COMPLEX ADAPTIVE SYSTEMS AND BIOROBOTICS

Academic Year 2017/2018 - 2° Year
Teaching Staff Credit Value: 12
Scientific field: ING-INF/04 - Systems and control engineering
Taught classes: 70 hours
Exercise: 30 hours
Term / Semester:
ENGLISH VERSION

Learning Objectives

  • Complex Adaptive Systems

    Att the end of the course the student must know the essentials of nonlinear dynamics control, to test the problems with Matlab and to implememts by using electronic devices complex dynamics.

  • BIOROBOTICS

    The course offers the main guidelines for understand, design and realise nonlinear bioinspired circuits and systems wirh adaptive capabilities. The course includes an experimental software/hardware laboratory phase.The course gives also the guidelines for the desiign and realization of neurocontrol models for bio-inspired robots


Detailed Course Content

  • Complex Adaptive Systems

    The knowledge of the main system theory topics and automatic control techniques ais required. Moreover electronic circuit theory

    knowlwdge will suitably help the students.

    Complex theory paradigms. Non linear dynamical theory. Design of adaptive circuits based on non linear devices.

    Distributed architecture for information processing. Noise and uncertainty in complex systems.

  • BIOROBOTICS

    Introduction to Biorobotics and to its interdisciplinary aspects; detailed study on nonlinear dynamics in biological neural systems, biological neuron model and phase space analysis, models of synapses and of their modulation; computational models for biological neural networks; simulation examples referring to cases of study; biological neural paradigms for the generation and control of locomotion patterns: the Central Pattern Generator (CPG) and the decentralised control: study and comparison in relation to particular animals; implementation of the locomotion control paradigms through nonlinear circuits and systems (analog and digital implementation), examples of bio inspired robots controlled by models of biological neural networks: implementation of undulatory worm-like locomotion patterns, implementation of CPG networks and decentralised controllers on hexapod, quadruped and biped robots. The role of complex dynamics in modelling and control of perceptual systems for biorobotic applications. Toward an insect brain computational model.


Textbook Information

  • Complex Adaptive Systems

    1)A.Buscarino, L.Fortuna, M.Frasca, Essentials of Nonlinear Circuits Dynamics with Matlab and Laboratory Experiments, CRC Press 2017.

    2) S. Strogatz, Non Linear Dynamics and Chaos, Pegaous Books 1994.
    3) L. Fortuna, M.Frasca, R.Caponetto,Advanced Topics on Cellular Self Organizing Nets and Chaotic non linear Dynamic to model and Control Complex Systems, World Scientific Series A, Vol. 63, 2008.

  • BIOROBOTICS

    “Neuronal Control of Locomotion: From Mollusc to Man“, G. N. Orlovsky, T. G. Deliagina and S. Grillner;

    “Dynamical Systems, Wave-Based Computation and Neuro-Inspired Robots”, P. Arena ed.