Lymph node inspired computing: immune system inspired architectures for human-engineered complex systems

S. Banerjee
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Abstract

The immune system is a distributed decentralized system that functions without any centralized control. The immune system has millions of cells that function somewhat independently and can detect and respond to pathogens with considerable speed and efficiency. Lymph nodes are physical anatomical structures that allow the immune system to rapidly detect pathogens and mobilize cells to respond to it. Lymph nodes function as: 1) information processing centers, and 2) a distributed detection and response network. We introduce biologically inspired computing that uses lymph nodes as inspiration. We outline applications to diverse domains like mobile robots, distributed computing clusters, peer-to-peer networks and online social networks. We argue that lymph node inspired computing systems provide powerful metaphors for distributed computing and complement existing artificial immune systems. We view our work as a first step towards holistic simulations of the immune system that would capture all the complexities and the power of a complex adaptive system like the immune system. Ultimately this would lead to holistic immune system inspired computing that captures all the complexities and power of the immune system in human-engineered complex systems.
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淋巴结启发计算:人类工程复杂系统的免疫系统启发架构
免疫系统是一个分散的系统,它的功能没有任何集中控制。免疫系统有数百万个细胞,它们在某种程度上独立运作,能够以相当快的速度和效率检测病原体并对其作出反应。淋巴结是一种物理解剖结构,它允许免疫系统快速检测病原体并动员细胞对其作出反应。淋巴结的功能是:1)信息处理中心;2)分布式检测和响应网络。我们引入以淋巴结为灵感的生物启发计算。我们概述了不同领域的应用,如移动机器人,分布式计算集群,点对点网络和在线社交网络。我们认为淋巴结启发的计算系统为分布式计算提供了强大的隐喻,并补充了现有的人工免疫系统。我们认为我们的工作是朝着免疫系统的整体模拟迈出的第一步,它将捕捉到像免疫系统这样的复杂适应系统的所有复杂性和力量。最终,这将导致整体免疫系统启发计算,捕捉人类工程复杂系统中免疫系统的所有复杂性和力量。
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