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Organic materials and devices for brain-inspired computing: From artificial implementation to biophysical realism

机译:脑激发计算的有机材料和装置:从人工实施到生物物理的现实主义

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摘要

Many of the current artificial intelligence (AI) applications that are rapidly becoming indispensable in our society rely on software-based artificial neural networks or deep learning algorithms that are powerful, but energy-inefficient. The brain in comparison is highly efficient at similar classification and pattern finding tasks. Neuromorphic engineering attempts to take advantage of the efficiency of the brain by mimicking several crucial concepts to efficiently emulate AI tasks. Organic electronic materials have been particularly successful in mimicking both the basic functionality of the brain, including important spiking phenomena, but also in low-power operation of hardware-implemented artificial neural networks as well as interfacing with physiological environments due to their biocompatible nature. This article provides an overview of the basic functional operation of the brain and its artificial counterparts, with a particular focus on organic materials and devices. We highlight efforts to mimic brain functions such as spatiotemporal processing, homeostasis, and functional connectivity and emphasize current challenges for efficient neuromorphic computing applications. Finally, we present our view of future directions in this exciting and rapidly growing field of organic neuromorphic devices.
机译:许多目前的人工智能(AI)应用程序在我们的社会中迅速变得不可或缺地依赖于基于软件的人工神经网络或强大的深度学习算法,但能量效率低。比较中的大脑在类似的分类和模式寻找任务中具有高效。神经形态的工程通过模仿几个关键概念来利用大脑的效率来有效地模仿AI任务。有机电子材料在模仿大脑的基本功能方面尤其成功,包括重要的尖刺现象,而且在硬件实施的人工神经网络的低功率运行中以及由于其生物相容性的性质而与生理环境接口。本文概述了大脑的基本功能操作及其人工对应物,特别专注于有机材料和装置。我们突出了模仿脑功能的努力,例如时尚加工,稳态和功能连接,并强调目前有效的神经形态计算应用的挑战。最后,我们展示了我们对未来方向的看法,在这种令人兴奋和快速增长的有机神经族设备领域。

著录项

  • 来源
    《MRS bulletin》 |2020年第8期|631-640|共10页
  • 作者单位

    Eindhoven Univ Technol Neuromorph Engn Grp Eindhoven Netherlands;

    Max Planck Inst Polymer Res Dept Mol Elect Mainz Germany;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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