Firefly Algorithm Optimized Functional Link Artificial Neural Network for ISA-Radar Image Recognition

Asma Elyounsi, H. Tlijani, M. Bouhlel
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引用次数: 1

Abstract

Traditional neural networks are very diverse and have been used during the last decades in the fields of data classification. These networks like MLP, back propagation neural networks (BPNN) and feed forward network have shown inability to scale with problem size and with the slow convergence rate. So in order to overcome these numbers of drawbacks, the use of higher order neural networks (HONNs) becomes the solution by adding input units along with a stronger functioning of other neural units in the network and transforms easily these input units to hidden layers. In this paper, a new metaheuristic method, Firefly (FFA), is applied to calculate the optimal weights of the Functional Link Artificial Neural Network (FLANN) by using the flashing behavior of fireflies in order to classify ISA-Radar target. The average classification result of FLANN-FFA which reached 96% shows the efficiency of the process compared to other tested methods.
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萤火虫算法优化的功能链接人工神经网络ISA-Radar图像识别
传统的神经网络是非常多样化的,在过去的几十年里一直被用于数据分类领域。MLP、bp神经网络(back propagation neural networks, BPNN)和前馈网络(feed - forward network)等网络在问题规模和收敛速度方面表现出无法扩展的特点。因此,为了克服这些缺点,使用高阶神经网络(honn)成为解决方案,通过添加输入单元以及网络中其他神经单元的更强功能,并轻松地将这些输入单元转换为隐藏层。为了对ISA-Radar目标进行分类,提出了一种新的元启发式方法Firefly (FFA),利用萤火虫的闪烁行为计算功能链路人工神经网络(FLANN)的最优权值。与其他测试方法相比,FLANN-FFA的平均分类结果达到96%,表明该方法的效率较高。
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