准确和可扩展的接收器级通量预测:一个完全数据驱动的解决方案

IF 6 2区 工程技术 Q2 ENERGY & FUELS
Mathias Kuhl , Max Pargmann , Daniel Maldonado Quinto , Robert Pitz-Paal
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引用次数: 0

摘要

聚光太阳能技术(CST)系统,特别是带有定日镜场的中央塔配置,在可再生能源领域发挥着关键作用。通过将来自数千个定日镜的太阳光聚焦到一个中央接收器上,这些系统产生高温热量,作为可调度发电和工业过程的关键资源。准确的接收器级通量预测依赖于精确的定日镜特性,对于优化效率和操作控制至关重要。然而,现有的表征方法面临着准确性和可扩展性之间的权衡,限制了它们在大规模部署中的实用性。为了克服这些限制,本研究引入了一个完全数据驱动的框架,该框架将定日镜特性和通量预测结合起来,利用来自标准校准程序的操作数据。在先前使用StyleGAN进行基于波束特征预测的工作的基础上,该方法推进了方法,以实现准确的接收机级通量预测。虽然先前的方法证明了统一数据驱动方法的概念证明,但它仍然局限于对校准目标本身的通量预测。本研究引入了关键的创新,包括瞄准点概化策略和一种新的接收机投影技术,有效地弥合了基于波束特征的定日镜特征和准确的接收机级通量预测之间的差距。提出的基于变压器的架构实现了接收器级焦斑预测误差低于12%,超过了最先进的偏转测量增强射线追踪的精度。通过完全依赖标准校准图像,该方法具有成本效益和可扩展性,为大规模CST应用提供了实用的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accurate and scalable receiver-level flux prediction: A fully data-driven solution
Concentrated Solar Technologies (CST) systems, particularly central tower configurations with heliostat fields, play a critical role in the renewable energy landscape. By focusing sunlight from thousands of heliostats onto a central receiver, these systems generate high-temperature heat, which serves as a key resource for dispatchable power generation and industrial processes. Accurate receiver-level flux prediction, which depends on precise heliostat characterization, is essential for optimizing efficiency and operational control. However, existing characterization methods face trade-offs between accuracy and scalability, limiting their practicality for large-scale deployment.
To overcome these limitations, this study introduces a fully data-driven framework that unifies heliostat characterization and flux prediction, leveraging operational data from standard calibration procedures. Expanding upon previous work that employed StyleGAN for beam-characterization-based predictions, this approach advances the methodology to achieve accurate receiver-level flux predictions. While the prior method demonstrated a proof of concept for a unified data-driven approach, it remained constrained to flux predictions on the calibration target itself. This study introduces key innovations, including aim point generalization strategies and a novel receiver projection technique, effectively bridging the gap between beam-characterization-based heliostat characterization and accurate receiver-level flux predictions.
The proposed Transformer-based architecture achieves receiver-level focal spot prediction errors below 12%, exceeding the accuracy of state-of-the-art deflectometry-enhanced ray tracing. By relying exclusively on standard calibration images, the method remains both cost-efficient and scalable, offering a practical solution for large-scale CST applications.
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来源期刊
Solar Energy
Solar Energy 工程技术-能源与燃料
CiteScore
13.90
自引率
9.00%
发文量
0
审稿时长
47 days
期刊介绍: Solar Energy welcomes manuscripts presenting information not previously published in journals on any aspect of solar energy research, development, application, measurement or policy. The term "solar energy" in this context includes the indirect uses such as wind energy and biomass
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