Qian LiuHong PengLifan LongJun WangQian YangMario J. Pérez-JímenezDavid Orellana-Martín
Spiking neural P (SNP) systems are a class of distributed and parallel neural-like computing models that are inspired by the mechanism of spiking neurons and are 3rd-generation neural networks. Chaotic time series forecasting is one of the most challenging problems for machine learning models. To address this challenge, we first propose a nonlinear version of SNP systems, called nonlinear SNP systems with autapses (NSNP-AU systems). In addition to the nonlinear consumption and generation of spikes, the NSNP-AU systems have three nonlinear gate functions, which are related to the states and outputs of the neurons. Inspired by the spiking mechanisms of NSNP-AU systems, we develop a recurrent-type prediction model for chaotic time series, called the NSNP-AU model. As a new variant of recurrent neural networks (RNNs), the NSNP-AU model is implemented in a popular deep learning framework. Four datasets of chaotic time series are investigated using the proposed NSNP-AU model, five state-of-the-art models, and 28 baseline prediction models. The experimental results demonstrate the advantage of the proposed NSNP-AU model for chaotic time series forecasting.
Xiaoxiao SongLuis Valencia–CabreraHong PengJun Wang
Xin XiongMin WuJuan HeHong PengJun WangXianzhong LongQian Yang
Lifan LongQian LiuHong PengQian YangXiaohui LuoJun WangXiaoxiao Song
Frank XingErik CambriaXiaomei Zou
Guimin NingLuis Valencia–CabreraXiaoxiao Song