Constructing parsimonious analytic models for dynamic systems via symbolic regression
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- @Article{DERNER:2020:ASC,
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author = "Erik Derner and Jiri Kubalik and Nicola Ancona and
Robert Babuska",
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title = "Constructing parsimonious analytic models for dynamic
systems via symbolic regression",
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journal = "Applied Soft Computing",
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volume = "94",
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pages = "106432",
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year = "2020",
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ISSN = "1568-4946",
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DOI = "doi:10.1016/j.asoc.2020.106432",
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URL = "http://www.sciencedirect.com/science/article/pii/S1568494620303720",
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keywords = "genetic algorithms, genetic programming, Symbolic
regression, Model learning, Reinforcement learning",
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abstract = "Developing mathematical models of dynamic systems is
central to many disciplines of engineering and science.
Models facilitate simulations, analysis of the system's
behavior, decision making and design of automatic
control algorithms. Even inherently model-free control
techniques such as reinforcement learning (RL) have
been shown to benefit from the use of models, typically
learned online. Any model construction method must
address the tradeoff between the accuracy of the model
and its complexity, which is difficult to strike. In
this paper, we propose to employ symbolic regression
(SR) to construct parsimonious process models described
by analytic equations. We have equipped our method with
two different state-of-the-art SR algorithms which
automatically search for equations that fit the
measured data: Single Node Genetic Programming (SNGP)
and Multi-Gene Genetic Programming (MGGP). In addition
to the standard problem formulation in the state-space
domain, we show how the method can also be applied to
input-output models of the NARX (nonlinear
autoregressive with exogenous input) type. We present
the approach on three simulated examples with up to
14-dimensional state space: an inverted pendulum, a
mobile robot, and a bipedal walking robot. A comparison
with deep neural networks and local linear regression
shows that SR in most cases outperforms these commonly
used alternative methods. We demonstrate on a real
pendulum system that the analytic model found enables a
RL controller to successfully perform the swing-up
task, based on a model constructed from only 100 data
samples",
- }
Genetic Programming entries for
Erik Derner
Jiri Kubalik
Nicola Ancona
Robert Babuska
Citations