为了提高短期风电功率预测的精度,提出一种基于Markov链理论的预测算法.该算法直接对风电功率数据进行分析,划分了四种状态空间,并根据状态空间数和建模数据量的不同分别建立一阶和二阶Markov链模型.采用新误差公式NRMSE,给出不同状态空间数和建模数据量下的一阶、二阶Markov链模型预测性能比较结果.进一步给出在选取相同状态空间数、相同建模数据量的情况下,一阶和二阶Markov链模型的灵敏度分析.经实例验证,该算法能有效地提高单点值预测精度,并且给出了与预测值相关的概率分布结果.%A forecasting algorithm based on Markov chain theory is proposed to improve the precision of short-term wind power forecasting. The data of the wind power are analyzed directly and four kinds of state-spaces are formed. The order-1 and order-2 models are built according to the number of state-space and the differences of modeling quantities. The comparison results between order-1 and order-2 Markov models under different numbers of state-spaces and modeling data are presented through the new error formula NRMSE. And then sensitivity analyses of order-1 and order-2 Markov models are provided based on the same number of state-spaces and modeling quantity. Experimental results show that the proposed method can improve the prediction accuracy, and it provides probability distribution results associated with prediction value.
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