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通过基于克里金法融合稀疏回归偏微分方程来增强脑机接口,以应对节点位移效应的注塑成型视图。

Enhancing Brain-Computer Interfaces through Kriging-Based Fusion of Sparse Regression Partial Differential Equations to Counter Injection Molding View of Node Displacement Effects.

作者信息

Chang Hanjui, Sun Yue, Lu Shuzhou, Lan Yuntao

机构信息

Department of Mechanical Engineering, College of Engineering, Shantou University, Shantou 515063, China.

Intelligent Manufacturing Key Laboratory of Ministry of Education, Shantou University, Shantou 515063, China.

出版信息

Polymers (Basel). 2024 Sep 3;16(17):2507. doi: 10.3390/polym16172507.

Abstract

Injection molding is an efficient and precise manufacturing technology that is widely used in the production of plastic products. In recent years, injection molding technology has made significant progress, especially with the combination of in-mold electronics (IME) technology, which makes it possible to embed electronic components directly into the surface of a product. IME technology improves the integration and performance of a product by embedding conductive materials and functional components in the mold. Brain-computer interfaces (BCIs) are a rapidly growing field of research that aims to capture, analyze, and feedback brain signals by directly connecting the brain to external devices. The Utah array, a high-density microelectrode array, has been widely used for the recording and transmission of brain signals. However, the traditional fabrication method of the Utah array suffers from high cost and low integration, which limits its promotion in practical applications. The lines that receive EEG signals are one of the key parts of a brain-computer interface system. The optimization of injection molding parameters is particularly important in order to effectively embed these lines into thin films and to ensure the precise displacement of the line nodes and the stability of signal transmission during the injection molding process. In this study, a method based on the Kriging prediction model and sparse regression partial differential equations (PDEs) is proposed to optimize the key parameters in the injection molding process. This method can effectively predict and control the displacement of nodes in the film, ensure the stability and reliability of the line during the injection process, and improve the accuracy of EEG signal transmission and system performance. The optimal injection parameters were finally obtained: a holding pressure of 525 MPa, a holding time of 50 s, and a melting temperature of 285 °C. Under this condition, the average node displacement of UA was reduced from the initial 0.19 mm to 0.89 µm, with an optimization rate of 95.32%.

摘要

注塑成型是一种高效且精确的制造技术,广泛应用于塑料制品的生产。近年来,注塑成型技术取得了显著进展,特别是与模内电子(IME)技术相结合,使得直接将电子元件嵌入产品表面成为可能。IME技术通过在模具中嵌入导电材料和功能组件来提高产品的集成度和性能。脑机接口(BCI)是一个快速发展的研究领域,旨在通过将大脑直接连接到外部设备来捕获、分析和反馈脑信号。犹他阵列作为一种高密度微电极阵列,已被广泛用于脑信号的记录和传输。然而,犹他阵列的传统制造方法成本高且集成度低,这限制了其在实际应用中的推广。接收脑电图信号的线路是脑机接口系统的关键部件之一。为了在注塑过程中有效地将这些线路嵌入薄膜,并确保线路节点的精确位移和信号传输的稳定性,优化注塑成型参数尤为重要。在本研究中,提出了一种基于克里金预测模型和稀疏回归偏微分方程(PDE)的方法来优化注塑成型过程中的关键参数。该方法可以有效地预测和控制薄膜中节点的位移,确保注塑过程中线路的稳定性和可靠性,并提高脑电图信号传输的准确性和系统性能。最终获得了最佳注塑参数:保压压力为525MPa,保压时间为50s,熔融温度为285℃。在此条件下,犹他阵列的平均节点位移从初始的0.19mm降至0.89μm,优化率为95.32%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8594/11398258/86f83b129a61/polymers-16-02507-g001.jpg

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