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Machine Learning-based Classification of Spectral Conditions for High-Throughput Indoor Testing of Photovoltaic Modules

机译:基于机器学习的光伏模块高通量室内测试光谱条件分类

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High-throughput testing of solar modules to accurately predict energy yield (EY) is increasingly important as more of the power grid runs on photovoltaics (PV). Modules are sold based on power ratings measured under standard testing conditions, not fully considering environmental conditions of the real world. In this work, we use the k-means algorithm to extract the best representative conditions of the environment that minimizes error in EY. The work presented here is a fully scoped proof-of-concept demonstrated on a year of spectral data clustered and analyzed for every month of 2017 in Boulder, Colorado. Preliminary results demonstrate a decrease in 5 percent relative error in energy yield predictions between one standard testing condition and up to seven clusters found with this method. This can be generalized to more locations around the world as a powerful tool for EY estimation. These results demonstrate the capacity for high throughput, accurate EY prediction using clustered conditions.
机译:随着越来越多的电网依靠光伏电池(PV)运行,对太阳能模块进行高通量测试以准确预测能量产量(EY)变得越来越重要。模块是根据在标准测试条件下测得的额定功率出售的,并未完全考虑实际环境条件。在这项工作中,我们使用k-means算法来提取环境的最佳代表性条件,从而最大程度地减少EY的误差。此处介绍的工作是对范围广泛的概念验证,在2017年每个月在科罗拉多州博尔德市进行群集和分析的一年的光谱数据上进行了演示。初步结果表明,在一种标准测试条件与使用该方法发现的多达七个簇之间,能量产量预测的相对误差降低了5%。作为EY估算的强大工具,它可以推广到世界各地。这些结果证明了使用聚类条件进行高吞吐量,准确的EY预测的能力。

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