02066nam a2200277 a 450000100080000000500110000800800410001902400560006010000220011624501120013826001070025030000120035752011860036965000230155565000130157865000180159165000160160965000150162565000180164070000200165870000200167870000250169870000220172370000210174570000220176621667032024-08-22 2024 bl uuuu u00u1 u #d7 ahttps://doi.org/10.1109/CEC60901.2024.106118802DOI1 aFREITAS, P. H. de aPrediction of managed forest growth based on machine learning and cellular automata.h[electronic resource] aIn: IEEE CONGRESS ON EVOLUTIONARY COMPUTATION, 2024, Yokohama. [Proceedings]... [New York]: IEEEc2024 ap. 1-8. aThe dynamics of forest plantations have been widely studied with computational simulation applications. Cellular automata (CA) is a technique capable of modelling future states based on a set of transition rules. However, this construction is not simple, often requiring technical knowledge of the process through years of scientific research. Machine learning techniques can be applied in this context, facilitating the construction of these simulators. This work presents a simulation model based on probabilistic cellular automata capable of estimating the evolution of wood production throughout the management period. Unlike other works in the literature, the construction of the CA transition rule is based exclusively on historical data from a Tachi-branco plantation, a managed forest species. Linear and logistic regression models are applied to learn and represent the local transition rules of the automaton and simulate its evolution. The proposed CA-based approach was able to predict the future behavior of plantations in the monitored areas with errors around 4%, confirming the potential of using machine learning in discovering transition rules for precise models. aForest plantations aForestry aLinear models aPlantations aVegetation aWood products1 aCARNEIRO, M. G.1 aPROTASIO, T. P.1 aGONÇALVES, D. de A.1 aMIRANDA, R. O. V.1 aSOARES, A. A. V.1 aMARTINS, L. G. A.