忆阻器交叉栅结构中的认知域本体

C. Yakopcic, Nayim Rahman, Tanvir Atahary, T. Taha, Scott Douglass
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引用次数: 7

摘要

认知代理通常用于自主系统中的自动决策。这些系统与环境实时交互,通常受到严重的功率限制。因此,非常需要在低功耗平台上运行实时代理。本文研究了如何在具有高度并行指令执行能力的忆阻交叉电路中执行认知代理的某些组件。所研究的主体是认知增强复杂事件处理(CECEP)架构。这是一个自主决策支持工具,可以像人类一样进行推理,并增强基于代理的决策。它在很多领域都有应用,包括自治系统、运筹学、智能分析和数据挖掘。CECEP最耗时和最关键的组成部分之一是从称为认知领域本体(CDO)的存储库中挖掘知识。我们展示了cdo可以使用两种不同的方法使用忆阻交叉棒来实现。第一种是存储在高密度忆阻器匹配电路中的查找表方法。第二种是多层感知器的实现,使用基于非原位记忆电阻的神经形态系统。在每种情况下,示例cdo都成功实现了。
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Cognitive domain ontologies in a memristor crossbar architecture
Cognitive agents are typically utilized in autonomous systems for automated decision making. These systems interact at real time with their environment and are generally heavily power constrained. Thus, there is a strong need for a real time agent running on a low power platform. This paper examines how some of the components of a cognitive agent can be executed in memristor crossbar circuits capable of highly parallel instruction execution. The agent examined is the Cognitively Enhanced Complex Event Processing (CECEP) architecture. This is an autonomous decision support tool that reasons like humans and enables enhanced agent-based decision-making. It has applications in a large variety of domains including autonomous systems, operations research, intelligence analysis, and data mining. One of the most time consuming and key components of CECEP is the mining of knowledge from a repository described as a Cognitive Domain Ontology (CDO). We show that CDOs can be implemented using memristor crossbars using two different approaches. The first is a lookup table approach that is stored in a high density memristor matching circuit. The second in a multilayer perceptron implementation that uses an ex-situ memristor based neuromorphic system. In each case, the example CDOs are implemented successfully.
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