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Hierarchical modeling of systems with similar components: A framework for adaptive monitoring and control

机译:具有类似组件的系统的层次建模:自适应监视和控制的框架

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System management includes the selection of maintenance actions depending on the available observations: when a system is made up by components known to be similar, data collected on one is also relevant for the management of others. This is typically the case of wind farms, which are made up by similar turbines. Optimal management of wind farms is an important task due to high cost of turbines' operation and maintenance: in this context, we recently proposed a method for planning and learning at system-level, called PLUS, built upon the Partially Observable Markov Decision Process (POMDP) framework, which treats transition and emission probabilities as random variables, and is therefore suitable for including model uncertainty. PLUS models the components as independent or identical. In this paper, we extend that formulation, allowing for a weaker similarity among components. The proposed approach, called Multiple Uncertain POMDP (MU-POMDP), models the components as POMDPs, and assumes the corresponding parameters as dependent random variables. Through this framework, we can calibrate specific degradation and emission models for each component while, at the same time, process observations at system-level. We compare the performance of the proposed MU-POMDP with PLUS, and discuss its potential and computational complexity. (C) 2016 Elsevier Ltd. All rights reserved.
机译:系统管理包括根据可用的观察选择维护动作:当系统由已知相似的组件组成时,在一个组件上收集的数据也与其他组件的管理有关。风电场通常是这种情况,由类似的涡轮机组成。由于涡轮机的运行和维护成本高昂,风电场的优化管理是一项重要的任务:在这种情况下,我们最近在部分可观察的马尔可夫决策过程(Mus部分决策过程)的基础上提出了一种在系统级进行规划和学习的方法POMDP)框架,该框架将过渡和排放概率视为随机变量,因此适合于包含模型不确定性。 PLUS将组件建模为独立或相同的。在本文中,我们扩展了该提法,从而使各个组件之间的相似性较弱。所提出的方法称为多重不确定POMDP(MU-POMDP),将组件建模为POMDP,并假设相应的参数为因变量。通过此框架,我们可以为每个组件校准特定的降解和排放模型,同时在系统级处理观察值。我们将所建议的MU-POMDP与PLUS的性能进行比较,并讨论其潜力和计算复杂性。 (C)2016 Elsevier Ltd.保留所有权利。

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