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Count-based change point detection via multi-output log-Gaussian Cox processes

机译:通过多输出日志高斯Cox流程计算基于计数的变化点检测

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摘要

The ability to detect change points is a core skill in system monitoring and prognostics. When data take the form of frequencies, i.e., count data, counting processes such as Poisson processes are extensively used for modeling. However, many existing count-based approaches rely on parametric models or deterministic frameworks, failing to consider complex system uncertainty based on temporal and environmental contexts. Another challenge is analyzing interrelated events simultaneously to detect change points that can be missed by independent analyses. This article presents a Multi-Output Log-Gaussian Cox Process with a Cross-Spectral Mixture kernel (MOLGCP-CSM) as a count-based change point detection algorithm. The proposed model employs MOLGCP to flexibly model time-varying intensities of events over multiple channels with the CSM kernel that can capture either negative or positive correlations, as well as phase differences between stochastic processes. During the monitoring, the proposed approach measures the level of change in real-time by computing a weighted likelihood of observation with respect to the constructed model and determines whether a target system experiences a change point by conducting a statistical test based on extreme value theory. Our method is validated using three types of datasets: synthetic, accelerometer vibration, and gas regulator data.
机译:检测变化点的能力是系统监测和预后的核心技能。当数据采用频率的形式时,即计数数据,诸如Poisson过程的计数过程广泛用于建模。然而,许多现有的基于计数的方法依赖于参数模型或确定性框架,不能根据时间和环境上下文考虑复杂的系统不确定性。另一个挑战是同时分析相互关联的事件,以检测独立分析可以错过的变化点。本文介绍了具有跨谱混合核(MOLGCP-CSM)的多输出Log-Gaussian Cox过程,作为基于计数的变化点检测算法。所提出的模型采用Molgcp与多个信道相比,使用CSM内核灵活地模型的时变强度,可以捕获负面或正相关,以及随机过程之间的相位差。在监测期间,所提出的方法通过计算关于构建模型的观察的加权可能性来测量实时变化水平,并确定目标系统是否通过基于极值理论进行统计测试来实现变化点。我们的方法是使用三种类型的数据集进行验证:合成,加速度计振动和气体调节器数据。

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