国家层面能源部门的适应性数据预测

P. V. Vezeteu, A. Morariu, D. Năstac
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引用次数: 0

摘要

电力负荷预测是发电规划的一个核心方面,因为它允许生产单元的优化。迄今为止,还没有发现能够精确预测国家层面能源消耗的人工神经网络架构(ann)。在本文中,我们提出了一个专注于短期预测的人工智能预测模型的实现。当前版本是对先前方法的增强,该方法包括在MATLAB中进行完整实现。算法在Python中进行了转换,使用了新的和更新的工具,如TensorFlow和Keras,同时考虑了两者之间的性能比较。为了验证我们的模型,我们使用了罗马尼亚2008年至2011年的数据。该算法的实现主要集中在四个主要阶段:重构和预处理数据,寻找和训练最优模型,改进初始模型,用新数据重新训练神经网络。就结果而言,目前的实现大大减少了训练时间,并返回了良好的预测能力。另一方面,Python模型容易出现过拟合,这个问题可以通过dropout和正则化层等技术来解决。在结构方面,与其他使用LSTM细胞的时间序列预测方法相比,它使用经典神经元。这种简单的神经网络在计算资源方面提供了更高的效率,同时也能够做出准确的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive data predictions for the energy sector at national level
Electric load forecasting is a central aspect of power generation planning as it allows the optimization of the production units. To date, no artificial neural network architectures (ANNs) were found that can precisely predict the consumption of energy at national level. In this paper, we propose the implementation of an artificial intelligence forecasting model that focuses on short term predictions. The current version is an enhancement of the previous approach which consisted of a full implementation in MATLAB. The algorithm was transposed in Python, using the new and updated tools such as TensorFlow and Keras, while taking into consideration a performance comparison between the two. To validate our model, we used, data from Romania between years 2008 to 2011. The implementation focuses on four main stages: restructuring and pre-processing the data, finding, and training the optimal model, refining the initial model, and retraining the neural network with new data. In terms of results, the current implementation decreased considerably the training time and returned a good prediction capability. On the other hand, the Python model was prone to overfitting, problem that was solved with techniques such as dropout and regularization layers. Regarding the architecture, it uses classical neurons as compared to other approaches in time series prediction that use LSTM cells. This simpler neural network offered higher efficiency in terms of computational resources while also being able to make accurate predictions.
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