177 lines
5.7 KiB
Python
177 lines
5.7 KiB
Python
import numpy as np
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import matplotlib.pyplot as plt
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import pandas as pd
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import copy
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from sklearn.cross_decomposition import PLSRegression
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from sklearn.metrics import mean_squared_error
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from sklearn.model_selection import KFold
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def PC_Cross_Validation(X, y, pc, cv):
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'''
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X : 光谱矩阵 (DataFrame) nxm
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y : 浓度阵 (Series) (化学值)
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pc: 最大主成分数
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cv: 交叉验证数量
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return :
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RMSECV: 各主成分数对应的RMSECV
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rindex: 最佳主成分数
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'''
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kf = KFold(n_splits=cv)
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RMSECV = []
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for i in range(pc):
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RMSE = []
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for train_index, test_index in kf.split(X):
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x_train, x_test = X.iloc[train_index], X.iloc[test_index]
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y_train, y_test = y.iloc[train_index], y.iloc[test_index]
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pls = PLSRegression(n_components=i + 1)
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pls.fit(x_train, y_train)
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y_predict = pls.predict(x_test)
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RMSE.append(np.sqrt(mean_squared_error(y_test, y_predict)))
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RMSE_mean = np.mean(RMSE)
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RMSECV.append(RMSE_mean)
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rindex = np.argmin(RMSECV)
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return RMSECV, rindex
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def Cross_Validation(X, y, pc, cv):
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'''
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X : 光谱矩阵 (DataFrame) nxm
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y : 浓度阵 (Series) (化学值)
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pc: 最大主成分数
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cv: 交叉验证数量
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return :
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RMSECV: 各主成分数对应的RMSECV
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'''
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kf = KFold(n_splits=cv)
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RMSE = []
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for train_index, test_index in kf.split(X):
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x_train, x_test = X.iloc[train_index], X.iloc[test_index]
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y_train, y_test = y.iloc[train_index], y.iloc[test_index]
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pls = PLSRegression(n_components=pc)
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pls.fit(x_train, y_train)
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y_predict = pls.predict(x_test)
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RMSE.append(np.sqrt(mean_squared_error(y_test, y_predict)))
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RMSE_mean = np.mean(RMSE)
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return RMSE_mean
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def CARS_Cloud(X, y, N=50, f=20, cv=10, save_fig=False, save_path=None):
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'''
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X : 光谱矩阵 (DataFrame 或 ndarray)
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y : 浓度阵 (Series 或 ndarray)
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N : 蒙特卡洛迭代次数
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f : 最大特征数
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cv : 交叉验证的次数
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save_fig : 是否保存图像
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save_path : 图像保存路径
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return :
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OptWave : 选择的波长
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'''
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p = 0.8
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m, n = X.shape
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u = np.power((n / 2), (1 / (N - 1)))
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k = (1 / (N - 1)) * np.log(n / 2)
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cal_num = np.round(m * p)
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b2 = np.arange(n)
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x = X # 将 DataFrame 转换为 numpy 数组
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y = y # 将 Series 转换为 numpy 数组
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D = np.vstack((np.array(b2).reshape(1, -1), x))
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WaveData = []
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WaveNum = []
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RMSECV = []
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r = []
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for i in range(1, N + 1):
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r.append(u * np.exp(-1 * k * i))
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wave_num = int(np.round(r[i - 1] * n))
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WaveNum = np.hstack((WaveNum, wave_num))
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cal_index = np.random.choice(np.arange(m), size=int(cal_num), replace=False)
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wave_index = b2[:wave_num].reshape(1, -1)[0]
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# 使用 np.ix_ 来进行行列索引
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xcal = x[np.ix_(cal_index, wave_index)] # 选择对应的行和列
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ycal = y[cal_index] # 选择对应的 y
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# 将 ycal 转换为一维数组
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ycal = ycal.ravel() # 使其成为一维数组
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x = x[:, wave_index] # 更新 x
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D = D[:, wave_index] # 更新 D
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d = D[0, :].reshape(1, -1)
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wnum = n - wave_num
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if wnum > 0:
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d = np.hstack((d, np.full((1, wnum), -1)))
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if len(WaveData) == 0:
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WaveData = d
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else:
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WaveData = np.vstack((WaveData, d.reshape(1, -1)))
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if wave_num < f:
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f = wave_num
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pls = PLSRegression(n_components=f)
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pls.fit(xcal, ycal)
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beta = pls.coef_
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# 针对新版sklearn处理 coef_ 的方式
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if beta.shape[0] == 1: # 新版sklearn,(1, x)
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b = np.abs(beta[0]) # 从第一行提取数据
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coeff = beta[0, b2] # 修改为beta[0, b2],因为coef只有一行
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else: # 旧版sklearn,(x, 1)
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b = np.abs(beta[:, 0]) # 从列中提取数据
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coeff = beta[b2, 0] # 修改为beta[b2, 0],因为coef只有一列
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b2 = np.argsort(-b, axis=0)
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coef = copy.deepcopy(beta)
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coeff = coef[b2, :].reshape(len(b2), -1)
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rmsecv, rindex = PC_Cross_Validation(pd.DataFrame(xcal), pd.Series(ycal), f, cv)
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RMSECV.append(Cross_Validation(pd.DataFrame(xcal), pd.Series(ycal), rindex + 1, cv))
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WAVE = []
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for i in range(WaveData.shape[0]):
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wd = WaveData[i, :]
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WD = np.ones((len(wd)))
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for j in range(len(wd)):
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ind = np.where(wd == j)
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if len(ind[0]) == 0:
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WD[j] = 0
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else:
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WD[j] = wd[ind[0]]
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if len(WAVE) == 0:
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WAVE = copy.deepcopy(WD)
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else:
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WAVE = np.vstack((WAVE, WD.reshape(1, -1)))
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MinIndex = np.argmin(RMSECV)
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Optimal = WAVE[MinIndex, :]
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boindex = np.where(Optimal != 0)
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OptWave = boindex[0]
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plt.figure(figsize=(12, 10))
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# 设置字体为新罗马
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plt.rcParams['font.sans-serif'] = ['Times New Roman'] # 使用 Times New Roman 字体
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plt.rcParams['axes.unicode_minus'] = False # 解决负号显示问题
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fonts = 20
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plt.subplot(211)
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plt.xlabel('Monte Carlo Iterations', fontsize=fonts)
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plt.ylabel('Number of Selected Wavelengths', fontsize=fonts)
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plt.title('Optimal Iteration: ' + str(MinIndex), fontsize=fonts)
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plt.plot(np.arange(N), WaveNum)
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plt.subplot(212)
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plt.xlabel('Monte Carlo Iterations', fontsize=fonts)
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plt.ylabel('RMSECV', fontsize=fonts)
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plt.plot(np.arange(N), RMSECV)
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# 保存图像
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if save_fig:
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plt.savefig(save_path) # 保存图像到文件
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print(f"The figure has been saved as {save_path}")
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# plt.show()
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return OptWave
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