• Krzysztof PatanEmail author
Part of the Studies in Systems, Decision and Control book series (SSDC, volume 197)


Chapter constitutes a brief introduction to the control algorithms discussed in the book. The first section aims in presenting the scope of the book which is the application of artificial neural networks to the synthesis of robust and fault tolerant control. The second section describes the content of subsequent chapters.


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© Springer Nature Switzerland AG 2019

Authors and Affiliations

  1. 1.Institute of Control and Computation EngineeringUniversity of Zielona GóraZielona GóraPoland

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