Short term power load forecasting system based on improved neural network deep learning model

Lulu Yuan
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Abstract

The electricity load prediction is closely related to production and daily life. The electricity load prediction is also a very important task. With the widespread application of smart grids, load data shows an exponential growth trend. The huge amount of data in the load makes power prediction even more difficult. On the basis of traditional prediction algorithms, a power load prediction model based on machine learning and neural networks is designed. Because the single model prediction has the unstable results, a combined model is obtained based on the ensemble learning idea and two single model prediction method. The prediction results are detected by the load data. From the experimental results, the mean absolute percentage error (MAPE) of the AdaBoost-GRU data fusion model is 0.066%. Compared to the AdaBoost-GRU data fusion model, the MAPE decreases by 1.59% and 1.12%, respectively. The relative mass scores of the two groups decrease by 132.57% and 89.14%, respectively. The prediction accuracy is improved, which has advantages compared to traditional combination models. It can effectively enhance the accuracy of short-term power grid load forecasting. It is an important scientific and practical reference for power grid decision-making.

基于改进型神经网络深度学习模型的短期电力负荷预测系统
用电负荷预测与生产、生活息息相关。电力负荷预测也是一项非常重要的工作。随着智能电网的广泛应用,负荷数据呈指数增长趋势。海量的负荷数据增加了电力预测的难度。在传统预测算法的基础上,设计了基于机器学习和神经网络的电力负荷预测模型。由于单一模型预测结果不稳定,因此基于集合学习思想和两种单一模型预测方法得到了组合模型。预测结果通过负荷数据进行检测。从实验结果来看,AdaBoost-GRU 数据融合模型的平均绝对误差(MAPE)为 0.066%。与 AdaBoost-GRU 数据融合模型相比,MAPE 分别减少了 1.59% 和 1.12%。两组的相对质量得分分别降低了 132.57% 和 89.14%。与传统的组合模型相比,其预测精度得到了提高。可有效提高短期电网负荷预测的准确性。对电网决策具有重要的科学性和实用性参考价值。
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