%0 Journal Article
%A Chen, Tao
%A Schiek, Michael
%A Dammers, Jürgen
%A Shah, N. Jon
%A van Waasen, Stefan
%T Requirement-driven model-based development methodology applied to the design of a real-time MEG data processing unit
%J Software and systems modeling
%V 19
%@ 1619-1374
%C New York, NY
%I Springer
%M FZJ-2020-02791
%P 1567–1587
%D 2020
%X The paper describes a multidisciplinary work that uses a model-based systems engineering method for developing real-time magnetoencephalography (MEG) signal processing. We introduce a requirement-driven, model-based development methodology (RDD and MBD) to provide a high-level environment and efficiently handle the complexity of computation and control systems. The proposed development methodology focuses on the use of System Modeling Language to define high-level model-based design descriptions for later implementation in heterogeneous hardware/software systems. The proposed approach was applied to the implementation of a real-time artifact rejection unit in MEG signal processing and demonstrated high efficiency in designing complex high-performance embedded systems. In MEG signal processing, biological artifacts in particular have a signal strength that overtop the signal of interest by orders of magnitude and must be removed from the measurement to achieve high-quality source reconstructions with minimal error contributions. However, many existing brain–computer interface studies overlook real-time artifact removal because of the demanding computational process. In this work, an automated real-time artifact rejection method is introduced, which is based on the recently presented method “ocular and cardiac artifact rejection for real-time analysis in MEG” (OCARTA). The method has been implemented using the RDD and MBD approach and successfully verified on a Virtex-6 field-programmable gate array.
%F PUB:(DE-HGF)16
%9 Journal Article
%U <Go to ISI:>//WOS:000531132800001
%R 10.1007/s10270-020-00797-3
%U https://juser.fz-juelich.de/record/878342