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An application of artificial neural networks for modeling formaldehyde emission based on process parameters in particleboard manufacturing process

机译:人工神经网络在刨花板制造过程中基于工艺参数的甲醛释放量建模的应用

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摘要

Volatile organic compounds refer to a large class of carbon-based chemicals capable of evaporating easily into the air at room temperature. Formaldehyde is one of the best known volatile organic compounds, and long-term exposure to formaldehyde emission from wood-based building products in indoor air may cause many adverse health effects. This paper presents an implementation of artificial neural networks for modeling the formaldehyde emission from particleboard as a wood-based product based on wood-glue moisture content, density of board and pressing temperature, with the experimental data collected from Petinarakis and Kavvouras (Wood Res 51(1):31-40, 2006). With the constructed model, formaldehyde emission of particleboard could be predicted successfully, and the intermediate formaldehyde emission values not obtained from experimental investigation could be predicted for different combinations of manufacturing parameters. The results proved that the artificial neural network is a promising technique in predicting the formaldehyde emission from particleboard. In this regard, the findings of this study will help the manufacturing industries in obtaining the intermediate values of the formaldehyde emission without performing further experimental activity. The model thus may save time, reduce the consumption of experimental materials and design costs.
机译:挥发性有机化合物是指一类能够在室温下容易蒸发到空气中的碳基化学物质。甲醛是最著名的挥发性有机化合物之一,长期暴露于室内空气中的木质建筑产品所释放的甲醛可能对健康造成许多不利影响。本文介绍了一种人工神经网络的实现,该模型基于木胶的水分含量,板的密度和压制温度,模拟了刨花板作为木质产品的甲醛释放量,并从Petinarakis和Kavvouras收集了实验数据(Wood Res 51 (1):31-40,2006)。利用所建立的模型,可以成功地预测刨花板的甲醛释放量,并且可以预测不同制造参数组合所产生的中间甲醛释放量。结果证明,人工神经网络是预测刨花板甲醛释放量的有前途的技术。在这方面,这项研究的结果将有助于制造业获得甲醛释放量的中间值,而无需进行进一步的实验活动。该模型因此可以节省时间,减少实验材料的消耗和设计成本。

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