利用人工神经网络方法预测基于环境参数的光伏输出功率

Desri Kristina, Silalahi, Agnes Christy, Margareth Rumapea, Wahmisari Priharti, B. S. Aprillia, Agnes Silalahi, Christy Margareth, Wahmisari Rumapea, Bandiyah Priharti, Sri Aprillia
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引用次数: 0

摘要

光伏是一种可以将太阳光转化为电能的系统。然而,光伏发电的效率往往较低,其性能受到灰尘、风速、湿度、温度等环境参数和其他外部因素的影响。由于影响发电量的因素很多,我们需要一个功率输出预测系统,以帮助规划和管理光伏系统并提高其效率。在这项研究中,我们设计了一个系统,可以使用人工神经网络方法或通常所说的人工神经网络,在短期内预测光伏输出功率。预测的依据是风速、灰尘、湿度和温度等环境参数对 10 Wp 光伏系统的影响。将 7 天的性能数据作为数据集,然后使用具有 1 个输入层、3 个隐藏层和 1 个输出层以及 3 个样本历元(10、100 和 1000)的人工神经网络进行处理。研究结果可以预测未来 4 天的光伏功率输出,误差值为平均平方误差 (MSE) 0.0010、平均绝对误差 (MAE) 0.0155、均方根误差 (RMSE) 0.0229,功率增加 0.5 至 1 瓦。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting Photovoltaic Output Power Based on Environmental Parameters Using Artificial Neural Network Methods
Photovoltaic is a system that can convert sunlight into electrical energy. However, photovoltaic efficiency tends to be low and its performance is affected by several environmental parameters such as dust, wind speed, humidity, temperature and other external factors. Because there are many factors that can affect the power generated, we need a power output prediction system that can assist in planning and managing as well as increasing the efficiency of photovoltaic systems. In this research a system is designed that can predict the photovoltaic output power in the short term using the Artificial Neural Network method or what is often called an artificial neural network. Predictions are made based on the effects of several environmental parameters such as wind speed, dust, humidity, and temperature on a 10 Wp photovoltaic system. Performance data for 7 days is used as a dataset and then processed using ANN with 1 input layer, 3 hidden layers and 1 output layer and 3 sample epochs (10, 100, and 1000). The results of the study can predict the output of photovoltaic power for the next 4 days with an error value of Mean Square Error (MSE) of 0.0010, Mean Absolute Error (MAE) of 0.0155, Root Mean Square Error (RMSE) of 0.0229 with an increase in power reach 0.5 to 1 watt.
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