Abstract:Abstract:The phase locked stimulus technology has great application prospect in the neural mechanism research and clinical treatment. However, the problem of phase locked between electroencephalogram (EEG) and stimulus need to be solved. Due to the complicated timevarying characteristics of EEG, there is still lack of effective stimulus algorithms that can be used to lock with the EEG phase. Therefore, a phase locked stimulus method for EEG is proposed, which is based on the variational mode decomposition (VMD) and autoregressive (AR) prediction. Firstly, EEG is processed by VMD to obtain multiple eigenmode signals. Then, each eigenmode signal is predicted by the AR model. The predicted values corresponding to all modes are accumulated. Finally, according to the frequency and phase characteristics of the accumulated results, the stimulus is generated, which is phaselocked with EEG. The method is evaluated in the synthesized EEG and 20 subjects (aged 20~36, male 12, female 8) offline resting EEG respectively. Results show that VMDAR can overcome the influence of EEG instability and generate the stimulus with higher phaselocked value (PLV). When the length of prediction time increases from 001 s to 04 s, PLV of opened EEG decreases from 099 to 039, and PLV of closed EEG decreases from 099 to 065. When the length of modeling time increases from 025 s to 25 s, PLV of opened EEG increases from 064 to 083, and PLV of closed EEG increases from 053 to 065. The phase locked performance of VMDAR is superior to the methods of AR and AR based on empirical mode decomposition EMDAR under all test conditions. This method can also be applied to other nonstationary closedloop phaselocked systems. .txt