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Adaptive infinite impulse response system identification using teacher learner based optimization algorithm

机译:基于教师学习者优化算法的自适应无限脉冲响应系统识别

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In this paper, optimal coefficients of unknown infinite impulse response (IIR) system are computed by utilizing a new population based algorithm called teacher learner based optimization (TLBO) for system identification problem. TLBO algorithm is inspired by the teaching learning process in the classroom and is free from algorithmic specific parameters. In TLBO, difference mean is calculated for each learner, which is the difference between the existing mean result of the class and the teacher. This difference mean is updated in each iteration and is responsible for maintaining the diversity of this algorithm. System identification problem is based on minimizing the mean square error (MSE) function and finding the optimal coefficients of an unknown IIR system. The MSE is the difference between the outputs of an adaptive IIR system and an unknown IIR system. Exhaustive simulations have been done for finding the unknown system coefficients of same order and reduced order case. Four benchmark functions are tested using TLBO algorithm to verify its efficacy for system identification problem. In order to prove the effectiveness of the applied algorithm, evaluated coefficients and MSE values are compared with that of the genetic algorithm (GA), particle swarm optimization (PSO), cat swarm optimization (CSO), cuckoo search algorithm (CSA), firefly algorithm (FFA), bat algorithm (BAT), differential evolution with wavelet mutation (DEWM), harmony search (HS) and opposition based harmony search (OHS) algorithm.
机译:本文通过利用基于教师学习者的优化(TLBO)的新群体算法来计算未知无限脉冲响应(IIR)系统的最佳系数,用于系统识别问题。 TLBO算法由教室中的教学过程启发,并且没有算法特定参数。在TLBO中,为每个学习者计算差异均值,这是类和教师的现有平均结果之间的差异。在每次迭代中更新这种差异均值,并且负责维持该算法的多样性。系统识别问题是基于最小化均方误差(MSE)函数并找到未知IIR系统的最佳系数。 MSE是自适应IIR系统的输出和未知的IIR系统之间的差异。已经完成了详尽的仿真,用于查找相同顺序的未知系统系数和减少订单案例。使用TLBO算法测试四个基准函数,验证其对系统识别问题的功效。为了证明所应用的算法的有效性,将评估的系数和MSE值与遗传算法(GA),粒子群优化(PSO),CAT群优化(CSO),Cuckoo搜索算法(CSA),萤火虫进行比较算法(FFA),BAT算法(BAT),用小波突变(DEWM),和声搜索(HS)和基于反对的和声搜索(OHS)算法的差分演进。

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