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Mining Markov chain transition matrix from wind speed time series data

机译:从风速时间序列数据中挖掘马尔可夫链转移矩阵

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Extracting important statistical patterns from wind speed time series at different time scales is of interest to wind energy industry in terms of wind turbine optimal control, wind energy dispatch/scheduling, wind energy project design and assessment, and so on. In this paper, a systematic way is presented to estimate the first order (one step) Markov chain transition matrix from wind speed time series by two steps. Wind speed time series data is used first to generate basic estimators of transition matrices (i.e. first order, second order, third order, etc.) based on counting techniques. Then an evolutionary algorithm (EA), specifically double-objective evolutionary strategy algorithm (ES), is proposed to search for the first order Markov chain transition matrix which can best match these basic estimators after transforming the first order transition matrix into its higher order counterparts. The evolutionary search for the first order transition matrix is guided by a predefined cost function which measures the difference between the basic estimators and the first order transition matrix, and its high order transformations. To deal with the potential high dimensional optimization problem (i.e. large transition matrices), an enhanced offspring generation procedure is proposed to help the ES algorithm converge efficiently and find better Pareto frontiers through generations. The proposed method is illustrated with wind speed time series data collected from individual 1.5 MW wind turbines at different time scales.%School of Business, Nanjing University, Nanjing, Jiangsu 210093, China;School of Business, Nanjing University, Nanjing, Jiangsu 210093, China;Department of Mechanical and Industrial Engineering, The University of Iowa, Iowa City, IA 52242-1527, United States;Hohai University. Nanjing. Jiangsu 210098, China;
机译:从风力涡轮机的最佳控制,风能调度/调度,风能项目设计和评估等方面,从不同时间尺度的风速时间序列中提取重要的统计模式对于风能行业来说很有意义。本文提出了一种系统的方法,可以分两步从风速时间序列估计一阶(一步)马尔可夫链转移矩阵。首先使用风速时间序列数据基于计数技术来生成过渡矩阵的基本估计量(即一阶,二阶,三阶等)。然后提出一种进化算法(EA),特别是双目标进化策略算法(ES),以搜索一阶马尔可夫链转移矩阵,该矩阵可以将一阶转移矩阵转换为其较高阶对应物,从而最匹配这些基本估计量。对一阶转换矩阵的演化搜索由预定义的成本函数指导,该函数测量基本估计量与一阶转换矩阵及其高阶变换之间的差异。为了解决潜在的高维优化问题(即大转换矩阵),提出了一种增强的后代生成过程,以帮助ES算法有效收敛并通过生成找到更好的帕累托边界。从不同时间尺度从单个1.5 MW风力涡轮机收集的风速时间序列数据说明了该方法。%南京大学商学院,江苏南京210093;南京大学商学院,江苏南京210093,中国;爱荷华州大学爱荷华大学机械与工业工程系,美国IA 52242-1527;河海大学。南京。江苏210098;

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