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A Structural Time Series Approach to Modeling Dynamic Trends in Power System Data

机译:电力系统数据中动态趋势建模的结构时间序列方法

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Structural time series models provide a natural framework for modeling time-varying trends in measured data. In this paper, a statistical framework for analyzing and estimating time-varying trends in measured data is developed. In this model, temporal patterns in measured data are modeled within a stochastic state space setting. Estimates of the timevarying parameters are then obtained using an optimal estimation method based on Kalman filters and associated smoothers. Both, synthetic and observational data are used to assess the predictive capability of the model. Results are compared to other detrending techniques in order to assess the potential of the methodology.
机译:结构时间序列模型提供了一种用于在测量数据中建模时变趋势的自然框架。在本文中,开发了一种用于分析和估算测量数据中的时变趋势的统计框架。在该模型中,测量数据中的时间模式在随机状态空间设置内建模。然后使用基于Kalman滤波器和相关的SmoOthers获得的最佳估计方法获得时变参数的估计。综合和观察数据都用于评估模型的预测能力。结果与其他崩解技术进行比较,以评估方法的潜力。

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