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Artificial neural network and kalman filter approaches based on arima for daily wind speed forecasting

机译:基于Arima的人工神经网络和Kalman滤波方法进行日风速预报。

摘要

The wind speed forecasting is important to observe the wind behaviour in the future and control the harms caused by high or slow speeds. Daily wind speed is more consistent and reliable than other time scales by providing vast monitoring and effective planning. Although a linear autoregressive integrated moving average (ARIMA) model has been used for wind speed forecasting in many recent studies, but the model is unable to identify the nonlinear pattern of wind speed data. ARIMA modelling process causes the stochastic uncertainty as a second reason of inaccurate forecasting results. Wind speed data collection process faces several problems such as the failure of data observing devices or other casual problems that lead losing parts of data. Therefore, wind speed data naturally contains missing values. In this study, an ARIMA-artificial neural network (ANN) and ARIMA-Kalman filter (KF) methods are proposed to improve wind speed forecasting by handling the nonlinearity and the uncertainty respectively. A new hybrid KF-ANN method based on the ARIMA model improves the accuracy of wind speed forecasting by rectifying both nonlinearity and uncertainty jointly. These proposed methods are compared with others such as AR-ANN, AR-KF, and Zhang’s method. AR-ANN method is also used to impute the missing values. It is capable to overcome the missing values problem in wind speed data with nonlinear characteristic. It is compared with linear, nearest neighbour, and state space methods. Two different daily wind speed data from Iraq and Malaysia have been used as case studies. The forecasting results of the ARIMA-ANN, ARIMA-KF and the new hybrid KF-ANN methods have shown in better forecasting than other compared methods, while AR-KF and AR-ANN methods provided acceptable forecasts compared to ARIMA model. The ARIMAANN and the new hybrid KF-ANN methods outperformed all other methods. The comparison of missing values imputation methods has shown that AR-ANN outperformed the others. In conclusion, the ARIMA-ANN and the new hybrid KFANN can be used to forecast wind speed data with nonlinearity and uncertainty characteristics more accurately. The imputation method AR-ANN can be used to impute the missing values accurately in wind speed data with nonlinear characteristic.
机译:风速预测对于观察未来的风向和控制高速或慢速风速造成的危害非常重要。通过提供广泛的监控和有效的计划,每日风速比其他时间范围更一致,更可靠。尽管在最近的许多研究中,线性自回归综合移动平均值(ARIMA)模型已用于风速预测,但是该模型无法识别风速数据的非线性模式。 ARIMA建模过程导致随机不确定性是预测结果不准确的第二个原因。风速数据收集过程面临一些问题,例如数据观测设备的故障或其他导致丢失部分数据的偶然问题。因此,风速数据自然包含缺失值。在这项研究中,提出了一种ARIMA人工神经网络(ANN)和ARIMA-卡尔曼滤波(KF)方法,分别通过处理非线性和不确定性来改善风速预报。一种新的基于ARIMA模型的混合KF-ANN方法通过联合纠正非线性和不确定性来提高风速预测的准确性。将这些提议的方法与其他方法(例如,AR-ANN,AR-KF和Zhang的方法)进行了比较。 AR-ANN方法也用于估算缺失值。它能够克服具有非线性特征的风速数据中的缺失值问题。将其与线性,最近邻和状态空间方法进行比较。案例研究使用了来自伊拉克和马来西亚的两个不同的每日风速数据。与其他比较方法相比,ARIMA-ANN,ARIMA-KF和新的混合KF-ANN方法的预测结果显示出更好的预测,而与ARIMA模型相比,AR-KF和AR-ANN方法提供了可接受的预测。 ARIMAANN和新的混合KF-ANN方法优于所有其他方法。缺失值插补方法的比较表明,AR-ANN优于其他方法。总之,ARIMA-ANN和新型混合KFANN可用于更准确地预测具有非线性和不确定性特征的风速数据。插补方法AR-ANN可以用来准确地对具有非线性特征的风速数据中的缺失值进行插补。

著录项

  • 作者

    Shukur Osamah Basheer;

  • 作者单位
  • 年度 2015
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
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