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Development of classification models for basal stem rot (BSR) disease in oil palm using dielectric spectroscopy

机译:使用介电光谱,油棕基底腐烂(BSR)疾病的分类模型的发展

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Basal stem rot (BSR) is the most destructive disease in oil palm plantations caused by Ganoderma boninense fungus, leading to a major economic setback in palm oil production. In order to reduce the losses caused by this disease, an effective early detection method is needed. Early detection not only prevents production losses, but it also reduces the use of chemicals. Therefore, this paper aims at investigating an early detection method utilizing dielectric properties (impedance, capacitance, dielectric constant, and dissipation factor) of oil palm trees. Leaf samples of healthy, mild, moderate, and severely-infected trees were collected and leaves' dielectric properties were measured at a frequency range of 100 kHz-30 MHz with 100 kHz intervals. These spectral data were then reduced by principal component analysis (PCA) method, Following that, the reduced spectral data were tested to classify the leaf samples into four levels of disease severity. The classifiers used are linear discriminant analysis (LDA), quadratic discriminant analysis (QDA), k-nearest neighbor (kNN), and Naive Bayes (NB). The results showed that the dielectric spectra of oil palm leaves of diffident BSR severity levels were statistically different (p & 0.0004). In addition, despite the slight better performance of QDA classifier, ANOVA test revealed that there was no significant difference in accuracy between all other classifier models (p = 0.7169). Amongst the tested dielectric properties, impedance is considered the best parameter to assess the severity of BSR disease in oil palm with overall accuracy ranging from 81.82% to 100%. These results verify the potential of dielectric spectroscopy for detecting BSR disease in oil palm.
机译:基底茎腐(BSR)是由灵芝博纳州真菌引起的油棕榈种植园中最具破坏性的疾病,导致棕榈油生产中的主要经济挫折。为了减少这种疾病引起的损失,需要有效的早期检测方法。早期检测不仅可以防止生产损失,而且还减少了化学品的使用。因此,本文旨在研究利用油棕树的介电特性(阻抗,电容,介电常数和耗散因子)的早期检测方法。收集健康,温和,中等和严重感染树木的叶样品,并在100kHz-30MHz的频率范围内以100kHz间隔测量叶片介电性能。然后通过主成分分析(PCA)方法减少这些光谱数据,之后,测试了降低的光谱数据,以将叶样品分类为四种疾病严重程度。使用的分类器是线性判别分析(LDA),二次判别分析(QDA),K最近邻(KNN)和幼稚贝叶斯(NB)。结果表明,扩散BSR严重程度水平的油棕榈叶的介电光谱均有统计学上不同(P& LT; 0.0004)。此外,尽管QDA分类器的表现略有更好,但ANOVA测试显示所有其他分类器模型之间的准确性没有显着差异(P = 0.7169)。在测试的电介质性质中,阻抗被认为是评估油棕中BSR病的严重程度的最佳参数,总精度为81.82%至100%。这些结果验证了用于检测油棕中BSR疾病的介电光谱的电位。

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