Early & Accurate Forecasting of Mid Term Wind Energy Based on PCA Empowered Supervised Regression Model

P. Dutta, Neha Shaw, K. Das, Luna Ghosh
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引用次数: 1

Abstract

In the Development stage, information about the environment should be accessed. This data is pre-processed with the help of Principal Component Analysis (PCA) to reduce the irrelevant attributes. After that MLA’s such as Decision Tree (DT), Random Forest (RF), KNN, Linear regression (LR) & multilayer Neural Network model (MLP-ANN) models are utilized in testing datasets to predict the wind energy. The Power which is determined necessities to check and separate from the first ability to refresh the framework until and except if the necessary dependability is assembled from learning. In the assessment stage, the prepared expectation framework is then utilized to anticipate the Power for the test samples. In this research four statistical performance indicators & training time used to identify the best-fitted model. In the analysis section, it is seen that PCA Based DT outperformed the others algorithm by means of MAE, MSE, RMSE, Regression & Training time. Keyword : Wind speed prediction, Machine Learning techniques, Regression Analysis, Performance metrics
基于PCA授权监督回归模型的中期风能早期准确预测
在开发阶段,应该访问有关环境的信息。利用主成分分析(PCA)对数据进行预处理,减少不相关属性。然后在测试数据集中利用决策树(DT)、随机森林(RF)、KNN、线性回归(LR)和多层神经网络模型(MLP-ANN)等MLA模型对风能进行预测。被确定的权力必须与第一种刷新框架的能力进行检查和分离,直到并除非从学习中获得了必要的可靠性。在评估阶段,然后利用准备好的期望框架来预测测试样本的功率。本研究采用四个统计性能指标&训练时间来确定最佳拟合模型。在分析部分,我们可以看到基于PCA的DT算法在MAE、MSE、RMSE、回归和训练时间上都优于其他算法。关键词:风速预测,机器学习技术,回归分析,性能指标
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