论文标题
连接自动驾驶汽车中异常检测的集体意识
Collective Awareness for Abnormality Detection in Connected Autonomous Vehicles
论文作者
论文摘要
在这些时期,连接和自动驾驶汽车的进步要求工具可用,以使代理人能够意识到并预测自己的状态和上下文动态。本文提出了一种新颖的方法,可以在智能代理网络中发展出最初的集体意识水平。考虑了特定的集体自我意识功能,即对网络中任何代理周围环境中存在的异常情况的中心检测。此外,代理人应该能够分析这种异常如何影响每个代理的未来行动。数据驱动的动态贝叶斯网络(DBN)模型从在实现任务(代理网络体验)期间记录的感官数据的时间序列中汲取的模型在这里用于异常检测和预测。一组与代理相关的DBN用于允许网络中的代理人同步意识到在学习DBN的新实例上使用可用模型时,会出现每个可能的异常。生长的神经气体(GNG)算法用于学习连接DBN模型中节点的节点变量和条件概率; Markov跳跃粒子滤波器(MJPF)使用学习的DBN作为滤波器参数,用于每个代理中的状态估计和异常检测。讨论了性能指标以评估算法的可靠性和准确性。该影响还通过网络使用的通信通道来评估,以通过网络的每个代理以分布式方式共享感知的数据。 IEEE 802.11p协议标准已被考虑用于代理之间的通信。实际数据集也是由在受控环境中执行不同任务的自动驾驶汽车购买的。
The advancements in connected and autonomous vehicles in these times demand the availability of tools providing the agents with the capability to be aware and predict their own states and context dynamics. This article presents a novel approach to develop an initial level of collective awareness in a network of intelligent agents. A specific collective self awareness functionality is considered, namely, agent centered detection of abnormal situations present in the environment around any agent in the network. Moreover, the agent should be capable of analyzing how such abnormalities can influence the future actions of each agent. Data driven dynamic Bayesian network (DBN) models learned from time series of sensory data recorded during the realization of tasks (agent network experiences) are here used for abnormality detection and prediction. A set of DBNs, each related to an agent, is used to allow the agents in the network to each synchronously aware possible abnormalities occurring when available models are used on a new instance of the task for which DBNs have been learned. A growing neural gas (GNG) algorithm is used to learn the node variables and conditional probabilities linking nodes in the DBN models; a Markov jump particle filter (MJPF) is employed for state estimation and abnormality detection in each agent using learned DBNs as filter parameters. Performance metrics are discussed to asses the algorithms reliability and accuracy. The impact is also evaluated by the communication channel used by the network to share the data sensed in a distributed way by each agent of the network. The IEEE 802.11p protocol standard has been considered for communication among agents. Real data sets are also used acquired by autonomous vehicles performing different tasks in a controlled environment.