Analyzing meteorological parameters using Pearson correlation coefficient and implementing machine learning models for solar energy prediction in Kuching, Sarawak
Geoffrey Tan, Hadi N. Afrouzi, Jubaer Ahmed, Ateeb Hassan, Firdaus M-Sukki
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引用次数: 0
Abstract
Solar energy is one of the clean renewable energy sources that can offset the rising consumption of fossil fuels. However, the meteorological parameters, such as solar irradiance, ambient and solar module temperatures, relative humidity, etc., constantly change, and so does the solar power generation. Such variations cause instability in the power grid operation due to injecting an unpredicted amount of power. Hence, solar energy prediction models capable of learning from past weather data and predicting future energy generation are highly desired for grid operation and planning. The objective of this study is to determine the suitable meteorological parameters for the solar energy prediction model based on the Pearson correlation coefficient and to implement them in different machine learning models. It is found in this study that five meteorological parameters, namely Air temperature, cloud opacity, global tilted irradiance, relative humidity, and zenith angle, correlate highly with solar energy generation. Later, based on the correlations, four machine-learning models were implemented to predict the solar power for Kuching, Sarawak. The accuracy of the models is measured through standard matrices such as root mean square error, mean square error, mean absolute error, and R-squared value.
太阳能是清洁的可再生能源之一,可以抵消日益增长的化石燃料消耗。然而,气象参数,如太阳辐照度、环境温度和太阳能组件温度、相对湿度等不断变化,太阳能发电量也随之变化。这种变化会导致电网运行不稳定,因为会注入无法预测的电量。因此,能够从过去的天气数据中学习并预测未来发电量的太阳能预测模型是电网运行和规划所亟需的。本研究的目的是根据皮尔逊相关系数为太阳能预测模型确定合适的气象参数,并将其应用到不同的机器学习模型中。研究发现,气温、云翳、全球倾斜辐照度、相对湿度和天顶角这五个气象参数与太阳能发电量高度相关。随后,基于这些相关性,我们采用了四个机器学习模型来预测沙捞越古晋的太阳能发电量。模型的准确性通过均方根误差、均方误差、平均绝对误差和 R 平方值等标准矩阵来衡量。