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Wind speed and wind direction forecasting using echo state network with nonlinear functions

机译:利用具有非线性函数的回波状态网络预测风速和风向

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Wind turbines are among the most popular sources of renewable energy. The energy available from wind varies widely because wind energy is highly dependent on continually fluctuating weather related parameters such as wind speed and wind direction. Wind farms have difficulties with system scheduling and energy dispatching because the availability of wind power is not known in advance. Therefore, the growth of wind power penetration in the emerging power system has made a precise wind forecasting method indispensable for system operators to include wind power generation in unit commitment and economic scheduling. This paper proposes two methods for wind speed and direction forecasting based on the nonlinear relations between the internal states of echo state networks. The methods decrease the number of internal states, and reduce the computational load compared to classical ESNs with fixed sizes and topologies by reducing the orders of the weight matrices. The design is simple with high learning capability and prediction accuracy, and does not require extensive training, parameter tuning, or complex optimization. The methods are tested with wind speed and direction data provided by the Nevada department of transportation (NDOT) roadway weather stations in the Reno, NV area. To demonstrate the efficiency of the proposed methods, they are compared with classical echo state networks (ESN) and with adaptive neuro-fuzzy inference system (ANFIS). The results of the new methods compare favorably with both ESN and ANFIS. (C) 2018 Elsevier Ltd. All rights reserved.
机译:风力涡轮机是最受欢迎的可再生能源之一。风能可利用的能量变化很大,因为风能高度依赖于与天气相关的参数不断波动,例如风速和风向。风电场在系统调度和能源分配方面存在困难,因为风电的可用性尚未事先得知。因此,新兴电力系统中风电渗透率的增长使得精确的风能预测方法成为系统运营商必不可少的,它将风力发电纳入机组承诺和经济调度中。基于回波状态网络内部状态之间的非线性关系,提出了两种风速和风向预测方法。与具有固定大小和拓扑的经典ESN相比,该方法减少了内部状态的数量,并通过减少权重矩阵的阶数来减少计算负荷。该设计简单,具有较高的学习能力和预测准确性,并且不需要大量的培训,参数调整或复杂的优化。内华达州里诺地区的内华达州交通运输部(NDOT)道路气象站提供的风速和风向数据对这些方法进行了测试。为了证明所提出方法的有效性,将它们与经典回波状态网络(ESN)和自适应神经模糊推理系统(ANFIS)进行了比较。新方法的结果可与ESN和ANFIS相比。 (C)2018 Elsevier Ltd.保留所有权利。

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