72 research outputs found

    Interval Type-2 Fuzzy Control Using Distending Function

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    Data-Driven Arithmetic Fuzzy Control Using the Distending Function

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    Robust Fuzzy Control using the Type2 Distending Function

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    A new approach to fuzzy control using distending function

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    The paper presents a novel design for fuzzy logic control using the Distending Function (DF) as a membership function. The proposed design is close to human input and can be transformed into fuzzy model for stability analysis using conventional control theory. The design procedure is simplified by employing fuzzy arithmetic and properties of this new type of membership function. Its compatible with the existing operators system and can be used with already developed fuzzy models to achieve greater flexibility in design process.The effectiveness of the proposed methodology is demonstrated by designing tracking fuzzy controllers for vehicle lateral dynamics and water tank systems

    The 11th Conference of PhD Students in Computer Science

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    A LOW-COST APPROACH TO DATA-DRIVEN FUZZY CONTROL OF SERVO SYSTEMS

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    Servo systems become more and more important in control systems applications in various fields as both separate control systems and actuators. Ensuring very good control system performance using few information on the servo system model (viewed as a controlled process) is a challenging task. Starting with authors’ results on data-driven model-free control, fuzzy control and the indirect model-free tuning of fuzzy controllers, this paper suggests a low-cost approach to the data-driven fuzzy control of servo systems. The data-driven fuzzy control approach consists of six steps: (i) open-loop data-driven system identification to produce the process model from input-output data expressed as the system step response, (ii) Proportional-Integral (PI) controller tuning using the Extended Symmetrical Optimum (ESO) method, (iii) PI controller parameters mapping onto parameters of Takagi-Sugeno PI-fuzzy controller in terms of the modal equivalence principle, (iv) closed-loop data-driven system identification, (v) PI controller tuning using the ESO method, (vi) PI controller parameters mapping onto parameters of Takagi-Sugeno PI-fuzzy controller. The steps (iv), (v) and (vi) are optional. The approach is applied to the position control of a nonlinear servo system. The experimental results obtained on laboratory equipment validate the approach

    Data-Driven Model-Free Sliding Mode and Fuzzy Control with Experimental Validation

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    The paper presents the combination of the model-free control technique with two popular nonlinear control techniques, sliding mode control and fuzzy control. Two data-driven model-free sliding mode control structures and one data-driven model-free fuzzy control structure are given. The data-driven model-free sliding mode control structures are built upon a model-free intelligent Proportional-Integral (iPI) control system structure, where an augmented control signal is inserted in the iPI control law to deal with the error dynamics in terms of sliding mode control. The data-driven model-free fuzzy control structure is developed by fuzzifying the PI component of the continuous-time iPI control law. The design approaches of the data-driven model-free control algorithms are offered. The data-driven model-free control algorithms are validated as controllers by real-time experiments conducted on 3D crane system laboratory equipment
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