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Neural Networks for Robotics - An Engineering Perspective (Hardcover): Alma Y. Alanis, Nancy Arana-Daniel, Carlos Lopez-Franco Neural Networks for Robotics - An Engineering Perspective (Hardcover)
Alma Y. Alanis, Nancy Arana-Daniel, Carlos Lopez-Franco
R4,732 Discovery Miles 47 320 Ships in 12 - 17 working days

The book offers an insight on artificial neural networks for giving a robot a high level of autonomous tasks, such as navigation, cost mapping, object recognition, intelligent control of ground and aerial robots, and clustering, with real-time implementations. The reader will learn various methodologies that can be used to solve each stage on autonomous navigation for robots, from object recognition, clustering of obstacles, cost mapping of environments, path planning, and vision to low level control. These methodologies include real-life scenarios to implement a wide range of artificial neural network architectures. Includes real-time examples for various robotic platforms. Discusses real-time implementation for land and aerial robots. Presents solutions for problems encountered in autonomous navigation. Explores the mathematical preliminaries needed to understand the proposed methodologies. Integrates computing, communications, control, sensing, planning, and other techniques by means of artificial neural networks for robotics.

Neural Networks for Robotics - An Engineering Perspective (Paperback): Alma Y. Alanis, Nancy Arana-Daniel, Carlos Lopez-Franco Neural Networks for Robotics - An Engineering Perspective (Paperback)
Alma Y. Alanis, Nancy Arana-Daniel, Carlos Lopez-Franco
R1,859 Discovery Miles 18 590 Ships in 12 - 17 working days

The book offers an insight on artificial neural networks for giving a robot a high level of autonomous tasks, such as navigation, cost mapping, object recognition, intelligent control of ground and aerial robots, and clustering, with real-time implementations. The reader will learn various methodologies that can be used to solve each stage on autonomous navigation for robots, from object recognition, clustering of obstacles, cost mapping of environments, path planning, and vision to low level control. These methodologies include real-life scenarios to implement a wide range of artificial neural network architectures. Includes real-time examples for various robotic platforms. Discusses real-time implementation for land and aerial robots. Presents solutions for problems encountered in autonomous navigation. Explores the mathematical preliminaries needed to understand the proposed methodologies. Integrates computing, communications, control, sensing, planning, and other techniques by means of artificial neural networks for robotics.

Decentralized Neural Control: Application to Robotics (Paperback, Softcover reprint of the original 1st ed. 2017): Ramon Garcia... Decentralized Neural Control: Application to Robotics (Paperback, Softcover reprint of the original 1st ed. 2017)
Ramon Garcia Hernandez, Michel Lopez-Franco, Edgar N. Sanchez, Alma Y. Alanis, Jose A. Ruz-Hernandez
R3,466 Discovery Miles 34 660 Ships in 10 - 15 working days

This book provides a decentralized approach for the identification and control of robotics systems. It also presents recent research in decentralized neural control and includes applications to robotics. Decentralized control is free from difficulties due to complexity in design, debugging, data gathering and storage requirements, making it preferable for interconnected systems. Furthermore, as opposed to the centralized approach, it can be implemented with parallel processors. This approach deals with four decentralized control schemes, which are able to identify the robot dynamics. The training of each neural network is performed on-line using an extended Kalman filter (EKF). The first indirect decentralized control scheme applies the discrete-time block control approach, to formulate a nonlinear sliding manifold. The second direct decentralized neural control scheme is based on the backstepping technique, approximated by a high order neural network.The third control scheme applies a decentralized neural inverse optimal control for stabilization. The fourth decentralized neural inverse optimal control is designed for trajectory tracking. This comprehensive work on decentralized control of robot manipulators and mobile robots is intended for professors, students and professionals wanting to understand and apply advanced knowledge in their field of work.

Decentralized Neural Control: Application to Robotics (Hardcover, 1st ed. 2017): Ramon Garcia Hernandez, Michel Lopez-Franco,... Decentralized Neural Control: Application to Robotics (Hardcover, 1st ed. 2017)
Ramon Garcia Hernandez, Michel Lopez-Franco, Edgar N. Sanchez, Alma Y. Alanis, Jose A. Ruz-Hernandez
R3,454 Discovery Miles 34 540 Ships in 10 - 15 working days

This book provides a decentralized approach for the identification and control of robotics systems. It also presents recent research in decentralized neural control and includes applications to robotics. Decentralized control is free from difficulties due to complexity in design, debugging, data gathering and storage requirements, making it preferable for interconnected systems. Furthermore, as opposed to the centralized approach, it can be implemented with parallel processors. This approach deals with four decentralized control schemes, which are able to identify the robot dynamics. The training of each neural network is performed on-line using an extended Kalman filter (EKF). The first indirect decentralized control scheme applies the discrete-time block control approach, to formulate a nonlinear sliding manifold. The second direct decentralized neural control scheme is based on the backstepping technique, approximated by a high order neural network.The third control scheme applies a decentralized neural inverse optimal control for stabilization. The fourth decentralized neural inverse optimal control is designed for trajectory tracking. This comprehensive work on decentralized control of robot manipulators and mobile robots is intended for professors, students and professionals wanting to understand and apply advanced knowledge in their field of work.

Discrete-Time High Order Neural Control - Trained with Kalman Filtering (Paperback, Softcover reprint of hardcover 1st ed.... Discrete-Time High Order Neural Control - Trained with Kalman Filtering (Paperback, Softcover reprint of hardcover 1st ed. 2008)
Edgar N. Sanchez, Alma Y. Alanis, Alexander G. Loukianov
R2,957 Discovery Miles 29 570 Ships in 10 - 15 working days

Neural networks have become a well-established methodology as exempli?ed by their applications to identi?cation and control of general nonlinear and complex systems; the use of high order neural networks for modeling and learning has recently increased. Usingneuralnetworks, controlalgorithmscanbedevelopedtoberobustto uncertainties and modeling errors. The most used NN structures are Feedf- ward networks and Recurrent networks. The latter type o?ers a better suited tool to model and control of nonlinear systems. There exist di?erent training algorithms for neural networks, which, h- ever, normally encounter some technical problems such as local minima, slow learning, and high sensitivity to initial conditions, among others. As a viable alternative, new training algorithms, for example, those based on Kalman ?ltering, have been proposed. There already exists publications about trajectory tracking using neural networks; however, most of those works were developed for continuous-time systems. On the other hand, while extensive literature is available for linear discrete-timecontrolsystem, nonlineardiscrete-timecontroldesigntechniques have not been discussed to the same degree. Besides, discrete-time neural networks are better ?tted for real-time implementation

Discrete-Time High Order Neural Control - Trained with Kalman Filtering (Hardcover, 2008 ed.): Edgar N. Sanchez, Alma Y.... Discrete-Time High Order Neural Control - Trained with Kalman Filtering (Hardcover, 2008 ed.)
Edgar N. Sanchez, Alma Y. Alanis, Alexander G. Loukianov
R3,024 Discovery Miles 30 240 Ships in 10 - 15 working days

The objective of this work is to present recent advances in the theory of neural control for discrete-time nonlinear systems with multiple inputs and multiple outputs. The results that appear in each chapter include rigorous mathematical analyses, based on the Lyapunov approach, that guarantee its properties; in addition, for each chapter, simulation results are included to verify the successful performance of the corresponding proposed schemes. In order to complete the treatment of these schemes, the final chapter presents experimental results related to their application to a electric three phase induction motor, which show the applicability of such designs. The proposed schemes could be employed for different applications beyond the ones presented in this book.

The book presents solutions for the output trajectory tracking problem of unknown nonlinear systems based on four schemes. For the first one, a direct design method is considered: the well known backstepping method, under the assumption of complete sate measurement; the second one considers an indirect method, solved with the block control and the sliding mode techniques, under the same assumption. For the third scheme, the backstepping technique is reconsidering including a neural observer, and finally the block control and the sliding mode techniques are used again too, with a neural observer. All the proposed schemes are developed in discrete-time. For both mentioned control methods as well as for the neural observer, the on-line training of the respective neural networks is performed by Kalman Filtering.

Discrete-Time Neural Observers - Analysis and Applications (Paperback): Alma Y. Alanis, Edgar N. Sanchez Discrete-Time Neural Observers - Analysis and Applications (Paperback)
Alma Y. Alanis, Edgar N. Sanchez
R3,279 R2,976 Discovery Miles 29 760 Save R303 (9%) Ships in 12 - 17 working days

Discrete-Time Neural Observers: Analysis and Applications presents recent advances in the theory of neural state estimation for discrete-time unknown nonlinear systems with multiple inputs and outputs. The book includes rigorous mathematical analyses, based on the Lyapunov approach, that guarantee their properties. In addition, for each chapter, simulation results are included to verify the successful performance of the corresponding proposed schemes. In order to complete the treatment of these schemes, the authors also present simulation and experimental results related to their application in meaningful areas, such as electric three phase induction motors and anaerobic process, which show the applicability of such designs. The proposed schemes can be employed for different applications beyond those presented. The book presents solutions for the state estimation problem of unknown nonlinear systems based on two schemes. For the first one, a full state estimation problem is considered; the second one considers the reduced order case with, and without, the presence of unknown delays. Both schemes are developed in discrete-time using recurrent high order neural networks in order to design the neural observers, and the online training of the respective neural networks is performed by Kalman Filtering.

Bio-inspired Algorithms for Engineering (Paperback): Nancy Arana-Daniel, Carlos Lopez-Franco, Alma Y. Alanis Bio-inspired Algorithms for Engineering (Paperback)
Nancy Arana-Daniel, Carlos Lopez-Franco, Alma Y. Alanis
R2,331 R2,134 Discovery Miles 21 340 Save R197 (8%) Ships in 12 - 17 working days

Bio-inspired Algorithms for Engineering builds a bridge between the proposed bio-inspired algorithms developed in the past few decades and their applications in real-life problems, not only in an academic context, but also in the real world. The book proposes novel algorithms to solve real-life, complex problems, combining well-known bio-inspired algorithms with new concepts, including both rigorous analyses and unique applications. It covers both theoretical and practical methodologies, allowing readers to learn more about the implementation of bio-inspired algorithms. This book is a useful resource for both academic and industrial engineers working on artificial intelligence, robotics, machine learning, vision, classification, pattern recognition, identification and control.

Artificial Neural Networks for Engineering Applications (Paperback): Alma Y. Alanis, Nancy Arana-Daniel, Carlos Lopez-Franco Artificial Neural Networks for Engineering Applications (Paperback)
Alma Y. Alanis, Nancy Arana-Daniel, Carlos Lopez-Franco
R2,962 R2,749 Discovery Miles 27 490 Save R213 (7%) Ships in 12 - 17 working days

Artificial Neural Networks for Engineering Applications presents current trends for the solution of complex engineering problems that cannot be solved through conventional methods. The proposed methodologies can be applied to modeling, pattern recognition, classification, forecasting, estimation, and more. Readers will find different methodologies to solve various problems, including complex nonlinear systems, cellular computational networks, waste water treatment, attack detection on cyber-physical systems, control of UAVs, biomechanical and biomedical systems, time series forecasting, biofuels, and more. Besides the real-time implementations, the book contains all the theory required to use the proposed methodologies for different applications.

Neural Networks Modeling and Control - Applications for Unknown Nonlinear Delayed Systems in Discrete Time (Paperback): Jorge... Neural Networks Modeling and Control - Applications for Unknown Nonlinear Delayed Systems in Discrete Time (Paperback)
Jorge D. Rios, Alma Y. Alanis, Nancy Arana-Daniel, Carlos Lopez-Franco; Series edited by Edgar N. Sanchez
R3,163 Discovery Miles 31 630 Ships in 12 - 17 working days

Neural Networks Modelling and Control: Applications for Unknown Nonlinear Delayed Systems in Discrete Time focuses on modeling and control of discrete-time unknown nonlinear delayed systems under uncertainties based on Artificial Neural Networks. First, a Recurrent High Order Neural Network (RHONN) is used to identify discrete-time unknown nonlinear delayed systems under uncertainties, then a RHONN is used to design neural observers for the same class of systems. Therefore, both neural models are used to synthesize controllers for trajectory tracking based on two methodologies: sliding mode control and Inverse Optimal Neural Control. As well as considering the different neural control models and complications that are associated with them, this book also analyzes potential applications, prototypes and future trends.

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