利用机器学习技术预测森林生产

IF 7.7 Q1 AGRICULTURE, MULTIDISCIPLINARY Information Processing in Agriculture Pub Date : 2023-03-01 DOI:10.1016/j.inpa.2021.09.004
Jeferson Pereira Martins Silva , Mayra Luiza Marques da Silva , Adriano Ribeiro de Mendonça , Gilson Fernandes da Silva , Antônio Almeida de Barros Junior , Evandro Ferreira da Silva , Marcelo Otone Aguiar , Jeangelis Silva Santos , Nívea Maria Mafra Rodrigues
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引用次数: 11

摘要

森林生产和生长是通过统计模型获得的,这些模型可以产生树木或林分水平的信息。虽然在森林测量中普遍使用回归模型,但仍在不断寻求提供更高精度的估计程序。近年来,机器学习技术在森林测量中取得了令人满意的效果。然而,诸如自适应神经模糊推理系统(ANFIS)和随机森林等方法在预测巴西桉树人工林木材量方面的研究相对较少。因此,有必要检查这些技术是否能够在准确性方面提供增益。因此,本研究旨在评估随机森林和ANFIS技术在森林生产预测中的应用。所使用的数据来自于对桉树无性系林分进行的连续森林调查。数据分为70%用于训练,30%用于验证。在ANFIS中用于生成规则的算法有减法聚类算法和模糊c均值算法。采用梯度下降和最小二乘混合算法进行训练,季节数为1 ~ 20。训练了几个RFs,将树木的数量从50棵增加到850棵,将观察到的树叶数量从5片增加到35片。还训练了人工神经网络和决策树来比较这些技术的可行性。对训练和验证技术产生的估计值的评估基于以下统计数据进行计算:相关系数(r)、相对偏差(RB)和相对均方根误差(RRMSE)的百分比。总的来说,本文研究的技术在RRMSE值为<6%, RB <的训练和验证数据集上表现出色。0.5%, r >0.98. 对于森林生产的预测,RF给出了较差的ANFIS统计值。减法聚类(SC)和模糊c均值(FCM)算法提供准确的基线和体积投影估计;这两种技术都是选择用于森林生产建模的变量的良好替代方法。
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Prognosis of forest production using machine learning techniques

Forest production and growth are obtained from statistical models that allow the generation of information at the tree or forest stand level. Although the use of regression models is common in forest measurement, there is a constant search for estimation procedures that provide greater accuracy. Recently, machine learning techniques have been used with satisfactory performance in measuring forests. However, methods such as Adaptive Neuro-Fuzzy Inference System (ANFIS) and Random Forest are relatively poorly studied for predicting the volume of wood in eucalyptus plantations in Brazil. Therefore, it is essential to check whether these techniques can provide gains in terms of accuracy. Thus, this study aimed to evaluate the use of Random Forest and ANFIS techniques in the prognosis of forest production. The data used come from continuous forest inventories carried out in stands of eucalyptus clones. The data were divided into 70% for training and 30% for validation. The algorithms used to generate rules in ANFIS were Subtractive Clustering and Fuzzy-C-Means. Besides, training was done with the hybrid algorithm (descending gradient and least squares) with the number of seasons ranging from 1 to 20. Several RFs were trained, varying the number of trees from 50 to 850 and the number of observations by five leaves to 35. Artificial neural networks and decision trees were also trained to compare the feasibility of the techniques. The evaluation of the estimates generated by the techniques for training and validation was calculated based on the following statistics: correlation coefficient (r), relative Bias (RB), and the relative root mean square error (RRMSE) in percentage. In general, the techniques studied in this work showed excellent performance for the training and validation data set with RRMSE values <6%, RB < 0.5%, and r > 0.98. The RF presented inferior statistics about the ANFIS for the prognosis of forest production. The Subtractive Clustering (SC) and Fuzzy-C-Means (FCM) algorithms provide accurate baseline and volume projection estimates; both techniques are good alternatives for selecting variables used in modeling forest production.

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来源期刊
Information Processing in Agriculture
Information Processing in Agriculture Agricultural and Biological Sciences-Animal Science and Zoology
CiteScore
21.10
自引率
0.00%
发文量
80
期刊介绍: Information Processing in Agriculture (IPA) was established in 2013 and it encourages the development towards a science and technology of information processing in agriculture, through the following aims: • Promote the use of knowledge and methods from the information processing technologies in the agriculture; • Illustrate the experiences and publications of the institutes, universities and government, and also the profitable technologies on agriculture; • Provide opportunities and platform for exchanging knowledge, strategies and experiences among the researchers in information processing worldwide; • Promote and encourage interactions among agriculture Scientists, Meteorologists, Biologists (Pathologists/Entomologists) with IT Professionals and other stakeholders to develop and implement methods, techniques, tools, and issues related to information processing technology in agriculture; • Create and promote expert groups for development of agro-meteorological databases, crop and livestock modelling and applications for development of crop performance based decision support system. Topics of interest include, but are not limited to: • Smart Sensor and Wireless Sensor Network • Remote Sensing • Simulation, Optimization, Modeling and Automatic Control • Decision Support Systems, Intelligent Systems and Artificial Intelligence • Computer Vision and Image Processing • Inspection and Traceability for Food Quality • Precision Agriculture and Intelligent Instrument • The Internet of Things and Cloud Computing • Big Data and Data Mining
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