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| .. _abstractexp: | ||
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| Experiment Abstraction | ||
| ====================== | ||
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| .. note:: | ||
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| Detailed descriptions and example code for experiment abstraction in Pyomo.DoE will be added in a future update. | ||
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| .. _startguide: | ||
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| Quick Start Guide | ||
| ================= | ||
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| To use Pyomo.DoE, a user must implement a subclass of the :ref:`Parmest <parmest>` ``Experiment`` class. | ||
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| The subclass must have a ``get_labeled_model`` method which returns a Pyomo `ConcreteModel` | ||
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| containing four Pyomo ``Suffix`` components identifying the parts of the model used in | ||
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| MBDoE analysis. This is in line with the convention used in the parameter estimation tool, | ||
| :ref:`Parmest <parmest>`. The four Pyomo ``Suffix`` components are: | ||
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| * ``experiment_inputs`` - The experimental design decisions | ||
| * ``experiment_outputs`` - The values measured during the experiment | ||
| * ``measurement_error`` - The error associated with individual values measured during the experiment. It is passed as a standard deviation or square root of the diagonal elements of the observation error covariance matrix. Pyomo.DoE currently assumes that the observation errors are Gaussain and independent both in time and across measurements. | ||
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| * ``unknown_parameters`` - Those parameters in the model that are estimated using the measured values during the experiment | ||
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| An example of the subclassed ``Experiment`` object that builds and labels the model is shown in the next few sections. | ||
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| This guide illustrates the use of Pyomo.DoE using a reaction kinetics example (Wang and Dowling, 2022). | ||
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Member
There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. Consider adding / referencing |
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| .. math:: | ||
| :nowrap: | ||
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| \begin{equation} | ||
| A \xrightarrow{k_1} B \xrightarrow{k_2} C | ||
| \end{equation} | ||
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| The Arrhenius equations model the temperature dependence of the reaction rate coefficients :math:`k_1` and :math:`k_2`. Assuming a first-order reaction mechanism gives the reaction rate model shown below. Further, we assume only species A is fed to the reactor. | ||
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| .. math:: | ||
| :nowrap: | ||
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| \begin{equation} | ||
| \begin{aligned} | ||
| k_1 & = A_1 e^{-\frac{E_1}{RT}} \\ | ||
| k_2 & = A_2 e^{-\frac{E_2}{RT}} \\ | ||
| \frac{d{C_A}}{dt} & = -k_1{C_A} \\ | ||
| \frac{d{C_B}}{dt} & = k_1{C_A} - k_2{C_B} \\ | ||
| C_{A0}& = C_A + C_B + C_C \\ | ||
| C_B(t_0) & = 0 \\ | ||
| C_C(t_0) & = 0 \\ | ||
| \end{aligned} | ||
| \end{equation} | ||
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| :math:`C_A(t), C_B(t), C_C(t)` are the time-varying concentrations of the species A, B, C, respectively. | ||
| :math:`k_1, k_2` are the rate constants for the two chemical reactions using an Arrhenius equation with activation energies :math:`E_1, E_2` and pre-exponential factors :math:`A_1, A_2`. | ||
| The goal of MBDoE is to optimize the experiment design variables :math:`\boldsymbol{\varphi} = (C_{A0}, T(t))`, where :math:`C_{A0},T(t)` are the initial concentration of species A and the time-varying reactor temperature, to maximize the precision of unknown model parameters :math:`\boldsymbol{\theta} = (A_1, E_1, A_2, E_2)` by measuring :math:`\mathbf{y}(t)=(C_A(t), C_B(t), C_C(t))`. | ||
| The observation errors are assumed to be independent both in time and across measurements with a constant standard deviation of 1 M for each species. | ||
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| Step 0: Import Pyomo and the Pyomo.DoE module and create an ``Experiment`` class | ||
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ | ||
| .. note:: | ||
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| This example uses the data file ``result.json``, located in the Pyomo repository at: | ||
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Member
There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. Out of curiosity, why is the input |
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| ``pyomo/contrib/doe/examples/result.json``, which contains the nominal parameter | ||
| values, and measurements for the reaction kinetics experiment. | ||
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| .. literalinclude:: /../../pyomo/contrib/doe/examples/reactor_experiment.py | ||
| :start-after: # === Required imports === | ||
| :end-before: # ======================== | ||
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| Subclass the :ref:`Parmest <parmest>` ``Experiment`` class to define the reaction | ||
| kinetics experiment and build the Pyomo ConcreteModel. | ||
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| .. literalinclude:: /../../pyomo/contrib/doe/examples/reactor_experiment.py | ||
| :start-after: ======================== | ||
| :end-before: End constructor definition | ||
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| Step 1: Define the Pyomo process model | ||
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ | ||
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| The process model for the reaction kinetics problem is shown below. Here, we build | ||
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| the model without any data or discretization. | ||
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| .. literalinclude:: /../../pyomo/contrib/doe/examples/reactor_experiment.py | ||
| :start-after: Create flexible model without data | ||
| :end-before: End equation definition | ||
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| Step 2: Finalize the Pyomo process model | ||
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ | ||
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| Here, we add data to the model and finalize the discretization using a new method to | ||
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| the class. This step is required before the model can be labeled. | ||
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| .. literalinclude:: /../../pyomo/contrib/doe/examples/reactor_experiment.py | ||
| :start-after: End equation definition | ||
| :end-before: End model finalization | ||
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| Step 3: Label the information needed for DoE analysis | ||
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ | ||
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| We label the four important groups as Pyomo Suffix components as mentioned before by | ||
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| adding a ``label_experiment`` method. This method is required by Pyomo.DoE to identify | ||
| the design variables (experimental inputs), measurements, measurement errors, and | ||
| unknown parameters in the model. | ||
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| .. literalinclude:: /../../pyomo/contrib/doe/examples/reactor_experiment.py | ||
| :start-after: End model finalization | ||
| :end-before: End model labeling | ||
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| Step 4: Implement the ``get_labeled_model`` method | ||
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ | ||
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| This method utilizes the previous 3 steps and is used by `Pyomo.DoE` to build the model | ||
| to perform optimal experimental design. | ||
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| .. literalinclude:: /../../pyomo/contrib/doe/examples/reactor_experiment.py | ||
| :start-after: End constructor definition | ||
| :end-before: Create flexible model without data | ||
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| Step 5: Exploratory analysis (Enumeration) | ||
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ | ||
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| After creating the subclass of the ``Experiment`` class, exploratory analysis is | ||
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| suggested to enumerate the design space to check if the problem is identifiable, | ||
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There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. The discussion of identifiability appears overly binary. A near-singular or approximately zero Fisher Information Matrix is not the only scenario implying practical non-identifiability. Even when the FIM non-singular, a very large condition number may indicate that certain parameter directions are only weakly informed by the data, corresponding to extremely small eigenvalues and unstable parameter estimates (practical identifiability issues). In such cases, uncertainty remains high and estimates may be highly sensitive to noise, limiting the extent to which experimental design alone can improve parameter estimation. Consider distinguishing more clearly between structural identifiability and practical identifiability arising from ill-conditioning of the FIM.
Member
Author
There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. @snarasi2 This PR is only meant to organize the order of the documentation pages into the format outlined in the summary. The contents in guide.rst and overview.rst (for DoE) are what currently exist in the documentation page. This PR does not make any changes to the contents but establishes a general structure for the ParmEst and Pyomo.DoE documentation webpages, which will be later updated by @sscini, @smondal13, and @snarasi2. I will save these comments for @smondal13 and @snarasi2 to work on them during their future PRs to update the contents of the Pyomo.DoE documentation webpage. |
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| i.e., ensure that D-, E-optimality metrics are not small numbers near zero, and | ||
| Modified E-optimality is not a big number. | ||
| Additionally, it helps to initialize the model for the optimal experimental design step. | ||
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| Pyomo.DoE can perform exploratory sensitivity analysis with the ``compute_FIM_full_factorial`` method. | ||
| The ``compute_FIM_full_factorial`` method generates a grid over the design space as specified by the user. | ||
| Each grid point represents an MBDoE problem solved using the ``compute_FIM`` method. | ||
| In this way, sensitivity of the FIM over the design space can be evaluated. | ||
| Pyomo.DoE supports plotting the results from the ``compute_FIM_full_factorial`` method | ||
| with the ``draw_factorial_figure`` method. | ||
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There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. Update these to be references to the methods. |
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| The following code defines the ``run_reactor_doe`` function. This function encapsulates | ||
| the workflow for both sensitivity analysis (Step 5) and optimal design (Step 6). | ||
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| .. literalinclude:: /../../pyomo/contrib/doe/examples/reactor_example.py | ||
| :language: python | ||
| :start-after: # === Required imports === | ||
| :end-before: if __name__ == "__main__": | ||
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| After defining the function, we will call it to perform the exploratory analysis and | ||
| the optimal experimental design. | ||
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| .. literalinclude:: /../../pyomo/contrib/doe/examples/reactor_example.py | ||
| :language: python | ||
| :start-after: if __name__ == "__main__": | ||
| :dedent: 4 | ||
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| A design exploration for the initial concentration and temperature as experimental | ||
| design variables with 9 values for each, produces the the five figures for | ||
| five optimality criteria using the ``compute_FIM_full_factorial`` and | ||
| ``draw_factorial_figure`` methods as shown below: | ||
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| |plot1| |plot2| | ||
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| |plot3| |plot4| | ||
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| .. |plot1| image:: example_reactor_compute_FIM_D_opt.png | ||
| :width: 48 % | ||
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| .. |plot2| image:: example_reactor_compute_FIM_A_opt.png | ||
| :width: 48 % | ||
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| .. |plot3| image:: example_reactor_compute_FIM_pseudo_A_opt.png | ||
| :width: 48 % | ||
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| .. |plot4| image:: example_reactor_compute_FIM_E_opt.png | ||
| :width: 48 % | ||
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| .. |plot5| image:: example_reactor_compute_FIM_ME_opt.png | ||
| :width: 48 % | ||
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| The heatmaps show the values of the objective functions, a.k.a. the | ||
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| experimental information content, in the design space. Horizontal | ||
| and vertical axes are the two experimental design variables, while | ||
| the color of each grid shows the experimental information content. | ||
| For example, the D-optimality (upper left subplot) heatmap figure shows that the | ||
| most informative region is around :math:`C_{A0}=5.0` M, :math:`T=500.0` K with | ||
| a :math:`\log_{10}` determinant of FIM being around 19, | ||
| while the least informative region is around :math:`C_{A0}=1.0` M, :math:`T=300.0` K, | ||
| with a :math:`\log_{10}` determinant of FIM being around -5. For D-, Pseudo A-, and | ||
| E-optimality we want to maximize the objective function, while for A- and Modified | ||
| E-optimality we want to minimize the objective function. | ||
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| In this sensitivity analysis plot (heatmap), we only varied the initial | ||
| concentration and the initial temperature, while the temperature at other time | ||
| points is fixed at 300 K. | ||
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| .. math:: | ||
| :nowrap: | ||
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| \[ | ||
| T(t) = \begin{cases} | ||
| T_0, & t \le 0.125 \\ | ||
| 300\ \text{K}, & t > 0.125 | ||
| \end{cases} | ||
| \] | ||
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| If :math:`T_0 = 300\ \text{K}`, the reaction is conducted under strictly isothermal | ||
| conditions. Because the temperature is constant, the sensitivities of the species | ||
| concentrations with respect to the Arrhenius parameters (:math:`A_i` and :math:`E_i`) | ||
| become linearly dependent. This high correlation means the effects of the | ||
| pre-exponential factor and the activation energy cannot be uniquely distinguished | ||
| from the measurements. Consequently, the Fisher Information Matrix (FIM) becomes | ||
| ill-conditioned, resulting in a near-zero determinant and a very large condition number. | ||
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| To break this correlation and make the parameters identifiable, introducing a time- | ||
| varying temperature profile (for example, a temperature step or a ramp) is required. | ||
| As shown in the heatmap, when the initial temperature :math:`T_0` differs from the | ||
| subsequent 300 K baseline, such a temperature change breaks the linear dependence, | ||
| yielding a well-conditioned FIM and identifiable parameters. | ||
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| Step 6: Performing an optimal experimental design | ||
| ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ | ||
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| In Step 5, we defined the ``run_reactor_doe`` function. This function constructs | ||
| the DoE object and performs the exploratory sensitivity analysis. The way the function | ||
| is defined, it also proceeds immediately to the optimal experimental design step | ||
| (applying ``run_doe`` on the ``DesignOfExperiments`` object). | ||
| We can initialize the model with the result we obtained from the exploratory | ||
| analysis (optimal point from the heatmaps) to help the optimal design step to speed | ||
| up convergence. However, implementation of this initialization is not shown here. | ||
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| After applying ``run_doe`` on the ``DesignOfExperiments`` object, | ||
| the optimal design is an initial concentration of 5.0 mol/L and | ||
| an initial temperature of 494 K with all other temperatures being 300 K. | ||
| The corresponding :math:`\log_{10}` determinant of the FIM is 19.32. | ||
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| .. _multexperiments: | ||
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| Multiple Experiments | ||
| ==================== | ||
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| .. note:: | ||
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| Detailed descriptions and example code for simultaneous design of multiple experiments will be added in a future update. | ||
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| .. _objectives: | ||
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| Objective Options | ||
| ================= | ||
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| .. note:: | ||
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| Detailed descriptions and example code for the objective options in Pyomo.DoE will be added in a future update. | ||
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