run_dqn_decide.py 11 KB

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  1. """
  2. run_dqn_decide.py
  3. UF 超滤 DQN 决策主入口(Inference / Online Assist)
  4. 职责:
  5. 1. 构造物理世界(physics)
  6. 2. 实例化决策器(UFDQNDecider)
  7. 3. 构造当前工厂状态(observation)
  8. 4. 调用模型给出策略建议
  9. 5. 生成 PLC 下发指令(限幅 / 限速)
  10. 6. 评估该指令在物理模型下的效果(只评估,不下发)
  11. """
  12. from pathlib import Path
  13. # ============================================================
  14. # 1. 导入模块
  15. # ============================================================
  16. CURRENT_DIR = Path(__file__).resolve().parent
  17. UF_RL_ROOT = CURRENT_DIR.parents[2] # uf_train # uf-rl
  18. # ========== 参数 / 物理 ==========
  19. from env.uf_resistance_models_load import load_resistance_models
  20. from env.uf_physics import UFPhysicsModel
  21. from env.env_params import UFState, UFActionSpec
  22. from env.env_config_loader import EnvConfigLoader, create_env_params_from_yaml
  23. # ========== 决策器 ==========
  24. from rl_model.DQN.uf_decide.dqn_decider import UFDQNDecider
  25. def build_physics(IS_TIMES, phys_params):
  26. """
  27. 构造与训练一致的物理模型(只做一次)
  28. """
  29. res_fp, res_bw = load_resistance_models(phys_params)
  30. physics = UFPhysicsModel(
  31. phys_params=phys_params,
  32. resistance_model_fp=res_fp,
  33. resistance_model_bw=res_bw,
  34. IS_TIMES = IS_TIMES
  35. )
  36. return physics
  37. def generate_plc_instructions(action_spec,current_L_s, current_t_bw_s, model_prev_L_s, model_prev_t_bw_s, model_L_s, model_t_bw_s):
  38. """
  39. 根据工厂当前值、模型上一轮决策值和模型当前轮决策值,生成PLC指令。
  40. 新增功能:
  41. 1. 处理None值情况:如果模型上一轮值为None,则使用工厂当前值;
  42. 如果工厂当前值也为None,则返回None并提示错误。
  43. """
  44. action_spec = action_spec
  45. adjustment_threshold = 1.0
  46. # 处理None值情况
  47. if model_prev_L_s is None:
  48. if current_L_s is None:
  49. print("错误: 过滤时长的工厂当前值和模型上一轮值均为None")
  50. return None, None
  51. else:
  52. # 使用工厂当前值作为基准
  53. effective_current_L = current_L_s
  54. source_L = "工厂当前值(模型上一轮值为None)"
  55. else:
  56. # 模型上一轮值不为None,继续检查工厂当前值
  57. if current_L_s is None:
  58. effective_current_L = model_prev_L_s
  59. source_L = "模型上一轮值(工厂当前值为None)"
  60. else:
  61. effective_current_L = model_prev_L_s
  62. source_L = "模型上一轮值"
  63. # 对反洗时长进行同样的处理
  64. if model_prev_t_bw_s is None:
  65. if current_t_bw_s is None:
  66. print("错误: 反洗时长的工厂当前值和模型上一轮值均为None")
  67. return None, None
  68. else:
  69. effective_current_t_bw = current_t_bw_s
  70. source_t_bw = "工厂当前值(模型上一轮值为None)"
  71. else:
  72. if current_t_bw_s is None:
  73. effective_current_t_bw = model_prev_t_bw_s
  74. source_t_bw = "模型上一轮值(工厂当前值为None)"
  75. else:
  76. effective_current_t_bw = model_prev_t_bw_s
  77. source_t_bw = "模型上一轮值"
  78. # 检测所有输入值是否在规定范围内(只对非None值进行检查)
  79. # 工厂当前值检查(警告)
  80. if current_L_s is not None and not (action_spec.L_min_s <= current_L_s <= action_spec.L_max_s):
  81. print(f"警告: 当前过滤时长 {current_L_s} 秒不在允许范围内 [{action_spec.L_min_s}, {action_spec.L_max_s}]")
  82. if current_t_bw_s is not None and not (action_spec.t_bw_min_s <= current_t_bw_s <= action_spec.t_bw_max_s):
  83. print(f"警告: 当前反洗时长 {current_t_bw_s} 秒不在允许范围内 [{action_spec.t_bw_min_s}, {action_spec.t_bw_max_s}]")
  84. # 模型上一轮决策值检查(警告)
  85. if model_prev_L_s is not None and not (action_spec.L_min_s <= model_prev_L_s <= action_spec.L_max_s):
  86. print(f"警告: 模型上一轮过滤时长 {model_prev_L_s} 秒不在允许范围内 [{action_spec.L_min_s}, {action_spec.L_max_s}]")
  87. if model_prev_t_bw_s is not None and not (action_spec.t_bw_min_s <= model_prev_t_bw_s <= action_spec.t_bw_max_s):
  88. print(f"警告: 模型上一轮反洗时长 {model_prev_t_bw_s} 秒不在允许范围内 [{action_spec.t_bw_min_s}, {action_spec.t_bw_max_s}]")
  89. # 模型当前轮决策值检查
  90. if model_L_s is None:
  91. raise ValueError("错误: 决策模型建议的过滤时长不能为None")
  92. model_L_s = max(action_spec.L_min_s, min(model_L_s, action_spec.L_max_s))
  93. if model_t_bw_s is None:
  94. raise ValueError("错误: 决策模型建议的反洗时长不能为None")
  95. model_t_bw_s = max(action_spec.t_bw_min_s, min(model_t_bw_s, action_spec.t_bw_max_s))
  96. print(f"过滤时长基准: {source_L}, 值: {effective_current_L}")
  97. print(f"反洗时长基准: {source_t_bw}, 值: {effective_current_t_bw}")
  98. # 使用选定的基准值进行计算调整
  99. L_diff = model_L_s - effective_current_L
  100. L_adjustment = 0
  101. if abs(L_diff) >= adjustment_threshold * action_spec.L_step_s:
  102. if L_diff >= 0:
  103. L_adjustment = action_spec.L_step_s
  104. else:
  105. L_adjustment = -action_spec.L_step_s
  106. next_L_s = effective_current_L + L_adjustment
  107. t_bw_diff = model_t_bw_s - effective_current_t_bw
  108. t_bw_adjustment = 0
  109. if abs(t_bw_diff) >= adjustment_threshold * action_spec.t_bw_step_s:
  110. if t_bw_diff >= 0:
  111. t_bw_adjustment = action_spec.t_bw_step_s
  112. else:
  113. t_bw_adjustment = -action_spec.t_bw_step_s
  114. next_t_bw_s = effective_current_t_bw + t_bw_adjustment
  115. return next_L_s, next_t_bw_s
  116. def calc_uf_cycle_metrics(current_state, max_tmp_during_filtration, min_tmp_during_filtration, L_s: float, t_bw_s: float):
  117. """
  118. 计算 UF 超滤系统的核心性能指标
  119. 参数:
  120. L_s (float): 单次过滤时间(秒)
  121. t_bw_s (float): 单次反洗时间(秒)
  122. 返回:
  123. dict: {
  124. "k_bw_per_ceb": 小周期次数,
  125. "ton_water_energy_kWh_per_m3": 吨水电耗,
  126. "recovery": 回收率,
  127. "net_delivery_rate_m3ph": 净供水率 (m³/h),
  128. "daily_prod_time_h": 日均产水时间 (小时/天)
  129. "max_permeability": 全周期最高渗透率(lmh/bar)
  130. }
  131. """
  132. # 模拟该参数下的超级周期
  133. info, next_state = physics.simulate_one_supercycle(current_state, L_s=L_s, t_bw_s=t_bw_s)
  134. # 获得模型模拟周期信息
  135. k_bw_per_ceb = info["k_bw_per_ceb"]
  136. ton_water_energy_kWh_per_m3 = info["ton_water_energy_kWh_per_m3"]
  137. recovery = info["recovery"]
  138. daily_prod_time_h = info["daily_prod_time_h"]
  139. # 获得模型模拟周期内最高跨膜压差/最低跨膜压差
  140. if max_tmp_during_filtration is None:
  141. max_tmp_during_filtration = info["max_TMP_during_filtration"]
  142. if min_tmp_during_filtration is None:
  143. min_tmp_during_filtration = info["min_TMP_during_filtration"]
  144. # 计算最高渗透率
  145. max_permeability = 100 * current_state.q_UF / (128*40) / min_tmp_during_filtration
  146. return {
  147. "k_bw_per_ceb": k_bw_per_ceb,
  148. "ton_water_energy_kWh_per_m3": ton_water_energy_kWh_per_m3,
  149. "recovery": recovery,
  150. "daily_prod_time_h": daily_prod_time_h,
  151. "max_permeability": max_permeability
  152. }
  153. def run_dqn_decide(
  154. model_path: Path,
  155. physics,
  156. action_spec,
  157. reward_params,
  158. state_bounds,
  159. # -------- 工厂当前值 --------
  160. current_state: UFState
  161. ):
  162. """
  163. 单轮 DQN 决策流程
  164. """
  165. # 构造决策器
  166. decider = UFDQNDecider(
  167. physics=physics,
  168. action_spec=action_spec,
  169. reward_params=reward_params,
  170. state_bounds=state_bounds,
  171. model_path=model_path,
  172. seed=0,
  173. )
  174. # 模型决策(不推进真实环境)
  175. decision = decider.decide(current_state)
  176. action_id = decision["action_id"]
  177. model_L_s = decision["L_s"]
  178. model_t_bw_s = decision["t_bw_s"]
  179. return action_id, model_L_s, model_t_bw_s
  180. # ==============================
  181. # 示例调用
  182. # ==============================
  183. if __name__ == "__main__":
  184. MODEL_PATH = UF_RL_ROOT / "longting" / "48h_dqn_model.zip"
  185. ENV_CONFIG_PATH = UF_RL_ROOT / "longting" / "env_config.yaml"
  186. TMP0 = 0.019 # 原始 TMP0
  187. q_UF = 300 # 进水流量
  188. temp = 20.0 #进水温度
  189. IS_TIMES = False # 新增指定变量,表示CEB间隔为时间控制/次数控制,T表示48次bw一次CEB,F表示48h一次CEB
  190. current_state = UFState(TMP=TMP0, q_UF=q_UF, temp=temp)
  191. config_loader = EnvConfigLoader(ENV_CONFIG_PATH)
  192. config_loader.validate_config()
  193. config_loader.print_config_summary()
  194. (
  195. uf_state_default, # UFState默认值
  196. phys_params, # UFPhysicsParams
  197. action_spec, # UFActionSpec
  198. reward_params, # UFRewardParams
  199. state_bounds # UFStateBounds
  200. ) = create_env_params_from_yaml(ENV_CONFIG_PATH)
  201. physics = build_physics(IS_TIMES, phys_params)
  202. action_id, model_L_s, model_t_bw_s = run_dqn_decide(
  203. model_path=MODEL_PATH,
  204. physics=physics,
  205. action_spec=action_spec,
  206. reward_params=reward_params,
  207. state_bounds=state_bounds,
  208. current_state=current_state,
  209. ) # 环境实例化,模型加载等功能放在UFDQNDecider类中
  210. current_L_s = 3800
  211. current_t_bw_s = 40
  212. model_prev_L_s = 4040
  213. model_prev_t_bw_s = 60
  214. L_s, t_bw_s = generate_plc_instructions(action_spec, current_L_s, current_t_bw_s, model_prev_L_s, model_prev_t_bw_s, model_L_s,
  215. model_t_bw_s) # 获取模型下发指令
  216. L_s = 4100
  217. t_bw_s = 96
  218. max_tmp_during_filtration = 0.050176 # 新增工厂数据接口:周期最高/最低跨膜压差,无工厂数据接入时传入None,calc_uf_cycle_metrics()自动获取模拟周期中的跨膜压差最值
  219. min_tmp_during_filtration = 0.012496
  220. execution_result = calc_uf_cycle_metrics(current_state, max_tmp_during_filtration, min_tmp_during_filtration, L_s, t_bw_s)
  221. print("\n===== 单步决策结果 =====")
  222. print(f"模型选择的动作: {action_id}")
  223. print(f"模型选择的L_s: {model_L_s} 秒, 模型选择的t_bw_s: {model_t_bw_s} 秒")
  224. print(f"指令下发的L_s: {L_s} 秒, 指令下发的t_bw_s: {t_bw_s} 秒")
  225. print(f"指令对应的反洗次数: {execution_result['k_bw_per_ceb']}")
  226. print(f"指令对应的吨水电耗: {execution_result['ton_water_energy_kWh_per_m3']}")
  227. print(f"指令对应的回收率: {execution_result['recovery']}")
  228. print(f"指令对应的日均产水时间: {execution_result['daily_prod_time_h']}")
  229. print(f"指令对应的最高渗透率: {execution_result['max_permeability']}")