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Contextual Bayesian optimization with trust region (CBOTR) and its application to cooperative wind farm control in region 2

机译:信任区域的上下文贝叶斯优化(CBOTR)及其在区域2中的风电场合作控制中的应用

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In this study, we propose a contextual Bayesian optimization with Trust-Region (CBOTR), an extended version of Bayesian optimization (BO) that can find an optimum input of a target system (or unknown function) through the iterative learning and sampling procedure. CBOTR adds two features to BO: (1) CBOTR can take into account context information which modifies the input and output relationship of a target system, and (2) CBOTR restricts the searching space for the next input to be selected so that it can rapidly find an optimum. The results from simulation studies using a set of benchmark functions and a wind farm power simulator showed that the CBOTR algorithm can achieve an almost optimum target value by taking a small number of trial actions (samplings). The proposed algorithm particularly suits well to determine the joint optimal operational conditions of wind turbines in a wind farm for maximizing the total energy production, in that the complex interaction among wind turbines in a wind farm is difficult to model using an analytical model and one needs to find the optimum operational conditions for varying wind conditions.
机译:在这项研究中,我们提出了基于信任区域的贝叶斯优化(CBOTR),这是贝叶斯优化(BO)的扩展版本,可以通过迭代学习和采样过程找到目标系统(或未知函数)的最佳输入。 CBOTR为BO添加了两个功能:(1)CBOTR可以考虑修改目标系统的输入和输出关系的上下文信息,并且(2)CBOTR限制了要选择的下一个输入的搜索空间,因此它可以快速地进行选择。找到一个最佳。使用一组基准函数和一个风电场功率模拟器进行的模拟研究结果表明,CBOTR算法可以通过采取少量的试验动作(采样)来达到几乎最佳的目标值。所提出的算法特别适合于确定风电场中风力涡轮机的联合最佳运行条件,以最大化总的发电量,因为很难使用解析模型来模拟风电场中风力涡轮机之间的复杂相互作用,并且一个需求为变化的风力条件找到最佳的运行条件。

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