利用神经网络优化油棕纤维板性能

F. Ismail, Noor Elaiza Abd Khalid, Nordin Abu Bakar, Ropandi Mamat
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引用次数: 4

摘要

橡胶木(RW)供应的短缺增加了在中密度纤维板(MDF)中减少其成分的需求。油棕生物质如空果束(EFB)已被证明是RW的优良替代品。RW和EFB的精确百分比组合将产生高质量的MDF。中密度纤维板需要在机械和物理性能方面进行测试,以使其符合要求的标准。这些测试是昂贵的,因为它们涉及大量的资源。本研究的目的是优化中密度纤维板的性能,从而减少质量检测程序。预测模型将用于对MDF特性进行预测。逐步多元线性回归选择预测变量作为输入节点的输入。有了这些变量,具有各种训练准则的多层感知器神经网络将对数据进行训练并最终产生预测。结果表明,有些性能试验可以省略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing oil palm fiberboard properties using neural network
The shortage of rubber wood (RW) supply has increased the demand to reduce its composition in the Medium Density Fiberboard (MDF). Oil palm biomass such as empty fruit bunch (EFB) has been proven to be an excellent substitute to RW. An accurate percentage combination of RW and EFB will produce a high quality MDF. An MDF needs to be tested in terms of mechanical and physical properties so that it meets the required standard. These tests are costly for they involve high amount of resources. The aim of this research is to optimize the properties of MDF so that quality-testing procedures can be reduced. A prediction model will be used to make predictions on the MDF properties. A stepwise multiple linear regression selects the predictor variables to be used as inputs to the input nodes. With these variables, the multilayer perceptron neural network with various training criteria will train the data and finally produce the prediction. The results produced have shown that some of the property tests can be omitted.
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