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Rapid detection and classification of citrus fruits infestation by Bactrocera dorsalis (Hendel) based on electronic nose

机译:基于电子鼻的Bactrocera Dorsalis(Hendel)快速检测和分类柑橘类腐蚀

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摘要

A sweeping electronic nose system (SENS) was self-developed to detect the presence of early infestation by Bactrocera dorsalis (Hendel) in citrus fruits. Principal component analysis (PCA) and linear discriminate analysis (LDA) were applied to analyze citrus fruits that were subjected to different types of treatments (invasion and incubation stage) caused infestation. The results indicated that the SENS could successfully detect the presence of early infestation by B. dorsalis in citrus fruits. The different types of treatments in citrus fruits could be effectively classified by PCA and LDA, respectively. Meanwhile, the specific infestation time of citrus fruits within treatment stage could be satisfactorily identified by LDA model with correct recognition rate of 98.21%. Importantly, an optimized sensor array achieved better performance in classification and discrimination than that of the non-optimized. This study showed the potential feasibility of the electronic nose technology for in-filed detection of postharvest pest infestation citrus fruits under market conditions.
机译:综合电子鼻系统(SENS)是自我开发的,以检测柑橘类水果中Bactrocera Dorsalis(Hendel)的早期侵扰的存在。主要成分分析(PCA)和线性区分分析(LDA)分析柑橘类水果,该水果经受不同类型的治疗(侵袭和潜伏期)引起的侵染。结果表明,SENS可以成功地检测B.柑橘类水果中的B. Dorsalis早期侵扰的存在。柑橘类水果中的不同类型的治疗可以分别通过PCA和LDA有效地分类。同时,通过LDA模型可以令人满意地识别治疗阶段内的柑橘类水果的特异性侵染时间,具有98.21%的正确识别率。重要的是,优化的传感器阵列在比未优化的分类和识别中实现了更好的性能。本研究表明,在市场条件下,对内部采后害虫侵染柑橘类水果进行了电子鼻技术的潜在可行性。

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