首页|Employing artificial neural network for effective biomass prediction: An alternative approach

Employing artificial neural network for effective biomass prediction: An alternative approach

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? 2021 Elsevier B.V.Wood products and energy production originating from harnessing the tree biomass require optimizing the forest management process so as to ensure the sustainability of the forest ecosystems. This optimization can also act as a preventive factor towards limiting the consequences of climate change given it is a contributing factor for maintaining healthy ecosystems. To that end, the need to develop methodologies that enable accurate prediction of biomass is more than evident. Nonlinear seemingly unrelated regressions, Dirichlet regressions, and the Levenberg-Marquardt artificial neural network (LMANN) modeling techniques have been applied for whole tree (above and below ground) biomass prediction as well as its components. We conducted a comparative analysis of these approaches using destructively sampled black pine (Pinus nigra Arnold.) trees. Results showed that the LMANN models are flexible and fit tree biomass data with the highest accuracy. Inherent deviations of the biomass data from regression assumptions further support the use of LMANN models as a reliable and promising alternative to the other modeling approaches.

Dirichlet regressionLevenberg-Marquardt artificial neural networkNonlinear seemingly unrelated regressionTree biomass

Guner S.T.、Diamantopoulou M.J.、Poudel K.P.、Comez A.、Ozcelik R.

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Ulus Vocational School Department of Forestry Bart?n University

Faculty of Agriculture Forestry and Natural Environment School of Forestry and Natural Environment Aristotle University of Thessaloniki

Department of Forestry Mississippi State University

Aegean Forestry Research Institute

Faculty of Forestry Isparta University of Applied Sciences East Campus

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2022

Computers and Electronics in Agriculture

Computers and Electronics in Agriculture

EISCI
ISSN:0168-1699
年,卷(期):2022.192
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