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A novel intelligent decision support tool for average wind speed clustering

机译:一种用于平均风速聚类的新型智能决策支持工具

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The utilization ratio of wind energy, which is one of the renewable energy sources, is increased around 25% since last 15 years. However, the parameters such as performance of wind turbines and climate features are not analyzed adequately. At the analysis stage of these parameters, data mining techniques are required to be used. In this study, the agglomerative hierarchical clustering method which is one of the data mining techniques is used to analyze the provinces located in the Central Anatolia Region of Turkey in terms of average wind speed. Nearest neighbor algorithm is used as the clustering algorithm. Euclidean, Manhattan and Minkowski distance metrics are used determine the optimum hierarchical clustering results in this algorithm. The achieved clustering results based on Euclidean distance metric provide the optimum inferences to expert according to other distance metrics.
机译:自最近15年以来,作为可再生能源之一的风能的利用率提高了约25%。然而,诸如风力涡轮机的性能和气候特征之类的参数没有得到足够的分析。在这些参数的分析阶段,需要使用数据挖掘技术。在这项研究中,聚集分层聚类方法是一种数据挖掘技术,用于根据平均风速分析位于土耳其中部安纳托利亚地区的省份。最近邻算法被用作聚类算法。欧几里得距离,曼哈顿距离和Minkowski距离度量用于确定该算法中的最佳分层聚类结果。基于欧几里德距离度量的聚类结果可根据其他距离度量为专家提供最佳推断。

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