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Stingless Bee Honey Classification Using Near Infrared Light Coupled With Artificial Neural Network

机译:近红外光结合人工神经网络的无刺蜜蜂蜂蜜分类

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Even though both farm and wild raw honeys are better than processed honey in terms of nutritional value and quality, wild honey is more expensive than farm honey due to its scarcity, nutrition, and quality. However, there is a challenge for consumer to differentiate both farm and wild raw honey due to the complexity of raw honey. Although near infrared (NIR) spectroscopy is promising to assist consumers to differentiate types of honeys, the financial barrier to have a NIR spectroscopy is needed to be addressed. Thus, this research aims to evaluate the performance of a low cost NIR light acquisition alternative in classifying stingless bee honeys using artificial neural network (ANN). First, 164 honey samples of two different types of raw honeys were prepared. Next, NIR light LEDs of five different wavelengths i.e. 850, 860, 870, 890, and 950 nm with light sensors were used to acquire the transmitted NIR absorbance from raw honey sample. ANN with different number of hidden neurons were used to analyze the data, and six datasets were used to investigate the best distance between NIR light source and light sensors. Results indicate that the acquired NIR light coupled with ANN by using eight hidden neurons and an average distance of 40 mm from light source to light sensor were able to produce the best result with the best true positive (TP) correct classification percentage accuracy and cross entropy (CE) value of 96.0% and 1.14, respectively.
机译:尽管就营养价值和质量而言,农场蜂蜜和野生蜂蜜都比加工蜂蜜好,但由于其稀缺性,营养和品质,野生蜂蜜比农场蜂蜜更昂贵。然而,由于生蜂蜜的复杂性,消费者要区分农场生蜂蜜和野生生蜂蜜都存在挑战。尽管近红外(NIR)光谱有望帮助消费者区分蜂蜜类型,但需要解决近红外光谱的经济障碍。因此,本研究旨在评估低成本NIR光采集替代方案在使用人工神经网络(ANN)对无刺蜂蜂蜜进行分类中的性能。首先,制备了两种不同类型的生蜂蜜的164个蜂蜜样品。接下来,使用具有光传感器的五个不同波长(即850、860、870、890和950 nm)的NIR发光二极管从生蜂蜜样品中获取透射的NIR吸光度。使用具有不同数量的隐藏神经元的人工神经网络来分析数据,并使用六个数据集来研究近红外光源和光传感器之间的最佳距离。结果表明,通过使用八个隐藏神经元以及从光源到光传感器的平均距离为40 mm,所获得的NIR光与ANN耦合能够以最佳的真实正(TP)正确分类百分比精度和交叉熵产生最佳结果(CE)值分别为96.0%和1.14。

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