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Investigating the identification of atypical sugarcane using NIR analysis of online mill data

机译:使用在线轧机数据的NIR分析研究非典型甘蔗的鉴定

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In any given season thousands of tonnes of sugarcane with atypically low quality can pass undocumented through Australian sugarcane mills. Sugarcane with atypically low quality can negatively impact mill processes and throw off grower payment calculations. Mill laboratory operators often observe a small subset (1 similar to 5%) of cane consignments that have an unusually low juice Pol (Pij; a measure of sucrose content) relative to juice brix (Bij; a measure of dissolved sugars), that can indicate deteriorated or contaminated cane. Many mills only test a small subset of cane in the laboratory, with the majority of consignments analysed using fast near infrared (NIR) spectroscopic techniques. This means the true extent of 'atypical! consignments cannot be identified. To address this limitation, this paper compares five modelling approaches: Linear discriminant analysis (LDA), partial least squares discriminant analysis (PLS-DA), random forest (RF), Artificial Neural Networks (ANN) and Support Vector Machines (SVM). Model performance was reported as the correct classification rate (CCR) of typical and atypical samples based on independent test sets. The best performance was achieved by PLS-DA (CCRtypical = 88.65% and CCRtypical = 88.75%), while ANN had the lowest performance (CCRatypical = 85.27% and CCRtypical = 83.66%). The methodology used in this paper could be used to identify atypical consignments allowing mills to track occurrences to farms and if necessary develop process control operations for atypical cane. Furthermore, the use of a relatively simple modelling technique such as PLS-DA means model updates can be made efficiently and with confidence as PLS is already well established within the industry.
机译:在任何给定的季节数千季甘蔗,有非典型的低质量可以通过澳大利亚甘蔗厂通过无证。甘蔗具有非纯度低的质量可以产生负面影响,并抛弃种植者支付计算。磨机实验室运营商经常观察一个小的子集(1类似于5%)的甘蔗寄售,其具有相对于果汁Brix(Bij;溶解糖的衡量标准)具有异常低的果汁Pol(Pij;蔗糖含量的衡量标准),可以表示劣化或污染的蔗可。许多磨机只能在实验室中测试一小甘蔗子集,其中大多数托运使用快速近红外(NIR)光谱技术分析。这意味着'非典型的真实程度!寄售无法识别。为了解决这些限制,本文比较了五种建模方法:线性判别分析(LDA),部分最小二乘判别分析(PLS-DA),随机林(RF),人工神经网络(ANN)和支持向量机(SVM)。基于独立测试集的典型和非典型样本的正确分类率(CCR)报告了模型性能。通过PLS-DA(CCRTYPICAL = 88.65%和CCRTYPICAL = 88.75%)实现了最佳性能,而ANN具有最低的性能(CCRATYPICAL = 85.27%和CCRTYPICAL = 83.66%)。本文使用的方法可用于识别允许轧机跟踪农场的出现的非典型货物,以及必要的非典型手杖的过程控制操作。此外,可以使用诸如PLS-DA的相对简单的建模技术,意味着模型更新可以有效地且充满信心,因为PLS已经在行业内很好地建立。

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