Neural Nets Distributed on Microcontrollers using Metaheuristic Parallel Optimization Algorithm

F. Noor, Hatem ElBoghdadi
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引用次数: 0

Abstract

Metaheuristic algorithms are powerful methods for solving compute intensive problems. neural Networks, when trained well, are great at prediction and classification type of problems. Backpropagation is the most popular method utilized to obtain the weights of Neural Nets though it has some limitations of slow convergence and getting stuck in a local minimum. In order to overcome these limitations, in this paper, a hybrid method combining the parallel distributed bat algorithm with backpropagation is proposed to compute the weights of the Neural Nets. The aim is to use the hybrid method in applications of a distributed nature. Our study uses the Matlab® software and Arduino® microcontrollers as a testbed. To test the performance of the testbed, an application in the area of speech recognition is carried out. Due to the resource limitations of Arduino microcontrollers, the core speech pre-processing of LPC (linear predictive coding) feature extractions are done in Matlab® and only the LPC parameters are passed to the Neural Nets, which are implemented on Arduino microcontrollers. The experimental results show that the proposed scheme does produce promising results.
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基于元启发式并行优化算法的分布式神经网络
元启发式算法是解决计算密集型问题的强大方法。神经网络,如果训练良好,在预测和分类类型的问题方面非常出色。反向传播是获取神经网络权重的最常用方法,尽管它有收敛缓慢和陷入局部极小值的局限性。为了克服这些限制,本文提出了一种将并行分布式bat算法与反向传播相结合的混合方法来计算神经网络的权重。目的是在分布式应用中使用混合方法。我们的研究使用Matlab®软件和Arduino®微控制器作为试验台。为了测试测试台的性能,在语音识别领域进行了应用。由于Arduino微控制器的资源限制,LPC(线性预测编码)特征提取的核心语音预处理是在Matlab®中完成的,并且只有LPC参数被传递到在Arduino微型控制器上实现的神经网络。实验结果表明,该方案确实取得了良好的效果。
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来源期刊
Annals of Emerging Technologies in Computing
Annals of Emerging Technologies in Computing Computer Science-Computer Science (all)
CiteScore
3.50
自引率
0.00%
发文量
26
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