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Control Synthesis as Machine Learning Control by Symbolic Regression Methods

Elizaveta Shmalko, Askhat Diveev

2021Applied Sciences13 citationsDOIOpen Access PDF

Abstract

The problem of control synthesis is considered as machine learning control. The paper proposes a mathematical formulation of machine learning control, discusses approaches of supervised and unsupervised learning by symbolic regression methods. The principle of small variation of the basic solution is presented to set up the neighbourhood of the search and to increase search efficiency of symbolic regression methods. Different symbolic regression methods such as genetic programming, network operator, Cartesian and binary genetic programming are presented in details. It is shown on the computational example the possibilities of symbolic regression methods as unsupervised machine learning control technique to the solution of MLC problem of control synthesis for obtaining the stabilization system for a mobile robot.

Topics & Concepts

Symbolic regressionGenetic programmingComputer scienceArtificial intelligenceMachine learningRegressionRegression analysisMathematicsStatisticsEvolutionary Algorithms and ApplicationsAdvanced Control Systems OptimizationNeural Networks and Applications