Prediction of wind power generation and power ramp rate with time series analysis

Mi-Yeong Hwang, C. Jin, Y. Lee, Kwang Deuk Kim, Jungpil Shin, K. Ryu
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引用次数: 12

Abstract

The use of fossil fuel in the world has been increasing and it generates lots of greenhouse gases. As a result, environmental pollution brought us a serious weather change. In order to reduce the environmental pollution, we should use renewable energy that does not produce any pollution such as wind data. However, wind data can change much in a short time, which is called ramp event. It can make the demand and response imbalance and also cause damages to the wind turbines. Therefore, we should predict the power generation and power ramp rate (PRR) to avoid these problems. In this paper, we predicted the wind power generation and PRR with exponential smoothing method and ARIMA. The prediction method predict wind power generation and PRR after 1 minute using data measured 1 hour ago at 10 intervals. We got forecasting error rate such as Mean Absolute Error (MAE) and Root Mean Square Error (RMSE), and then we compared two results of ARIMA and exponential smoothing method. The comparison results showed that exponential smoothing method gets better prediction accuracy than ARIMA.
用时间序列分析预测风力发电和功率斜坡率
世界上化石燃料的使用一直在增加,它产生了大量的温室气体。结果,环境污染给我们带来了严重的天气变化。为了减少对环境的污染,我们应该使用不产生任何污染的可再生能源,如风能数据。然而,风数据可以在短时间内发生很大变化,这被称为斜坡事件。它会使需求和响应不平衡,也会对风力发电机组造成损害。因此,我们应该预测发电量和功率斜坡率(PRR)以避免这些问题。本文采用指数平滑法和ARIMA方法对风力发电量和PRR进行了预测。该预测方法利用1小时前的数据,以10个间隔预测1分钟后的风力发电量和PRR。得到了平均绝对误差(MAE)和均方根误差(RMSE)等预测错误率,并对ARIMA和指数平滑法的预测结果进行了比较。对比结果表明,指数平滑法的预测精度优于ARIMA法。
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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