Determining the optimum layer combination for cross-laminated timber panels according to timber strength classes using Artificial Neural Networks

E. Gezer, Abdullah Uğur Birinci, Aydin Demir, Hasan Öztürk, Okan İlhan, Cenk Demirkir
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Abstract

The primary aim of this work was to determine the effects of production parameters, such as wood species and timber strength classes, on some mechanical properties of cross-laminated timber (CLT) panels using artificial neural network (ANN) prediction models. Subsequently, using the models obtained from the analyses, the goal was to identify the optimum layer combinations of timber strength classes used in the middle and outer layers that would provide the highest mechanical properties for CLT panels. CLT panels made from spruce and alder timbers, as well as hybrid panels created from combinations of these two wood species, were produced. The strength classes of the timbers were determined non-destructively according to the TS EN 338 (2016) standard using an acoustic testing device. The bending strength and modulus of elasticity values of the CLT panels were determined destructively according to the TS EN 408 (2019) standard. According to ANN results, the optimum timber strength classes and layer combinations were determined for bending strength as C24-C27-C24 for spruce CLT, D18-D24-D18 for alder CLT, C30-D40-C30 and D18-C30-D18 for hybrid panels; and for modulus of elasticity, C22-C27-C22 for spruce, D35-D30-D35 for alder, C16-D24-C16, and D24-C24-D24 for hybrid panels.
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利用人工神经网络根据木材强度等级确定交叉层压木板的最佳层组合
这项工作的主要目的是利用人工神经网络(ANN)预测模型确定生产参数(如木材种类和木材强度等级)对交叉层压木材(CLT)面板某些机械性能的影响。随后,利用分析得出的模型,目标是确定中层和外层所用木材强度等级的最佳层组合,从而为 CLT 面板提供最高的机械性能。由云杉和桤木制成的 CLT 面板,以及由这两种木材组合而成的混合面板均已制作完成。根据 TS EN 338(2016)标准,使用声学测试装置对木材的强度等级进行了非破坏性测定。CLT 板材的弯曲强度和弹性模量值是根据 TS EN 408(2019)标准进行破坏性测定的。根据 ANN 的结果,确定了最佳木材强度等级和层组合:弯曲强度方面,云杉 CLT 为 C24-C27-C24,桤木 CLT 为 D18-D24-D18,混合板材为 C30-D40-C30 和 D18-C30-D18;弹性模量方面,云杉为 C22-C27-C22,桤木为 D35-D30-D35,混合板材为 C16-D24-C16 和 D24-C24-D24。
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