2017
DOI: 10.12785/ijcds/060301
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NeuroFuzzy Controller Design and FPGA-Based Embedded System for ACROBOT Model

Abstract: This work presents the modeling and control system design for a robot that rides a bicycle using the well-known Acrobot model for slow speeds, which was finally implemented in an FPGA-based embedded system. In this work the implementation of the controller was achieved for the Acrobot option following two ways. The first one implementation was developed based on modern control theories, involving:(a) the states feedback controller issues based on the appropriated poles allocation, guarantying stability and (b)… Show more

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Cited by 1 publication
(2 citation statements)
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“…Therefore, the LUT and Taylor expansion were used to approach the Gaussian function, sine function, and cosine function. The Taylor expansion is shown in Equations (19)- (21), and its advantage is that it only utilizes simple operations which can accurately answer. The disadvantage of LUT is that it must obtain the correspondence of the input and output value of each datum in advance when setting up the table, so it takes a much longer time.…”
Section: Design and Implementation Of Function Unitmentioning
confidence: 99%
See 1 more Smart Citation
“…Therefore, the LUT and Taylor expansion were used to approach the Gaussian function, sine function, and cosine function. The Taylor expansion is shown in Equations (19)- (21), and its advantage is that it only utilizes simple operations which can accurately answer. The disadvantage of LUT is that it must obtain the correspondence of the input and output value of each datum in advance when setting up the table, so it takes a much longer time.…”
Section: Design and Implementation Of Function Unitmentioning
confidence: 99%
“…They constructed an artificial neural network-based classifier to classify the patterns and features extracted from the raw sEMG signals; and the proposed wheelchair revealed that it was financially feasible and cost-effective. Yesid et al [21] presented a neuro fuzzy controller for Electronics 2018, 7, 145 3 of 22 a robot that rode a bicycle using the Acrobot model for slow speeds, which was also implemented on an FPGA-based embedded system.…”
mentioning
confidence: 99%