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Diagnosis of Plan Execution and the Executing Agent

机译:计划执行和执行代理的诊断

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摘要

We adapt the Model-Based Diagnosis framework to perform (agent-based) plan diagnosis. In plan diagnosis, the system to be diagnosed is a plan, consisting of a partially ordered set of instances of actions, together with its executing agent. The execution of a plan can be monitored by making partial observations of the results of actions. Like in standard model-based diagnosis, observed deviations from the expected outcomes are explained qualifying some action instances that occur in the plan as behaving abnormally. Unlike in standard model-based diagnosis, however, in plan diagnosis we cannot assume that actions fail independently. We focus on two sources of dependencies between failures: dependencies that arise as a result of a malfunction of the executing agent, and dependencies that arise because of dependencies between action instances occurring in a plan. Therefore, we introduce causal rules that relate health states of the agent and health states of actions to abnormalities of other action instances. These rules enable us to introduce causal set and causal effect diagnoses that use the underlying causes of plan failing to explain deviations and to predict future anomalies in the execution of actions.
机译:我们调整基于模型的诊断框架以执行(基于代理)计划诊断。在计划诊断中,要诊断的系统是一个计划,由一组部分排序的操作实例及其执行代理组成。可以通过对行动结果进行部分观察来监视计划的执行。像在基于标准模型的诊断中一样,解释了观察到的与预期结果的偏差,从而使计划中发生的某些操作实例表现为异常。但是,与基于标准模型的诊断不同的是,在计划诊断中,我们不能假设操作会独立失败。我们重点关注故障之间的两种依赖关系:一种是由于执行代理程序故障导致的依赖关系,另一种是由于计划中发生的动作实例之间的依赖关系而导致的依赖关系。因此,我们引入了因果规则,将代理的健康状态和操作的健康状态与其他操作实例的异常相关联。这些规则使我们能够引入因果集合和因果效应诊断,这些诊断利用计划的根本原因无法解释偏差并无法预测动作执行中的未来异常情况。

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