Application and Analysis of Random Forest Algorithm for Estimating Lawn Grass Lengths in Robotic Lawn Mower

Kazuki Zushida, Zhang Haohao, H. Shimamura, Kazuhiro Motegi, Y. Shiraishi
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引用次数: 1

Abstract

This paper states an estimation method for lawn grass lengths or ground conditions based on random forest algorithm from the observation data obtained by fusion of sensors. This estimation relates to Digital Twin and Virtual Twin of Hybrid Twin approach for the autonomous driving of robotic lawn mowers. The robotic lawn mowers are becoming popular with the advent of efficient sensors and embedded systems and we are now developing a practical autonomous driving and its group control algorithm for large lawn grass areas. However, one of the important functions of robotic lawn mower, that is, the length of lawn grasses or such ground conditions as dirt, gravel, or concrete, etc., are not recognized precisely with the current robotic lawn mower. As a result, the motor for cutting lawn grasses is running with constant rotation speed from the beginning to the end of operation of robotic lawn mower. This leads to the waste of battery and gives a large drawback for the control of robotic lawn mower. In order to precisely control the rotation speed of motor and save the battery, the lawn grass lengths and ground conditions are estimated by using the effective sensor data. The application of random forest algorithm to the fusion of sensors on a commercial robotic lawn mower attained more than 90% correct estimation ratio in several experiments on actual lawn grass areas. Now, the suggested algorithm and the fusion of sensors are evaluated against wide range of lawn and grounds.
随机森林算法在自动割草机草坪草长估计中的应用与分析
本文提出了一种基于随机森林算法的基于传感器融合观测数据的草坪草长或地面状况估计方法。这一估计涉及到割草机机器人自动驾驶的数字双胞胎和虚拟双胞胎混合双胞胎方法。随着高效传感器和嵌入式系统的出现,机器人割草机越来越受欢迎,我们现在正在开发一种实用的自动驾驶及其大型草坪草坪的群控制算法。然而,机器人割草机的一个重要功能,即草坪草的长度或诸如污垢,砾石或混凝土等地面条件,目前的机器人割草机并不能准确识别。这样,割草电机从机器人割草机工作开始到结束都以恒定转速运行。这导致了电池的浪费,给割草机机器人的控制带来了很大的缺点。为了精确控制电机转速和节省电池,利用有效的传感器数据估计草坪草长和地面情况。将随机森林算法应用于商用割草机机器人的传感器融合,在实际草坪草坪上进行了多次实验,获得了90%以上的估计正确率。现在,该算法和传感器融合在大范围的草坪和地面上进行了评估。
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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