基于深度森林算法的变压器保护方案

Anyang He, Z. Jiao, Zongbo Li
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摘要

为了提高变压器保护性能,提出了一种基于深森林的变压器保护方案。考虑到磁化曲线能反映涌流产生的本质原因,但难以测量,选择电压和差动电流序列作为深林的备选输入。定义每一层的分类偏差,自动确定深度森林的深度。保护动作基于算法输出。利用PSCAD/EMTDC仿真采样数据对深度森林进行训练。通过仿真数据和动态模型实验数据验证了深度森林算法的性能。试验结果表明,深度森林算法能够快速、可靠地识别变压器的运行状态。该方法泛化性好,不需要高采样频率,对CT饱和和过激励有一定的适应性。
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A Transformer Protection Scheme Based on The Deep Forest Algorithm
A transformer protection scheme based on the deep forest is proposed to improve the performance of transformer protection. Considering that the magnetization curve can reflect the essential cause of the inrush current, but it is difficult to measure, the voltage and differential current sequences are selected as alternative input of the deep forest. The classification deviation of each layer is defined to automatically determine the depth of the deep forest. The protection acts based on the algorithm output. The deep forest is trained by the simulation sampling data from PSCAD/EMTDC simulation. The performance of the deep forest algorithm is verified through simulation data and dynamic model experimental data. The test results show that the deep forest algorithm can identify the operating states of transformer quickly and reliably. It has good generalization and no requirement of high sampling frequency, and has certain adaptability to CT saturation and over excitation.
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