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Prediction of standard particleboard mechanical properties utilizing an artificial neural network and subsequent comparison with a multivariate regression model

机译:利用人工神经网络预测标准刨花板的机械性能,然后与多元回归模型进行比较

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摘要

The physical properties (specific gravity, moisture content, thickness swelling and water absorption) and mechanical properties (internal bond strength, bending strength and modulus of elasticity) were determined on 93 Spanish-manufactured standard particleboards of different thicknesses selected randomly at the end of the production process. The testing methods of the corresponding European standards (EN) were used, except in the case of the thickness swelling and absorption tests, for which the Spanish UNE standard was used. The thickness and the values obtained for the physical properties were entered into an artificial neural network in order to predict the mechanical properties of the board. The fit was compared with the usual multivariate regression models. The use of a neural network made it possible to obtain the values of bending strength, modulus of elasticity and internal bond strength of the boards utilizing the known data, not only of thickness, moisture content and specific gravity, but also of thickness swelling and water absorption. The neural network proposed is much better adapted to the observed values than any of the multivariate regression models obtained.
机译:物理性能(比重,水分,厚度膨胀和吸水率)和机械性能(内部粘合强度,弯曲强度和弹性模量)是在93块西班牙制造的标准刨花板上确定的,这些刨花板是在测试结束时随机选择的生产过程。除了使用了西班牙UNE标准的厚度溶胀和吸收测试外,还使用了相应欧洲标准(EN)的测试方法。为了预测板的机械性能,将厚度和获得的物理性能值输入人工神经网络。将拟合与常规多元回归模型进行比较。使用神经网络可以利用已知数据获得板的弯曲强度,弹性模量和内部粘结强度值,不仅包括厚度,水分含量和比重,还包括厚度溶胀和水的值。吸收。所提出的神经网络比获得的任何多元回归模型都更适合观察值。

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