Short-Term Electrical Load Prediction for Future Generation Using Hybrid Deep Learning Model

S. Haque, Gobinda Chandra Sarker, Kazi Md Sadat
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Abstract

Power generation is increasing worldwide every year to cope with ever-increasing energy demand. Therefore, a significant necessity exists for forecasting the load demand to manage and increase electricity production capacity. Short-term load forecasting (STLF) using artificial neural network has become one of the most efficient and widely popular methods. This paper proposes a hybrid network of Long Short-Term Memory (LSTM) network and Convolutional Neural Network (CNN) to predict demand for seven days into the future. The proposed CNN-LSTM method is compared with various deep learning techniques such as vanilla neural network and gated recurrent unit (GRU). Power Grid Company of Bangladesh (PGCB) has the responsibility of reliable power transmission all over the country. Each model is trained and tested on multivariate historical data collected from the daily report section of PGCB website for the Mymensingh Division in Bangladesh. Various input features such as temperature, peak generation at evening, maximum generation, month and the season of the year are used to aid the prediction. It is found that the proposed CNN-LSTM method outperforms the other models with a MAPE error rate of 2.8992%, which is less than the MAPE error of 5.5554% for demand estimation of seven days used by PGCB.
基于混合深度学习模型的未来发电短期电力负荷预测
为了满足日益增长的能源需求,全世界的发电量每年都在增加。因此,对负荷需求进行预测以管理和提高发电能力是非常必要的。利用人工神经网络进行短期负荷预测已成为目前最有效、应用最广泛的方法之一。本文提出了一种长短期记忆(LSTM)网络和卷积神经网络(CNN)的混合网络来预测未来7天的需求。将所提出的CNN-LSTM方法与各种深度学习技术(如香草神经网络和门控循环单元(GRU))进行了比较。孟加拉国电网公司(PGCB)肩负着在全国范围内可靠输电的责任。每个模型都是根据从PGCB网站为孟加拉国迈门辛格分部收集的每日报告部分收集的多变量历史数据进行训练和测试的。各种输入特征,如温度、夜间峰值发电量、最大发电量、月份和一年中的季节,都被用来帮助预测。研究发现,本文提出的CNN-LSTM方法的MAPE误差率为2.89992%,优于其他模型,小于PGCB使用的7天需求估计的MAPE误差率5.5554%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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