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Online Training of an Opto-Electronic Reservoir Computer Applied to Real-Time Channel Equalization

机译:用于实时通道均衡的光电水库计算机的在线培训

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摘要

Reservoir computing is a bioinspired computing paradigm for processing time-dependent signals. The performance of its analog implementation is comparable to other state-of-the-art algorithms for tasks such as speech recognition or chaotic time series prediction, but these are often constrained by the offline training methods commonly employed. Here, we investigated the online learning approach by training an optoelectronic reservoir computer using a simple gradient descent algorithm, programmed on a field-programmable gate array chip. Our system was applied to wireless communications, a quickly growing domain with an increasing demand for fast analog devices to equalize the nonlinear distorted channels. We report error rates up to two orders of magnitude lower than previous implementations on this task. We show that our system is particularly well suited for realistic channel equalization by testing it on a drifting and a switching channel and obtaining good performances.
机译:储层计算是一种用于处理时间相关信号的受生物启发的计算范例。其模拟实现的性能可与其他先进的算法相媲美,例如语音识别或混沌时间序列预测等任务,但这些通常受到通常采用的离线训练方法的限制。在这里,我们研究了在线学习方法,方法是使用简单的梯度下降算法训练光电储层计算机,该算法在现场可编程门阵列芯片上进行编程。我们的系统已应用于无线通信领域,这是一个快速增长的领域,对快速模拟设备以均衡非线性失真通道的需求日益增长。我们报告的错误率比此任务以前的实现低两个数量级。我们证明了我们的系统通过在漂移和切换信道上进行测试并获得良好的性能,特别适合于现实的信道均衡。

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