CNN-LSTM based Wind Power Prediction System to Improve Accuracy

Rae-Jin Park, Sungwoo Kang, Jaehyeong Lee, Seungmin Jung
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Abstract

In this study, we propose a wind power generation prediction system that applies machine learning and data mining to predict wind power generation. This system increases the utilization rate of new and renewable energy sources. For time-series data, the data set was established by measuring wind speed, wind generation, and environmental factors influencing the wind speed. The data set was pre-processed so that it could be applied appropriately to the model. The prediction system applied the CNN (Convolutional Neural Network) to the data mining process and then used the LSTM (Long Short-Term Memory) to learn and make predictions. The preciseness of the proposed system is verified by comparing the prediction data with the actual data, according to the presence or absence of data mining in the model of the prediction system.
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基于CNN-LSTM的风电预测系统提高预测精度
在这项研究中,我们提出了一个风力发电预测系统,该系统应用机器学习和数据挖掘来预测风力发电。该系统提高了新能源和可再生能源的利用率。对于时间序列数据,通过测量风速、风力和影响风速的环境因素建立数据集。对数据集进行预处理,以便可以适当地应用于模型。该预测系统将CNN(卷积神经网络)应用于数据挖掘过程,然后使用LSTM(长短期记忆)进行学习和预测。根据预测系统模型中是否存在数据挖掘,将预测数据与实际数据进行对比,验证了所提系统的准确性。
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