Disaggregating Longer-Term Trends from Seasonal Variations in Measured PV System Performance

C. C. Okorieimoh, Brian Norton, Michael Conlon
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Abstract

Photovoltaic (PV) systems are widely adopted for renewable energy generation, but their performance is influenced by complex interactions between longer-term trends and seasonal variations. This study aims to remove these factors and provide valuable insights for optimising PV system operation. We employ comprehensive datasets of measured PV system performance over five years, focusing on identifying the distinct contributions of longer-term trends and seasonal effects. To achieve this, we develop a novel analytical framework that combines time series and statistical analytical techniques. By applying this framework to the extensive performance data, we successfully break down the overall PV system output into its constituent components, allowing us to find out the impact of the system degradation, maintenance, and weather variations from the inherent seasonal patterns. Our results reveal significant trends in PV system performance, indicating the need for proactive maintenance strategies to mitigate degradation effects. Moreover, we quantify the impact of changing weather patterns and provide recommendations for optimising the system’s efficiency based on seasonally varying conditions. Hence, this study not only advances our understanding of the intricate variations within PV system performance but also provides practical guidance for enhancing the sustainability and effectiveness of solar energy utilisation in both residential and commercial settings.
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从光伏系统性能测量的季节性变化中分解长期趋势
光伏(PV)系统被广泛用于可再生能源发电,但其性能受到长期趋势和季节变化之间复杂的相互作用的影响。本研究旨在消除这些因素,为优化光伏系统的运行提供有价值的见解。我们采用了五年来测量光伏系统性能的综合数据集,重点是识别长期趋势和季节效应的不同贡献。为此,我们开发了一种结合时间序列和统计分析技术的新型分析框架。通过将这一框架应用于大量性能数据,我们成功地将光伏系统的整体输出分解为各个组成部分,从而从固有的季节性模式中找出系统退化、维护和天气变化的影响。我们的研究结果揭示了光伏系统性能的重要趋势,表明需要采取积极的维护策略来减轻退化影响。此外,我们还量化了不断变化的天气模式的影响,并根据季节性变化条件提出了优化系统效率的建议。因此,这项研究不仅加深了我们对光伏系统性能复杂变化的理解,还为提高住宅和商业环境中太阳能利用的可持续性和有效性提供了实用指导。
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CiteScore
4.80
自引率
0.00%
发文量
1584
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