基于时间序列趋势线和曲线拟合的短期电力需求预测方法

I. B. Anichebe, A. Ekwue, Emeka S. Obe
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引用次数: 0

摘要

电力负荷需求预测及其准确性是电力系统中公用事业规划、维护、调度、运行和控制的一个重要过程。历史数据在需求预测过程中也非常重要。本研究使用趋势线方法(包括线性趋势线、移动平均、指数平滑、二次趋势和对数趋势)对每周电力需求预测模型进行了研究。计算和分析使用 Microsoft Excel 进行。使用已知的性能评估指标(如平均绝对百分比误差 (MAPE) 和均方根误差 (RMSE))对结果进行比较。此外,还引入了立方根平均误差(CRME)作为性能评估指标。结果发现,混合(二次-对数)方法优于其他单独的趋势线方法。该方法产生的 MAPE、RMSE 和 CRME 值最低,分别为 14.41%、14.68% 和 14.65%,这表明混合模型在用于预测时比单独运行的单个模型表现更好。
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Time-series trendline and curve-fitting-based approach to short-term electricity demand forecasting
Electricity load demand forecasting and its accuracy is an important process for utility planning, maintenance, scheduling, operation, and control in power systems. Historical data are also very vital in demand forecasting processes. This study examined weekly electricity demand forecasting model using trendline methods which include linear trendline, moving average, exponential smoothing, quadratic, and logarithmic trends. The calculations and analysis were carried out using Microsoft Excel. The results were compared using known performance evaluation metrics such as mean absolute percentage error (MAPE) and root mean square error (RMSE). Cubic root mean error (CRME) was introduced as a performance evaluation metric. The hybrid (quadratic-logarithmic) method was found to outperform the other individual trendline methods. This method produced the lowest value of MAPE, RMSE, and CRME representing 14.41%, 14.68%, and 14.65% respectively which indicated that hybrid model performs better than individual models operating separately when used in forecasting.
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