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Classification and Identification of Plant Fibrous Material with Different Species Using near Infrared Technique—A New Way to Approach Determining Biomass Properties Accurately within Different Species

机译:利用近红外技术对不同物种的植物纤维材料进行分类和鉴定-一种准确确定不同物种内生物量特性的新方法

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摘要

Plant fibrous material is a good resource in textile and other industries. Normally, several kinds of plant fibrous materials used in one process are needed to be identified and characterized in advance. It is easy to identify them when they are in raw condition. However, most of the materials are semi products which are ground, rotted or pre-hydrolyzed. To classify these samples which include different species with high accuracy is a big challenge. In this research, both qualitative and quantitative analysis methods were chosen to classify six different species of samples, including softwood, hardwood, bast, and aquatic plant. Soft Independent Modeling of Class Analogy (SIMCA) and partial least squares (PLS) were used. The algorithm to classify different species of samples using PLS was created independently in this research. Results found that the six species can be successfully classified using SIMCA and PLS methods, and these two methods show similar results. The identification rates of kenaf, ramie and pine are 100%, and the identification rates of lotus, eucalyptus and tallow are higher than 94%. It is also found that spectra loadings can help pick up best wavenumber ranges for constructing the NIR model. Inter material distance can show how close between two species. Scores graph is helpful to choose the principal components numbers during the model construction.
机译:植物纤维材料是纺织和其他行业的良好资源。通常,需要预先识别和表征一种过程中使用的几种植物纤维材料。当它们处于原始状态时,很容易识别它们。但是,大多数材料是经过研磨,腐烂或预水解的半成品。要对这些包含不同物种的样品进行高精度分类是一个很大的挑战。在这项研究中,选择了定性和定量分析方法对六个不同种类的样品进行分类,包括软木,硬木,韧皮和水生植物。使用类比的软独立建模(SIMCA)和偏最小二乘(PLS)。在这项研究中,独立创建了使用PLS分类样本的算法。结果发现,使用SIMCA和PLS方法可以成功分类这6种,这两种方法显示出相似的结果。洋麻,麻和松树的鉴别率达100%,莲花,桉树和牛脂的鉴别率均高于94%。还发现频谱负载可以帮助选择最佳波数范围以构建NIR模型。材料间的距离可以显示两个物种之间的距离。分数图有助于在模型构建过程中选择主成分编号。

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