A simple population based hybrid harmonic estimation algorithm

E. O. Tartan, H. Erdem
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Abstract

This paper presents a new hybrid algorithm for harmonic estimation. The algorithm combines a simple fast population based search algorithm with Least Squares Method. It is based on the structural property of the harmonic estimation problem which implies that the signal model is linear in amplitude and nonlinear in phase. The hybrid algorithm uses the search algorithm for phase estimation and LS for amplitude estimation, iteratively. Exploiting the objective function defined according to the error of single harmonic's phase estimation, the proposed search algorithm distributes the population through equal intervals and simply narrows the search space sequentially in every generation. Unlike the other heuristic optimization algorithms that uses random distribution in initialization stage, the proposed method provides more robust convergence in the limits determined by the generation number. Simulation results show that the proposed hybrid algorithm not only gives accurate results but also significantly improves the computation time when compared with other heuristic optimization algorithms. Moreover this approach can be used to reduce the search duration when involved in other evolutionary optimization algorithms in a hybrid way and then can deal with frequency deviation and subharmonic estimation which are pitfalls for DFT based algorithms.
一种简单的基于种群的混合谐波估计算法
提出了一种新的谐波估计混合算法。该算法将基于种群的简单快速搜索算法与最小二乘法相结合。它是基于谐波估计问题的结构性质,即信号模型在振幅上是线性的,在相位上是非线性的。该混合算法使用搜索算法进行相位估计,使用LS算法进行幅度估计。该算法利用根据单次谐波相位估计误差定义的目标函数,以等间隔分布种群,简单地逐代缩小搜索空间。与其他启发式优化算法在初始化阶段使用随机分布不同,该方法在由生成数决定的极限下具有更强的鲁棒性收敛性。仿真结果表明,与其他启发式优化算法相比,该混合算法不仅计算结果准确,而且计算时间显著提高。此外,该方法还可以减少与其他进化优化算法混合使用时的搜索时间,从而解决基于DFT的算法存在的频率偏差和次谐波估计问题。
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