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首页> 外文期刊>Maderas: ciencia y tecnologia >Artificial neural networks to estimate the physical-mechanical properties of amazon second cutting cycle wood
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Artificial neural networks to estimate the physical-mechanical properties of amazon second cutting cycle wood

机译:人工神经网络来估计亚马逊第二切割周期木材的物理机械性能

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Timber from the second cutting cycle may make up the majority of future crop volumetric. However, there are few studies of the physical and mechanical properties of this timber, which are important to support the consolidation of new species. This study aimed to use Artificial Neural Networks to estimate the physical and mechanical properties of wood from the Amazon, based on basic density. The properties were: shrinkage (tangential, radial and volumetric), static bending, parallel and perpendicular to the fiber compression, parallel and transverse to the fibers, Janka hardness, traction, splitting and shear. The estimate followed the tendency of the data observed for the tangential, radial and volumetric shrinkage. The network estimated the mechanical properties with significant accuracy. Distribution of errors, static bending, parallel compression and perpendicular to the fiber compression also showed significant accuracy. Artificial Neural Networks can be used to estimate the physical and mechanical properties of wood from Amazon species.
机译:来自第二个采伐周期的木材可能构成未来作物总产量的大部分。但是,关于这种木材的物理和机械性能的研究很少,这对于支持新物种的巩固非常重要。这项研究旨在使用人工神经网络根据基本密度估算亚马逊木材的物理和机械性能。这些性质是:收缩率(切向,径向和体积),静态弯曲,平行于和垂直于纤维的压缩,平行于和横向于纤维的,扬卡硬度,牵引力,劈裂和剪切力。估计值遵循观察到的切向,径向和体积收缩率数据趋势。该网络以很高的精度估算了机械性能。误差分布,静态弯曲,平行压缩和垂直于纤维压缩也显示出显着的准确性。人工神经网络可用于估计亚马逊物种木材的物理和机械性能。

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