物理引导的机器学习利用稀疏、异构的公共数据预测太阳能发电场的地球级性能

Jabir Bin Jahangir, Muhammad Ashraful Alam
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引用次数: 0

摘要

光伏(PV)技术的发展日新月异。要预测新兴光伏技术的潜力和可扩展性,就必须在全球范围内了解这些系统的性能。传统上,大型国家研究机构的实验和计算研究侧重于特定区域气候下的光伏性能。然而,要综合这些地区性研究来了解全球范围内的性能潜力却很困难。考虑到获取实验数据的费用、在政治分裂的世界中协调国家实验室实验的挑战以及大型商业运营商对数据隐私的担忧,我们需要一种根本不同的、数据高效的方法。在这里,我们提出了一种物理引导的机器学习(PGML)方案,以证明(a) 可以将全球划分为几个特定的光伏气候区,称为光伏区,说明各大洲共享相关的气象条件;(b) 通过利用气候的相似性,来自少至五个地点的高质量月度发电量数据可以准确预测年发电量潜力,具有较高的空间分辨率,均方根误差小于 8 kWhm$^{2}$,以及 (c) 只要数据集具有代表性,即使使用杂乱、异构的公共光伏性能数据,与基于物理的模拟相比,全球发电量的预测相对误差也小于 6%。这种 PGML 方案与光伏技术和电站拓扑结构无关,因此可适用于新的光伏技术或电站配置。研究结果鼓励国家政策制定者和研究机构之间开展以物理为指导、数据为驱动的合作,以建立高效的决策支持系统,加快全球的光伏认证和部署。
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Physics-guided machine learning predicts the planet-scale performance of solar farms with sparse, heterogeneous, public data
The photovoltaics (PV) technology landscape is evolving rapidly. To predict the potential and scalability of emerging PV technologies, a global understanding of these systems' performance is essential. Traditionally, experimental and computational studies at large national research facilities have focused on PV performance in specific regional climates. However, synthesizing these regional studies to understand the worldwide performance potential has proven difficult. Given the expense of obtaining experimental data, the challenge of coordinating experiments at national labs across a politically-divided world, and the data-privacy concerns of large commercial operators, however, a fundamentally different, data-efficient approach is desired. Here, we present a physics-guided machine learning (PGML) scheme to demonstrate that: (a) The world can be divided into a few PV-specific climate zones, called PVZones, illustrating that the relevant meteorological conditions are shared across continents; (b) by exploiting the climatic similarities, high-quality monthly energy yield data from as few as five locations can accurately predict yearly energy yield potential with high spatial resolution and a root mean square error of less than 8 kWhm$^{2}$, and (c) even with noisy, heterogeneous public PV performance data, the global energy yield can be predicted with less than 6% relative error compared to physics-based simulations provided that the dataset is representative. This PGML scheme is agnostic to PV technology and farm topology, making it adaptable to new PV technologies or farm configurations. The results encourage physics-guided, data-driven collaboration among national policymakers and research organizations to build efficient decision support systems for accelerated PV qualification and deployment across the world.
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