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A hybrid annual power load forecasting model based on generalized regression neural network with fruit fly optimization algorithm

机译:基于果蝇优化算法的广义回归神经网络混合年度电力负荷预测模型

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摘要

Accurate annual power load forecasting can provide reliable guidance for power grid operation and power construction planning, which is also important for the sustainable development of electric power industry. The annual power load forecasting is a non-linear problem because the load curve shows a non-linear characteristic. Generalized regression neural network (GRNN) has been proven to be effective in dealing with the non-linear problems, but it is very regretfully finds that the GRNN have rarely been applied to the annual power load forecasting. Therefore, the GRNN was used for annual power load forecasting in this paper. However, how to determine the appropriate spread parameter in using the GRNN for power load forecasting is a key point. In this paper, a hybrid annual power load forecasting model combining fruit fly optimization algorithm (FOA) and generalized regression neural network was proposed to solve this problem, where the FOA was used to automatically select the appropriate spread parameter value for the GRNN power load forecasting model. The effectiveness of this proposed hybrid model was proved by two experiment simulations, which both show that the proposed hybrid model outperforms the GRNN model with default parameter, GRNN model with particle swarm optimization (PSOGRNN), least squares support vector machine with simulated annealing algorithm (SALSSVM), and the ordinary least squares linear regression (OLS_LR) forecasting models in the annual power load forecasting.
机译:准确的年度电力负荷预测可以为电网运行和电力建设规划提供可靠的指导,这对于电力行业的可持续发展也很重要。年度电力负荷预测是非线性问题,因为负荷曲线显示出非线性特征。广义回归神经网络(GRNN)已被证明可以有效地解决非线性问题,但是非常遗憾的是,发现GRNN很少用于年度电力负荷预测。因此,本文将GRNN用于年度电力负荷预测。但是,如何在使用GRNN进行电力负荷预测时确定合适的扩展参数是关键。本文提出了一种将果蝇优化算法(FOA)和广义回归神经网络相结合的年度电力负荷预测模型,以FOA为GRNN电力负荷预测自动选择合适的扩展参数值来解决这一问题。模型。通过两个实验仿真证明了该混合模型的有效性,两者均显示该混合模型优于默认参数的GRNN模型,带粒子群优化的GRNN模型(PSOGRNN),具有模拟退火算法的最小二乘支持向量机( SALSSVM),以及年度电力负荷预测中的普通最小二乘线性回归(OLS_LR)预测模型。

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