Time series forecasting of electricity consumption using hybrid model of recurrent neural networks and genetic algorithms

Ali Hussein , Mohammed Awad
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Abstract

The forceful energy efficiency to manage the demand is essential to meet development goals. Palestine has suffered from an electricity deficit, whereas the city of Tulkarm suffers from a chronic one. The dataset was collected from Tulkarm city in Palestine; this city is considered one of the cities that suffers the most from frequent power outages. It's difficult to determine the most powerful Artificial intelligence (AI) approaches that can accurately forecast electricity consumption. This paper presents a hybrid model that combines Recurrence Neural Networks (RNNs) and Genetic Algorithms (GAs) [RNN-GAs] to forecast electricity consumption and optimize demand. In the proposed model the K-means clustering technique produces specific initial population seeding and optimization crossover operators to enhance the efficiency and find the optimal solution. The results showed that the proposed Nonlinear Autoregressive with External (Exogenous) (NARX) (NARX-GAs) with the K-means clustering technique outperforms the hybrid model NARX-GAs. The NARX-GAs-K Mean Clustering recorded an RMSE value of 0.08759, which performs a good balance with the lowest RMSE, especially in long-term forecasting, and also outperforms the other hybrid forecasting models that depend on RNN-GAs. Finally, the forecasting results of the hybrid NARX-GAs-K Mean Clustering can predict accurately the energy consumption in a city, which leads to the use of the model in similar cities to forecast and manage the demand for electricity consumption.

利用递归神经网络和遗传算法的混合模型对用电量进行时间序列预测
提高能源效率以管理需求对于实现发展目标至关重要。巴勒斯坦一直存在电力短缺问题,而图勒凯尔姆市则长期处于电力短缺状态。数据集收集自巴勒斯坦图勒凯尔姆市;该市被认为是频繁停电最严重的城市之一。要确定能准确预测用电量的最强大的人工智能(AI)方法非常困难。本文提出了一种结合递归神经网络(RNN)和遗传算法(GAs)的混合模型 [RNN-GAs],用于预测用电量和优化需求。在提议的模型中,K-means 聚类技术产生特定的初始种群播种和优化交叉算子,以提高效率并找到最优解。结果表明,采用 K-means 聚类技术的带外部(外生)非线性自回归模型(NARX)(NARX-GAs)优于混合模型 NARX-GAs。NARX-GAs-K 均值聚类的均方根误差值为 0.08759,在均方根误差最低的情况下实现了良好的平衡,尤其是在长期预测方面,也优于其他依赖于 RNN-GAs 的混合预测模型。最后,混合 NARX-GAs-K 均值聚类的预测结果可以准确预测一个城市的能源消耗情况,从而将该模型用于类似城市的用电需求预测和管理。
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