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An Industrial Multi Agent System for real-time distributed collaborative prognostics

机译:用于实时分布式协作预测的工业多代理系统

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Despite increasing interest, real-time prognostics (failure prediction) is still not widespread in industry due to the difficulties of existing systems to adapt to the dynamic and heterogeneous properties of real asset fleets. In order to address this, we present an Industrial Multi Agent System for real-time distributed collaborative prognostics. Our system fulfils all six core properties of Advanced Multi Agent Systems: Distribution, Flexibility, Adaptability, Scalability, Leanness, and Resilience. Experimental examples of each are provided for the case of prognostics using the C-MAPPS engine degradation data set, and data from a fleet of industrial gas turbines. Prognostics are performed using the Weibull Time To Event-Recurrent Neural Network algorithm. Collaboration is achieved by sharing information between agents in the system. We conclude that distributed collaborative prognostics is especially pertinent for systems with presence of sensor faults, limited computing capabilities or significant fleet heterogeneity.
机译:尽管人们的兴趣日益浓厚,但由于现有系统难以适应实际资产舰队的动态和异构特性,因此实时预测(故障预测)在行业中仍不广泛。为了解决这个问题,我们提出了一种用于实时分布式协作预测的工业多代理系统。我们的系统具有高级多代理系统的所有六个核心属性:分布,灵活性,适应性,可伸缩性,精益性和弹性。针对使用C-MAPPS发动机退化数据集以及工业燃气轮机机群的数据进行预测的情况,提供了每个实验示例。使用Weibull事件发生时间递归神经网络算法进行预测。通过在系统中的代理之间共享信息来实现协作。我们得出结论,对于存在传感器故障,有限的计算能力或显着的机群异构性的系统,分布式协作预测尤其重要。

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