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OPTIMAL ANALOG WAVELET BASES CONSTRUCTION USING HYBRID OPTIMIZATION ALGORITHM

机译:混合优化算法的最优模拟小波基构建

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An approach for the construction of optimal analog wavelet bases is presented. First, the definition of an analog wavelet is given. Based on the definition and the least-squares error criterion, a general framework for designing optimal analog wavelet bases is established, which is one of difficult nonlinear constrained optimization problems. Then, to solve this problem, a hybrid algorithm by combining chaotic map particle swarm optimization (CPSO) with local sequential quadratic programming (SQP) is proposed. CPSO is an improved PSO in which the saw tooth chaotic map is used to raise its global search ability. CPSO is a global optimizer to search the estimates of the global solution, while the SQP is employed for the local search and refining the estimates. Benefiting from good global search ability of CPSO and powerful local search ability of SQP, a high-precision global optimum in this problem can be gained. Finally, a series of optimal analog wavelet bases are constructed using the hybrid algorithm. The proposed method is tested for various wavelet bases and the improved performance is compared with previous works.
机译:提出了一种构建最优模拟小波基的方法。首先,给出了模拟小波的定义。基于定义和最小二乘误差准则,建立了一个设计最优模拟小波基的通用框架,这是困难的非线性约束优化问题之一。然后,为解决这一问题,提出了一种将混沌映射粒子群优化算法(CPSO)与局部顺序二次规划(SQP)相结合的混合算法。 CPSO是一种改进的PSO,其中使用锯齿形混沌映射来提高其全局搜索能力。 CPSO是用于搜索全局解决方案的估计值的全局优化器,而SQP用于本地搜索和优化估计值。得益于CPSO良好的全局搜索能力和SQP强大的局部搜索能力,可以获得该问题的高精度全局最优解。最后,使用混合算法构造了一系列最佳模拟小波基。针对各种小波基对提出的方法进行了测试,并将改进的性能与以前的工作进行了比较。

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