Toledo Jonay, Piñeiro Jose D, Arnay Rafael, Acosta Daniel, Acosta Leopoldo
Computer Science and System Department, Universidad de La Laguna, 38200 Santa Cruz de Tenerife, Spain.
Sensors (Basel). 2018 Jan 12;18(1):200. doi: 10.3390/s18010200.
In this paper, a study of the odometric system for the autonomous cart Verdino, which is an electric vehicle based on a golf cart, is presented. A mathematical model of the odometric system is derived from cart movement equations, and is used to compute the vehicle position and orientation. The inputs of the system are the odometry encoders, and the model uses the wheels diameter and distance between wheels as parameters. With this model, a least square minimization is made in order to get the nominal best parameters. This model is updated, including a real time wheel diameter measurement improving the accuracy of the results. A neural network model is used in order to learn the odometric model from data. Tests are made using this neural network in several configurations and the results are compared to the mathematical model, showing that the neural network can outperform the first proposed model.
本文介绍了针对自动小车Verdino的里程测量系统的一项研究,Verdino是一款基于高尔夫球车的电动车辆。里程测量系统的数学模型是从小车运动方程推导出来的,并用于计算车辆的位置和方向。该系统的输入是里程测量编码器,该模型将车轮直径和车轮间距作为参数。利用这个模型,进行最小二乘最小化以获得名义上的最佳参数。该模型得到了更新,包括实时测量车轮直径以提高结果的准确性。使用神经网络模型从数据中学习里程测量模型。在几种配置下使用该神经网络进行了测试,并将结果与数学模型进行了比较,结果表明神经网络的性能优于最初提出的模型。