人工神经网络在电力负荷精确预测中的应用

C. Pavlatos, E. Makris, G. Fotis, V. Vita, V. Mladenov
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引用次数: 10

摘要

在能源规划部门,电力负荷的准确预测对电力系统的功能运行和市场的有效管理至关重要。文献中提出了许多预测平台来解决这个问题。本文介绍了一个用Python编写的有效框架,它可以根据每小时或每天的负荷输入来预测未来的电力负荷。该框架采用递归神经网络模型,由两层简单神经网络和一层密集神经网络组成,在训练过程中采用Adam优化器和tanh损失函数。根据输入数据集的大小,所提出的系统可以处理短期和中期的负荷预测类别。该网络使用多个数据集进行了广泛的测试,结果发现非常有希望。网络的所有变体都能够捕获潜在的模式,并且在均方根误差和平均绝对误差方面实现了很小的测试误差。值得注意的是,所提出的框架优于更复杂的神经网络,其均方根误差为0.033,表明预测未来负载的准确度很高,因为它能够捕获数据模式和趋势。
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Utilization of Artificial Neural Networks for Precise Electrical Load Prediction
In the energy-planning sector, the precise prediction of electrical load is a critical matter for the functional operation of power systems and the efficient management of markets. Numerous forecasting platforms have been proposed in the literature to tackle this issue. This paper introduces an effective framework, coded in Python, that can forecast future electrical load based on hourly or daily load inputs. The framework utilizes a recurrent neural network model, consisting of two simpleRNN layers and a dense layer, and adopts the Adam optimizer and tanh loss function during the training process. Depending on the size of the input dataset, the proposed system can handle both short-term and medium-term load-forecasting categories. The network was extensively tested using multiple datasets, and the results were found to be highly promising. All variations of the network were able to capture the underlying patterns and achieved a small test error in terms of root mean square error and mean absolute error. Notably, the proposed framework outperformed more complex neural networks, with a root mean square error of 0.033, indicating a high degree of accuracy in predicting future load, due to its ability to capture data patterns and trends.
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