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Application of Grey Relational Analysis and Multiple Linear Regression to Establish the Cutting Force Model of Oil Peony Stalk

机译:应用灰色关联分析和多元线性回归建立油牡丹茎切割力模型

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摘要

Oil peony is an important oil crop, which has high quality and oil content. In order to improve the cutting quality and harvest efficiency of oil peony, the cutting equipment of the pruning machine and harvester is a key component. Also, the accurate prediction of cutting force of oil peony stalk is one of the essential processes for the design of the cutting equipment. In this article, to accurately predicted the cutting force of the stalk, the physical property parameters and chemical components were considered as influencing factors, which were used to establish the model of mechanical property parameter of oil peony stalk. The physical property parameters of oil peony stalk included the stalk diameter, internode distance, fresh weight, dry weight, relative moisture content, volume, fresh density, and dry density. The chemical components of the stalk were cellulose, hemicellulose, and lignin. Besides, the modeling methods, which were the partial least squares regression (PLSR), principal component analysis (PCA) couple with multiple linear regression (MLR), and grey relational analysis (GRA) couple with MLR, were used to optimize the multiple parameters (physical property parameters and chemical components). The results showed that the internode distance and relative moisture content had significant effects on the cutting force of oil peony stalk. The Rc2 and Rp2 values of the GRA (0.5)?+?MLR method were 0.801 and 0.820, and RMSEC and RMSEP values were 2.862N and 4.715N, respectively. Consequently, the GRA?+?MLR method could be used to predict the cutting force of oil peony stalk, which was an important basis for the design of precision cutting equipment.
机译:油料牡丹是一种重要的油料作物,品质高,含油量高。为了提高油牡丹的切割质量和收获效率,修枝机和收割机的切割设备是关键部件。此外,准确预测油牡丹茎的切割力是切割设备设计的重要过程之一。本文以牡丹秸秆的物性参数和化学成分为影响因素,建立了油牡丹秸秆力学性能参数模型,以准确预测牡丹秸秆的切削力。油牡丹茎的物性参数包括茎径、节间距、鲜重、干重、相对含水率、体积、鲜密度和干密度。茎的化学成分为纤维素、半纤维素和木质素。此外,采用偏最小二乘回归(PLSR)、主成分分析(PCA)与多元线性回归(MLR)耦合、灰色关系分析(GRA)耦合MLR等多种参数对多参数(物性参数和化学成分)进行优化。结果表明:节间距离和相对含水率对油牡丹茎的切割力有显著影响。GRA 的 Rc2 和 Rp2 值 (0.5)?+?MLR方法分别为0.801和0.820,RMSEC和RMSEP值分别为2.862N和4。分别为 715N。因此,GRA?+?MLR法可用于预测油牡丹茎的切割力,是设计精密切割设备的重要依据。

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