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Alireza Faraji

Alireza Faraji

Assistant Professor

عضو هیئت علمی تمام وقت

College: Faculty of Electrical and Computer Engineering

Department: Electrical Engineering - Control

Degree: Ph.D

Birth Year: 1352

CV
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Alireza Faraji

Assistant Professor Alireza Faraji

عضو هیئت علمی تمام وقت
College: Faculty of Electrical and Computer Engineering - Department: Electrical Engineering - Control Degree: Ph.D | Birth Year: 1352 |

Energy Optimization of Under-actuated Crane model for Time-Variant Load Transferring using Optimized Adaptive Combined Hierarchical Sliding Mode Controller

Authorsمرضیه احمدی,علیرضا فرجی ارمکی
Journalنشریه مهندسی و مدیریت انرژی دانشگاه کاشان
Page number2
Volume number11
IFثبت نشده
Paper TypeFull Paper
Published At2021-12-31
Journal GradeScientific - research
Journal TypeElectronic
Journal CountryIran, Islamic Republic Of
Journal IndexISC

Abstract

This paper designs an Optimized Adaptive Combined Hierarchical Sliding Mode Controller (OACHSMC) for a timevarying crane model in presence of uncertainties. Uncertainties have always been one of the most important challenges in designing control systems, which include unknown parameters or un-modeled dynamics in systems. Sliding mode controller (SMC) is able to compensate the system in the presence of uncertainties due to un-modeled dynamics and is used for robust stability and performance behavior in the presence of additive un-modeled dynamics of system and multiplicative friction forces. This under-actuated crane has two sub-systems: trolley and payload. Therefore, it can be controlled by a single input signal with combined hierarchical sliding mode controller (CHSMC) using a two-layersliding manifold accurately. Payload mass and cable length are time-variant variables through load transferring. Due to the Time-varying models and the inefficiency of most controllers, the use of an adaptive controller can help improve system performance. This controller is adapted by considering a time-varying coefficient of the second layer sliding manifold. For energy saving of the input signal, the parameter of the first layer sliding manifold of ACHSMC is optimized by two intelligent strategies: genetic algorithm (GA) and particle swarm optimization (PSO) method. The simulation results show robust stability and performance of the proposed optimized controller.