학술논문

Dynamic Memristor based Cyclic Echo State Network for Time Series Prediction
Document Type
Conference
Source
2024 4th International Conference on Neural Networks, Information and Communication (NNICE) Neural Networks, Information and Communication (NNICE), 2024 4th International Conference on. :250-253 Jan, 2024
Subject
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Computing and Processing
Robotics and Control Systems
Signal Processing and Analysis
Training
Costs
Recurrent neural networks
Time series analysis
Memristors
Predictive models
Reservoirs
echo state network
memristor
time series prediction
Language
Abstract
Compared with traditional recurrent neural networks, the training cost of echo-state network computing is lower because the neurons in the reservoir are randomly connected. We only need to train the weight of the connection between the reservoir and the output layer. Due to its high accuracy and low training cost for time series forecasting tasks, it is widely used as a time series forecasting model in many fields. It is very important to provide rich reservoir state for echo state network system, which is the key to hardware implementation. In this paper, we propose a cyclic echo state network (DC-ESN) based on dynamic memristors, which generates rich reservoir states through cyclic structure, and can predict complex time series well even with a single memristor. Compared with the traditional echo state network, the size of the reservoir is reduced and the prediction accuracy is greatly improved. Our work can provide an idea for more efficient memristor based echo state network systems in the future to cope with complex time series prediction tasks.