2015
DOI: 10.1016/j.asoc.2015.08.009
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A memetic algorithm applied to trajectory control by tuning of Fractional Order Proportional-Integral-Derivative controllers

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Cited by 83 publications
(38 citation statements)
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“…2). According to the maximal local density (max i γ i k ) the data sample is associated with that cloud and furthermore, the parameters of that cloud are updated using equations (8) and (9). Theoretically, it is possible to happen that the current data sample has the same density to two or more clouds.…”
Section: Robust Evolving Cloud-based Controller (Recco) a The Stmentioning
confidence: 99%
See 1 more Smart Citation
“…2). According to the maximal local density (max i γ i k ) the data sample is associated with that cloud and furthermore, the parameters of that cloud are updated using equations (8) and (9). Theoretically, it is possible to happen that the current data sample has the same density to two or more clouds.…”
Section: Robust Evolving Cloud-based Controller (Recco) a The Stmentioning
confidence: 99%
“…Another type of PID controllers are Fractional Order PID (FO PID) controllers that perform better than a classical PID-s [6] but require setting of two additional parameters. Similar to classical ones, tunning of this parameters can be solved by solving an optimization problem [7], [8], [9].…”
Section: Introductionmentioning
confidence: 99%
“…As one of the most well-known and preferred EAs, particle swarm optimisation (PSO) has been rapidly and widely applied to solve different single-objective and MOO problems in recent years: a novel adaptive particle swarm optimisation (APSO) algorithm was developed by Alireza and Hamidreza in [15]; Yashar and Alireza proposed a novel fractional PSO-based memetic algorithm (FPSOMA) to solve trajectory control in [16]; a bare-bones multi-objective PSO for the environmental/economic dispatch problem was developed in [17]; a modified binary PSO-based reliability redundancy allocation method was introduced in [18] and a hybrid PSO-based MOO method was proposed to handle the flexible job-shop scheduling problem in [19]. For more works focusing on developing different PSO-based MOO methods, the reader can be referred to [5,20,21,22].…”
Section: Introductionmentioning
confidence: 99%
“…It is of great importance to overcome this convergence issue to improve the quality of the Pareto front and consequently enhance the performance of MOO [5,17]. There have been numerous researches focusing on overcoming the typical drawback of the basic PSO [9,23,24,25,16,26]. From these studies, it is clearly evident that adjusting the three control parameters, i.e., the inertial weight, the cognitive and social acceleration parameters, is a powerful remedy to the convergence issue in PSO.…”
Section: Introductionmentioning
confidence: 99%
“…[20][21][22] Due to the simple concept, easy implementation, and quick convergence, nowadays PSO has been developed and applied in various fields, especially for wide-ranging optimization problems, 23,24 and then based on fractional PSO, a novel MA FPSOMA is introduced to solve optimization problem using fractional calculus concept. 25 Moreover, a variety of evolutionary algorithms are employed to obtain optimal performance for synchronization of bilateral teleoperation systems against uncertainties including model parameters. 26 Actually, parameter identification for piezoelectric positioning system could be essentially formulated as a multidimensional optimization problem; however, only a few applications of piezoelectric positioning system opted for PSO.…”
Section: Introductionmentioning
confidence: 99%