确定土耳其各省的最佳光伏安装角度

IF 0.3 Q4 ENGINEERING, MULTIDISCIPLINARY Journal of Polytechnic-Politeknik Dergisi Pub Date : 2023-09-12 DOI:10.2339/politeknik.1299063
Sevda KAZEMZADEHMARAND, Adnan SÖZEN
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引用次数: 0

摘要

太阳跟踪器最大限度地收集太阳辐射,但由于其高成本,维护要求和每月角度调整相关的额外费用,不太常用。本文提出通过确定土耳其固定地点太阳能电池板的最佳倾斜来优化太阳能吸收。介绍了利用人工神经网络建立的方程,根据五个特定位置的特征来预测理想角度。输入变量、训练程序和网络设计显著影响神经网络模型预测的准确性。MATLAB软件为这次调查创建了三个不同的人工神经网络模型,每个模型都采用独特的训练设置和程序。Matlab图形指导算法和模型的选择,基于最小化MAE和RMSE,最大化线性相关系数(R),计算得到RMSE值为3.58811 e^(-6), R值为0.99998。将网络的估计数据与训练和测试成本θ数据进行比较,得到RMSE误差为0.43%,R2值为0.99978,表明准确率较高。研究城市的年平均最佳倾角为:安卡拉(35.18°)、安塔利亚(34.29°)、Ağrı(34.91°)、İstanbul(34.50°)、锡瓦斯(34.96°)、İzmir(35.19°)、锡诺普(35.06°)和加济安泰普(34.97°)。
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DETERMINING THE OPTIMUM PHOTOVOLTAIC INSTALLATION ANGLE FOR PROVINCES IN TURKEY
Solar trackers maximize solar radiation collection but are less commonly used due to their high cost, maintenance requirements, and the additional expenses associated with monthly angle adjustments. This paper proposes optimizing solar energy absorption by determining the optimal tilt for fixed-site solar panels in Turkey. It introduces an equation developed with artificial neural networks to forecast the ideal angle based on five location-specific features. Input variables, training procedures, and network design significantly impact the accuracy of Neural Network models' predictions. MATLAB software created three distinct ANN models for this investigation, each employing unique training setups and procedures. Matlab graphs guided the selection of algorithms and models based on minimizing MAE and RMSE while maximizing the linear correlation coefficient (R). The RMSE value obtained according to the calculations was 3.5881e^(-6), and the R value was 0.99998. The network's estimated data was compared to the training and testing cosθ data, yielding an RMSE error of 0.43% and an R2 value of 0.99978, indicating high accuracy. The average annual optimum inclination angles for the studied cities are as follows: Ankara (35.18°), Antalya (34.29°), Ağrı (34.91°), İstanbul (34.50°), Sivas (34.96°), İzmir (35.19°), Sinop (35.06°), and Gaziantep (34.97°).
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来源期刊
Journal of Polytechnic-Politeknik Dergisi
Journal of Polytechnic-Politeknik Dergisi ENGINEERING, MULTIDISCIPLINARY-
自引率
33.30%
发文量
125
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