Design of Cloud Based Robots Using Big Data Analytics and Neuromorphic Computing

A. Satyanarayana, Janusz Kusyk, Yu-Wen Chen
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引用次数: 1

Abstract

Understanding the brain is perhaps one of the greatest challenges facing twenty-first century science. While a traditional computer excels in precision and unbiased logic, its abilities to interact socially lags behind those of biological neural systems. Recent technologies, such as neuromorphic engineering, cloud infrastructure, and big data analytics, have emerged that can narrow the gap between traditional robots and human intelligence. Neuromorphic robotics mimicking brain functions can contribute in developing intelligent machines capable of learning and making autonomous decisions. Cloud-based robotics take advantage of remote resources for parallel computation and sharing large amounts of information while benefiting from analysis of massive sensor data from robots. In this paper, we survey recent advances in neuromorphic computing, cloud-based robotics, and big data analytics and list the most important challenges faced by robot architects. We also propose a novel dual system architecture for robots where they have a brain centered cloud with access to big data analytics.
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基于大数据分析和神经形态计算的云机器人设计
了解大脑可能是21世纪科学面临的最大挑战之一。虽然传统计算机在精度和无偏逻辑方面表现出色,但其社交互动能力落后于生物神经系统。最近出现的技术,如神经形态工程、云基础设施和大数据分析,可以缩小传统机器人和人类智能之间的差距。模仿大脑功能的神经形态机器人有助于开发能够学习和自主决策的智能机器。基于云的机器人利用远程资源进行并行计算和共享大量信息,同时受益于对来自机器人的大量传感器数据的分析。在本文中,我们概述了神经形态计算、基于云的机器人和大数据分析的最新进展,并列出了机器人架构师面临的最重要挑战。我们还为机器人提出了一种新的双系统架构,其中机器人有一个以大脑为中心的云,可以访问大数据分析。
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