Multi angle location and identification method of suspension insulators based on R2CNN algorithm

Chao Hou, Yuchen Xing, Ziru Ma, Hai-Fen Liu, Shaotong Pei, Rui Yang, Zhilei Li
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引用次数: 1

Abstract

With the continuous development of smart grids, power inspections have become intelligent and sophisticated. This paper proposes a method based on inclined boxes for the automatic position recognition and diagnosis of suspension insulators under a visible light channel. The rotational region convolutional neural networks (R2CNN) algorithm is used to extract the features of large sample images of suspension insulators, and the model is trained to identify and select insulated devices in any direction. The open-source TensorFlow software is used as the identification tool and is combined with related tuning strategies to optimize the model during the training process. The final model’s recognition accuracy was 89.73%. The results prove that this method overcomes the limitations of using axis-aligned boxes for detection, which can provide more accurate position information for diagnoses of suspension insulators. The model has strong robustness in the changing environment, and has certain innovation value and engineering significance.
基于R2CNN算法的悬架绝缘子多角度定位与识别方法
随着智能电网的不断发展,电力巡检变得智能化、高精尖化。提出了一种基于倾斜盒的悬架绝缘子位置自动识别与诊断方法。采用旋转区域卷积神经网络(R2CNN)算法提取悬架绝缘子大样本图像的特征,训练模型在任意方向上识别和选择绝缘器件。使用开源的TensorFlow软件作为识别工具,并结合相关调优策略在训练过程中对模型进行优化。最终模型的识别准确率为89.73%。结果表明,该方法克服了轴向盒检测的局限性,可以为悬空绝缘子的诊断提供更准确的位置信息。该模型对变化的环境具有较强的鲁棒性,具有一定的创新价值和工程意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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