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Execution Monitoring with Quantitative Temporal Bayesian Networks

机译:使用定量时间贝叶斯网络执行监控

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The goal of execution monitoring is to determine whether a system or person is following a plan appropriately. Monitoring information may be uncertain, and the plan being monitored may have complex temporal constraints. We develop a new framework for reasoning under uncertainty with quantitative temporal constraints ― Quantitative Temporal Bayesian Networks ― and we discuss its application to plan-execution monitoring. QTBNs extend the major previous approaches to temporal reasoning under uncertainty: Time Nets (Kanazawa 1991), Dynamic Bayesian Networks and Dynamic Object Oriented Bayesian Networks (Friedman, Koller, & Pfeffer 1998). We argue that Time Nets can model quantitative temporal relationships but cannot easily model the changing values of fluents, while DBNs and DOOBNs naturally model fluents, but not quantitative temporal relationships. Both capabilities are required for execution monitoring, and are supported by QTBNs.
机译:执行监控的目标是确定系统或人是否正在适当地遵循计划。监视信息可能不确定,所监视的计划可能具有复杂的时间约束。我们在具有定量时间约束的不确定性下,开发了一种推理的新框架 - 定量颞率贝叶斯网络 - 我们讨论其在计划执行监控的应用。 QTBNS在不确定性下将先前的主要推理方法延长:时间网(Kanazawa 1991),动态贝叶斯网络和动态对象导向贝叶斯网络(弗里德曼,Koller,&Pfeffer 1998)。我们认为时间网可以模拟量化的时间关系,但不能轻易模拟流畅的变化价值,而DBNS和Doobns自然的流利,但不是量化的时间关系。执行监控需要两种功能,并由QTBNS支持。

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