Esempio n. 1
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 def inner(*args, **kwargs):
     print_time = kwargs.get('print_time')
     if print_time is not False:
         timer = TicToc()
         timer.tic()
     output = func(*args, **kwargs)
     if print_time is not False:
         time = str(timedelta(seconds=round(timer.elapsed_time)))
         name = str(func).split(' ')[1]
         print(f'function `{name}`')
         print(f'Total time: {time}.')
     return output
Esempio n. 2
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    def evaluate(self, thorough=True, jit=True, notify=False):
        """
        Evaluate metric over the argument sample space and save values to `table`.
        
        Parameters
        ----------
        thorough : bool
            If True, simulate the whole system with each sample.
            If False, simulate only the affected parts of the system.
        jit : bool
            Whether to JIT compile functions with Numba to speed up simulation.
        notify=False : bool, optional
            If True, notify elapsed time after each sample evaluation. 
        
        """
        if jit: speed_up()
        samples = self._samples
        if samples is None:
            raise RuntimeError('must load samples before evaluating')
        evaluate_sample = self._evaluate_sample_thorough if thorough else self._evaluate_sample_smart
        table = self.table
        if notify:
            from biosteam.utils import TicToc
            timer = TicToc()
            timer.tic()

            def evaluate(sample, count=[0]):
                count[0] += 1
                values = evaluate_sample(sample)
                print(f"{count} Elapsed time: {timer.elapsed_time:.0f} sec")
                return values
        else:
            evaluate = evaluate_sample
        table[self._metric_indices] = [
            evaluate(samples[i]) for i in self._index
        ]
Esempio n. 3
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    def evaluate_across_coordinate(self,
                                   name,
                                   f_coordinate,
                                   coordinate,
                                   *,
                                   xlfile=None,
                                   notify=True,
                                   multi_coordinate=False):
        """
        Evaluate across coordinate and save sample metrics.
        
        Parameters
        ----------
        name : str or tuple[str]
            Name of coordinate
        f_coordinate : function
            Should change state of system given the coordinate.
        coordinte : array
            Coordinate values.
        xlfile : str, optional
            Name of file to save. File must end with ".xlsx"
        rule='L' : str
            Sampling rule.
        notify=True : bool, optional
            If True, notify elapsed time after each coordinate evaluation.
        
        """
        table = self.table
        N_samples, N_parameters = table.shape
        N_points = len(coordinate)

        # Initialize data containers
        metric_data = {}

        def new_data(key, dct=metric_data):
            data = np.zeros([N_samples, N_points])
            dct[key] = data
            return data

        for i in self.metrics:
            new_data(i.index)

        # Initialize timer
        if notify:
            timer = TicToc()
            timer.tic()

            def evaluate():
                self.evaluate()
                print(f"[{n}] Elapsed time: {timer.elapsed_time:.0f} sec")
        else:
            evaluate = self.evaluate

        for n, x in enumerate(coordinate):
            f_coordinate(*x) if multi_coordinate else f_coordinate(x)
            evaluate()
            for metric in metric_data:
                metric_data[metric][:, n] = table[metric]

        if xlfile:
            if multi_coordinate:
                columns = pd.MultiIndex.from_tuples(coordinate, names=name)
            else:
                columns = pd.Index(coordinate, name=name)

            # Save data to excel
            data = pd.DataFrame(data=np.zeros([N_samples, N_points]),
                                columns=columns)

            with pd.ExcelWriter(xlfile) as writer:
                for i, metric in zip(self.metrics, metric_data):
                    data[:] = metric_data[metric]
                    data.to_excel(writer, sheet_name=i.name)
        return metric_data
Esempio n. 4
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import pandas as pd
from biosteam.utils import TicToc
from biosteam.plots import plot_montecarlo_across_coordinate
from lactic import models

percentiles = [0, 0.05, 0.1, 0.25, 0.5, 0.75, 0.9, 0.95, 1]


# %% 

# =============================================================================
# Evaluating across internal rate of return
# =============================================================================

# Initiate a timer
timer = TicToc('timer')
timer.tic()

model = models.model_IRR

'''
Note:
    Not using `evaluate_across_coordinate` function as changing IRR
    does not affect the system, using IRR as the metrics for evaluation 
    will save considerable time.
'''

'''Evaluate'''
np.random.seed(3221)
N_simulation = 100 # 1000
samples = model.sample(N=N_simulation, rule='L')
Esempio n. 5
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    def evaluate_across_coordinate(self,
                                   name,
                                   f_coordinate,
                                   coordinate,
                                   *,
                                   xlfile=None,
                                   notify=0,
                                   notify_coordinate=True,
                                   re_evaluate=True,
                                   multi_coordinate=False):
        """
        Evaluate across coordinate and save sample metrics.
        
        Parameters
        ----------
        name : str or tuple[str]
            Name of coordinate
        f_coordinate : function
            Should change state of system given the coordinate.
        coordinte : array
            Coordinate values.
        xlfile : str, optional
            Name of file to save. File must end with ".xlsx"
        rule='L' : str
            Sampling rule.
        notify=True : bool, optional
            If True, notify elapsed time after each coordinate evaluation.
        
        """
        if self._samples is None:
            raise RuntimeError('must load samples before evaluating')
        table = self.table
        N_samples, N_parameters = table.shape
        N_points = len(coordinate)

        # Initialize data containers
        metric_indices = var_indices(self.metrics)
        shape = (N_samples, N_points)
        metric_data = {i: np.zeros(shape) for i in metric_indices}
        f_evaluate = self.evaluate

        # Initialize timer
        if re_evaluate:
            if notify_coordinate:
                from biosteam.utils import TicToc
                timer = TicToc()
                timer.tic()

                def evaluate():
                    f_evaluate(notify=notify)
                    print(
                        f"[Coordinate {n}] Elapsed time: {timer.elapsed_time:.0f} sec"
                    )
            else:
                evaluate = f_evaluate
        else:
            evaluate = lambda: None

        for n, x in enumerate(coordinate):
            f_coordinate(*x) if multi_coordinate else f_coordinate(x)
            evaluate()
            for metric in metric_data:
                metric_data[metric][:, n] = table[metric]

        if xlfile:
            if multi_coordinate:
                columns = pd.MultiIndex.from_tuples(coordinate, names=name)
            else:
                columns = pd.Index(coordinate, name=name)

            # Save data to excel
            data = pd.DataFrame(data=np.zeros([N_samples, N_points]),
                                columns=columns)

            with pd.ExcelWriter(xlfile) as writer:
                for metric in self.metrics:
                    data[:] = metric_data[metric.index]
                    data.to_excel(writer, sheet_name=metric.short_description)
        return metric_data
Esempio n. 6
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    def evaluate(self,
                 thorough=True,
                 notify=0,
                 file=None,
                 autosave=0,
                 autoload=False):
        """
        Evaluate metrics over the loaded samples and save values to `table`.
        
        Parameters
        ----------
        thorough : bool
            If True, simulate the whole system with each sample.
            If False, simulate only the affected parts of the system and
            skip simulation for repeated states.
        notify=0 : int, optional
            If 1 or greater, notify elapsed time after the given number of sample evaluations. 
        file : str, optional
            Name of file to save/load pickled evaluation results.
        autosave : int, optional
            If 1 or greater, save pickled evaluation results after the given number of sample evaluations.
        autoload : bool, optional
            Whether to load pickled evaluation results from file.
        
        Warning
        -------
        Any changes made to either the model or the samples will not be accounted
        for when autoloading and may lead to misleading results.
        
        """
        samples = self._samples
        if samples is None:
            raise RuntimeError('must load samples before evaluating')
        evaluate_sample = self._evaluate_sample
        table = self.table
        if notify:
            from biosteam.utils import TicToc
            timer = TicToc()
            timer.tic()
            count = [0]

            def evaluate(sample, thorough, count=count):
                count[0] += 1
                values = evaluate_sample(sample, thorough)
                if not count[0] % notify:
                    print(
                        f"{count} Elapsed time: {timer.elapsed_time:.0f} sec")
                return values
        else:
            evaluate = evaluate_sample
        if autoload:
            try:
                with open(file, "rb") as f:
                    number, values, table_index, table_columns = pickle.load(f)
                if (table_index != table.index).any() or (table_columns !=
                                                          table.columns).any():
                    raise ValueError(
                        'table layout does not match autoload file')
                del table_index, table_columns
                index = self._index[number:]
            except:
                number = 0
                index = self._index
                values = [None] * len(index)
            else:
                if notify: count[0] = number
        else:
            number = 0
            index = self._index
            values = [None] * len(index)

        if autosave:
            layout = table.index, table.columns
            for number, i in enumerate(index, number):
                values[i] = evaluate(samples[i], thorough)
                if not number % autosave:
                    obj = (number, values, *layout)
                    with open(file, 'wb') as f:
                        pickle.dump(obj, f)
        else:
            for i in index:
                values[i] = evaluate(samples[i], thorough)
        table[var_indices(self._metrics)] = values
Esempio n. 7
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@author: yalinli_cabbi
"""


# %%

# =============================================================================
# Simulate pretreatment efficacy
# =============================================================================

import numpy as np
import pandas as pd
from biosteam.utils import TicToc

timer_efficacy = TicToc('timer_efficacy')
timer_efficacy.tic()
 
lignin = np.arange(0, 0.41, 0.01)
conversion_max = np.ones(1000)
conversion_min = np.zeros(1000)

# Liquid hot water (LHW)
np.random.seed(3221)
intercept_LHW_1 = np.random.normal(0.84, 0.04, 1000)
intercept_LHW_2 = np.random.normal(1.32, 0.07, 1000)
slope_LHW_2 = np.random.normal(-2.33, 0.33, 1000)
df_LHW = pd.DataFrame()

# Acid
intercept_acid = np.random.normal(1.04, 0.04, 1000)