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Short-term Prediction of Wind Power Output Based on Markov Chain

机译:基于马尔可夫链的风力输出短期预测

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Wind power short-term predicting technology has a great significance in process of wind power decision-making. Recent years, the technology had been studied extensively in industry. Markov chain model has strong adaptability, forecast accuracy higher and other else advantages, which is suitable for wind power short-term prediction. This paper have set up one step Markov prediction model and based on which predicting short-term wind power output, and taken the historical power data of an actual wind farm in Jilin Province as an example to simulate and analyze. The paper also have proposed and used RMSE, MXPE, MAPE error analysis indicators to analyze simulation results of different status spaces. The results showed that when the status space is 60 the prediction accuracy of the method is best.
机译:风电短期预测技术在风力决策过程中具有重要意义。 近年来,该技术已在行业中进行广泛研究。 马尔可夫链模型具有强大的适应性,预测精度高,其他优点,适用于风力发电短期预测。 本文建立了一个步骤马尔可夫预测模型,并基于其预测短期风力输出,并采取了吉林省实际风电场的历史权力数据,以模拟和分析。 本文还提出并使用了RMSE,MXPE,MAPE错误分析指标来分析不同状态空间的仿真结果。 结果表明,当状态空间为60时,该方法的预测精度最好。

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