Design of Deep Learning Algorithm in the Control System of Intelligent Inspection Robot of Substation

Shuangshuang Wei, Zhenzhong Gan, Chunfeng Fan, Zhuang Huang, Zhiyong Zhu, Xueshan Wei, Kai Qin
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Abstract

With the development of the scale of the power system and the maturity of robotics, the use of inspection robots instead of manual inspection can effectively improve the efficiency of inspection and realize the intelligent management of the power grid. In this paper, a control system for substation inspection robot is designed and implemented for the substation inspection environment. First, a convolutional neural network algorithm under deep learning (DL) is proposed to extract the characteristics of the inspection robot, and then related technologies for inspection robot control are proposed, including navigation and positioning, motion control, power supply management, safety and anti-collision, and finally, it can be obtained through the test of the control system. The inspection robot has good tracking capabilities. In addition, the real trajectory is basically consistent with the set trajectory, which also shows the robustness of the system. Therefore, the use of DL to design the control system of the intelligent inspection robot of the substation is of great research value. In this paper, it is hoped that the deep learning-based convolutional neural network algorithm can be used to extract the features of inspection robots, which can effectively prove that the robots have good tracking ability and promote the power grid inspection to a certain extent. This paper provides reference value for realizing the intelligentization of power grid selection.
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变电站智能巡检机器人控制系统中的深度学习算法设计
随着电力系统规模的发展和机器人技术的成熟,使用巡检机器人代替人工巡检可以有效地提高巡检效率,实现电网的智能化管理。本文针对变电站巡检环境,设计并实现了变电站巡检机器人的控制系统。首先,提出了一种深度学习(DL)下的卷积神经网络算法来提取巡检机器人的特征,然后提出了巡检机器人控制的相关技术,包括导航定位、运动控制、电源管理、安全与防碰撞等,最后通过控制系统的测试得到。该巡检机器人具有良好的跟踪能力。此外,实际轨迹与设定轨迹基本一致,也显示了系统的鲁棒性。因此,利用DL来设计变电站智能巡检机器人的控制系统具有很大的研究价值。本文希望利用基于深度学习的卷积神经网络算法提取巡检机器人的特征,从而有效证明机器人具有良好的跟踪能力,在一定程度上促进电网巡检。本文为实现电网选型智能化提供了参考价值。
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