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Multi Classification of Static Security Assessment using Teaching Learning based Optimization enhanced Support Vector Machine

机译:基于教学学习优化增强支持向量机的静态安全评估多分类

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the assessment of static security is very essential for reliable and safe functioning of the power system. The primary drawbacks of standard power flow techniques are lengthy calculation time and large memory need. The composite security index has been implemented here to avoid the problem of masking involved with the previously used performance index for assessment of static security. Multi-classifier for assessment of static security in power system has been implemented utilizing support vector machine. The parameters of Radial Basis Function are selected using Grid Search method and Teaching Learning based Optimization. Sequential forward selection method has been used to select features which are much lesser and best features. The results of the proposed Teaching learning based binary classifier are validated using two IEEE standard test systems.
机译:静态安全性评估对于电力系统的可靠和安全功能非常重要。标准电流技术的主要缺点是冗长的计算时间和大的内存需求。此处已实施复合安全指标以避免屏蔽涉及先前使用的性能指数以进行静态安全性的问题。用于评估电力系统中的静态安全性的多分类器已经利用支持向量机来实现。使用网格搜索方法选择径向基功能的参数和基于教学的基于学习的优化选择。顺序前向选择方法已用于选择具有更小和最佳功能的特征。使用两个IEEE标准测试系统验证了基于教学学习的二进制分类器的结果。

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