Analysis of solar energy potentials of five selected south-east cities in nigeria using deep learning algorithms

Samuel Ikemba, Kim Song-hyun, Temiloluwa O Scott, Daniel R. E. Ewim, Sogo M. Abolarin, Akeeb Adepoju Fawole
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Abstract

This study presents a meticulous examination of the solar energy potential of five selected metropolitan cities (Abakaliki, Awka, Enugu, Owerri, and Umuahia) in Eastern part of Nigeria using deep learning algorithm, specifically the Long Short-Term Memory (LSTM) model. These cities, despite being characterized by extended rainy seasons and a high level of cloudiness, are suitable environment for solar power generation and investment opportunities. The employed methodology capitalized on the LSTM deep learning approach to analyze and predict energy generation, utilizing comprehensive hourly weather data from the National Airspace Agency (NASA). The data set comprised various parameters, such as date/time, solar azimuth angle, temperature, humidity, wind speed, wind direction, cloud cover, and power, enabling a thorough analysis of each city. To ensure accuracy, energy prediction capabilities were benchmarked against real-time datasets from a solar power plant in Ulsan, South Korea, thereby training and fine-tuning the model for precision. The LSTM model's performance metrics were maintained at a learning rate of 0.07, a batch size of 150, and a train-test split ratio of 0.8 to 0.2. Data validation exhibited a mean square error (MSE) of 0.01, demonstrating the model’s reliability. Results showed Enugu as having the highest solar energy potential, averaging 6.25 kWh/day, while Awka registered the most substantial electricity demand across various sectors. These findings highlight the substantial potential for photovoltaic (PV) power systems and advocate for the immediate implementation of renewable energy policy in the selected cities. These are expected to bring about significant implications for future renewable energy environmentally friendly investments in Nigeria and globally.
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利用深度学习算法分析尼日利亚东南部五个选定城市的太阳能潜力
本研究采用深度学习算法,特别是长短期记忆(LSTM)模型,对尼日利亚东部五个选定大城市(阿巴卡利基、阿卡、埃努古、奥韦里和乌穆阿希亚)的太阳能潜力进行了细致研究。这些城市的特点是雨季较长,云量较多,但却是太阳能发电的适宜环境和投资机会。所采用的方法利用 LSTM 深度学习方法,利用美国国家航空航天局(NASA)提供的每小时综合天气数据,分析和预测能源发电量。数据集包括各种参数,如日期/时间、太阳方位角、温度、湿度、风速、风向、云层和功率,从而能够对每个城市进行全面分析。为确保准确性,能源预测能力以韩国蔚山太阳能发电厂的实时数据集为基准,从而训练和微调模型的精确性。LSTM 模型的性能指标保持在 0.07 的学习率、150 的批次规模以及 0.8 对 0.2 的训练-测试分割比。数据验证的均方误差 (MSE) 为 0.01,证明了模型的可靠性。结果显示,埃努古的太阳能潜力最大,平均为 6.25 千瓦时/天,而阿沃卡各行业的电力需求量最大。这些发现凸显了光伏(PV)发电系统的巨大潜力,并倡导在选定城市立即实施可再生能源政策。预计这将对尼日利亚和全球未来的可再生能源环境友好型投资产生重大影响。
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