÏÈÈ·¶¨Éñ¾ÍøÂçµÄѵÁ·Ëã·¨ºÍÉñ¾Ôª½ÚµãÊý¡£ % c_dΪѵÁ·Êý¾Ý£¬±äÁ¿°´ÐзÅÖà % Õâ¸ö³ÌÐò½ö½öÊÇÓÃÀ´¹¹½¨BPÉñ¾ÍøÂçÄ£ÐÍ£¬Ò²¾ÍÊǶÔÍøÂçÄ£ÐÍѵÁ·Ëã·¨¡¢Òþº¬²ãÉñ¾Ôª½ÚµãÊýÓÅÑ¡µÄ %-----ÊäÈë²ÎÊý % my_mseΪϵͳѵÁ·Îó²î % my_loopsΪϵͳѵÁ·µü´ú´ÎÊý % my_nsϵͳѵÁ·½×¶ÎÕæÊµÖµºÍÄ£ÄâÖµÄÉʲͳ¼ÆÏµÊý % my_relative_coeffΪϵͳѵÁ·½×¶ÎÕæÊµÖµºÍÄ£ÄâÖµÏà¹ØÏµÊý % sim_dataΪģÄâÖµ %-----ÊäÈë²ÎÊý % errorΪĿ±êÎó²î % n_nÒþº¬²ãÉñ¾Ôª½ÚµãÊý % train_fÍøÂçѵÁ·Ëã·¨ % itera_n×î´óµü´ú´ÎÊý function [my_mse,my_loops,my_ns,my_relative_coeff,sim_data]=my_bp_model(c_d,error,n_n,train_f,itera_n) [m n]=size(c_d); x=c_d(1:m-1, ;y=c_d(m, ;%ÇóÈ¡ÊäÈëÑù±¾µÄ×î´ó×îСֵ for i=1 m-1)minmax(i, =[min(x(i, ) max(x(i, )];end %Ñ¡ÔñѵÁ·Ëã·¨ switch train_f case 1 t_f='traincgf';%¹²éîÌݶȷ¨ case 2 t_f='train';%Åú´¦ÀíѵÁ·Ëã·¨ case 3 t_f='traingdm';%´ø¶¯Á¿µÄÌݶÈϽµËã·¨ case 4 t_f='trainlm';%Levenberg-MarquardtËã·¨ otherwise disp('invalde train method!'); end %¹¹½¨Éñ¾ÍøÂç my_net=newff(minmax,y,[n_n,1],{'tansig','purelin'},t_f); my_net.trainParam.goal=error; my_net.trainParam.epochs=itera_n; my_net.trainParam.showWindow=0;%ÓÃÀ´²»ÏÔʾnntraintoolµÄwindow´°=´°¿Ú %ÍøÂçѵÁ· [my_net,tr]=train(my_net,x,y); %ÍøÂç·ÂտģÄâ y_sim=sim(my_net,x); %¶ÔbpÉñ¾ÍøÂçÔ¤²âÄ£ÐͽøÐÐÆÀ¹À my_mse=(sum((y-y_sim).^2))/n; my_loops=max(tr.epoch); my_ns=ns_coef_func(y,y_sim); my_relative_coeff=my_Pearson_coeff(y,y_sim); sim_data=y_sim; |
3Â¥2015-12-04 08:48:14
4Â¥2015-12-04 10:14:54
hjnwsuaf
½ð³æ (ÖøÃûдÊÖ)
- Ó¦Öú: 10 (Ó×¶ùÔ°)
- ½ð±Ò: 1675.1
- É¢½ð: 569
- ºì»¨: 11
- Ìû×Ó: 1069
- ÔÚÏß: 101.6Сʱ
- ³æºÅ: 3543986
- ×¢²á: 2014-11-18
- ÐÔ±ð: GG
- רҵ: ÍÁÈÀѧ
5Â¥2015-12-04 11:34:12













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