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This package contains files to build models for exhaust plume analysis and methods to analyze the results.

Project description

PyPlume

This package is intended to build reactor network models for exhaust plumes based on user input and incorporate some methods for analysis of the results.

Installation

Conda

This package can be installed via conda but the appropriate channels have to be available to conda or the install will fail. I suggest creating an environment via

conda create --name pyplume -c anthony-walker -c cantera -c conda-forge pyplume

This should ensure that all the appropriate channels are accessible. If you know they are added, you can use

conda create --name pyplume -c anthony-walker pyplume

Otherwise, the package can be installed with conda as

conda install -c anthony-walker pyplume

Pip

This package can also be pip installed but pip will not install the necessary dependencies---so make sure they're installed first by whatever means.

pip install pyplume

Troubleshooting installation

This package relies on Cantera and other packages. If there is a failure in the conda install process be sure to check that the appropriate channels are added or add them to the install command, e.g.,

conda create --name pyplume -c anthony-walker -c cantera -c conda-forge pyplume
conda config --add channels cantera
conda config --add channels conda-forge
conda config --add channels anthony-walker

Mechanism management

The model generation two requires chemical mechanisms to run. Some of these mechanisms can be found within Cantera and exploited that way. Otherwise, mechanisms files that you want to use with this model generation software can be managed in two ways. The first way is through the command line interface (CLI). The pyplume.mech is the command which will be used to invoke the necessary commands to manage the mechanisms.

To list the functions, invoke the help menu.

  pyplume.mech -h
usage: pyplume.mech [-h] [-r] [-l] [-a ADD] [-d DELETE] [-t]

This is the commandline interface for managing mechanism files of PyPlume.

optional arguments:

  -h, --help            show this help message and exit
  -r, --restore         set this flag to restore mechanism files.
  -l, --list            set this flag to list mechanism files.
  -a ADD, --add ADD     this can be used to add a mechanism file to the codes internal data.
  -d DELETE, --delete DELETE
                        this can be used to delete a mechanism file to the codes internal data.
  -t, --test            set this flag to run test functions.

After that there are only 5 other options: restore, list, add, delete, and test.

pyplume.mech -r restores the original mechanisms from a backup folder. This will overwrite any mechanisms with the same name as the original set of mechanisms.

pyplume.mech -l lists all the mechanisms currently available to the program.

pyplume.mech -a mySuperCoolMech.cti will add mySuperCoolMech.cti to the mechanisms available to the program.

pyplume.mech -d mySuperCoolMech.cti will delete mySuperCoolMech.cti from the mechanisms available to the program.

pyplume.mech -t will run a set of test functions designed to test this module.

The second way of managing mechanism files is through a script. This can be done with internal functions as

import pyplume.mech
import pyplume.tests.testMechs

cti = 'mySuperCoolMech.cti'

pyplume.mech.mechFileAdd(cti) #Add mechanism file

pyplume.mech.mechFileDelete(cti) #Delete mechanism file

pyplume.mech.mechFileRestore() #Restore mechanism files

pyplume.mech.mechFileList() #list mechanism files

pyplume.tests.testMechs.CLI() #Run tests for mech management

Model generation tool

The model generation tool can be implemented with the most functionality in a script but there is also a command line interface. The code works by creating an object which represents a complex reactor network created by Cantera. This reactor network is made up of a three reservoirs, a combustor, and the desired exhaust network. One reservoir is for the fuel/air mixture, one is for atmosphere entrainment, and one is for the final exhaust stage. The combustor assumes the mechanism of the fuel/air reservoir and the exhaust is the focus of the model which has the most configurable options. The reactors in the system are connected via multiple MassFlowController objects based on an adjacency matrix of connections. The fuel/air reservoir is connected to the combustor with the mass flow function that follows.

  def massFlow(t):
    return combustor.mass/residenceTime

The mass flow is then maintained to the first exhaust reactor with the same mass flow function to ensure continuity. Successive reactors then evenly divide their mass amongst their sinks as follows.

  def mdot(t,fcn=None):
    return (self.reactors[fcn.ridx].mass / self.residenceTime(t)) / fcn.sink

Terminal exhaust reactors are connected to an exhaust reservoir by the following mass flow function, which acts as the final stage of the process.

  def mdot(t,fcn=None):
    return (self.reactors[fcn.ridx].mass / self.residenceTime(t))

Finally, the entrainment functions are connected to the specified reactors via a provided entrainment function. These functions are ultimately controlled by the residence time function provided. The goal of this connection method was to implement and maintain a simple form of continuity that provided a less well mixed scenario.

Creating model object

A model can be generated in multiple ways. The first is by creating an adjacency matrix, specifying mechansims for air, fuel, and exhaust, providing mass flow functions, and setting other configuration options. Forming the adjacency matrix is the most cumbersome part of this so some class methods have been included for this task. These class methods take other parameters used in determination of the adjacency matrix as well as the remaining parameters of the class constructor.

Class constructor
class PlumeModel(object):
    """PlumeModel class is used to generate a reactor network for modeling exhaust plume"""

    def __init__(self, mechs, connects, residenceTime=lambda t: 0.1, entrainment=lambda t:0.1,setCanteraPath=None,build=False):
        """constructor for plume model.
        Parameters:
        mechs - an array like structure with at least 3 mechanisms, [fuelMech,atmMech,eMech1,eMech2,...,eMechN]
        residenceTime - a function that specifies the residence time as a function of time---this is used to determine combustor and system mass flow rates.
        entrainment - a function that specifies entrainment mass as a function of time.
        connects - an 2d adjacency matrix with integer values corresponding to the appropriate mass flow function+1 in the list of mass flow functions.
                    So, the first mass flow function, 0 index, will be represented as 1 in the matrix. This is because these values will be used for conditionals
                    as well. A template matrix can be generated. The matrix should specifically
        setCanteraPath - path variable to cantera mech files
        build -  boolean that builds network strictly from configuration in mechanism files (T,P) if true.
            default: build=false
        """
Simple model
@classmethod
  def simpleModel(cls,mechs=["gri30.cti","air.cti","gri30.cti"],residenceTime=lambda t: 0.1, entrainment=lambda t:0.1,fpath="simple.hdf5",setCanteraPath=None,build=False):
    """
        Simple model:
        This classmethod builds a 1 reactor exhaust model.

        Network:
        [fuel res]->[combustor]->[ex1]->[exRes]
        [farfield]->[ex1]
    """
Linear Expansion Model
@classmethod
  def linearExpansionModel(cls,n=10,mechs=["gri30.cti","air.cti","gri30.cti"],residenceTime=lambda t: 0.1, entrainment=lambda t:0.1,fpath="linear.hdf5",setCanteraPath=None,build=False):
    """
        Linear Expansion Model:
        Use this function to generate an instance with linear expansion connects method. It takes all the parameters
        that the class does except connects and replaces connects with n parameter.

        Parameters:
            n - number of reactors using linear expansion. e.g. at level 1 there is one reactor
                at level two there are two and so on. n must result in an integer number of steps
                based on the formula:steps=(-1+np.sqrt(1+8*n))/2

        Network:
        [fuel res]->[combustor]->[ex1]->[ex2]->[ex4]->[exRes]
                                      ->[ex3]->[ex5]->[exRes]
                                             ->[ex6]->[exRes]
        [farfield]->[ex1,ex2,ex3,ex4,ex6]

        Notes:
        The farfield is connected as an inlet for each exterior reactor if you were to draw them as 2D blocks.
    """
Grid model
@classmethod
  def gridModel(cls,n=3,m=3,mechs=["gri30.cti","air.cti","gri30.cti"],residenceTime=lambda t: 0.1, entrainment=lambda t:0.1,fpath="grid.hdf5",setCanteraPath=None,build=False):
    """
        Grid model:
        Use this function to generate an instance with grid connects method. It takes all the parameters
        that the class does except connects and replaces connects with n parameter.

        Parameters:
            n - Integer number of reactor rows
            m - Integer number of reactor columns

        Network:
        [fuel res]->[combustor]->
        [ex1]->[ex2]->[ex5]->[ex8]->[exRes]
             ->[ex3]->[ex6]->[ex9]->[exRes]
             ->[ex4]->[ex7]->[ex10]->[exRes]

        [farfield]->[ex1,ex2,ex4,ex5,ex7,ex8,ex10]

        Notes:
        The farfield is connected as an inlet for each exterior reactor if you were to draw them as 2D blocks.
    """

This looks something like

  import pyplume.model.PlumeModel
  plumeModel = PlumeModel.linearExpansionModel()

Setting Atmophere and Fuel conditions

Configuration can be important to any simulation, this can be skipped if you want to use the configuration inside the supplied mechanism files. Otherwise, PlumeModel has 3 attributes that it uses to maintain the conditions of the model. fuel which is a Cantera Solution object for the fuel, atmosphere which is a Cantera Solution object for the atmosphereic conditions, and exhausts which is a list of Cantera Solution object(s). The fuel an atmosphere conditions can be configured for each reactor as you would configure them for any other Cantera solution object. Note, that fuel is considered to be the fuel air mixture for the combustor. Since the focus on this project is the exhaust, the exhaust is produced by a single reactor which is fed into the exhaust system. The atmosphere is for entrainment purposes.

In a script
plumeModel.fuel.TPX = 300.0, 101325, 'CH4:1, O2:0.5' #K, Pa, Mole Fractions
plumeModel.atmosphere.TPX = 300.0, 101325, 'O2:0.21, N2:0.78, AR:0.01' #K, Pa, Mole Fractions
plumeModel.exhausts[3].TPX= 300.0, 101325, 'O2:0.21, N2:0.78, AR:0.01' #Set conditions for exhaust 3

Now that the plumeModel's conditions are set, it can be built and advanced to a specific time or to steady state as

plumeModel.buildNetwork() #Build reactor network based on conditions
plumeModel(0.1) #advance to time=0.1 s
plumeModel.steadyState()

The data for the plumeModel can be viewed in one of two ways. If fpath is specified in the constructor or class methods then an hdf5 file is produced which contains the data generated. The plumeModel can also be called with the print function.

  plumeModel.ptype=True #True for sparse print, False for dense print
  print(plumeModel)

The sparse print produces the following. Dense printing adds mass fractions of each reactor.

PyPlume Network Model Summary:
fuel: T: 300.00 K, V: 1.00 m^3, mass: 0.08 kg
atmosphere: T: 300.00 K, V: 1.00 m^3, mass: 1.18 kg
combustor: T: 300.00 K, V: 1.00 m^3, mass: 0.08 kg
exhaust0: T: 300.00 K, V: 1.01 m^3, mass: 0.09 kg
exhaust: T: 300.00 K, V: 1.00 m^3, mass: 1.18 kg
Reactor Network Mass Fractions:

If you want to generate the file then manage it separately, the h5Writer class can be used for this purpose.

  import output,numpy
  h5w=output.h5Writer.existingFile('simple.hdf5')
  file = h5w.f #this gets file object
  h5w(numpy.ones(h5w.dshape[1])) #This appends a vector of ones to the hdf5 file.
On the command line

The command line is currently only set up to run class method models. This can be with pyplume.model chosenModel.

usage: pyplume.model [-h] [-ss] [-t0 [T0]] [-tf [TF]] [-dt [DT]] [-t] [-v]
                     {simple,grid,linear}

This is the commandline interface for running an exhaust network.


positional arguments:
  {simple,grid,linear}  This is a required arguement that specifies the model
                        which will be used. Currently implemented choices are
                        simple, grid, and linear.

optional arguments:
  -h, --help            show this help message and exit
  -ss, --steady         set this flag run to steady state after integration
  -t0 [T0]              Initial integration time
  -tf [TF]              Final integration time
  -dt [DT]              Integration time interval
  -t, --test            set this flag to run test functions.
  -v, --verbose         set this flag to run print statements during the process.

An example of this is

  pyplume.model simple -v -ss -t

which runs the simple model with the --verbose, --steady, and --test options. This produces

Creating simple model and building network.
Advancing to time: 0.000.
Advancing to time: 0.100.
.
.
Advancing to time: 0.900.
Advancing to time: 1.000.
Advancing to steady state.
Running model test suite.
========================================================= test session starts ==========================================================
platform linux -- Python 3.6.10, pytest-5.4.1, py-1.8.1, pluggy-0.13.1 -- /home/sokato/miniconda3/envs/pyplume/bin/python
cachedir: .pytest_cache
rootdir: /home/sokato
collected 5 items

../../miniconda3/envs/pyplume/lib/python3.6/site-packages/pyplume/tests/testModel.py::test_linearExpansionModel PASSED           [ 20%]
.
.

Plotting

The methods for plotting the generated data are contained in the an hdf5 or in script are found in pyplume.figures

Basic property plotting is currently implemented through scripting or the command line interface.

In a script

fgk = figureGenerationKit('simple.hdf5',save=True,show=True)
fgk.plotProperty(['mass','CO2','H2O'])

This will plot the specified properties of simple.hdf5 as a function of time. It will also save the plots to pdf files and display them. The same functionality on the command line would look like:

pyplume.figures "simple.hdf5" -w -d -p "mass" "CO2","H2O"

Statistical methods

The methods for plotting the generated data are contained in the an hdf5 or in script are found in pyplume.statistics

Testing

Each python file has an associated test file which contains unit test functions. As the package is developed, more functions will be added and integrated function tests will be added. Likewise, more information will be included here when possible.

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