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FPGA-based online-learning using parallel genetic algorithm and neural network for ECG signal classification

机译:基于FPGA的并行遗传算法和神经网络在线学习心电信号分类

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摘要

This paper presents FPGA-based ECG signal classification based-on a parallel genetic algorithm and block-based neural network. The proposed parallel genetic algorithm has cellular-like structure which is suitable for hardware implementation. With online learning using hardware parallel genetic algorithm to block-based neural network, the complete ECG signal classification can be implemented in hardware. The proposed hardware can be implemented in FPGA or ASIC for a portable personalized ECG signal classifications for long term patient monitoring.
机译:本文基于并行遗传算法和基于块的神经网络,提出了基于FPGA的ECG信号分类。所提出的并行遗传算法具有类似蜂窝的结构,适合于硬件实现。通过使用硬件并行遗传算法对基于块的神经网络进行在线学习,可以在硬件中实现完整的ECG信号分类。所提出的硬件可以在FPGA或ASIC中实现,用于便携式个性化ECG信号分类,以进行长期患者监护。

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