弹性自治系统的多层群体智能模型

J. Clifford, K. Garfield, Massood Towhidnejad, J. Neighbors, M. Miller, E. Verenich, G. Staskevich
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引用次数: 1

摘要

安柏瑞德航空大学(ERAU)正与空军研究实验室(AFRL)合作开发一种分布式多层自主无人机规划和控制技术,用于在智能自适应对手密集的反介入区域拒拒(A2/AD)环境中收集情报。这些弹性自主系统能够在敌对环境中导航,同时执行情报、监视和侦察(ISR)任务,并最大限度地减少资产损失。我们的方法结合了人工生命的概念,其高级架构分为三个受生物学启发的层:网络物理层、反应层和审议层。每一层对代理的行为都有动态的影响。层内的算法作用于过滤后的现实视图,抽象在下一层。每一层从下一层获取输入,为上一层提供输出,并为下一层提供方向。低层的快速反应控制系统确保稳定的环境支持高层的认知功能。网络物理层代表个人的中枢神经系统,由无法改变的车辆元素组成,如传感器、动力装置和物理配置。在反应层,系统使用人工生命范式,其中每个代理使用一组关于欲望和需求的简单规则与环境交互。信息通过信息传递显式传达,通过对行为的观察和识别隐式传达。在协商层,个体代理向外看群体,考虑有效的资源管理和与其他代理的合作。所有层的策略都是使用机器学习技术开发的,例如遗传算法(GA)或应用于任务之前进行的系统训练的神经网络。
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Multi-layer model of swarm intelligence for resilient autonomous systems
Embry-Riddle Aeronautical University (ERAU) is working with the Air Force Research Lab (AFRL) to develop a distributed multi-layer autonomous UAS planning and control technology for gathering intelligence in Anti-Access Area Denial (A2/AD) environments populated by intelligent adaptive adversaries. These resilient autonomous systems are able to navigate through hostile environments while performing Intelligence, Surveillance, and Reconnaissance (ISR) tasks, and minimizing the loss of assets. Our approach incorporates artificial life concepts, with a high-level architecture divided into three biologically inspired layers: cyber-physical, reactive, and deliberative. Each layer has a dynamic level of influence over the behavior of the agent. Algorithms within the layers act on a filtered view of reality, abstracted in the layer immediately below. Each layer takes input from the layer below, provides output to the layer above, and provides direction to the layer below. Fast-reactive control systems in lower layers ensure a stable environment supporting cognitive function on higher layers. The cyber-physical layer represents the central nervous system of the individual, consisting of elements of the vehicle that cannot be changed such as sensors, power plant, and physical configuration. On the reactive layer, the system uses an artificial life paradigm, where each agent interacts with the environment using a set of simple rules regarding wants and needs. Information is communicated explicitly via message passing and implicitly via observation and recognition of behavior. In the deliberative layer, individual agents look outward to the group, deliberating on efficient resource management and cooperation with other agents. Strategies at all layers are developed using machine learning techniques such as Genetic Algorithm (GA) or NN applied to system training that takes place prior to the mission.
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