Zhang Chao, Zhan Quanzhong, Wang Qi, Wu Haichao, He Ting, An Yi
Information Center of the Ministry of water resources of the P.R.C, Beijing 100053, China.
Beijing Tritalent Intelligence Technology Co., Ltd., Beijing 100078, China.
Sensors (Basel). 2020 Feb 17;20(4):1097. doi: 10.3390/s20041097.
Dams are important engineering facilities in the water conservancy industry. They have many functions, such as flood control, electric power generation, irrigation, water supply, shipping, etc. Therefore, their long-term safety is crucial to operational stability. Because of the complexity of the dam environment, robots with various kinds of sensors are a good choice to replace humans to perform a surveillance job. In this paper, an autonomous system design is proposed for dam ground surveillance robots, which includes general solution, electromechanical layout, sensors scheme, and navigation method. A strong and agile skid-steered mobile robot body platform is designed and created, which can be controlled accurately based on an MCU and an onboard IMU. A novel low-cost LiDAR is adopted for odometry estimation. To realize more robust localization results, two Kalman filter loops are used with the robot kinematic model to fuse wheel encoder, IMU, LiDAR odometry, and a low-cost GNSS receiver data. Besides, a recognition network based on YOLO v3 is deployed to realize real-time recognition of cracks and people during surveillance. As a system, by connecting the robot, the cloud server and the users with IOT technology, the proposed solution could be more robust and practical.
大坝是水利行业重要的工程设施。它们具有多种功能,如防洪、发电、灌溉、供水、航运等。因此,它们的长期安全对于运行稳定性至关重要。由于大坝环境的复杂性,配备各种传感器的机器人是取代人类执行监测工作的理想选择。本文提出了一种用于大坝地面监测机器人的自主系统设计,包括总体方案、机电布局、传感器方案和导航方法。设计并制造了一个坚固灵活的履带式移动机器人车身平台,该平台可基于微控制器和车载惯性测量单元进行精确控制。采用了一种新型低成本激光雷达进行里程估计。为了实现更稳健的定位结果,使用了两个卡尔曼滤波器回路与机器人运动学模型来融合轮式编码器、惯性测量单元、激光雷达里程计和低成本全球导航卫星系统接收器的数据。此外,部署了基于YOLO v3的识别网络,以在监测过程中实现对裂缝和人员的实时识别。作为一个系统,通过物联网技术将机器人、云服务器和用户连接起来,所提出的解决方案将更加稳健和实用。