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首页> 外文期刊>Journal of Scientific & Industrial Research >Identification of Real-Time Maglev Plant using Long-Short Term Memory Network based Deep Learning Technique
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Identification of Real-Time Maglev Plant using Long-Short Term Memory Network based Deep Learning Technique

机译:基于长短期内存网络的深度学习技术识别实时Maglev工厂

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摘要

Deep neural network has emerged as one of the most effective networks for modeling of highly non-linear complex real-time systems. The long-short term memory network (LSTM) which is a one of the variants of recurrent neural network (RNN) has been proposed for the identification of a highly nonlinear Maglev plant. The comparative analysis of its performance is carried out with the functional link artificial neural network- least mean square (FLANN-LMS), FLANN-particle swarm optimization (FLANN-PSO), FLANN-teaching learning based optimization (FLANN-TLBO) and FLANN-black widow optimization (FLANN-BWO) algorithm. The proposed LSTM model is a feed forward neural network trained by a simple iterative method called the ADAM algorithm. The obtained results indicate that the proposed network has better performance than the other competitive networks in terms of the MSE, CPU time and convergence rate. To validate the dominance of the proposed network, a statistical tests, i.e. the Friedman test, is also applied.
机译:深度神经网络已成为最有效的网络建模网络之一,是高度线性复杂的实时系统的建模。已经提出了作为经常性神经网络(RNN)的一种变型的长短期记忆网络(LSTM),用于识别高度非线性磁悬浮厂。其性能的比较分析是用功能性的链接人工神经网络 - 最小均方(Flann-LMS),法兰粒子群优化(Flann-PSO),Flann教学学习优化(Flann-TLBO)和Flann -Black寡妇优化(FLANN-BWO)算法。所提出的LSTM模型是通过称为ADAM算法的简单迭代方法训练的前馈神经网络。所获得的结果表明,在MSE,CPU时间和收敛速率方面,所提出的网络比其他竞争网络更好。为了验证所提出的网络的主导地位,还应用了统计测试,即弗里德曼测试。

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