Abstract
Recurrent Neural Networks (RNN) are basically used for applications with time series and sequential data and are currently being used in embedded devices. However, one of their drawbacks is that RNNs have a high computational cost and require the use of a significant amount of memory space. Therefore, computer equipment with a large processing capacity and memory is required. In this article, we experiment with Nonlinear Autoregressive Neural Networks (NARNN), which are a type of RNN, and we use the Discrete Mycorrhizal Optimization Algorithm (DMOA) in the optimization of the NARNN architecture. We used the Mackey-Glass chaotic time series (MG) to test the proposed approach, and very good results were obtained. In addition, some comparisons were made with other methods that used the MG and other types of Neural Networks such as Backpropagation and ANFIS, also obtaining good results. The proposed algorithm can be applied to robots, microsystems, sensors, devices, MEMS, microfluidics, piezoelectricity, motors, biosensors, 3D printing, etc.
Subject
Electrical and Electronic Engineering,Mechanical Engineering,Control and Systems Engineering
Reference84 articles.
1. Diwekar, U.M. (2020). Introduction to Applied Optimization, Springer Nature Switzerland AG.
2. Ghaemi, M.B., Gharakhanlu, N., Rassias, T.M., and Saadati, R. (2021). Advances in Matrix Inequalities, Springer Nature Switzerland AG.
3. Lange, K. (2013). Optimization Second Edition, Springer. Biomathematics, Human Genetics, Statistics University of California.
4. Kochenderfer, M.J., and Wheeler, T.A. (2019). Algorithms for Optimization, The MIT Press Cambridge.
5. Demetriou, I., and Pardalos, P. (2019). Approximation and Optimization, Springer. Springer Optimization and Its Applications.
Cited by
3 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献