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Simulated Annealing in Feature Selection Approach for Modeling Aboveground Carbon Stock at the Transition Between Brazilian Savanna and Atlantic Forest Biomes

Annals of Forest Research(2022)

Univ Fed Lavras

Cited 5|Views2
Abstract
Forest ecosystems are important in the carbon storage process. Thus, the objective was to investigate the effectiveness of the Simulated Annealing meta-heuristic analysis for selecting variables to maximize the accuracy of the aboveground carbon prediction at the tree level. We used data from uneven-aged forests located in the Rio Grande Basin - Minas Gerais, Brazil, where 227 trees had their carbon stock measured. The classic Spurr linear model, stepwise linear regression and pan-tropical coverage, Random Forest (RF), and the hybrid SARF method (Simulated Annealing and Random Forest) were used to estimate the carbon stock from the selection of variables for the different compartments of the tree (total, stem, branch, and leaf). The SARF consisted of the metaheuristic to select the variables to be used in the RF. These methods were evaluated by the root mean square error (RMSE), coefficient of determination (R²), and residual graph. As a result, the pan-tropical equation demonstrated superior performance than the Spurr model due to its greater homogeneity of residues. The stepwise technique reduced the number of variables and the error of the estimates, mainly for the validation set. SARF showed better adjustments than RF, as it reduced in on average 99.2% of the number of variables and 9% of the error of estimates considering all compartments. In general, variables such as volume, basic wood density, canopy projection area, diameter at 0%, diameter at breast height, height, and latitude contributed strongly to the carbon independent of the tree compartment. Among the methods, SARF is an alternative to the traditional method, as it can extract accurate information from a large data set.
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data mining,bio mass,simulated annealing,random forest
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要点】:研究利用模拟退火元启发式算法进行特征选择,以提高预测树木地上碳储量的准确性,实验结果表明,结合随机森林的模拟退火算法(SARF)在减少变量数量和降低估计误差方面表现优于传统方法。

方法】:研究采用了经典Spurr线性模型、逐步线性回归、泛热带覆盖的随机森林(RF)以及结合模拟退火和随机森林的混合SARF方法来估计树木不同部位(总、干、枝、叶)的碳储量。

实验】:在巴西米纳斯吉拉斯州里约热内卢盆地的异龄林中,对227棵树的碳储量进行了测量。使用RMSE、R²和残差图评估了各方法的效果。结果显示,SARF方法在减少变量数量(平均减少99.2%)和估计误差(平均减少9%)方面表现最佳。数据集为米纳斯吉拉斯州里约热内卢盆地的树木碳储量测量数据。