基于迁移学习和贝叶斯调整的隐形分布式能源资源遮蔽负荷预测

Ziyan Zhou, Chao Ren, Yan Xu
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引用次数: 0

摘要

由于数据模式的变化,利用表后分布式能源资源(DER)进行负荷预测更具挑战性。传统的预测方法仅基于非掩蔽负荷,无法适应当前有限的掩蔽负荷。为了弥合非掩蔽负载和掩蔽负载之间的分歧,本文提出了一种基于迁移学习技术和贝叶斯优化的掩蔽负载预测(MLF)方法,即贝叶斯优化最大均差神经网络(MMD-NNb)。首先,提取未屏蔽负荷和屏蔽负荷的共同特征向量,并根据历史未屏蔽负荷的特征向量建立结果预测器。因此,掩蔽负荷的特征向量可以适应结果预测器,从而对掩蔽负荷进行预测。由于训练涉及的超参数过多,因此采用贝叶斯优化方法对超参数进行微调。MMD-NNb 与四个相关模型进行了测试和比较。在所有比较方案中都观察到 MMD-NNb 的改进。此外,MMD-NNb 还被证明对不同的 DER 具有很强的适应能力,而且不需要额外的 DER 数据。
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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Forecasting masked-load with invisible distributed energy resources based on transfer learning and Bayesian tuning

Load forecasting with distributed energy resources (DERs) behind-the-meter is more challenging owing to transformed data patterns. Traditional forecasting method which is only based on unmasked-load could not suit the present limited masked-load. To bridge the divergence between unmasked-load and masked-load, this article proposes a masked-load forecasting (MLF) method based on transfer learning technique and Bayesian optimization, which is Maximum Mean Discrepancy-Neural Network with Bayesian optimization (MMD-NNb). At first, common feature vectors between unmasked-load and masked-load are extracted and an outcome predictor could be established based on feature vectors from historical unmasked-load. The feature vectors from masked-load could therefore accommodate to the outcome predictor, and the masked-load could be forecast. Owing to the excessive hyperparameters involved in training, Bayesian optimization is adopted for hyperparameters fine-tuning. MMD-NNb was tested and compared with four related models. The improvements from MMD-NNb were observed in all comparison scenarios. Also, MMD-NNb was proved to have high resilience to the different DERs and not requiring additional DERs-data.

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