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- # -*- coding: utf-8 -*-
- """causal_structure.py: 第二层 - 物理因果结构构建"""
- import numpy as np
- import pandas as pd
- from config import config
- class CausalStructureBuilder:
- def __init__(self, threshold_df):
- self.df = threshold_df
- self.sensor_list = self.df['ID'].tolist()
- self.id_to_idx = {name: i for i, name in enumerate(self.sensor_list)}
- self.num_sensors = len(self.sensor_list)
- self.col_layer = self._find_col_by_keyword(config.KEYWORD_LAYER)
- self.col_device = self._find_col_by_keyword(config.KEYWORD_DEVICE)
- def _find_col_by_keyword(self, keyword):
- if keyword in self.df.columns: return keyword
- for col in self.df.columns:
- if col.lower() == keyword.lower(): return col
- raise ValueError(f"错误: 未找到列名包含 '{keyword}' 的列")
- def build(self):
- adj_matrix = np.zeros((self.num_sensors, self.num_sensors), dtype=int)
- nodes_info = {}
- for _, row in self.df.iterrows():
- d_val = row[self.col_device]
- dev_id = str(d_val).strip() if pd.notna(d_val) and str(d_val).strip() != '' else None
- try: l_val = int(row[self.col_layer])
- except: l_val = -1
- nodes_info[row['ID']] = {'layer': l_val, 'device': dev_id}
-
- count_edges = 0
- for i, src_name in enumerate(self.sensor_list):
- src_node = nodes_info.get(src_name)
- if not src_node or src_node['layer'] == -1: continue
- src_l, src_d = src_node['layer'], src_node['device']
-
- for j, dst_name in enumerate(self.sensor_list):
- if i == j: continue
- dst_node = nodes_info.get(dst_name)
- if not dst_node or dst_node['layer'] == -1: continue
- dst_l, dst_d = dst_node['layer'], dst_node['device']
-
- is_layer_valid = (dst_l == src_l) or (dst_l == src_l - 1)
- if not is_layer_valid: continue
-
- is_dev_valid = True
- if (src_d is not None) and (dst_d is not None):
- if src_d != dst_d: is_dev_valid = False
-
- if is_dev_valid:
- adj_matrix[i, j] = 1
- count_edges += 1
- return {"sensor_list": self.sensor_list, "sensor_to_idx": self.id_to_idx, "adj_matrix": adj_matrix}
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