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A New Approach Encoding a Priori Information for Function Approximation

机译:一种编码用于函数逼近的先验信息的新方法

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In this paper, a new approach for function approximation is proposed to obtain better approximated performance. It is well known that gradient-based learning algorithms such as backpropagation (BP) algorithm have good ability of local search, whereas particle swarm optimization (PSO) has good ability of global search. Therefore, in the new approach, adaptive PSO (APSO) is applied to train network to search global minima firstly, and then with the trained weights produced by APSO the network is trained with a constrained learning algorithm (CLA). Moreover, the CLA encodes a priori information of the approximated function. Due to combined APSO with the CLA, the new approach has better approximated performance. Finally, simulation results are given to verify the efficiency and effectiveness of the proposed learning approach.
机译:本文提出了一种新的函数逼近方法,以获得更好的逼近性能。众所周知,基于梯度的学习算法(例如反向传播(BP)算法)具有良好的局部搜索能力,而粒子群优化(PSO)具有良好的全局搜索能力。因此,在新方法中,首先将自适应PSO(APSO)应用于训练网络以搜索全局最小值,然后利用APSO产生的训练权重,使用约束学习算法(CLA)对网络进行训练。此外,CLA对近似函数的先验信息进行编码。由于将APSO与CLA结合使用,因此新方法具有更好的近似性能。最后,给出仿真结果以验证所提出学习方法的效率和有效性。

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