利用传统方法和机器学习技术进行太阳能光伏发电预测

A. M. Alam, Nahid-Al-Masood, Iqbal Asif Razee, Mohammad Zunaed
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引用次数: 7

摘要

由于太阳能光伏(PV)发电等可再生能源的不可预测特性,电力部门的稳定性变得不确定。它危及对任何变化模式都非常敏感的电力系统的平衡,并导致电力消费和生产的不匹配。收集可再生能源的最终目标是将其整合到电网中。因此,预测太阳能电池的总发电量就成为一个重要的方面。本研究描述了各种卷积神经网络(CNN)技术,如常规CNN、多头CNN和CNN- lstm (CNN Long - Short-Term Memory),这些技术采用滑动窗口算法等特征提取和预处理技术进行准确的预测。气象参数如太阳辐照度、空气温度、湿度、风向和风速与太阳能电池板的输出有关。例如,输入参数的跨度为5年,并预测为特定的一天和一周。通过与自回归移动平均(ARMA)和多元线性回归(MLR)等传统预测技术进行比较,对结果进行了评价。采用RMSE、MAE、MBE等评价指标对疗效进行评价。传统和机器学习技术都证明了在产生短期和中期预测方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Solar PV Power Forecasting Using Traditional Methods and Machine Learning Techniques
The stability of the power sector has become uncertain due to the unpredictable characteristics of renewable energy sources such as solar photovoltaic (PV) power generation. It endangers the balance of the power system which is very sensitive to any mode of change and results in an ineffectiveness to match power consumption and production. The ultimate goal of harvesting renewable energy is to integrate it into the power grid. So, predicting the total amount of power generation by solar cells has become an important aspect. This study delineates various Convolutional Neural Network (CNN) techniques such as regular CNN, multi-headed CNN, and CNN-LSTM (CNN Long Short-Term Memory) which employs sliding window algorithm and other feature extraction and pre-processing techniques to make accurate predictions. Meteorological parameters such as Solar Irradiance, Air Temperature, Humidity, Wind Direction, and Wind Speed are related to the output of the solar panels. For instance, input parameters were taken for 5 years span and predicted for a particular day and one week. The results were evaluated by comparing them with traditional forecasting techniques such as Autoregressive Moving Average (ARMA) and Multiple Linear Regression (MLR). The efficacy of the result was also evaluated by the Evaluation Metrics such as RMSE, MAE, and MBE. Both traditional and machine learning techniques demonstrate the effectiveness in producing short-term and medium-term forecasting.
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