基于人工智能的太阳辐照度预测模型

Umang Soni, Saksham Gupta, T. Singh, Y. Vardhan, V. Jain
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引用次数: 0

摘要

印度的太阳能发电正以惊人的速度增长。印度的太阳能发电能力为20吉瓦,自2014年以来增长了8倍。因此,评估印度的太阳能潜力是当务之急。本研究的目的是利用15年来609个地点的非结构化海量(8000万行项)卫星数据,对印度次大陆每月太阳辐照度潜力进行优化预测模型。选择的变量包括温度、压力、相对湿度、月份、年份、纬度、经度、海拔、DHI、DNI和GHI。结合使用支持向量机,人工神经网络和射频的组合预测模型对影响太阳辐照度的因素。该模型的性能以其准确性来评价。SVM模型对测试数据的DHI、DNI、GHI值的准确率分别为95.11%、93.25%和96.88%,而ANN模型对测试数据的准确率分别为94.18%、91.60%和95.90%。较高的预测精度使得支持向量机、人工神经网络和射频模型具有很强的鲁棒性。因此,这个具有可持续财务模型的模型可以用来确定当前和未来建立太阳能发电场的主要地点,以及在印度没有当地气象数据测量设施的地方建立太阳能发电场的可行性。与为辅助辐照度模型而建立的气温、气压和湿度预测相互关系模型一起,该模型可用于印度次大陆地区的气候预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive Model of Solar Irradiance Using Artificial Intelligence
Solar power in India is growing at a tremendous pace. India's solar power capacity is 20 GW and has grown 8-fold since 2014. Assessing the solar potential in India is thus the need of the hour. The objective of this study is to make an optimized prediction model of the monthly potential of solar irradiance of the Indian Subcontinent, by utilizing hour-wise unstructured voluminous (80 million line item) satellite-based data from 609 locations for 15 years. The variables chosen are temperature, pressure, relative humidity, month, year, latitude, longitude, altitude, DHI, DNI, and GHI. Combining predictive models using combinations of SVM, ANN, and RF for factors affecting solar irradiance. This model's performance has been evaluated by its accuracy. Accuracy for DHI, DNI, GHI values on testing data evaluated through the SVM model is 95.11%, 93.25%, and 96.88%, respectively, whereas accuracy evaluated through the ANN model is 94.18%, 91.60%, and 95.90%, respectively. The achieved high prediction accuracy makes the SVM, ANN, and RF model very robust. This model with a sustainable financial model can thus be used to identify major locations to set up solar farms in the present and future and the feasibility of its establishment, wherever local meteorological data measuring facilities are not available in India. Along with the air temperature, air pressure, and humidity predictive interrelation model created to aid the irradiance model this can be used for climate predictions in the Indian sub-continental region.
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