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Learning behavior models of hybrid systems using wavelets for autonomous jumps detection

机译:利用小波进行自主跳跃检测的混合系统学习行为模型

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Today's hybrid technical systems, such as production facilities, evolve rapidly. Therefore the efforts and resources needed to obtain their trustworthy behavior models are significantly increased. This forms the modeling bottleneck, as the model creation mostly relies on the expensive and durable manual modeling. Behavior models are of the greatest importance in monitoring, anomaly detection, and diagnosis applications. To deal with this issue, the novel HyBUTLA algorithm was recently proposed for automated learning of behavior models from process data. Despite being the first hybrid automaton learning algorithm, it does not model the autonomous jumps (abrupt changes in process variables), and it suffers from long runtime due to the use of advanced machine learning methods. In this paper the HyBUTLA algorithm is improved to account for the autonomous jumps by introducing the splitting step based on discrete wavelet transform. This significantly improves the algorithm runtime, since high function approximation accuracy can be reached by using rather simple methods such as multiple linear regression. The benefits that splitting brings are formally proved and demonstrated in a real-world production system.
机译:当今的混合技术系统,例如生产设备,发展迅速。因此,显着增加了获得其可信行为模型所需的精力和资源。这形成了建模瓶颈,因为模型创建主要依赖于昂贵且耐用的手动建模。行为模型在监视,异常检测和诊断应用中至关重要。为了解决这个问题,最近提出了新颖的HyBUTLA算法,用于从过程数据中自动学习行为模型。尽管它是第一个混合自动机学习算法,但它无法对自主跳跃(过程变量的突然变化)进行建模,并且由于使用了先进的机器学习方法,因此运行时间长。本文通过引入基于离散小波变换的分裂步骤,对HyBUTLA算法进行了改进,以解决自主跳跃问题。这可以显着改善算法的运行时间,因为可以使用相当简单的方法(例如多元线性回归)来达到较高的函数逼近精度。拆分带来的好处已在现实世界的生产系统中得到了正式证明。

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