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RDE with Forgetting: An Approximate Solution for Large Values of k with an Application to Fault Detection Problems

机译:带遗忘的RDE:k的大值的近似解及其在故障检测中的应用

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Recursive density estimation is a very powerful metric, based on a kernel function, used to detect outliers in a n-dimensional data set. Since it is calculated in a recursive manner, it becomes a very interesting solution for on-line and real-time applications. However, in its original formulation, the equation defined for density calculation is considerably conservative, which may not be suitable for applications that require fast response to dynamic changes in the process. For on-line applications, the value of k, which represents the index of the data sample, may increase indefinitely and, once that the mean update equation directly depends on the number of samples read so far, the influence of a new data sample may be nearly insignificant if the value of k is high. This characteristic creates, in practice, a stationary scenario that may not be adequate for fault detect applications, for example. In order to overcome this problem, we propose in this paper a new approach to RDE, holding its recursive characteristics. This new approach, called RDE with forgetting, introduces the concept of moving mean and forgetting factor, detailed in the next sections. The proposal is tested and validated on a very well known real data fault detection benchmark, however can be generalized to other problems.
机译:递归密度估计是基于内核函数的非常强大的指标,用于检测n维数据集中的离群值。由于它是以递归的方式计算的,因此对于在线和实时应用程序来说,这是一个非常有趣的解决方案。但是,在其原始公式中,为密度计算定义的方程式相当保守,可能不适用于需要快速响应过程动态变化的应用。对于在线应用,代表数据样本索引的k值可能会无限期增加,并且一旦均值更新方程式直接取决于到目前为止读取的样本数,则新数据样本的影响可能会增加。如果k的值很高,则几乎无关紧要。实际上,此特性会创建一个固定的场景,例如对于故障检测应用可能不足。为了克服这个问题,我们在本文中提出了一种新的RDE方法,它具有递归特性。这种称为遗忘的RDE的新方法引入了移动均值和遗忘因子的概念,将在下一部分中详细介绍。该提案已在非常知名的真实数据故障检测基准上进行了测试和验证,但是可以推广到其他问题。

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