With the rapid growth of renewable energy, lots of small photovoltaic (PV) prosumers emerge. Due to the uncertainty of solar power generation, there is a need for aggregated prosumers to predict solar power generation and whether solar power generation will be larger than load. This paper presents two interpretable neural networks to solve the problem: one binary classification neural network and one regression neural network. The neural networks are built using TensorFlow. The global feature importance and local feature contributions are examined by three gradient-based methods: Integrated Gradients, Expected Gradients, and DeepLIFT. Moreover, we detect abnormal cases when predictions might fail by estimating the prediction uncertainty using Bayesian neural networks. Neural networks, which are interpreted by gradient-based methods and complemented with uncertainty estimation, provide robust and explainable forecasting for decision-makers.
翻译:随着可再生能源的迅速增长,出现了许多小型光电(光电)活期票。由于太阳能发电的不确定性,需要综合的造价人来预测太阳能发电以及太阳能发电是否大于负荷。本文件介绍了两个可解释的神经网络来解决这个问题:一个二元分类神经网络和一个回归神经网络。神经网络是用TensorFlow建造的。全球特色重要性和地方特色贡献通过三种梯度方法来审查:综合梯度、预期梯度和深深深光力研究。此外,我们通过使用贝叶斯神经网络估算预测不确定性而发现预测可能失败的异常案例。神经网络由梯度方法解释,并辅之以不确定性估计,为决策者提供可靠和可解释的预测。