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Multiresponse optimization based on statistical response surface methodology and desirability function for the production of particleboard

机译:基于统计响应面方法和合意函数的刨花板生产多响应优化

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It is very difficult to determine the actual level of process parameters responsible for the quality produc tion of particleboard due to the high degree of process variable interactions and lack of robust method ology for optimization. In this study, an attempt was made to optimize the process parameters of particleboard production by using multi-response optimization process. Plackett-Burman factorial design was first employed to eliminate some factors from selected seven important parameters: flake thickness, flake length, dried chips moisture content (MC%), amount of adhesive, pressing time, pressure, and press temperature. By using this screening procedure, three important factors: flake thickness, dried chips moisture content and press temperature were found to have significant effect on particleboard properties. Afterwards, Box-Behnken design was performed as response surface methodology (RSM) with desirability functions to attain the optimal flake thickness, MC% and press temperature that affect modulus of rapture (MOR) and modulus of elasticity (MOE) of particleboard production. The optimized parameters for maximum MOR and MOE determined were found to be: flake thickness, 0.15 mm; press temperature, 182 ℃; and dried chip MC% 3.5. Finally, a confirmation study was executed by using opti mized levels of parameters which showed well response to the predicted model.
机译:由于高度的过程变量交互作用和缺乏优化的鲁棒方法,很难确定负责刨花板质量生产的过程参数的实际水平。在这项研究中,试图通过使用多响应优化过程来优化刨花板生产的过程参数。首先采用Plackett-Burman析因设计从选定的七个重要参数中消除一些因素:薄片厚度,薄片长度,干屑含水量(MC%),粘合剂量,压制时间,压力和压制温度。通过使用该筛选程序,发现了三个重要因素:薄片厚度,干屑含水量和压榨温度对刨花板性能有重要影响。之后,采用Box-Behnken设计作为响应面方法(RSM),并具有可取的功能,以达到影响刨花板生产的回弹模量(MOR)和弹性模量(MOE)的最佳薄片厚度,MC%和压榨温度。确定的最大MOR和MOE的优化参数为:薄片厚度0.15 mm;压机温度182℃;和干燥的芯片MC%3.5。最后,通过使用优化的参数水平执行了确认研究,该参数对预测的模型显示出良好的响应。

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