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Short-term electricity load forecasting with Time Series Analysis

机译:时间序列分析的短期电力负荷预测

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Load forecasting plays a fundamental role throughout all segments of system health management for utility companies, including, but not limited to, financial planning, rate design, power system operation, and electrical grid maintenance. Recently, due to the deployment of Smart Grid technologies, utility companies' ability to create accurate forecasts is of even greater importance, especially in consideration of demand response programs, charging of plug-in electric vehicles, and use of distributed energy resources. In this paper, several time series Autoregressive Integrated Moving Average (ARIMA) and Seasonal Autoregressive Integrated Moving Average (SARIMA) models will be introduced for the purpose of generating forecasts of short-term load demand, at an hourly interval, based on data made available by the Electric Reliability Council of Texas (ERCOT). The case study which expands on the short-term data analyzed in [1] includes over 100,000 data points representing electricity load in Texas recorded over the past 14 years.
机译:负载预测在公用事业公司的所有系统健康管理领域发挥了重要作用,包括但不限于财务规划,利率设计,电力系统操作和电网维护。最近,由于智能电网技术的部署,公用事业公司创造准确预测的能力甚至更加重要,特别是考虑到需求响应计划,采用插入电动汽车的充电以及分布式能源的使用。在本文中,将根据可用的数据以每小时间隔产生短期负荷需求的预测,介绍几次序列自回归综合移动平均(Arima)和季节性自回归综合移动平均线(Sarima)模型。由德克萨斯州电力可靠性委员会(ERCOT)。在[1]中分析的短期数据扩展的案例研究包括代表过去14年来录制的德克萨斯州的电力负荷的100,000多个数据点。

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