Using machine learning prediction to design an optimized renewable energy system for a remote area in Italy

Ali Rezaei, Afshin Balal, Yaser Pakzad Jafarabadi
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Abstract

Due to the lack of fossil fuels, there is a significant demand to employ renewable energy systems (RES) worldwide. This paper proposes designing an optimized RES for a remote microgrid that relies solely on solar and wind sources. The proposed RES aims to provide reliable and efficient energy to the microgrid by using machine learning algorithms to forecast the power output of the solar and wind sources. This forecasting will help the system to anticipate and adjust to changes in the weather patterns that may affect the availability of solar and wind. In addition, the system advisor model (SAM) software is used to design the hybrid solar/wind system, considering factors such as the size of the microgrid and the available resources. The system comprises a 60-kW wind system of ten turbines and a 100-kW PV system spread out over the houses. The results show that random forest regression (RFR) models achieved a high level of accuracy in predicting solar power generation, as evidenced by their low mean squared error (MSE) and high R² values. Additionally, a proposed hybrid system can generate enough energy to meet the area's needs.
利用机器学习预测为意大利偏远地区设计优化的可再生能源系统
由于化石燃料的缺乏,世界范围内对采用可再生能源系统(RES)的需求很大。本文提出为仅依赖太阳能和风能的远程微电网设计一个优化的可再生能源系统。拟议的RES旨在通过使用机器学习算法来预测太阳能和风能的功率输出,为微电网提供可靠和高效的能源。这种预报将有助于系统预测和调整可能影响太阳能和风能可用性的天气模式的变化。此外,利用系统顾问模型(system advisor model, SAM)软件设计太阳能/风能混合系统,考虑微电网规模和可用资源等因素。该系统包括一个由10台涡轮机组成的60千瓦风力系统和一个分布在房屋上的100千瓦光伏系统。结果表明,随机森林回归(RFR)模型具有较低的均方误差(MSE)和较高的R²值,在预测太阳能发电量方面具有较高的精度。此外,一个拟议的混合系统可以产生足够的能量来满足该地区的需求。
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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