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Curve fitting and regression line method based seasonal short term load forecasting

机译:基于曲线拟合和回归线法的季节性短期负荷预测

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Short term load forecasting in this paper is done by considering the sensitivity of the network load to the temperature, humidity, day type parameters (THD) and previous load and also ensuring that forecasting the load with these parameters can best be done by the Regression Line Method (RLM) and Curve Fitting Method (CFM). The analysis of the load data recognizes that the load pattern is not only dependent on temperature but also dependent on humidity and day type. A new norm has been developed using the regression line concept with inclusion of special constants which hold the effect of the history data and THD parameters on the load forecast and it is used for the STLF of the test dataset of the data set considered. A unique norm with a, b, c and d constants based on the history data has been proposed for the STLF using the concept of curve fitting technique. The algorithms implementing this forecasting technique have been programmed using MATLAB. The input data of each day average power, average temperature, average humidity and day type of the previous year are used for prediction of power, in the case of the regression line method and the forecast previous month data and the similar month data of the previous year is used for the curve fitting method. The results are also compared with the Euclidean Norm Method (ELM) which is generally used method for STLF. The simulation results show the robustness and suitability of the proposed CFM norm for the STLF as the forecasting accuracies are very good and less than 3% for almost all the day types and all the seasons. Results also indicate that the proposed curve fitting method out passes the regression technique and the standard Euclidean distance norm with respect to forecasting accuracy and hence it will provide a better technique to utilities for short term load forecasting.
机译:本文的短期负荷预测是通过考虑网络负荷对温度,湿度,日间类型参数(THD)和先前负荷的敏感性来进行的,并且还要确保使用回归线最好地预测具有这些参数的负荷方法(RLM)和曲线拟合方法(CFM)。负载数据的分析表明,负载模式不仅取决于温度,而且取决于湿度和日期类型。已使用回归线概念开发了一个新规范,其中包含特殊常数,这些常数保留了历史数据和THD参数对负荷预测的影响,并将其用于所考虑数据集的测试数据集的STLF。已经使用曲线拟合技术的概念为STLF提出了基于历史数据的具有a,b,c和d常数的唯一范数。实现该预测技术的算法已使用MATLAB进行了编程。如果使用回归线法以及预测的上个月数据和上个月的相似月份数据,则使用上一年的每日平均功率,平均温度,平均湿度和上一天的类型的输入数据来预测功率。年份用于曲线拟合方法。还将结果与通常用于STLF的欧几里得范数法(ELM)进行比较。仿真结果表明,所建议的CFM准则对于STLF的鲁棒性和适用性,因为几乎所有日类型和所有季节的预测精度都很好,并且小于3%。结果还表明,所提出的曲线拟合方法在预测准确度方面超过了回归技术和标准的欧几里得距离准则,因此将为公用事业部门的短期负荷预测提供更好的技术。

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