首页> 外文期刊>International Journal of Performability Engineering >Short-Term Load Forecasting based on Variational Mode Decomposition and Least Squares Support Vector Machine by Improved Artificial Fish Swarm-Shuffled Frog Jump Algorithms
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Short-Term Load Forecasting based on Variational Mode Decomposition and Least Squares Support Vector Machine by Improved Artificial Fish Swarm-Shuffled Frog Jump Algorithms

机译:基于变分模式分解的短期负荷预测和改进的人工鱼类群Shuff-Shuffled Frog跳跃算法

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摘要

Short-term load forecasting plays a key role in the safe dispatching and economic operation of the power system. The lease square support vector machine (LSSVM) has the power system. The least square support vector machine (LSSVM) has great potential in forecasting problems, particularly by employing an appropriate algorithm to determine the values of its two parameters. In order to improve LSSVM load prediction accuracy, this paper proposes a LSSVM based on the Variational mode decomposition(VMD) electric load forecasting model that uses an artificial fish swarm-shuffled frog leaping algorithm to determine the appropriate values of the two parameters. The historical data such as load and weather in the first 15 days of the forecast day are the input into LSSVM. The AFSA-SFLA-LSSVM forecasting model, the LAV AFSA-SFLA-LSSVM forecasting model, the AFSA-LSSVM forecasting model, and the VMD-LAVAFSA-SFLA-LSSVM forecasting model were established for electrical load forecasting in a certain area within 24 hours of a specific day. The results of the example show that the accuracy of the VMD-LAVAFSA-SFLA-LSSVM forecasting model was higher than the other three forecasting models and the prediction error was smaller as well.
机译:短期负荷预测在电力系统的安全调度和经济运行中起着关键作用。租赁方形支持向量机(LSSVM)具有电力系统。最小二乘支持向量机(LSSVM)在预测问题方面具有很大的潜力,特别是通过采用适当的算法来确定其两个参数的值。为了提高LSSVM负载预测精度,本文提出了一种基于变分模式分解(VMD)电负荷预测模型的LSSVM,该模型使用人工鱼类群播种青蛙跳跃算法来确定两个参数的适当值。预测日期的前15天的负载和天气等历史数据是LSSVM的输入。 AFSA-SFLA-LSSVM预测模型,LAV AFSA-SFLA-LSSVM预测模型,AFSA-LSSVM预测模型以及VMD-LAVAFSA-SFLA-LSSVM预测模型在24小时内为某个区域进行电负荷预测建立特定的一天。该示例的结果表明,VMD-LAVAFSA-SFLA-LSSVM预测模型的准确性高于其他三个预测模型,并且预测误差也更小。

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