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Classifying soil stoniness based on the excavator boom vibration data in mounding operations

机译:基于挖掘机动作中的挖掘机动臂振动数据进行分类

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The stoniness index of forest soil describes the stone content in the upper soil layer at depths of 20-30 centimeters. This index is not available in any existing map databases, and traditional measurements for the stoniness of the soil have always necessitated laborious soil-penetration methods. Knowledge of the stone content of a forest site could be of use in a variety of forestry operations. This paper presents a novel approach to obtaining automatic measurements of soil stoniness during an excavator-based mounding operation. The excavator was equipped with only a low-cost inertial measurement unit and a satellite navigation receiver. Using the data from these sensors and manually conducted soil stoniness measurements, supervised machine learning methods were utilized to build a model that is capable of predicting the stoniness class of a given mounding location. This study compares different classifiers and feature selection methods to find the most promising solution for this learning problem. The discussion includes a proposition for a meaningful measurement resolution of the soil's stoniness, and a practical method for evaluating the variability of the stone content of the soil. The results indicate that it is possible to predict
机译:森林土壤的稳定性指数在20-30厘米的深度下描述了上层土层中的石头含量。该指数在任何现有地图数据库中不可用,传统的土壤炉灶的测量结果始终需要艰苦的土壤穿透方法。了解森林网站的石头含量可能在各种林业运营中使用。本文介绍了一种新的方法,可以在基于挖掘机的多淘汰操作期间获得土壤储土自动测量的方法。挖掘机仅配备了低成本的惯性测量单元和卫星导航接收器。使用来自这些传感器的数据并手动进行土壤稳定性测量,利用监督机器学习方法来构建能够预测给定的Mounding位置的稳定性类的模型。本研究比较了不同的分类器和特征选择方法,为此学习问题找到最有前途的解决方案。讨论包括对土壤稳定性有意义的测量分辨率的命题,以及评估土壤石含量变异性的实用方法。结果表明可以预测

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