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Modeling of Predictable Variations in Multi-Time Instant Ambient Temperature Time Series

机译:多时刻环境温度时间序列可预测变化的建模

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This paper effectively devised a novel approach to characterize the predictable variations in a multi-time instant ambient temperature time series. A multiple linear regression model is used to capture the annual predictable variations accurately. The clues for predictable variations upon detailed analysis of multi-time instant daily time resolution ambient temperature data led to the invention of a set of theoretical relevant deterministic regressors forming a reducing order model. A detailed result analysis has established that the proposed model is a suitable candidate for multi-time instant daily time step data and can be extended for the risk assessment of system analysis that accounts for the temperature effect. Further, probabilistic forecasting using regression-based methods can easily combat the above-limited number of theoretical relevant regressors for decent interval forecasts. The proposed model's effectiveness is analyzed using historical ambient temperature records collected from three distinct places in India.
机译:本文有效地设计了一种新方法,以表征多时刻环境温度时间序列的可预测变化。使用多元线性回归模型用于精确捕获年度可预测变化。用于详细分析的多时间瞬间日常分辨率的环境温度数据的可预测变化的线索导致了一组理论相关确定性回归的发明,形成了减少阶模型。详细的结果分析已经确定,所提出的模型是用于多时间瞬间日常时间步骤数据的合适候选者,可以扩展系统分析的风险评估,该风险评估考虑温度效应。此外,使用基于回归的方法的概率预测可以容易地打击上面有限数量的理论相关回归,用于体面的间隔预测。使用从印度三个不同的地方收集的历史环境温度记录分析了拟议的模型的有效性。

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