灰色HMMP-GM11改进模型,通过引入隐马尔可夫模型(HMM)来对原始数据进行状态分析,然后利用GM(1,1)模型进行预测,从而提高了预测精度。并采用变量筛选MIV方法对变量进行筛选,对每个指标的重要性进行分析。内附具体流程步骤
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%% 清空环境变量
warning off % 关闭报警信息
close all % 关闭开启的图窗
clear % 清空变量
clc % 清空命令行
%% 数据反归一化
T_sim1 = mapminmax('reverse', t_sim1', ps_output);
T_sim2 = mapminmax('reverse', t_sim2', ps_output);
%% V. 评价指标
%% 均方根误差 RMSE
error1 = sqrt(sum((T_sim1 - T_train).^2)./M);
error2 = sqrt(sum((T_test - T_sim2).^2)./N);
%% 决定系数
R1 = rsquare(T_train,T_sim1);
R2 = rsquare(T_test,T_sim2);
MAE1 = mean(abs(T_train - T_sim1));
MAE2 = mean(abs(T_test - T_sim2));
%% 平均绝对百分比误差MAPE
MAPE1 = mean(abs((T_train - T_sim1)./T_train));
MAPE2 = mean(abs((T_test - T_sim2)./T_test));
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[1] https://blog.csdn.net/kjm13182345320/article/details/124693040?spm=1001.2014.3001.5502
[2] https://blog.csdn.net/kjm13182345320/article/details/124864369?spm=1001.2014.3001.5502