Inductive Biases in Machine Learning for Robotics and Control Inductive Biases in Machine Learning for Robotics and Control
Springer Tracts in Advanced Robotics

Inductive Biases in Machine Learning for Robotics and Control

    • USD 109.99
    • USD 109.99

Descripción editorial

One important robotics problem is “How can one program a robot to perform a task”? Classical robotics solves this problem by manually engineering modules for state estimation, planning, and control. In contrast, robot learning solely relies on black-box models and data. This book shows that these two approaches of classical engineering and black-box machine learning are not mutually exclusive. To solve tasks with robots, one can transfer insights from classical robotics to deep networks and obtain better learning algorithms for robotics and control. To highlight that incorporating existing knowledge as inductive biases in machine learning algorithms improves performance, this book covers different approaches for learning dynamics models and learning robust control policies. The presented algorithms leverage the knowledge of Newtonian Mechanics, Lagrangian Mechanics as well as the Hamilton-Jacobi-Isaacs differential equation as inductive bias and are evaluated on physical robots.

GÉNERO
Técnicos y profesionales
PUBLICADO
2023
31 de julio
IDIOMA
EN
Inglés
EXTENSIÓN
134
Páginas
EDITORIAL
Springer Nature Switzerland
VENDEDOR
Springer Nature B.V.
TAMAÑO
13.9
MB
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