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- # !usr/bin/env python
- # -*- coding:utf-8 _*-
- """
- @Author:Lijiaxing
-
- @File:data_analysis.py
- @Time:2023/4/24 15:16
- """
- import pandas as pd
- #from mpl_toolkits.basemap import Basemap
- from scipy.signal import savgol_filter
- import numpy as np
- import matplotlib.pyplot as plt
- from scipy.cluster.hierarchy import linkage, fcluster
- def paint_others(y):
- """ 绘制其他数据 """
- plt.plot([j for j in range(y)], y)
- # 添加标题和标签
- plt.xlabel('x')
- plt.ylabel('y')
- # 显示图形
- plt.show()
- def compute_cos_similarity(a, b):
- """
- 计算两个向量的余弦相似度
- :param a: 向量a
- :param b: 向量b
- :return: 余弦相似度值
- """
- return np.dot(a, b) / (np.linalg.norm(a) * np.linalg.norm(b))
- def compute_pearsonr(a):
- """
- 计算数据皮尔逊相关系数并返回相似度矩阵
- :param a: 数据格式为n*m的矩阵,n为数据个数,m为数据维度
- :return: 返回相似度矩阵,数据格式为n*n的矩阵
- """
- return np.corrcoef(a)
- def compute_distance(a, b):
- """
- 计算两个向量的欧式距离
- :param a:
- :param b:
- :return: 返回两个向量的欧式距离
- """
- return np.linalg.norm(a - b)
- def hierarchical_clustering(data, threshold, similarity_func):
- """
- 层次聚类,使用工具包scipy.cluster.hierarchy中的linkage和fcluster函数进行层次聚类
- :param data: 二维数据,格式为n*m的矩阵,n为数据个数,m为数据维度
- :param threshold: 阈值,当两个数据的距离小于阈值时,将两个数据归为一类,阈值为根据相似度矩阵层次聚类后的类别距离阈值,可根据需求进行调整,可大于1
- :param similarity_func: 相似度计算函数,用于计算两个数据的相似度,可以进行替换,若替换为计算距离的函数需对内部进行修改
- :return: 返回聚类结果,格式为n*1的矩阵,n为数据个数,每个数据的值为该数据所属的类别
- """
- # 计算数据的相似度矩阵
- similarity_matrix = similarity_func(data)
- # 计算数据的距离矩阵
- distance_matrix = 1 - similarity_matrix
- # 进行层次聚类返回聚类结果
- Z = linkage(distance_matrix, method='ward')
- # 根据相似度阈值获取聚类结果
- clusters = fcluster(Z, t=threshold, criterion='distance')
- return clusters
- class DataAnalysis:
- """
- 数据分析类
- """
- def __init__(self, data_length, data_start, data_end):
- """
- 初始化
- :param data_length: 分析数据段长度
- :param data_start: 分析数据段开始位置
- :param data_end: 分析数据段结束位置
- """
- # 原始风机功率数据傅里叶变换滤波后的数据
- self.ori_turbine_fft = None
- # 原始风机功率数据片段
- self.ori_turbine_pic = None
- # 聚类结果
- self.cluster = None
- # 风机功率差分平滑后的结果
- self.smooth_turbine_diff = None
- # 风机功率差分变化情况
- self.diff_change = None
- # 风机功率差分
- self.turbine_diff = None
- # 全部风机数据
- self.turbine = None
- # 风机的标号顺序
- self.turbine_id = list(range(102, 162))
- self.turbine_id.remove(144)
- # 风机功率数据15分钟级别
- self.power_15min = None
- # 风机经纬度信息
- self.info = None
- # 使用数据长度
- self.data_length = data_length
- # 使用数据开始位置
- self.data_start = data_start
- # 使用数据结束位置
- self.data_end = data_end
- # 导入数据
- self.load_data()
- # 计算风机功率差分
- self.compute_turbine_diff()
- def load_data(self):
- """
- 加载数据
- :return:
- """
- self.info = pd.read_csv('../data/风机信息.csv', encoding='utf-8')
- # power_15min = pd.read_csv('../data/power_15min.csv')
- # for i in range(len(power_15min)):
- # if power_15min.loc[i, 'C_REAL_VALUE'] == -9999:
- # # 方便在曲线中看出缺失数据位置
- # power_15min.loc[i, 'C_REAL_VALUE'] = -34.56789
- # self.power_15min = power_15min
- turbine_path = '../data/output_filtered_csv_files/turbine-{}.csv'
- self.turbine = {}
- for i in self.turbine_id:
- self.turbine[i] = pd.read_csv(turbine_path.format(i))[21:]
- def compute_turbine_diff(self):
- """
- 计算风机功率差分
- :return:
- """
- turbine_diff = []
- ori_turbine_pic = []
- for turbine_i in self.turbine_id:
- diff_array = np.diff(
- np.array(self.turbine[turbine_i]['C_ACTIVE_POWER'].values[self.data_start:self.data_end+1]))
- turbine_diff.append(diff_array)
- ori_turbine_pic.append(self.turbine[turbine_i]['C_ACTIVE_POWER'].values[self.data_start:self.data_end])
- self.ori_turbine_pic = ori_turbine_pic
- self.turbine_diff = turbine_diff
- diff_change = []
- for diff_i in turbine_diff:
- single_diff_change = []
- for diff_i_i in diff_i:
- if diff_i_i > 0:
- single_diff_change.append(1)
- elif diff_i_i < 0:
- single_diff_change.append(-1)
- else:
- single_diff_change.append(0)
- diff_change.append(single_diff_change)
- self.diff_change = diff_change
- self.ori_turbine_fft = [self.turbine_fft(i + 1) for i in range(len(self.ori_turbine_pic))]
- # 平滑
- self.turbine_smooth(window_size=21)
- def paint_map(self):
- """
- 绘制经纬度地图
- :return:
- """
- lats = self.info['纬度'].values
- lons = self.info['经度'].values
- map = Basemap()
- # 绘制海岸线和国家边界
- map.drawcoastlines()
- map.drawcountries()
- # 绘制经纬度坐标
- map.drawmeridians(range(0, 360, 30))
- map.drawparallels(range(-90, 90, 30))
- # 绘制点
- x, y = map(lons, lats)
- map.plot(x, y, 'bo', markersize=10)
- # 显示图表
- plt.show()
- def paint_power15min(self):
- """
- 绘制15分钟功率曲线
- :return:
- """
- plt.plot(self.power_15min['C_REAL_VALUE'])
- # 设置图表标题和轴标签
- plt.title('Data Time Change Curve')
- plt.xlabel('Date')
- plt.ylabel('Value')
- # 显示图表
- plt.show()
- def paint_lats_lons(self):
- """
- 绘制经纬度图
- :return:
- """
- x = self.info['纬度'].values
- y = self.info['经度'].values
- # 绘制散点图
- fig, ax = plt.subplots()
- plt.scatter(x, y)
- for i, txt in enumerate(self.info['id'].values):
- ax.annotate(txt, (x[i], y[i]))
- # 设置图表标题和轴标签
- plt.xlabel('lats')
- plt.ylabel('lons')
- # 显示图表
- plt.show()
- def similarity_score(self, turbine_diff, threshold=0.5):
- """
- 使用余弦相似度计算相似度分数并返回相似度大于阈值的index矩阵
- :param turbine_diff: 需要计算相似的矩阵,数据格式n*m,n为数据条数,m为数据维数
- :param threshold: 相似度阈值
- :return: 返回相似计算后的矩阵
- """
- similarity = {i: [] for i in range(49)}
- similarity_index = {i: [] for i in range(49)}
- for turbine_i in range(49):
- for turbine_j in range(49):
- cos_similarity = compute_cos_similarity(turbine_diff[turbine_i], turbine_diff[turbine_j])
- similarity[turbine_i].append(cos_similarity)
- if cos_similarity > threshold:
- similarity_index[turbine_i].append(turbine_j)
- return similarity_index
- def paint_turbine(self, paint_default=True):
- """
- 绘制风机地理位置图
- :param paint_default:默认True,绘制聚类后每个类别的数据折线图
- :return: None
- """
- # y = self.info['纬度'].values
- # x = self.info['经度'].values
- #
- # fig, ax = plt.subplots(figsize=(15, 15))
- #
- # plt.scatter(x, y, c=self.cluster)
- # for i, txt in enumerate(self.info['C_ID'].values):
- # ax.annotate(txt, (x[i], y[i]))
- # 设置图表标题和轴标签
- # plt.xlabel('lons')
- # plt.ylabel('lats')
- # plt.legend()
- #
- # # 显示图表
- # plt.savefig('analysis_img/turbine_cluster.png')
- # plt.show()
- if paint_default:
- for i in range(max(self.cluster)):
- self.paint_turbine_k(i + 1)
- def turbine_smooth(self, window_size=50):
- """
- 使用滑动平均平滑数据。
- 参数:
- data -- 需要平滑的数据,numpy数组类型
- window_size -- 滑动窗口大小,整数类型
- 返回值:
- smooth_data -- 平滑后的数据,numpy数组类型
- """
- # weights = np.repeat(1.0, window_size) / window_size
- smooth_data = []
- for turbine_diff_i in self.turbine_diff:
- smooth_y = savgol_filter(turbine_diff_i, window_length=window_size, polyorder=3)
- smooth_data.append(smooth_y)
- # smooth_data.append(np.convolve(turbine_diff_i, weights, 'valid'))
- self.smooth_turbine_diff = smooth_data
- def paint_turbine_k(self, k):
- """
- 绘制第k聚类的风机数据折线图
- :param k:
- :return:
- """
- pic_label = []
- y = []
- plt.figure(figsize=(20, 10))
- cmap = plt.get_cmap('viridis')
- for i, item in enumerate(self.cluster):
- if item == k:
- pic_label.append('turbine-'+str(self.turbine_id[i]))
- y.append(self.ori_turbine_fft[i])
- for i in range(len(y)):
- color = cmap(i / 10)
- plt.plot([j for j in range(len(y[i]))], y[i], color=color, label=pic_label[i])
- # 添加标签和标题
- plt.xlabel('x')
- plt.ylabel('y')
- plt.title('Cluster {}'.format(k))
- # 添加图例
- plt.legend()
- # 显示图形
- plt.savefig('analysis_img/cluster/cluster_{}.png'.format(k))
- plt.show()
- def turbine_fft(self, k):
- """
- 对第k台原始风机数据进行傅里叶变换,并绘制变换前后曲线
- :param k: 数据读入时的风机顺序index,从1开始
- :return: 傅里叶变换清洗后的数据,数据格式
- """
- y = self.ori_turbine_pic
- t = np.linspace(0, 1, self.data_length)
- signal = y[k - 1]
- # 进行傅里叶变换
- freq = np.fft.fftfreq(len(signal), t[1] - t[0])
- spectrum = np.fft.fft(signal)
- spectrum_abs = np.abs(spectrum)
- threshold = np.percentile(spectrum_abs, 98)
- indices = spectrum_abs > threshold
- spectrum_clean = indices * spectrum
- # 进行傅里叶逆变换
- signal_clean = np.fft.ifft(spectrum_clean)
- # plt.figure(figsize=(20, 10))
- #
- # # 绘制时域信号
- # plt.subplot(4, 1, 1)
- # plt.plot(t, signal)
- # plt.title(k)
- #
- # # 绘制频域信号
- # plt.subplot(4, 1, 2)
- # plt.plot(freq, np.abs(spectrum))
- #
- # # 绘制过滤后的频域信号
- # plt.subplot(4, 1, 3)
- # plt.plot(freq, np.abs(spectrum_clean))
- #
- # # 绘制过滤后的时域信号
- # plt.subplot(4, 1, 4)
- # plt.plot(t, signal_clean)
- #
- # plt.savefig('analysis_img/fft/{}_turbine_fft.png'.format(k))
- # plt.show()
- return signal_clean
- def paint_double(self, i, j):
- """
- 绘制两台风机的数据变换对比
- :param i: 风机数据读入时数据编号,从1开始
- :param j: 风机数据读入时数据编号,从1开始
- :return:
- """
- y = self.ori_turbine_fft
- x = [index for index in range(self.data_length)]
- data_i = y[i - 1]
- data_j = y[j - 1]
- plt.figure(figsize=(20, 10))
- plt.plot(x, data_i, label='turbine {}'.format(self.turbine_id[i-1]), linestyle='solid')
- plt.plot(x, data_j, label='turbine {}'.format(self.turbine_id[j-1]), linestyle='dashed')
- plt.title('{} and {}'.format(i, j))
- plt.legend()
- plt.savefig('analysis_img/{}_{}_turbine.png'.format(self.turbine_id[i-1], self.turbine_id[j-1]))
- plt.show()
- def process_ori_data(self):
- """
- 对原始数据进行处理,聚类和绘图
- :return:
- """
- self.turbine_clusters(self.ori_turbine_fft)
- self.paint_turbine()
- def turbine_clusters(self, data=None):
- """
- 风机数据聚类,聚类信息保存在self.cluster中
- :param data: 默认为空,也可以使用其他数据聚类,并体现在绘图中,
- 数据格式:二维数据n*m,n为数据条数,m为每条数据维数
- :return: None
- """
- if data is None:
- cluster = hierarchical_clustering(self.turbine_diff, threshold=1.4,
- similarity_func=compute_pearsonr) # 层次聚类
- else:
- cluster = hierarchical_clustering(data, threshold=1,
- similarity_func=compute_pearsonr)
- self.cluster = cluster
- from cluster_power import cluster_power
- out_put = '../data/cluester_power/'
- cluster_power(self.cluster, out_put)
- data_analysis = DataAnalysis(data_length=9771,
- data_start=0,
- data_end=9771)
- data_analysis.process_ori_data()
- data_analysis.paint_double(20, 21)
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