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Photonic reservoir computing and information processing with coupled semiconductor optical amplifiers

机译:耦合半导体光放大器进行光子储层计算和信息处理

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Reservoir computing is a decade old framework from the field of machine learning to use and train recurrent neural networks and it splits the network in a reservoir that does the computation and a simple readout function. This technique has been among the state-of-the-art for a broad class of classification and recognition problems such as time series prediction, speech recognition and robot control. However, so far implementations have been mainly software based, while a hardware implementation offers the promise of being low-power and fast. Despite essential differences between classical software implementation and a network of semiconductor optical amplifiers, we will show that photonic reservoirs can achieve an even better performance on a benchmark isolated digit recognition task, if the interconnection delay is optimized and the phase can be controlled. In this paper we will discuss the essential parameters needed to create an optimal photonic reservoir designed for a certain task.
机译:储层计算是机器学习领域中使用和训练递归神经网络的十年框架,它将网络拆分成一个可进行计算和简单读取功能的储层。对于大量的分类和识别问题(例如时间序列预测,语音识别和机器人控制),该技术已成为最新技术。但是,到目前为止,实现主要是基于软件的,而硬件实现则有望实现低功耗和快速。尽管经典软件实现与半导体光放大器网络之间存在本质上的差异,但我们将证明,如果互连延迟得到优化并且相位可以控制,则光子存储库在基准隔离数字识别任务上可以实现甚至更高的性能。在本文中,我们将讨论创建用于特定任务的最佳光子库所需的基本参数。

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