Prediction Using Cuckoo Search Optimized Echo State Network

被引:0
作者
Abubakar Bala
Idris Ismail
Rosdiazli Ibrahim
Sadiq M. Sait
Hamza Onoruoiza Salami
机构
[1] Universiti Teknologi PETRONAS,Department of Electrical and Electronics Engineering
[2] Malaysia,Electrical Engineering Department
[3] Bayero University Kano,Computer Engineering Department and Center for Communications and IT Research, Research Institute
[4] King Fahd University of Petroleum & Minerals,College of Computer Science and Engineering
[5] University of Hafr Albatin,undefined
来源
Arabian Journal for Science and Engineering | 2019年 / 44卷
关键词
Algorithms; Artificial neural networks; Artificial intelligence; Cuckoo search; Echo state network; Lévy flight; Prediction; Turbofan engine;
D O I
暂无
中图分类号
学科分类号
摘要
The advent of internet of things has brought a revolution in the amount of data generated in industry. Researchers now have to develop ways to harness such huge amount of data. Thus, a new method called “predictive maintenance” was developed. In this technique, sensor data is used to predict failures so that appropriate actions are taken to save accidents and costs. Artificial neural networks have proven to be excellent tools for prediction. In this work, the echo state network (ESN), which is a new concept of recurrent neural network (RNN), is used to predict failures in turbofan engines. The ESN was developed to solve the complexities of earlier RNNs. However, choosing the right topology and parameters for the ESN is often a difficult problem. Hence, we develop a cuckoo search optimization-based algorithm to optimize the ESN. The approach is compared with three particle swarm optimization methods and two other methods, and it performed better.
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页码:9769 / 9778
页数:9
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