Self‐Programming Synaptic Resistor Circuit for Intelligent Systems

Christopher M. Shaffer, Atharva Deo, Andrew Tudor, Rahul Shenoy, Cameron D. Danesh, Dhruva Nathan, Lawren L. Gamble, D. Inman, Yong Chen
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引用次数: 3

Abstract

Unlike artificial intelligent systems based on computers which have to be programmed for specific tasks, the human brain “self‐programs” in real time to create new tactics and adapt to arbitrary environments. Computers embedded in artificial intelligent systems execute arbitrary signal‐processing algorithms to outperform humans at specific tasks, but without the real‐time self‐programming functionality, they are preprogrammed by humans, fail in unpredictable environments beyond their preprogrammed domains, and lack general intelligence in arbitrary environments. Herein, a synaptic resistor circuit that self‐programs in arbitrary and unpredictable environments in real time is demonstrated. By integrating the synaptic signal processing, memory, and correlative learning functions in each synaptic resistor, the synaptic resistor circuit processes signals and self‐programs the circuit concurrently in real time with an energy efficiency about six orders higher than those of computers. In comparison with humans and a preprogrammed computer, the self‐programming synaptic resistor circuit dynamically modifies its algorithm to control a morphing wing in an unpredictable aerodynamic environment to improve its performance function with superior self‐programming speeds and accuracy. The synaptic resistor circuits potentially circumvent the fundamental limitations of computers, leading to a new intelligent platform with real‐time self‐programming functionality for artificial general intelligence.
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智能系统的自编程突触电阻电路
与基于计算机的人工智能系统不同,人工智能系统必须为特定的任务编程,而人脑可以实时“自我编程”,以创造新的策略并适应任意的环境。嵌入人工智能系统的计算机执行任意信号处理算法,以在特定任务中超越人类,但没有实时自我编程功能,它们是由人类预编程的,在超出预编程域的不可预测环境中失败,并且在任意环境中缺乏通用智能。本文演示了一种在任意和不可预测的环境中实时自编程的突触电阻电路。通过在每个突触电阻器中集成突触信号处理、记忆和相关学习功能,突触电阻器电路实时处理信号并同时对电路进行自编程,其能量效率比计算机高约6个数量级。与人类和预编程计算机相比,自编程突触电阻电路动态修改其算法,以在不可预测的空气动力学环境中控制变形机翼,从而以优越的自编程速度和精度提高其性能功能。突触电阻电路有可能绕过计算机的基本限制,为人工通用智能提供一个具有实时自编程功能的新智能平台。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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