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Using stochastic models to diagnose and predict complex system problems

机译:使用随机模型诊断和预测复杂的系统问题

摘要

A plurality of stochastic models is built that predict the probabilities of state transitions for components in a complex system. The models are trained using output observations from the system at runtime. The overall state and health of the system can be determined at runtime by analyzing the distribution of current component states among the possible states. Subsequent to a low level component failure, the state transition probability stochastic model for the failed component can be analyzed by uncovering the previous states at N time intervals prior to the failure. The resulting state transition path for the component can be analyzed for the causes of the failure. Additionally, component failures resulting from the failure, or worsening state transition, in other components can be diagnosed by uncovering the previous states at the N times prior to the failure for multiple components in the system and then analyzing the state transition paths for correlations to the failed component. Additionally, transitions to worsening states can be predicted using an action matrix. The action matrix is created beforehand using state information and transition probabilities derived from a component's stochastic model. The action matrix is populated probabilities of state transitions at a current state for given actions. At runtime, when an action is requested of a component, the probability of the component transitioning to a worsening state by performing the action can be assessed from the action matrix by using the current state of the component (available from the stochastic model).
机译:建立了多个随机模型,这些模型预测了复杂系统中组件的状态转换概率。在运行时使用系统的输出观测值来训练模型。通过分析当前组件状态在可能状态之间的分布,可以在运行时确定系统的总体状态和运行状况。在发生低级别组件故障之后,可以通过在发生故障之前的N个时间间隔内发现先前的状态,来分析故障组件的状态转换概率随机模型。可以分析组件的状态转换路径以查找故障原因。此外,可以通过在系统中多个组件发生故障之前的N次之前发现以前的状态,然后分析状态转换路径以了解与其他组件的相关性,来诊断由其他组件中的故障或状态转变恶化导致的组件故障。失败的组件。另外,可以使用作用矩阵预测向恶化状态的转变。预先使用状态信息和从组件的随机模型得出的转移概率来创建操作矩阵。动作矩阵是给定动作在当前状态下状态转换的概率。在运行时,当请求某个组件采取行动时,可以通过使用组件的当前状态(可从随机模型获得)从行动矩阵中评估通过执行该动作而使组件转变为恶化状态的可能性。

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