Note
Click here to download the full example code
Quadratic approximations¶
In this example, we illustrate the use of the QuadApprox
plot
on the Sobieski’s SSBJ problem.
from __future__ import annotations
from gemseo.api import configure_logger
from gemseo.api import create_discipline
from gemseo.api import create_scenario
from gemseo.problems.sobieski.core.problem import SobieskiProblem
Import¶
The first step is to import some functions from the API and a method to get the design space.
configure_logger()
<RootLogger root (INFO)>
Description¶
The QuadApprox
post-processing
performs a quadratic approximation of a given function
from an optimization history
and plot the results as cuts of the approximation.
Create disciplines¶
Then, we instantiate the disciplines of the Sobieski’s SSBJ problem: Propulsion, Aerodynamics, Structure and Mission
disciplines = create_discipline(
[
"SobieskiPropulsion",
"SobieskiAerodynamics",
"SobieskiStructure",
"SobieskiMission",
]
)
Create design space¶
We also read the design space from the SobieskiProblem
.
design_space = SobieskiProblem().design_space
Create and execute scenario¶
The next step is to build an MDO scenario in order to maximize the range, encoded ‘y_4’, with respect to the design parameters, while satisfying the inequality constraints ‘g_1’, ‘g_2’ and ‘g_3’. We can use the MDF formulation, the SLSQP optimization algorithm and a maximum number of iterations equal to 100.
scenario = create_scenario(
disciplines,
formulation="MDF",
objective_name="y_4",
maximize_objective=True,
design_space=design_space,
)
scenario.set_differentiation_method()
for constraint in ["g_1", "g_2", "g_3"]:
scenario.add_constraint(constraint, "ineq")
scenario.execute({"algo": "SLSQP", "max_iter": 10})
INFO - 17:19:04:
INFO - 17:19:04: *** Start MDOScenario execution ***
INFO - 17:19:04: MDOScenario
INFO - 17:19:04: Disciplines: SobieskiAerodynamics SobieskiMission SobieskiPropulsion SobieskiStructure
INFO - 17:19:04: MDO formulation: MDF
INFO - 17:19:04: Optimization problem:
INFO - 17:19:04: minimize -y_4(x_shared, x_1, x_2, x_3)
INFO - 17:19:04: with respect to x_1, x_2, x_3, x_shared
INFO - 17:19:04: subject to constraints:
INFO - 17:19:04: g_1(x_shared, x_1, x_2, x_3) <= 0.0
INFO - 17:19:04: g_2(x_shared, x_1, x_2, x_3) <= 0.0
INFO - 17:19:04: g_3(x_shared, x_1, x_2, x_3) <= 0.0
INFO - 17:19:04: over the design space:
INFO - 17:19:04: +-------------+-------------+-------+-------------+-------+
INFO - 17:19:04: | name | lower_bound | value | upper_bound | type |
INFO - 17:19:04: +-------------+-------------+-------+-------------+-------+
INFO - 17:19:04: | x_shared[0] | 0.01 | 0.05 | 0.09 | float |
INFO - 17:19:04: | x_shared[1] | 30000 | 45000 | 60000 | float |
INFO - 17:19:04: | x_shared[2] | 1.4 | 1.6 | 1.8 | float |
INFO - 17:19:04: | x_shared[3] | 2.5 | 5.5 | 8.5 | float |
INFO - 17:19:04: | x_shared[4] | 40 | 55 | 70 | float |
INFO - 17:19:04: | x_shared[5] | 500 | 1000 | 1500 | float |
INFO - 17:19:04: | x_1[0] | 0.1 | 0.25 | 0.4 | float |
INFO - 17:19:04: | x_1[1] | 0.75 | 1 | 1.25 | float |
INFO - 17:19:04: | x_2 | 0.75 | 1 | 1.25 | float |
INFO - 17:19:04: | x_3 | 0.1 | 0.5 | 1 | float |
INFO - 17:19:04: +-------------+-------------+-------+-------------+-------+
INFO - 17:19:04: Solving optimization problem with algorithm SLSQP:
INFO - 17:19:04: ... 0%| | 0/10 [00:00<?, ?it]
INFO - 17:19:04: ... 10%|█ | 1/10 [00:00<00:01, 6.69 it/sec, obj=-536]
INFO - 17:19:04: ... 20%|██ | 2/10 [00:00<00:01, 5.14 it/sec, obj=-2.12e+3]
WARNING - 17:19:04: MDAJacobi has reached its maximum number of iterations but the normed residual 1.4486313079508508e-06 is still above the tolerance 1e-06.
INFO - 17:19:04: ... 30%|███ | 3/10 [00:00<00:01, 4.48 it/sec, obj=-3.75e+3]
INFO - 17:19:05: ... 40%|████ | 4/10 [00:00<00:01, 4.36 it/sec, obj=-4.01e+3]
WARNING - 17:19:05: MDAJacobi has reached its maximum number of iterations but the normed residual 2.928004141058104e-06 is still above the tolerance 1e-06.
INFO - 17:19:05: ... 50%|█████ | 5/10 [00:01<00:01, 4.17 it/sec, obj=-4.49e+3]
INFO - 17:19:05: ... 60%|██████ | 6/10 [00:01<00:00, 4.22 it/sec, obj=-3.4e+3]
INFO - 17:19:05: ... 70%|███████ | 7/10 [00:01<00:00, 4.63 it/sec, obj=-4.93e+3]
INFO - 17:19:05: ... 80%|████████ | 8/10 [00:01<00:00, 4.86 it/sec, obj=-4.76e+3]
INFO - 17:19:05: ... 90%|█████████ | 9/10 [00:01<00:00, 5.10 it/sec, obj=-4.62e+3]
INFO - 17:19:05: ... 100%|██████████| 10/10 [00:01<00:00, 5.34 it/sec, obj=-4.56e+3]
INFO - 17:19:06: Optimization result:
INFO - 17:19:06: Optimizer info:
INFO - 17:19:06: Status: None
INFO - 17:19:06: Message: Maximum number of iterations reached. GEMSEO Stopped the driver
INFO - 17:19:06: Number of calls to the objective function by the optimizer: 12
INFO - 17:19:06: Solution:
INFO - 17:19:06: The solution is feasible.
INFO - 17:19:06: Objective: -3749.8868975554387
INFO - 17:19:06: Standardized constraints:
INFO - 17:19:06: g_1 = [-0.01671296 -0.03238836 -0.04350867 -0.05123129 -0.05681738 -0.13780658
INFO - 17:19:06: -0.10219342]
INFO - 17:19:06: g_2 = -0.0004062839430756249
INFO - 17:19:06: g_3 = [-0.66482546 -0.33517454 -0.11023156 -0.183255 ]
INFO - 17:19:06: Design space:
INFO - 17:19:06: +-------------+-------------+---------------------+-------------+-------+
INFO - 17:19:06: | name | lower_bound | value | upper_bound | type |
INFO - 17:19:06: +-------------+-------------+---------------------+-------------+-------+
INFO - 17:19:06: | x_shared[0] | 0.01 | 0.05989842901423112 | 0.09 | float |
INFO - 17:19:06: | x_shared[1] | 30000 | 59853.73840058666 | 60000 | float |
INFO - 17:19:06: | x_shared[2] | 1.4 | 1.4 | 1.8 | float |
INFO - 17:19:06: | x_shared[3] | 2.5 | 2.527371250092273 | 8.5 | float |
INFO - 17:19:06: | x_shared[4] | 40 | 69.86825198198687 | 70 | float |
INFO - 17:19:06: | x_shared[5] | 500 | 1495.734648986894 | 1500 | float |
INFO - 17:19:06: | x_1[0] | 0.1 | 0.4 | 0.4 | float |
INFO - 17:19:06: | x_1[1] | 0.75 | 0.7521124139939552 | 1.25 | float |
INFO - 17:19:06: | x_2 | 0.75 | 0.7520888531444992 | 1.25 | float |
INFO - 17:19:06: | x_3 | 0.1 | 0.1398000762238233 | 1 | float |
INFO - 17:19:06: +-------------+-------------+---------------------+-------------+-------+
INFO - 17:19:06: *** End MDOScenario execution (time: 0:00:01.904088) ***
{'max_iter': 10, 'algo': 'SLSQP'}
Post-process scenario¶
Lastly, we post-process the scenario by means of the QuadApprox
plot which performs a quadratic approximation of a given function
from an optimization history and plot the results as cuts of the
approximation.
Tip
Each post-processing method requires different inputs and offers a variety
of customization options. Use the API function
get_post_processing_options_schema()
to print a table with
the options for any post-processing algorithm.
Or refer to our dedicated page:
Post-processing algorithms.
The first plot shows an approximation of the Hessian matrix \(\frac{\partial^2 f}{\partial x_i \partial x_j}\) based on the Symmetric Rank 1 method (SR1) [NW06]. The color map uses a symmetric logarithmic (symlog) scale. This plots the cross influence of the design variables on the objective function or constraints. For instance, on the last figure, the maximal second-order sensitivity is \(\frac{\partial^2 -y_4}{\partial^2 x_0} = 2.10^5\), which means that the \(x_0\) is the most influential variable. Then, the cross derivative \(\frac{\partial^2 -y_4}{\partial x_0 \partial x_2} = 5.10^4\) is positive and relatively high compared to the previous one but the combined effects of \(x_0\) and \(x_2\) are non-negligible in comparison.
scenario.post_process("QuadApprox", function="-y_4", save=False, show=True)
<gemseo.post.quad_approx.QuadApprox object at 0x7fcce8298a00>
The second plot represents the quadratic approximation of the objective around the optimal solution : \(a_{i}(t)=0.5 (t-x^*_i)^2 \frac{\partial^2 f}{\partial x_i^2} + (t-x^*_i) \frac{\partial f}{\partial x_i} + f(x^*)\), where \(x^*\) is the optimal solution. This approximation highlights the sensitivity of the objective function with respect to the design variables: we notice that the design variables \(x\_1, x\_5, x\_6\) have little influence , whereas \(x\_0, x\_2, x\_9\) have a huge influence on the objective. This trend is also noted in the diagonal terms of the Hessian matrix \(\frac{\partial^2 f}{\partial x_i^2}\).
Total running time of the script: ( 0 minutes 3.333 seconds)