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Toward a Model-Based Predictive Controller Design in Brain–Computer Interfaces

机译:迈向人机界面中基于模型的预测控制器设计

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摘要

A first step in designing a robust and optimal model-based predictive controller (MPC) for brain–computer interface (BCI) applications is presented in this article. An MPC has the potential to achieve improved BCI performance compared to the performance achieved by current ad hoc, nonmodel-based filter applications. The parameters in designing the controller were extracted as model-based features from motor imagery task-related human scalp electroencephalography. Although the parameters can be generated from any model-linear or non-linear, we here adopted a simple autoregressive model that has well-established applications in BCI task discriminations. It was shown that the parameters generated for the controller design can as well be used for motor imagery task discriminations with performance (with 8–23% task discrimination errors) comparable to the discrimination performance of the commonly used features such as frequency specific band powers and the AR model parameters directly used. An optimal MPC has significant implications for high performance BCI applications.
机译:本文介绍了为脑机接口(BCI)应用设计健壮且基于最佳模型的预测控制器(MPC)的第一步。与当前的基于非模型的临时过滤器应用相比,MPC具有提高BCI性能的潜力。从运动图像任务相关的人类头皮脑电图中提取了控制器的设计参数,并将其作为基于模型的特征。尽管可以从任何模型的线性或非线性模型生成参数,但是我们在这里采用了一种简单的自回归模型,该模型在BCI任务判别中具有公认的应用。结果表明,为控制器设计生成的参数还可用于运动图像任务判别,其性能(任务判别误差为8-23%)可与常用功能(例如特定频段的功率和频率)的判别性能相媲美。直接使用AR模型参数。最佳的MPC对高性能BCI应用具有重要意义。

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