.. DO NOT EDIT. .. THIS FILE WAS AUTOMATICALLY GENERATED BY SPHINX-GALLERY. .. TO MAKE CHANGES, EDIT THE SOURCE PYTHON FILE: .. "examples/multiprocessing/flame_speed_calculation_multiprocessing.py" .. LINE NUMBERS ARE GIVEN BELOW. .. only:: html .. note:: :class: sphx-glr-download-link-note :ref:`Go to the end ` to download the full example code. .. rst-class:: sphx-glr-example-title .. _sphx_glr_examples_multiprocessing_flame_speed_calculation_multiprocessing.py: .. _ref_flame_speed_pooling: ================================================================= Setting up a multi-process laminar flame speed parameter study ================================================================= One of the prevailing use case of the *freely propagating premixed flame* model is to build a *flame speed* table to be imported by another combustion simulation tools. PyChemkin provides the flexibility to customize the data structure of the flame speed table depending on the simulation goals and the tool. Furthermore, over the years, the chemkin flame speed calculator has derived a set of default solver settings that would greatly improve the convergence performance, especially for those widely adopted hydrocarbon fuel combustion mechanisms. The required input parameters the flame speed calculator are reduced to the composition of the fuel-oxidizer mixture, the initial/inlet pressure and temperature, and the calculation domain. This tutorial shows the steps of setting up a flame speed parameter study for CH\ :sub:`4`\ -air mixtures at the 5 atmosphere pressure. The predicted flame speed values are compared against the experimental data as a function of the mixture equivalence ratio. The parameter study is performed in the multi-process (or multi-core) mode by using ``ProcessPoolExecutor`` from the ``concurrent.futures`` package. If the computer has enough number of CPU cores, the parameter study can be run in parallel with each case running on a designated CPU core. Since the transport processes are critical for flame calculations, the transport data must be included in the mechanism data and preprocessed. .. GENERATED FROM PYTHON SOURCE LINES 50-52 .. code-block:: Python :dedent: 1 .. GENERATED FROM PYTHON SOURCE LINES 54-56 Import PyChemkin packages and start the logger ============================================== .. GENERATED FROM PYTHON SOURCE LINES 56-85 .. code-block:: Python from concurrent.futures import ProcessPoolExecutor import os from pathlib import Path import time import ansys.chemkin.core as ck # Chemkin from ansys.chemkin.core.inlet import Stream # external gaseous inlet from ansys.chemkin.core.logger import logger # Chemkin 1-D premixed freely propagating flame model (steady-state) from ansys.chemkin.core.premixedflames.premixedflame import ( FreelyPropagating as FlameSpeed, ) from ansys.chemkin.core.utilities import WorkingFolders import matplotlib.pyplot as plt # plotting import numpy as np # number crunching # check working directory current_dir = str(Path.cwd()) logger.debug("working directory: " + current_dir) # set verbose mode ck.set_verbose(True) # set interactive mode for plotting the results # interactive = True: display plot # interactive = False: save plot as a PNG file global interactive interactive = True .. GENERATED FROM PYTHON SOURCE LINES 86-91 Create a flame speed calculator class ===================================== Create a local class that wraps around the actual ``FlameSpeed`` class to make the setup of the multi-process flame speed calculation parameter study more convenient. .. GENERATED FROM PYTHON SOURCE LINES 91-156 .. code-block:: Python class FlameSpeedCalculator: """Laminar flame speed calculator with fixed set up parameters.""" def __init__(self, fresh_mixture: Stream, index: int): """Create a Laminar flame speed calculator.""" """ Create a Laminar flame speed calculator that instantiates a FlameSpeed object with the given fresh (unburnt) mixture condition. Parameters ---------- fresh_mixture: Mixture object the initial/fresh/unburnt condition index: integer run index of this flame speed calculator """ # instantiate a flame speed object # set up the run and working directory name self.name = "Flame_Speed_" + str(index) # instantiate the FlameSpeed object for this run self.fs_calculator = FlameSpeed(fresh_mixture, label=self.name) # set the required premixed flame model parameters # # set the maximum total number of grid points allowed # in the calculation (optional) # self.fs_calculator.set_max_grid_points(150) # define the calculation domain [cm] self.fs_calculator.end_position = 1.0 # set the root directory self.root_dir = str(Path.cwd()) # set the working directory self.work_dir = str(Path(self.root_dir) / self.name) # run status self.runstatus = -100 # calculated laminar flame speed [cm/sec] self.flame_speed = 0.0 def run(self): """Run the flame speed calculation in a separate working directory.""" # run the flame speed calculation self.runstatus = self.fs_calculator.run() # extract the laminar flame speed from the solution if self.runstatus == 0: # postprocess the solutions self.fs_calculator.process_solution() # get the flame speed value [cm/sec] # because the memory is shared, it must be done as soon as # the run is finished self.flame_speed = self.fs_calculator.get_flame_speed() def get_flame_speed(self) -> float: """Get the predicted laminar flame speed.""" """ Get the predicted laminar flame speed. Returns ------- flame_speed: double predicted laminar flame speed [cm/sec] """ return self.flame_speed .. GENERATED FROM PYTHON SOURCE LINES 157-163 Set up the flame speed parameter study for multi-processing =========================================================== Create a list of ``FlameSpeedCalculator`` objects with different initial methane-air equivalence ratios. Each object represents one parameter study case and will be run on an designated cpu core when the parameter study is executed. .. GENERATED FROM PYTHON SOURCE LINES 163-285 .. code-block:: Python def flame_speed_run(case: tuple[int, float]) -> tuple[float, float]: """Set up the flame speed parameter study.""" """ Set up the parameter study runs for multi-processing. Parameters ---------- case: tuple (integer, double) flame speed calculation case condition: case index and the equivalence ratio Returns ------- phi: double the parameter: fresh mixture equivalence ratio flame_speed: double predicted laminar flame speed of the fresh mixture [cm/sec] """ ########################################## # Create an instance of the Chemistry Set # ======================================== # The mechanism loaded is the GRI 3.0 mechanism for methane combustion. # The mechanism and its associated data files come with the standard Ansys Chemkin # installation under the subdirectory *"/reaction/data"*. # # case index index = case[0] # fresh mixture equivalence ratio phi = case[1] # create and change to the working directory for this run name = "Flame_Speed_" + str(index) work_folder = WorkingFolders(name, current_dir) # set mechanism directory (the default Chemkin mechanism data directory) data_dir = Path(ck.ansys_dir) / "reaction" / "data" mechanism_dir = data_dir # including the full file path is recommended chemfile = str(mechanism_dir / "grimech30_chem.inp") thermfile = str(mechanism_dir / "grimech30_thermo.dat") tranfile = str(mechanism_dir / "grimech30_transport.dat") # create a chemistry set based on GRI 3.0 MyGasMech = ck.Chemistry( chem=chemfile, therm=thermfile, tran=tranfile, label="GRI 3.0" ) ############################## # Preprocess the Chemistry Set # ============================ # preprocess the mechanism files ierror = MyGasMech.preprocess() if ierror != 0: print("Error: failed to preprocess the mechanism!") print(f" error code = {ierror}") exit() ######################################################################## # Set up the CH\ :sub:`4`\ -air mixture for the flame speed calculation # ====================================================================== # Instantiate a stream named ``premixed`` for the inlet gas mixture. # This stream is a mixture with the addition of the # inlet flow rate. You can specify the inlet gas properties the same way you # set up a ``Mixture``. Here the ``x_by_equivalence_ratio`` method is used. # You create the ``fuel`` and the ``air`` mixtures first. Then define the # *complete combustion product species* and provide the *additives* composition # if applicable. And finally, during the parameter iteration runs, you can # simply set different values to ``equivalenceratio`` to create different # methane-air mixtures. # # create the fuel mixture fuel = ck.Mixture(MyGasMech) # set fuel composition: methane fuel.x = [("CH4", 1.0)] # setting pressure and temperature condition for the flame speed calculations fuel.pressure = 5.0 * ck.P_ATM fuel.temperature = 300.0 # inlet temperature # create the oxidizer mixture: air air = ck.Mixture(MyGasMech) air.x = ck.Air.x() # setting pressure and temperature is not required in this case air.pressure = fuel.pressure air.temperature = fuel.temperature # create the fuel-air Stream for the premixed flame speed calculation premixed = Stream(MyGasMech, label="premixed") # products from the complete combustion of the fuel mixture and air products = ["CO2", "H2O", "N2"] # species mole fractions of added/inert mixture. # can also create an additives mixture here add_frac = np.zeros(MyGasMech.kk, dtype=np.double) # no additives: all zeros # setting pressure and temperature is not required in this case premixed.pressure = fuel.pressure premixed.temperature = fuel.temperature # set estimated value of the flame mass flux [g/cm2-sec] premixed.mass_flowrate = 0.4 # create mixture by using the equivalence ratio ierror = premixed.x_by_equivalence_ratio( MyGasMech, fuel.x, air.x, add_frac, products, equivalenceratio=phi ) # check fuel-oxidizer mixture creation status if ierror != 0: print( "Error: failed to create the methane-air mixture " + "for equivalence ratio = " + str(phi) ) exit() # create a flame speed calculation instance this_run = FlameSpeedCalculator(premixed, index=index) # run the case this_run.run() # change back to the original top folder work_folder.done() # return phi, this_run.flame_speed .. GENERATED FROM PYTHON SOURCE LINES 286-298 Set up and start the multi-process runs ======================================= Use the ``ProcessPoolExecutor()`` method to assign the flame speed runs. In this project, each flame speed run/case runs on an exclusive cpu core. The first parameter of ``map()`` method should be ``flame_speed_run()``. Make the ``flame_speed_run()`` method return the required parameter and results to make post-processing the results from the parameter study easier. .. note:: ``if __name__ == '__main__'`` is required when ``multiprocessing`` package is used. .. GENERATED FROM PYTHON SOURCE LINES 298-385 .. code-block:: Python if __name__ == "__main__": # number of available cpu cores numb_cores = max(os.cpu_count(), 1) # set the number of worker cpu cores to be used by the parameter study numb_workers = 14 numb_workers = max(numb_workers, 1) numb_workers = min(numb_workers, numb_cores - 2) # Set up the flame speed parameter study for multi-processing # equivalence ratio for the first case phi = 0.6 # total number of parameter cases numb_cases = 21 # equivalence ratio increment delta_phi = 0.05 # set up flame speed calculation runs with different equivalence ratios flamespeed_cases: list[tuple[int, float]] = [] for i in range(numb_cases): # create mixture by using the equivalence ratio flamespeed_cases.append((i, phi)) # update parameter phi += delta_phi # start the multi-process case_id = 0 # set the start wall time start_time = time.time() # numb_workers = min(numb_workers, numb_cases) equiv: list[float] = [] flame_speed: list[float] = [] with ProcessPoolExecutor(max_workers=numb_workers) as e: for ret_value in e.map(flame_speed_run, flamespeed_cases): # results returned by the flame speed calculator # equivalence ratio equiv.append(ret_value[0]) # predicted laminar flame speed [cm/sec] flame_speed.append(ret_value[1]) # compute the total runtime runtime = time.time() - start_time print() print(f"total simulation duration: {runtime} [sec]") print() # experimental data by Kochar # equivalence ratios data_equiv = [ 0.7005, 0.8007, 0.9009, 1.001, 1.1032, 1.2014, 1.3014, ] # methane flame speeds at 5 atm data_speed = [ 6.906, 12.0094, 15.9072, 19.2376, 19.6601, 15.8274, 10.2925, ] ########################################### # Plot the premixed flame solution profiles # ========================================= # Plot the predicted flame speeds against the experimental data. plt.plot( data_equiv, data_speed, label="data", linestyle="", marker="^", color="blue" ) plt.plot(equiv, flame_speed, label="GRI 3.0", linestyle="-", color="blue") plt.legend() plt.ylabel("Flame Speed [cm/sec]") plt.xlabel("Equivalence Ratio") # clean up ck.done() # plot results if interactive: plt.show() else: plt.savefig("plot_flame_speed_pooling.png", bbox_inches="tight") .. _sphx_glr_download_examples_multiprocessing_flame_speed_calculation_multiprocessing.py: .. only:: html .. container:: sphx-glr-footer sphx-glr-footer-example .. container:: sphx-glr-download sphx-glr-download-jupyter :download:`Download Jupyter notebook: flame_speed_calculation_multiprocessing.ipynb ` .. container:: sphx-glr-download sphx-glr-download-python :download:`Download Python source code: flame_speed_calculation_multiprocessing.py ` .. container:: sphx-glr-download sphx-glr-download-zip :download:`Download zipped: flame_speed_calculation_multiprocessing.zip ` .. only:: html .. rst-class:: sphx-glr-signature `Gallery generated by Sphinx-Gallery `_