系统仿真学报 ›› 2026, Vol. 38 ›› Issue (3): 746-757.doi: 10.16182/j.issn1004731x.joss.25-0098

• 论文 • 上一篇    

基于环境建模与仿真的P300脑机接口性能评估研究

葛晓飞, 连金岭, 韩锦, 范新安, 骆丹媚, 滑宇翔, 刘昊, 张利剑   

  1. 北京机械设备研究所,北京 100854
  • 收稿日期:2025-02-12 修回日期:2025-09-04 出版日期:2026-03-18 发布日期:2026-03-27
  • 通讯作者: 连金岭
  • 第一作者简介:葛晓飞(1982-),男,研究员,博士,研究方向为控制系统。

Research on Performance Evaluation of P300 Brain-computer Interface Under Environment Modeling and Simulation

Ge Xiaofei, Lian Jinling, Han Jin, Fan Xin'an, Luo Danmei, Hua Yuxiang, Liu Hao, Zhang Lijian   

  1. Beijing Institute of Mechanical Equipment, Beijing 100854, China
  • Received:2025-02-12 Revised:2025-09-04 Online:2026-03-18 Published:2026-03-27
  • Contact: Lian Jinling

摘要:

针对脑机接口(brain-computer interface,BCI)技术从实验室走向实用化过程中,真实环境因素对系统性能影响难以精准预测与评估的问题,提出基于多因素仿真实验的研究方法。构建可控仿真实验环境,对噪声、光照2类关键物理环境因素进行参数化建模,结合脑电通道数量这一系统参数,系统性探究上述因素对P300-BCI解码性能的作用规律。仿真实验结果表明:噪声对系统解码性能存在明显影响,低噪声环境下的准确率高于高噪声环境;光照因素未对系统性能产生明显作用;解码通道数量越少准确率越低,且3通道与全通道解码的性能无明显差异。该研究为非理想环境下BCI系统的性能建模提供了实证数据,也为该技术在真实场景的适应性设计与仿真验证提供了方法论参考。

关键词: P300, 脑机接口, 真实环境, 建模与仿真, 解码性能

Abstract:

In the process of brain-computer interface(BCI) technology stepping from laboratory to practical application scenarios, it is difficult to make an accurate prediction and evaluation of the effect of real environment factors on the system performance. Therefore, a research method based on a multi-factor simulation experiment was proposed. A controllable simulation experiment environment was constructed, and the parametric modeling of two key physical environmental factors, namely noise and light, was carried out. By taking the number of electroencephalogram channels as the system parameter, this paper systematically studied the influence mechanism of the aforementioned factors on the decoding performance of P300-BCI. The simulation experiment results show that noise has a significant impact on the decoding performance of the system. The accuracy is higher in a low noise environment, compared with that in a high noise environment. The light factor has no obvious effect on the system performance. As the number of decoding channels decreases, the accuracy shows a corresponding decline. In addition, no significant difference is observed in decoding performance between three channels and all channels. This study not only provides empirical data for the performance modeling of the BCI system in a non-ideal environment but also provides methodological reference for the adaptive design and simulation verification of this technology in real scenarios.

Key words: P300, brain-computer interface(BCI), real environment, modeling and simulation, decoding performance

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