Comparison of different BP neural network models for short-term load forecasting

Yuan Ning, Yufeng Liu, Huiying Zhang, Qiang Ji
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引用次数: 19

Abstract

Short-term load forecasting(STLF) is of great importance for the safety and stabilization of grids. Based on the historical load data of meritorious power of some area in Guizhou power system, three BP neural networks in steepest descent algorithm back propogation neural network(SDBP), Levenberg -Marquardt algorithm back propogation neural network (LMBP) and Bayesian regularization algorithm back propogation neural network (BRBP) models in 24 hours ahead prediction are compared. Since the traditional BP algorithm has some drawbacks such as slow training convergence speed and possibility of local minimizing the optimized function, an optimized L-M algorithm, which can improve the stability of convergence and accelerate the training speed of neural network has been applied to carry out load forecasting work to reduce the mean relative error. Bayesian regularization also be applied which can overcome and improve the generalization of neural network. The prediction precision of BRBP are superior to LMBP and SDBP, while BRBP has poor training speed than others.
不同BP神经网络模型短期负荷预测的比较
短期负荷预测对电网的安全稳定运行具有重要意义。基于贵州电力系统某地区功德电力的历史负荷数据,比较了最陡下降算法反向传播神经网络(SDBP)、Levenberg -Marquardt算法反向传播神经网络(LMBP)和贝叶斯正则化算法反向传播神经网络(BRBP) 3种BP神经网络在24小时前预测中的应用效果。针对传统BP算法存在训练收敛速度慢、优化函数可能局部极小等缺点,采用一种能提高收敛稳定性、加快神经网络训练速度的优化L-M算法进行负荷预测工作,以减小平均相对误差。贝叶斯正则化可以克服和提高神经网络的泛化性。BRBP的预测精度优于LMBP和SDBP,而BRBP的训练速度较慢。
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