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Identification in the delta domain: a unified approach via GWOCFA

机译:在Delta域中的识别:通过Gwocfa统一方法

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摘要

The identification of linear dynamic systems in the delta domain has been proposed in this paper with the help of a hybrid metaheuristic algorithm combining chaotic firefly algorithm (CFA) and grey wolf optimiser (GWO). GWO performs the global search, while CFA fine-tunes the solutions through its local search abilities, thereby balancing exploration and exploitation features. Linear systems with static nonlinearities at the input are termed as the Hammerstein model, whereas linear systems with static nonlinearities at the output are known as the Wiener model. A test case with continuous polynomial nonlinearities has been taken up for Hammerstein and Wiener system identification in the delta domain. Delta operator parameterisation unifies identification of continuous-time systems with the discrete domain at a higher sampling rate. Pseudo-random binary sequence (PRBS), polluted with white Gaussian noise of fixed signal-to-noise ratio (SNR), has been considered as the input signal to estimate the unknown model parameters as well as static nonlinear coefficients. The hybrid algorithm not only supersedes the parent heuristics of which it is constituted but also proves better in comparison with some standard and latest heuristic approaches reported in the literature. Nonparametric statistical tests are performed to validate the results. The plots of fitness function (normalised value) against the number of iterations also support the convergence speed and accuracy of the results.
机译:本文借助混乱的萤火虫算法(CFA)和灰狼优化器(GWO)的混合成群化算法,本文提出了Δ域中的线性动态系统。 GWO执行全球搜索,而CFA通过其本地搜索能力进行精细调整解决方案,从而平衡勘探和开发功能。输入的静态非线性的线性系统被称为HammerStein模型,而输出处的静态非线性的线性系统被称为维纳模型。具有连续多项式非线性的测试用例已经在Delta域中进行了Hammerstein和Wiener系统识别。 Delta操作员参数化统一识别离散域以更高的采样率。用固定信噪比(SNR)的白色高斯噪声污染的伪随机二进制序列(PRB)被认为是输入信号,以估计未知的模型参数以及静态非线性系数。混合算法不仅取代了其构成的父母启发式,而且与文献中报道的一些标准和最新的启发式方法相比,也得到了更好的证明。执行非参数统计测试以验证结果。对迭代次数的健身功能(归一化值)的曲线也支持结果的收敛速度和准确性。

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