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Dynamic Bayesian Collective Awareness Models for a Network of Ego-Things

机译:动态贝叶斯集体对自我网络网络的集体意识模型

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摘要

A novel approach is proposed for multimodal collective awareness (CA) of multiple networked intelligent agents. Each agent is here considered as an Internet-of-Things (IoT) node equipped with machine learning capabilities; CA aims to provide the network with updated causal knowledge of the state of execution of actions of each node performing a joint task, with particular attention to anomalies that can arise. Data-driven dynamic Bayesian models learned from multisensory data recorded during the normal realization of a joint task (agent network experience) are used for distributed state estimation of agents and detection of abnormalities. A set of switching dynamic Bayesian network (DBN) models collectively learned in a training phase, each related to particular sensorial modality, is used to allow each agent in the network to perform synchronous estimation of possible abnormalities occurring when a new task of the same type is jointly performed. Collective DBN (CDBN) learning is performed by unsupervised clustering of generalized errors (GEs) obtained from a starting generalized model. A growing neural gas (GNG) algorithm is used as a basis to learn the discrete switching variables at the semantic level. Conditional probabilities linking nodes in the CDBN models are estimated using obtained clusters. CDBN models are associated with a Bayesian inference method, namely, distributed Markov jump particle filter (D-MJPF), employed for joint state estimation and abnormality detection. The effects of networking protocols and of communications in the estimation of state and abnormalities are analyzed. Performance is evaluated by using a small network of two autonomous vehicles performing joint navigation tasks in a controlled environment. In the proposed method, first the sharing of observations is considered in ideal condition, and then the effects of a wireless communication channel have been analyzed for the collective abnormality estimation of the agents. Rician wireless channel and the usage of two protocols (i.e., IEEE 802.11p and IEEE 802.15.4) along with different channel conditions are considered as well.
机译:提出了一种新的多模式集体意识(CA)的多模式智能代理人的方法。每个代理商都被认为是配备机器学习能力的内部内容(物联网)节点; CA旨在向网络提供更新的因果关系,这些因果关系对执行联合任务的每个节点的行动状态,特别注意可能出现的异常。从联合任务(代理网络经验)正常实现期间记录的多师科数据学习的数据驱动动态贝叶斯模型用于代理的分布式状态估计和异常检测。一组切换动态贝叶斯网络(DBN)模型在训练阶段中统称,每个与特定感官模态相关的,用于允许网络中的每个代理在相同类型的新任务时执行可能的异常发生的同步估计是联合进行的。通过从起动广义模型获得的广义误差(GES)的无监督群集来执行集体DBN(CDBN)学习。越来越多的神经气体(GNG)算法用作学习语义级别的离散切换变量的基础。使用获得的群集估计CDBN模型中链接节点的条件概率。 CDBN模型与贝叶斯推理方法相关联,即分布式Markov跳粒过滤器(D-MJPF),用于联合状态估计和异常检测。分析了网络协议和通信在估计状态和异常中的影响。通过使用在受控环境中执行联合导航任务的两个自动车辆的小网络来评估性能。在所提出的方法中,首先在理想状态考虑观察的共享,然后已经分析了无线通信信道的效果用于代理的集体异常估计。瑞典无线信道以及两种协议的用法(即,IEEE 802.11p和IEEE 802.15.4)也是如同不同的信道条件。

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