← 返回
作为仿真优化代理模型的约束高斯过程在太阳能工艺热系统中的应用
Constrained Gaussian processes as a surrogate model for simulation-based optimization of solar process heat systems
| 作者 | Leonardo F.L.Lemo · Allan R.Stark · Alexandre K.da Silva |
| 期刊 | Applied Energy |
| 出版日期 | 2025年10月 |
| 卷/期 | 第 395 卷 |
| 技术分类 | 光伏发电技术 |
| 技术标签 | 储能系统 |
| 相关度评分 | ★★★★ 4.0 / 5.0 |
| 关键词 | Constrained Gaussian process as a [surrogate model](https://www.sciencedirect.com/topics/engineering/surrogate-model "Learn more about surrogate model from ScienceDirect's AI-generated Topic Pages") for solar process heat system. |
语言:
中文摘要
摘要 评估可再生能源驱动系统的性能,例如太阳能工艺热系统,可能需要开发复杂且计算成本较高的模型,以在大量不同的设计构型和运行条件下对这些系统进行仿真。由此产生的数据网格通常用于训练代表系统性能的代理模型,进而可用于分析系统的盈利能力并计算经济上最优的配置。然而,这种方法可能并不可行,因为它需要过多的仿真次数。因此,本研究提出了一种新颖且替代性的方法,采用约束高斯过程结合主动学习策略,以显著减少所需的训练数据量来构建此类代理模型。结果表明,对于一个测试的四维示例案例,与基于网格的方法相比,所提出的方法在使用约75%更少的训练数据、并仅需约一半仿真时间的情况下,生成了可靠的代理模型,同时在诸如均方根误差(RMSE)和最大误差等广泛认可的性能指标方面表现出相似的性能。
English Abstract
Abstract Assessing the performance of renewable energy powered systems, such as solar process heat, may require the development of complex and computationally demanding models capable of simulating such systems under numerous different design configurations and operating conditions. The resulting grid of data is often used to train a surrogate model representing the system's performance , which can be used to further analyze the system's profitability and calculate economically optimal configurations. This approach, however, may be unfeasible since it requires too many simulations. Therefore, this study proposes a novel and alternative approach, employing constrained Gaussian processes and active learning strategies to generate such surrogate models using significantly less training data. The results show that, for a 4D example case tested, the proposed method has generated reliable surrogates models using around 75 % less training data and requiring around half of the simulation time when compared with a grid-based approach, while presenting similar performance in terms of well-established figures of merit, such as RMSE and maximum error.
S
SunView 深度解读
该约束高斯过程代理模型技术对阳光电源光储系统优化具有重要价值。可应用于ST系列储能变流器与SG系列光伏逆变器的协同配置优化,通过减少75%仿真数据量显著提升系统设计效率。该主动学习策略可集成至iSolarCloud平台,实现光热-储能混合系统的快速经济性评估与容量配置优化,特别适用于工商业场景下PowerTitan储能系统与多MPPT光伏系统的联合调度方案生成,大幅降低复杂工况下的仿真计算成本。