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- import numpy as np
- import pandas as pd
- import pymc as pm
- import pytensor.tensor as pt
- from .._base._base_device import BaseDevice
- from ...components.coil_water import CoolingCoil2
- from ...components.coil_steam import SteamCoilFs,SteamCoilFs2,SteamCoil
- from ...components.wheel import WheelS3
- from ...components.mixed import Mixed
- from ..utils.fit_utils import (
- observe,record,reorder_posterior,get_fitted_result
- )
- from ...tools.optimizer import optimizer
- class DHU_A(BaseDevice):
-
- model_input_data_columns = {
- 'Tin_F' : 'coil_1_ToutA',
- 'Hin_F' : 'coil_1_HoutA',
- 'fan_1_Hz' : 'fan_1_Hz',
- 'fan_2_Hz' : 'fan_2_Hz',
- 'coil_1_TinW' : 'coil_1_TinW',
- 'coil_2_TinW' : 'coil_2_TinW',
- 'coil_3_TinW' : 'coil_3_TinW',
- 'coil_1_Val' : 'coil_1_Val',
- 'coil_2_Val' : 'coil_2_Val',
- 'coil_3_Val' : 'coil_3_Val',
- 'wheel_1_TinR': 'wheel_1_TinR',
- 'wheel_2_TinR': 'wheel_2_TinR',
- 'mixed_1_TinM': 'mixed_1_TinM',
- 'mixed_2_TinM': 'mixed_2_TinM',
- 'mixed_1_HinM': 'mixed_1_HinM',
- 'mixed_2_HinM': 'mixed_2_HinM',
- }
- model_observe_data_columns = {
- 'mixed_1_ToutA' : 'mixed_1_ToutA',
- 'mixed_1_DoutA' : 'mixed_1_DoutA',
- 'wheel_1_ToutC' : 'wheel_1_ToutC',
- 'coil_2_ToutA' : 'coil_2_ToutA',
- 'coil_2_DoutA' : 'coil_2_DoutA',
- 'wheel_2_ToutP' : 'wheel_2_ToutP',
- 'wheel_2_DoutP' : 'wheel_2_DoutP',
- 'wheel_2_ToutR' : 'wheel_2_ToutR',
- 'steamcoil_1_FP' : 'steamcoil_1_FP',
- 'steamcoil_2_FP' : 'steamcoil_2_FP',
- 'steamcoil_1_Fs' : 'steamcoil_1_Fs',
- 'steamcoil_2_Fs' : 'steamcoil_2_Fs',
- 'steamcoil_1_Val': 'steamcoil_1_Val',
- 'steamcoil_2_Val': 'steamcoil_2_Val',
- }
-
- def __init__(self) -> None:
- super().__init__()
- self.components = [
- WheelS3('wheel_1'),
- WheelS3('wheel_2'),
- CoolingCoil2('coil_2'),
- CoolingCoil2('coil_3'),
- # SteamCoil('steamcoil_1'),
- # SteamCoil('steamcoil_2'),
- SteamCoilFs2('steamcoil_1'),
- SteamCoilFs('steamcoil_2'),
- Mixed('mixed_1'),
- Mixed('mixed_2'),
- ]
- self.components = {comp.name:comp for comp in self.components}
-
- def fit(
- self,
- input_data : pd.DataFrame,
- observed_data: pd.DataFrame,
- rw_FA_val : bool = False,
- plot_TVP : bool = True
- ):
- with pm.Model() as self.MODEL_PYMC:
- param_prior = {name:comp.prior() for name,comp in self.components.items()}
- param_prior['F_air'] = AirFlow.prior(rw_FA_val=rw_FA_val,N=len(input_data))
-
- res = DHU_A.model(
- **{k:input_data.loc[:,v].values for k,v in self.model_input_data_columns.items()},
- engine = 'pymc',
- components = self.components,
- param = param_prior
- )
- for std_name,name in self.model_observe_data_columns.items():
- if name not in observed_data.columns:
- continue
- observed_data = observed_data.rename(columns={name:std_name})
- observe('mixed_1_ToutA',res['mixed_1']['ToutA'],observed=observed_data)
- observe('mixed_1_DoutA',res['mixed_1']['DoutA'],observed=observed_data)
- observe('wheel_1_ToutC',res['wheel_1']['ToutC'],observed=observed_data)
- observe('coil_2_ToutA',res['coil_2']['ToutA'],observed=observed_data)
- observe('coil_2_DoutA',res['coil_2']['DoutA'],observed=observed_data)
- observe('wheel_2_ToutP',res['wheel_2']['ToutP'],observed=observed_data)
- observe('wheel_2_DoutP',res['wheel_2']['DoutP'],observed=observed_data)
- observe('wheel_2_ToutR',res['wheel_2']['ToutR'],observed=observed_data)
-
- observe('steamcoil_1_FP',res['steamcoil_1']['FP'],observed=observed_data,sigma=1000)
- observe('steamcoil_1_Fs',res['steamcoil_1']['Fs'],observed=observed_data,sigma=20)
- observe('steamcoil_2_Fs',res['steamcoil_2']['Fs'],observed=observed_data,sigma=20)
- # record('steamcoil_1_Fs',res['steamcoil_1']['Fs'])
- # record('steamcoil_2_Fs',res['steamcoil_2']['Fs'])
-
- record('wheel_2_ToutC',res['wheel_2']['ToutC'])
- record('mixed_2_ToutA',res['mixed_2']['ToutA'])
- record('wheel_1_FaP',res['wheel_1']['FP'])
- record('wheel_1_FaR',res['wheel_1']['FR'])
- record('wheel_1_FaC',res['wheel_1']['FC'])
- record('mixed_1_FaA',res['mixed_1']['FA'])
- record('mixed_1_FaM',res['mixed_1']['FM'])
- record('F_air_S',res['Fa']['Fa_S'])
- record('F_air_H',res['Fa']['Fa_H'])
- record('F_air_X',res['Fa']['Fa_X'])
- self.param_posterior = pm.find_MAP(maxeval=50000,include_transformed=False)
-
- self.record_model(
- model_name = 'DHU',
- model = reorder_posterior(param_prior,self.param_posterior),
- train_data = {'x':np.array([1])},
- train_metric = {'R2':1,'MAE':1,'MAPE':1}
- )
- self.TVP_data,self.TVP_metric = get_fitted_result(self.param_posterior,observed_data,plot_TVP)
- return self
-
- def predict(self,input_data:pd.DataFrame) -> dict:
- param_posterior = self.model_info['model_DHU']
- res = DHU_A.model(
- **{k:input_data.loc[:,v].values for k,v in self.model_input_data_columns.items()},
- engine = 'numpy',
- components = self.components,
- param = param_posterior
- )
- return res
-
- def predict_system(self,input_data:pd.DataFrame) -> pd.DataFrame:
- pred_res = self.predict(input_data)
- system_output = {}
- for equp_name,output_info in pred_res.items():
- for output_name,output_value in output_info.items():
- system_output[f'{equp_name}_{output_name}'] = output_value
- system_output = pd.DataFrame(system_output)
- system_output['Fs'] = system_output.steamcoil_1_Fs + system_output.steamcoil_2_Fs
- return system_output
-
- def optimize(
- self,
- cur_input_data : pd.DataFrame,
- wheel_1_TinR_ub: float = 120,
- wheel_1_TinR_lb: float = 70,
- wheel_2_TinR_ub: float = 120,
- wheel_2_TinR_lb: float = 70,
- constrains : list = None
- ) -> list:
- constrains = [] if constrains is None else constrains
- cur_input_data = cur_input_data.iloc[[0],:]
- opt_var_boundary = {
- 'wheel_1_TinR':{'lb':wheel_1_TinR_lb,'ub':wheel_1_TinR_ub},
- 'wheel_2_TinR':{'lb':wheel_2_TinR_lb,'ub':wheel_2_TinR_ub},
- }
- opt_var_value = cur_input_data.loc[:,list(opt_var_boundary.keys())]
- oth_var_value = (
- cur_input_data
- .loc[:,list(self.model_input_data_columns.values())]
- .drop(opt_var_value.columns,axis=1)
- )
- opt_res = optimizer(
- model = self,
- opt_var_boundary = opt_var_boundary,
- opt_var_value = opt_var_value,
- oth_var_value = oth_var_value,
- constrains = constrains
- )
- return opt_res
-
- @classmethod
- def model(
- cls,
- Tin_F, # 前表冷后温度
- Hin_F, # 前表冷后湿度
- fan_1_Hz, # 处理侧风机频率
- fan_2_Hz, # 再生侧风机频率
- coil_1_TinW, # 前表冷进水温度
- coil_2_TinW, # 中表冷进水温度
- coil_3_TinW, # 后表冷进水温度
- coil_1_Val, # 前表冷阀门开度
- coil_2_Val, # 中表冷阀门开度
- coil_3_Val, # 后表冷阀门开度
- wheel_1_TinR, # 前转轮再生侧温度
- wheel_2_TinR, # 后转轮再生侧温度
- mixed_1_TinM, # 回风温度(处理侧)
- mixed_1_HinM, # 回风湿度(处理侧)
- mixed_2_TinM, # 补风温度(再生侧)
- mixed_2_HinM, # 补风湿度(再生侧)
- engine : str,
- components: dict,
- param : dict,
- ) -> dict:
-
- # 水的质量流量
- coil_2_FW = coil_2_Val / 100
- coil_3_FW = coil_3_Val / 100
- # 空气的质量流量
- air_flow = AirFlow.model(fan_1_Hz=fan_1_Hz,fan_2_Hz=fan_2_Hz,param=param)
-
- # 前转轮
- wheel_1_res = components['wheel_1'].model(
- TinP = Tin_F,
- HinP = Hin_F,
- FP = air_flow['wheel_1_FaP'],
- TinR = wheel_1_TinR,
- HinR = 0,
- FR = air_flow['wheel_1_FaR'],
- TinC = Tin_F,
- HinC = Hin_F,
- FC = air_flow['wheel_1_FaC'],
- engine = engine,
- param = param['wheel_1']
- )
-
- # 处理侧混风(回风)
- mixed_1_res = components['mixed_1'].model(
- TinA = wheel_1_res['ToutP'],
- HinA = wheel_1_res['HoutP'],
- FA = air_flow['mixed_1_FaA'],
- TinM = mixed_1_TinM,
- HinM = mixed_1_HinM,
- FM = air_flow['mixed_1_FaM'],
- engine = engine
- )
-
- # 中表冷
- coil_2_res = components['coil_2'].model(
- TinA = mixed_1_res['ToutA'],
- HinA = mixed_1_res['HoutA'],
- FA = air_flow['coil_2_FaA'],
- TinW = coil_2_TinW,
- FW = coil_2_FW,
- engine = engine,
- param = param['coil_2']
- )
-
- # 后转轮
- wheel_2_res = components['wheel_2'].model(
- TinP = coil_2_res['ToutA'],
- HinP = coil_2_res['HoutA'],
- FP = air_flow['wheel_2_FaP'],
- TinC = wheel_1_res['ToutC'],
- HinC = wheel_1_res['HoutC'],
- FC = air_flow['wheel_2_FaC'],
- TinR = wheel_2_TinR,
- HinR = 0,
- FR = air_flow['wheel_2_FaR'],
- engine = engine,
- param = param['wheel_2'],
- )
-
- # 后表冷
- coil_3_res = components['coil_3'].model(
- TinA = wheel_2_res['ToutP'],
- HinA = wheel_2_res['HoutP'],
- FA = air_flow['coil_3_FaA'],
- TinW = coil_3_TinW,
- FW = coil_3_FW,
- engine = engine,
- param = param['coil_3']
- )
-
- # 后转轮湿度修正
- wheel_2_res_adj = components['wheel_2'].model(
- TinP = coil_2_res['ToutA'],
- HinP = coil_2_res['HoutA'],
- FP = air_flow['wheel_2_FaP'],
- TinC = wheel_1_res['ToutC'],
- HinC = wheel_1_res['HoutC'],
- FC = air_flow['wheel_2_FaC'],
- TinR = wheel_2_TinR,
- HinR = wheel_2_res['HoutC'],
- FR = air_flow['wheel_2_FaR'],
- engine = engine,
- param = param['wheel_2'],
- )
- # 再生侧混风(排风)
- mixed_2_res = components['mixed_2'].model(
- TinA = wheel_2_res_adj['ToutR'],
- HinA = wheel_2_res_adj['HoutR'],
- FA = air_flow['mixed_2_FaA'],
- TinM = mixed_2_TinM,
- HinM = mixed_2_HinM,
- FM = air_flow['mixed_2_FaM'],
- engine = engine
- )
-
- # 前转轮湿度修正
- wheel_1_res_adj = components['wheel_1'].model(
- TinP = Tin_F,
- HinP = Hin_F,
- FP = air_flow['wheel_1_FaP'],
- TinR = wheel_1_TinR,
- HinR = mixed_2_res['HoutA'],
- FR = air_flow['wheel_1_FaR'],
- TinC = Tin_F,
- HinC = Hin_F,
- FC = air_flow['wheel_1_FaC'],
- engine = engine,
- param = param['wheel_1']
- )
-
- # 前蒸气盘管
- steamcoil_1_res = components['steamcoil_1'].model(
- TinA = mixed_2_res['ToutA'],
- ToutA = wheel_1_TinR,
- FA = air_flow['steamcoil_1_Fa'],
- param = param['steamcoil_1'],
- engine = engine
- )
-
- # 后蒸气盘管
- steamcoil_2_res = components['steamcoil_2'].model(
- TinA = wheel_2_res_adj['ToutC'],
- ToutA = wheel_2_TinR,
- FA = air_flow['steamcoil_2_Fa'],
- param = param['steamcoil_2'],
- engine = engine
- )
-
- return {
- 'coil_2' : coil_2_res,
- 'coil_3' : coil_3_res,
- 'wheel_1' : wheel_1_res_adj,
- 'wheel_2' : wheel_2_res_adj,
- 'mixed_1' : mixed_1_res,
- 'mixed_2' : mixed_2_res,
- 'steamcoil_1': steamcoil_1_res,
- 'steamcoil_2': steamcoil_2_res,
- 'Fa' : air_flow,
- 'summary' : {}
- }
- class AirFlow:
-
- @classmethod
- def model(cls,fan_1_Hz,fan_2_Hz,param):
- # 空气的质量流量
- F_air_HzP_H = param['F_air']['HzP_H']
- F_air_HzP_X = param['F_air']['HzP_X']
- F_air_HzP_S = F_air_HzP_H + F_air_HzP_X
- F_air_HzR_B = param['F_air']['HzR_B']
-
- F_air_S_base = 1
- F_air_X_base = param['F_air']['X_base']
- F_air_H_base = param['F_air']['H_base']
- F_air_B_base = param['F_air']['B_base']
- F_air_val_rw = param['F_air'].get('val_rw',0)
- F_air_val_pct = param['F_air'].get('val_pct',0)
-
- F_air_X_base_adj = F_air_X_base + F_air_val_rw
- F_air_H_base_adj = F_air_H_base - F_air_val_rw * F_air_val_pct
- F_air_B_base_adj = F_air_B_base - F_air_val_rw * (1 - F_air_val_pct)
-
- Fa_S = F_air_S_base + F_air_HzP_S * (fan_1_Hz / 50)
- Fa_H = F_air_H_base_adj + F_air_HzP_H * (fan_1_Hz / 50)
- Fa_X = F_air_X_base_adj + F_air_HzP_X * (fan_1_Hz / 50)
- Fa_B = F_air_B_base_adj + F_air_HzR_B * (fan_2_Hz / 50)
- Fa_P = Fa_B + Fa_X + Fa_H - Fa_S
-
- wheel_1_FaP = Fa_S - Fa_H
- wheel_1_FaC = Fa_X - wheel_1_FaP
- wheel_1_FaR = Fa_P
- wheel_2_FaP = Fa_S
- wheel_2_FaC = wheel_1_FaC
- wheel_2_FaR = wheel_1_FaC
- mixed_1_FaM = Fa_H
- mixed_1_FaA = wheel_1_FaP
- mixed_2_FaM = Fa_B
- mixed_2_FaA = wheel_1_FaC
- coil_2_FaA = Fa_S
- coil_3_FaA = Fa_S
- steamcoil_1_Fa = Fa_P
- steamcoil_2_Fa = wheel_1_FaC
-
- return {
- 'Fa_S':Fa_S,'Fa_H':Fa_H,'Fa_X':Fa_X,'Fa_B':Fa_B,'Fa_P':Fa_P,
- 'wheel_1_FaP':wheel_1_FaP,'wheel_1_FaC':wheel_1_FaC,'wheel_1_FaR':wheel_1_FaR,
- 'wheel_2_FaP':wheel_2_FaP,'wheel_2_FaC':wheel_2_FaC,'wheel_2_FaR':wheel_2_FaR,
- 'mixed_1_FaM':mixed_1_FaM,'mixed_1_FaA':mixed_1_FaA,
- 'mixed_2_FaM':mixed_2_FaM,'mixed_2_FaA':mixed_2_FaA,
- 'coil_2_FaA':coil_2_FaA,'coil_3_FaA':coil_3_FaA,
- 'steamcoil_1_Fa':steamcoil_1_Fa,'steamcoil_2_Fa':steamcoil_2_Fa
- }
-
- @classmethod
- def prior(cls,rw_FA_val,N) -> dict:
- HzP_X = pm.HalfNormal('F_air_HzP_X',sigma=1,initval=1)
- HzP_H = pm.HalfNormal('F_air_HzP_H',sigma=1,initval=0.1)
- HzR_B = pm.HalfNormal('F_air_HzR_B',sigma=1,initval=0.5)
- X_base = pm.TruncatedNormal('F_air_X_base',mu=0.5,sigma=0.2,lower=0,initval=0.5)
- H_base = pm.TruncatedNormal('F_air_H_base',mu=0.6,sigma=0.2,lower=0,upper=0.999,initval=0.6)
- B_base = pm.TruncatedNormal('F_air_B_base',mu=0.2,sigma=0.1,lower=0,initval=0.1)
-
- if rw_FA_val:
- period = 30
- n_segments = int(np.ceil(N/period))
- remainder = N % period
- repeat = [period] * (n_segments - 1) + ([remainder] if remainder != 0 else [])
- rw = pm.GaussianRandomWalk(
- 'rw',sigma=0.1,init_dist=pm.Normal.dist(mu=0,sigma=0.3),shape=n_segments)
- val_rw = pm.Deterministic('F_air_val_rw',pt.repeat(rw,repeat))
- val_pct = pm.Beta('F_air_val_pct',alpha=8,beta=1,initval=0.9)
- else:
- val_rw = 0
- val_pct = 0
-
- return {
- 'HzP_X':HzP_X,'HzP_H':HzP_H,'HzR_B':HzR_B,
- 'X_base':X_base,'H_base':H_base,'B_base':B_base,
- 'val_rw':val_rw,'val_pct':val_pct
- }
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