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Non-linear model predictive control for constrained robot navigation in row crops

机译:大田作物约束机器人导航的非线性模型预测控制

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Vehicles which operate in agricultural row crops, need to strictly follow the established wheel tracks. Errors in navigation where the robot sways of its path with one or more wheels may damage the crop plants. The specific focus of this paper is on an agricultural robot operation in row cultures. The robot performs machine vision detecting weeds within the crop rows and treats the weeds by high precision drop-on-demand application of herbicide. The navigation controller of the robot needs to follow the established wheel tracks and minimize the camera system offset from the seed row. The problem has been formulated as a Nonlinear Model Predictive Control (NMPC) problem with the objective of keeping the vision modules centered over the seed rows, and constraining the wheel motion to the defined wheel tracks. The system and optimization problem has been implemented in Python using the Casadi framework. The implementation has been evaluated through simulations of the system, and compared with a PD controller. The NMPC approach display advantages and better performance when facing the path constraints of operating in row crops.
机译:在农业大田作物上行驶的车辆必须严格遵循既定的轮迹。机器人用一个或多个轮子摇摆其路径的导航错误可能会损坏农作物。本文的重点是在行式养殖中的农业机器人操作。该机器人执行机器视觉检测农作物行内的杂草,并通过高精度按需滴水除草剂处理杂草。机器人的导航控制器需要遵循已建立的车轮轨迹,并最大程度地减少摄像机系统与种子行之间的偏移。该问题已被表述为非线性模型预测控制(NMPC)问题,其目的是将视觉模块保持在种子行上方居中,并将车轮运动限制在定义的车轮轨迹上。系统和优化问题已使用Casadi框架在Python中实现。通过对系统的仿真评估了实现,并与PD控制器进行了比较。面对大田作物作业的路径限制时,NMPC方法显示出优势和更好的性能。

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