Using POMDP-based state estimation to enhance agent system survivability

A. Cassandra, M. Nodine, S. Bondale, S. Ford, D. Wells
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引用次数: 10

Abstract

A survivable agent system depends on the incorporation of many recovery features. However, the optimal use of these recovery features requires the ability to assess the actual state of the agent system accurately at a given time. This paper describes an approach for the estimation of the state of an agent system using partially-observable Markov decision processes (POMDPs). POMDPs are dependent on a model of the agent system - components, environment, sensors, and the actuators that can correct problems. Based on this model, we define a state estimation for each component (asset) in the agent system. We model a survivable agent system as a POMDP that takes into account both environmental threats and observations from sensors. We describe the process of updating the state estimation as time passes, as sensor inputs are received, and as actuators affect changes. This state estimation process has been deployed within the Ultralog application and successfully tested using Ultralog's survivability tests on a full-scale (1000+) agent system.
利用基于pomdp的状态估计提高智能体系统的生存能力
一个可生存的代理系统依赖于许多恢复特性的结合。然而,这些恢复特性的最佳使用需要能够在给定时间准确地评估代理系统的实际状态。本文描述了一种利用部分可观察马尔可夫决策过程(pomdp)估计智能系统状态的方法。pomdp依赖于代理系统的模型——组件、环境、传感器和能够纠正问题的执行器。在此模型的基础上,我们定义了agent系统中每个组件(资产)的状态估计。我们将生存代理系统建模为考虑环境威胁和传感器观测的POMDP。我们描述了随着时间的推移,随着传感器输入的接收,随着执行器影响变化而更新状态估计的过程。该状态估计过程已部署在Ultralog应用程序中,并在一个全尺寸(1000+)代理系统上使用Ultralog的生存能力测试成功地进行了测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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