下一代仿生植入心脏浦肯野纤维的fpga优化神经形态建模

IF 3.8 Q2 ENGINEERING, BIOMEDICAL
Gilda Ghanbarpour;Muhammad Akmal Chaudhary;Maher Assaad;Milad Ghanbarpour
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引用次数: 0

摘要

神经元和生物细胞在神经形态领域的优化硬件实现具有重要意义。本文提出了一种新的方法,可以高精度地将描述神经元或生物细胞行为的微分方程中的任意数目的非线性项简化为单个非线性项。这种方法通过减少硬件资源消耗,同时保持高频率和准确性,显著提高了实现效率。将该方法应用于心脏浦肯野纤维细胞,并通过时域分析、噪声条件分析、Lyapunov稳定性分析和分岔分析验证了该方法在各种条件下的有效性。这些验证确保了所提出的方法在不同操作条件下的准确性和稳定性。为了评估大规模适用性,该模型在300个细胞的浦肯野纤维网络中进行了测试,在保持计算效率的同时,展示了精确的同步、平衡状态和交叉光谱一致性。Virtex-7 FPGA板上的数字硬件实现与原始模型相比,频率提高了3.49倍,与迄今为止该模型的最佳实现相比,频率提高了1.79倍。我们还模拟了一个包含4500个单元的网络来分析相关性,并在硬件上实现了该模型,以证明基于本文方法提出的模型可以高效准确地扩展到大规模应用。这种高效且可扩展的方法为医学研究、生物工程和神经形态硬件开发中的应用铺平了道路,包括创建用于模拟生物系统的硬件加速工具,设计生物启发设备,以及实现用于理解和治疗心脏或神经系统疾病的大规模实时模拟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FPGA-Optimized Neuromorphic Modeling of Cardiac Purkinje Fibers for Next-Generation Bionic Implants
The optimized hardware implementation of neurons and biological cells in the neuromorphic domain is of significant importance. In this paper, a novel method is presented that reduces any number of nonlinear terms in the differential equations describing the behavior of neurons or biological cells with a common variable to a single nonlinear term with high precision. This approach significantly improves implementation efficiency by reducing hardware resource consumption while maintaining high frequency and accuracy. The proposed method was applied to Cardiac Purkinje Fiber Cells, and its validity was demonstrated through time-domain analysis, noise condition analysis, Lyapunov stability analysis, and bifurcation analysis to validate the model under various conditions. These validations ensure the accuracy and stability of the proposed approach across different operating conditions. To assess large-scale applicability, the model was tested in a 300-cell Purkinje fiber network, demonstrating accurate synchronization, equilibrium states, and cross-spectral consistency while maintaining computational efficiency. The digital hardware implementation on a Virtex-7 FPGA board demonstrated a frequency improvement of 3.49 times compared to the original model and 1.79 times compared to the best implementation of this model to date. We also simulated a network of 4500 cells to analyze correlation and implemented it on hardware to demonstrate that the proposed model, based on the method presented in this paper, can efficiently and accurately scale to large-scale applications. This efficient and scalable approach paves the way for applications in medical research, bioengineering, and neuromorphic hardware development, including the creation of hardware-accelerated tools for simulating biological systems, designing bio-inspired devices, and enabling large-scale real-time simulations for understanding and treating cardiac or neurological conditions.
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CiteScore
6.80
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