6 research outputs found

    A Comparison of Type-1 and Type-2 Fuzzy Logic Controllers in Robotics: A review

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    Most real world applications face high levels of uncertainties that can affect the operations of such applications. Hence, there is a need to develop different approaches that can handle the available uncertainties and reduce their effects on the given application. To date, Type-1 Fuzzy Logic Controllers (FLCs) have been applied with great success to many different real world applications. The traditional type-1 FLC which uses crisp type-1 fuzzy sets cannot handle high levels of uncertainties appropriately. Nevertheless it has been shown that a type-2 FLC using type-2 fuzzy sets can handle such uncertainties better and thus produce a better performance. As such, type-2 FLCs are considered to have the potential to overcome the limitations of type-1 FLCs and produce a new generation of fuzzy controllers with improved performance for many applications which require handling high levels of uncertainty. This paper will briefly introduce the interval type-2 FLC and its benefits. We will also present briefly some of the type-2 FLC real world applications

    Fuzzy Logic Based Navigation of Mobile Robots

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    Implementaci贸n de un control fuzzy para el control cinem谩tico directo en un robot manipulador

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    En este art铆culo se muestra el desarrollo e implementaci贸n de la l贸gica difusa como herramienta de control de posici贸n para cada una de las articulaciones de un robot tipo PUMA. Se hace una descripci贸n general del robot y se muestra el c谩lculo del volumen de trabajo, el cual es usado para la fuzzificaci贸n en el desarrollo del controlador. Finalmente es mostrado el desarrollo y la simulaci贸n del controlador usando la toolbox fuzzy de Matlab, as铆 como la descripci贸n de una implementaci贸n realizada en un PLC. // In this article, the development and implementation of a fuzzy logic system as position control tool of each one of the joints in a PUMA robot is shown. A general description, which include general descriptions about the robot as workspace and therefore the development of the strategy of control with the definition of the rules in the fuzzification process is also included. Finally are shown the development and simulation of the controller using the fuzzy control toolbox of Matlab and the description of a implementation in a PLC.Peer ReviewedPostprint (published version

    Intelligent Robotics Navigation System: Problems, Methods, and Algorithm

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    This paper set out to supplement new studies with a brief and comprehensible review of the advanced development in the area of the navigation system, starting from a single robot, multi-robot, and swarm robots from a particular perspective by taking insights from these biological systems. The inspiration is taken from nature by observing the human and the social animal that is believed to be very beneficial for this purpose. The intelligent navigation system is developed based on an individual characteristic or a social animal biological structure. The discussion of this paper will focus on how simple agent鈥檚 structure utilizes flexible and potential outcomes in order to navigate in a productive and unorganized surrounding. The combination of the navigation system and biologically inspired approach has attracted considerable attention, which makes it an important research area in the intelligent robotic system. Overall, this paper explores the implementation, which is resulted from the simulation performed by the embodiment of robots operating in real environments

    The role of computational intelligence techniques in the advancements of solar photovoltaic systems for sustainable development: a review

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    The use of computational intelligence (CI) in solar photovoltaic (SPV) systems has been on the rise due to the increasing computational power, advancements in power electronics and the availability of data generation tools. CI techniques have the potential to reduce energy losses, lower energy costs, and facilitate and accelerate the global adoption of solar energy. In this context, this review paper aims to investigate the role of CI techniques in the advancements of SPV systems. The study includes the involvement of CI techniques for parameter identification of solar cells, PV system sizing, maximum power point tracking (MPPT), forecasting, fault detection and diagnosis, inverter control and solar tracking systems. A performance comparison between CI techniques and conventional methods is also carried out to prove the importance of CI in SPV systems. The findings confirmed the superiority of CI techniques over conventional methods for every application studied and it can be concluded that the continuous improvements and involvement of these techniques can revolutionize the SPV industry and significantly increase the adoption of solar energy

    Real-time Knowledge-based Fuzzy Logic Model for Soft Tissue Deformation

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    In this research, the improved mass spring model is presented to simulate the human liver deformation. The underlying MSM is redesigned where fuzzy knowledge-based approaches are implemented to determine the stiffness values. Results show that fuzzy approaches are in very good agreement to the benchmark model. The novelty of this research is that for liver deformation in particular, no specific contributions in the literature exist reporting on real-time knowledge-based fuzzy MSM for liver deformation
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