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Detection of ripeness grades of berries using an electronic nose

机译:用电子鼻子检测浆果的成熟等级

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The estimation of ripeness is a significant section of quality determination since maturity at harvest can affect sensory and storage properties of fruits. A possible tactic for defining the grade of ripeness is sensing the aromatic volatiles released by fruit using electronic nose (e‐nose). For detection of the five ripeness grades of berries (whiteberry and blackberry), the e‐nose machine was designed and fabricated. Artificial neural networks (ANN), principal components analysis (PCA), and linear discriminant analysis (LDA) were applied for pattern recognition of array sensors. The best structure (10–11‐5) can classify the samples in five classes in ANN analysis with a precision of 100% and 88.3% for blackberry and whiteberry, respectively. Also, PCA analysis characterized 97% and 93% variance in the blackberry and whiteberry, respectively. The least correct classification for whiteberry was observed in the LDA method.
机译:成熟度的估计是质量测定的重要部分,因为收获的成熟可能影响水果的感官和储存性质。用于定义成熟等级的可能策略是使用电子鼻(E-鼻子)的水果释放的芳香挥发物。用于检测浆果的五个成熟等级(柴属和黑莓),设计和制造了电子鼻机。人工神经网络(ANN),主成分分析(PCA)和线性判别分析(LDA)应用于阵列传感器的图案识别。最佳结构(10-11-5)可以分别在ANN分析中将样品分析,分别为黑莓和鸡食的精度为100%和88.3%。此外,PCA分析分别表现为黑莓和鸡巴莓的97%和93%。在LDA方法中观察到最不正确的母鸡分类。

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