Time series forecast of power output of a 50MWp solar farm in Ghana

Alhassan Sulemana Puziem , Felix Amankwah Diawuo , Peter Acheampong , Mathew Atinsia Anabadongo , Dampaak Abdulai
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Abstract

The energy industry in Ghana is working towards the strategic objective of accelerating the development and use of energy efficiency and renewable energy technology to attain a 10 % penetration of the country's electricity mix. However, due to the inherent unpredictability of solar energy compared to conventional sources, adjustments in power system planning and operations will be required to achieve these targets. The variations in solar energy output can cause problems for the grid infrastructure, especially for large-scale solar farms, potentially leading to poorer power flow quality. An autoregressive model (AR) serving as a benchmark model was developed as a reference for the Facebook prophet model. The Prophet outperformed the AR model in percentage-based metrics, with a Mean Absolute Percentage Error (MAPE) of 12.1 % and a Median Absolute Percentage Error (MdAPE) of 13.8 % , both lower than the AR model's 16.28 % and 17.23 % respectively. However, the AR model demonstrates stronger performance in absolute error metrics, suggesting it better captures magnitude changes, whereas Prophet excels in relative error metrics, indicating better robustness to scale and variability. It is expected that the results of this study will improve Bui Power Authority (BPA) confidence in the effective decision-making of energy generation and supply. Moreso, this study also contributes to existing research, particularly in Ghana, providing insights to optimize energy production, improve grid stability, and enhance revenue streams.
加纳50MWp太阳能发电场输出功率的时间序列预测
加纳的能源行业正在努力实现加速能源效率和可再生能源技术的开发和使用的战略目标,以实现该国电力结构10%的渗透率。然而,由于太阳能与传统能源相比具有内在的不可预测性,因此需要对电力系统的规划和操作进行调整,以实现这些目标。太阳能输出的变化可能会给电网基础设施带来问题,特别是对大型太阳能发电场来说,这可能会导致电力质量下降。作为基准模型的自回归模型(AR)被开发出来作为Facebook先知模型的参考。先知在基于百分比的指标上优于AR模型,平均绝对百分比误差(MAPE)为12.1%,中位数绝对百分比误差(MdAPE)为13.8%,均低于AR模型的16.28%和17.23%。然而,AR模型在绝对误差指标上表现出更强的性能,表明它能更好地捕捉幅度变化,而Prophet在相对误差指标上表现出色,表明对规模和可变性有更好的鲁棒性。期望本研究的结果能够提高中国电力管理局(BPA)对能源生产和供应的有效决策的信心。此外,本研究还有助于现有的研究,特别是在加纳,为优化能源生产、提高电网稳定性和增加收入流提供见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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