异构动态数据环境下分布式光伏发电在线增量概率功率预测

IF 10.1 1区 工程技术 Q1 ENERGY & FUELS
Le Zhang, Ziyu Chen, Jizhong Zhu, Kaixin Lin, Linying Huang
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引用次数: 0

摘要

数据共享是提高小样本分布式光伏发电数据驱动模型预测精度的标准解决方案。不幸的是,在实践中,由于分散的所有权和多样化、动态的外部环境,这种解决方案在数据隐私、异构性和动态数据学习方面面临挑战。为了解决这些问题,本文提出了一种基于贝叶斯随机配置网络(BSCN)和个性化联邦学习(PFL)的增量概率预测方法。具体地说,随机组态网络是一种新兴的无迭代的单隐层神经网络,用于快速构建功率预测器。为了获得后验分布并确定概率输出,采用贝叶斯推理对SCN的输出参数进行评估。针对小样本和异构数据导致的性能下降,设计了一种新的PFL框架,在提高预测精度的同时保护隐私。在技术上,服务器作为信息共享的桥梁,在Wasserstein距离的引导下,以个性化的方式聚合局部后验分布,尽可能地整合相似的特征。以来自服务器的个性化后验作为先验,每个客户端在本地执行个性化再训练,以减轻数据异构的不利影响,同时从其他客户端学习共享信息。此外,提出了一种增量学习策略,并将其无缝嵌入到PFL框架中,以在动态环境中持续学习新模式而不会忘记。使用公共数据集的大量实验结果表明,在小样本、异构和动态数据存在的情况下,与几种最先进的分布式pv解决方案相比,所提出的方法具有竞争性的概率预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online incremental probability power prediction for distributed PVs in heterogeneous and dynamic data environments
Data sharing is a standard solution to improve the prediction accuracy of data-driven models for distributed photovoltaic (PV) power with small samples. Unfortunately, in practice, due to decentralized ownership and diverse, dynamic external environments, this solution suffers from challenges in data privacy, heterogeneity, and dynamic data learning. To handle these challenges, this paper proposes an incremental probabilistic prediction method based on a Bayesian stochastic configuration network (BSCN) and personalized federated learning (PFL). Concretely, a stochastic configuration network, an emerging neural network with a single hidden layer and no iteration, is used to quickly build the power predictor. Aiming to obtain the posterior distribution and determine the probabilistic output, Bayesian inference is used to evaluate the output parameters of SCN. Faced with the performance degradation caused by small samples and heterogeneous data, a novel PFL framework is designed to improve the prediction accuracy while protecting privacy. Technically, the server acts as a bridge for information sharing and aggregates local posterior distributions in a personalized manner, guided by Wasserstein distance to integrate similar features as much as possible. With the personalized posterior from the server as the prior, each client performs personalized retraining locally to mitigate the adverse effects of the data heterogeneity while learning shared information from other clients. Moreover, an incremental learning strategy is proposed and seamlessly embedded into the PFL framework to continuously learn new modes without forgetting in dynamic environments. Extensive experiment results using public datasets demonstrate that the proposed method exhibits competitive probabilistic prediction performance compared to several state-of-the-art solutions for distributed PVs in the presence of small-sample, heterogeneous, and dynamic data.
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来源期刊
Applied Energy
Applied Energy 工程技术-工程:化工
CiteScore
21.20
自引率
10.70%
发文量
1830
审稿时长
41 days
期刊介绍: Applied Energy serves as a platform for sharing innovations, research, development, and demonstrations in energy conversion, conservation, and sustainable energy systems. The journal covers topics such as optimal energy resource use, environmental pollutant mitigation, and energy process analysis. It welcomes original papers, review articles, technical notes, and letters to the editor. Authors are encouraged to submit manuscripts that bridge the gap between research, development, and implementation. The journal addresses a wide spectrum of topics, including fossil and renewable energy technologies, energy economics, and environmental impacts. Applied Energy also explores modeling and forecasting, conservation strategies, and the social and economic implications of energy policies, including climate change mitigation. It is complemented by the open-access journal Advances in Applied Energy.
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