论文标题

提醒健忘的有机神经形态设备网络

Reminding Forgetful Organic Neuromorphic Device Networks

论文作者

Felder, Daniel, Muche, Katerina, Linkhorst, John, Wessling, Matthias

论文摘要

有机神经形态设备网络可以加速神经网络算法,并直接与微流体系统或活组织进行集成。基于生物兼容的导电聚合物PEDOT的拟议设备:PSS显示出很高的开关速度和低能需求。但是,作为电化学系统,它们很容易通过寄生电化学反应进行自我分离。因此,随着时间的流逝,网络的突触忘记了训练有素的电导状态。这项工作集成了单个设备高分辨率的电荷传输模型,以模拟神经形态设备网络并分析自我解散对网络性能的影响。单层九像素图像分类网络的仿真揭示了自我释放对训练效率的显着影响。而且,即使网络的重量在自我隔离期间显着漂移,但其预测在十多个小时内仍然是100 \%准确的。另一方面,显示圆函数近似的多层网络显示,最终的于点误差为0.4,可以在二十分钟内显着降解20分钟。我们建议通过定期提醒网络基于突触的当前状态,上次提醒以来的时间和权重漂移之间的地图来应对效果。我们表明,通过经过验证的模拟获得的地图的这一方法也可以将有效损失降低到0.1以下,即使使用最差的假设。最后,尽管该网络的培训受到自我隔离的影响,但仍获得了良好的分类。电化学有机神经形态设备尚未集成到较大的设备网络中。这项工作预测了它们在非理想条件下的行为,减轻了寄生自我释放的最坏情况,并为实施有机神经形态硬件的快速有效神经网络开辟了道路。

Organic neuromorphic device networks can accelerate neural network algorithms and directly integrate with microfluidic systems or living tissues. Proposed devices based on the bio-compatible conductive polymer PEDOT:PSS have shown high switching speeds and low energy demand. However, as electrochemical systems, they are prone to self-discharge through parasitic electrochemical reactions. Therefore, the network's synapses forget their trained conductance states over time. This work integrates single-device high-resolution charge transport models to simulate neuromorphic device networks and analyze the impact of self-discharge on network performance. Simulation of a single-layer nine-pixel image classification network reveals no significant impact of self-discharge on training efficiency. And, even though the network's weights drift significantly during self-discharge, its predictions remain 100\% accurate for over ten hours. On the other hand, a multi-layer network for the approximation of the circle function is shown to degrade significantly over twenty minutes with a final mean-squared-error loss of 0.4. We propose to counter the effect by periodically reminding the network based on a map between a synapse's current state, the time since the last reminder, and the weight drift. We show that this method with a map obtained through validated simulations can reduce the effective loss to below 0.1 even with worst-case assumptions. Finally, while the training of this network is affected by self-discharge, a good classification is still obtained. Electrochemical organic neuromorphic devices have not been integrated into larger device networks. This work predicts their behavior under nonideal conditions, mitigates the worst-case effects of parasitic self-discharge, and opens the path toward implementing fast and efficient neural networks on organic neuromorphic hardware.

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