Classifying Operational Events in Cable Yarding by a Machine Learning Application to GNSS-Collected Data: A Case Study on Gravity-Assisted Downhill Yarding

Q3 Agricultural and Biological Sciences
S. A. Borz, M. Cheţa, M. Bîrda, A. Proto
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引用次数: 6

Abstract

Cable yarding remains an important option in steep terrain timber harvesting, a reason for which new or improved operational efficiency models are required to support science and practice. Developed traditionally, these models are known to require many resources, a reason for which new approaches to the problem were researched lately, mainly by the use of Global Navigation Satellite System (GNSS) data, and spatial and statistical inference systems. This study evaluates the possibility of using GNSS data and machine learning techniques to classify important cable yarding events in the time domain. Three classes were assumed by the study as being relevant for cable yarding operational setup, namely carriage moving in the uphill (MU) and downhill (MD) directions, as well as carriage stopped (S). Data collected by a consumer-grade GNSS unit was processed to extract some differential parameters which were coupled with GNSS motorial and geometric features to feed a Multi-Layer Perceptron Neural Network with Back propagation (MLPNNB) in a pre-evaluation phase which aimed at mining the data structure as a strategy to develop the best MLPNNB configuration for training and testing. Leg distance, difference in elevation, speed of the carriage, and difference in heading were used together and interchangeably in this phase, based on logical assumptions. As a result of pre-evaluation, a MLPNNB using all these datasets was found to be the best scenario. Based on this outcome, the data was split into a training (70%) and a testing (30%) subset, then the MLPNNB was used to learn and generalize on these subsets. The main results indicate that the MLPNNB had an excellent performance, with a classification accuracy of 98.7, 98.4, and 98.8% in the pre-evaluation, training, and testing phases, respectively. Log-loss errors were also found to be very low (5, 5.9, and 4.1%, respectively), indicating a high generalization capability of the MLPNNB model. Based on the results, the main conclusion of the study is that original and derived GNSS data coupled with machine learning techniques could prove to be an important tool for operational monitoring and cable yarding efficiency model development, mainly due to the possibility of working with large amounts of data.
基于gnss收集数据的机器学习对电缆分拣操作事件进行分类——以重力辅助下坡分拣为例
在陡峭地形的木材采伐中,电缆堆垛仍然是一种重要的选择,因此需要新的或改进的操作效率模型来支持科学和实践。传统上,这些模型需要很多资源,因此最近研究了解决这个问题的新方法,主要是利用全球导航卫星系统(GNSS)数据,以及空间和统计推断系统。本研究评估了使用GNSS数据和机器学习技术在时域对重要电缆分拣事件进行分类的可能性。本研究假设三个类别与电缆分拣操作设置相关,即在上坡(MU)和下坡(MD)方向上移动的车厢;在预评估阶段,对消费者级GNSS单元收集的数据进行处理,提取一些微分参数,并将其与GNSS运动和几何特征相结合,馈送给具有反向传播的多层感知器神经网络(MLPNNB),目的是挖掘数据结构,作为开发最佳MLPNNB配置的策略,用于训练和测试。在这一阶段,根据逻辑假设,腿距、仰角差、马车速度和航向差被一起使用,并且可以互换使用。作为预评估的结果,发现使用所有这些数据集的MLPNNB是最佳方案。基于此结果,将数据分成训练子集(70%)和测试子集(30%),然后使用MLPNNB在这些子集上进行学习和泛化。主要结果表明,MLPNNB在预评价、训练和测试阶段的分类准确率分别为98.7%、98.4%和98.8%,具有优异的分类性能。对数损失误差也非常低(分别为5.9%和4.1%),表明MLPNNB模型具有很高的泛化能力。基于结果,该研究的主要结论是,原始和衍生的GNSS数据与机器学习技术相结合,可以证明是运行监控和电缆分拣效率模型开发的重要工具,主要是因为可以处理大量数据。
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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来源期刊
CiteScore
1.10
自引率
0.00%
发文量
12
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