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Analysis of solar generation and weather data in smart grid with simultaneous inference of nonlinear time series

机译:非线性时间序列同时推断的智能电网太阳能发电和天气数据分析

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摘要

Smart Grid is an important component of Smart City, where more renewable power generation and better energy management is required. Forecast on renewable power generation, from sources such as solar and wind, is crucial for better energy management. However, the current forecast methods lack a comprehensive understanding of the natural processes, and are thus limited in precise prediction. In this paper, we introduce simultaneous inference to analyze the solar generation and weather data for better predictions. We first introduce a local linear model for nonlinear time series, and present the construction of the simultaneous confidence bands (SCB) of the time-varying coefficients, which provide more information on the dynamic properties of the model. We then use the simultaneous inference for solar intensity prediction using a real trace, where the superior performance of the proposed scheme is demonstrated over existing approaches.
机译:智能电网是智能城市的重要组成部分,在智能城市中,需要更多的可再生能源发电和更好的能源管理。对来自太阳能和风能等来源的可再生能源发电的预测对于更好的能源管理至关重要。然而,当前的预测方法缺乏对自然过程的全面理解,因此在精确的预测中受到限制。在本文中,我们引入同步推理来分析太阳的发电量和天气数据,以进行更好的预测。我们首先介绍非线性时间序列的局部线性模型,然后介绍时变系数的同时置信带(SCB)的构造,该模型可提供有关模型动态特性的更多信息。然后,我们使用实际轨迹将同步推断用于太阳强度预测,其中所提出的方案的优越性能优于现有方法。

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