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Research on application of various regression prediction models in Wood Composite Products

机译:各种回归预测模型在木复合产品中的应用研究

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This study presents an ensemble of predictive models with a focus on the predictive capabilities of Bayesian Additive Regression Trees (BART). Predictions are made for Modulus of Rupture (MOR) and Tensile Strength (IB or Internal Bond) from a wood composites manufacturing process for three product types. Given the large number of predictor variables from the process, variable preselection was used prior to model development. Several regression methods including multiple linear regression, partial least squares regression, neural networks, regression trees, boosted trees, and bootstrap forest are compared with BART. BART had the best predictive performance in validation unanimously for both MOR and IB for two of three products examined. Bootstrap forest validation results were very similar to BART for one of the products. BART validation results of MOR were promising for the nominal product type of 15.88 mm with an $r=0.86$ for 10-fold cross validation with root mean square error of prediction (NRMSEP) of 11.89%. BART validation results for IB had an average $r=0.84$ for 10-fold cross-validation with a $mathrm{NRMSEP}=10.82{%}$. The high predictive ability of BART may be useful for manufacturers and researchers in applying analytical techniques for process improvement leading to less rework (order reruns due to failing properties) and reject. Predictive modeling techniques like the ones explored in this study may be very important to companies seeking competitive advantage in today's business world that is focused on advanced analytics and data mining.
机译:本研究提出了一种预测模型的集合,重点关注贝叶斯添加剂回归树(BART)的预测能力。从木复合材料制造过程中,对三种产品类型的制造工艺进行破裂(MOR)和拉伸强度(IB或内键)的预测。鉴于从过程中的大量预测变量,在模拟开发之前使用可变预选。几种回归方法包括多元线性回归,部分最小二乘回归,神经网络,回归树,升压树和举原林。 BART在审查的三种产品中的两种产品中,MOR和IB都非常有预测性能。 Bootstrap林验证结果与其中一个产品的BART非常相似。 MOR的BART验证结果对于标称产品类型为15.88毫米,有前景 $ r = 0.86 $ 对于10倍的交叉验证,具有11.89%的预测的均方根误差(nrmsep)。 IB的BART验证结果平均 $ r = 0.84 $ 有10倍交叉验证 $ mathrm {nrmsep} = 10.82 {%} $ 。 BART的高预测能力对于制造商和研究人员来说可能对应用程序改进的分析技术进行了应用,导致较少的返工(由于故障属性而导致的RERUNS)和拒绝。如本研究探索的预测性建模技术对在今天的商业世界中寻求竞争优势的公司非常重要,这是专注于高级分析和数据挖掘的商业世界。

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