首页> 美国卫生研究院文献>Sensors (Basel Switzerland) >Recognition of the Duration and Prediction of Insect Prevalence of Stored Rough Rice Infested by the Red Flour Beetle (Tribolium castaneum Herbst) Using an Electronic Nose
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Recognition of the Duration and Prediction of Insect Prevalence of Stored Rough Rice Infested by the Red Flour Beetle (Tribolium castaneum Herbst) Using an Electronic Nose

机译:利用电子鼻识别红粉甲虫(Tribolium castaneum Herbst)侵染的储藏糙米的持续时间和昆虫流行率预测

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摘要

The purpose of this research is to explore the feasibility of applying an electronic nose for the intelligent monitoring of injurious insects in a stored grain environment. In this study, we employed an electronic nose to sample rough rice that contained three degrees of red flour beetle (Tribolium castaneum Herbst) infestation for different durations—light degree (LD), middle degree (MD), and heavy degree (HD)—and manually investigated the insect situation at the same time. Manual insect situation investigation shows that, in all three rice treatments, the insect amounts gradually decreased after infestation. When the insect population of stored rough rice was under 13 insects per 60 g of rough rice, the natural speed of decrease of the insect population became very slow and reached the best artificial insect killing period. Linear discriminant analysis (LDA) provided good performance for MD and HD insect harm duration identification, but performed poorly for LD insect harm duration identification. Both k-means clustering analysis (K-means) and fuzzy c-means analysis (FCM) effectively identified the insect harm duration for stored rough rice. The results from the back-propagation artificial neural network (BPNN) insect prevalence prediction for the three degrees of rough rice infestation demonstrated that the electronic nose could effectively predict insect prevalence in stored grain (fitting coefficients were larger than 0.89). The predictive ability was best for LD, second best for MD, and least accurate for HD. This experiment demonstrates the feasibility of electronic noses for detecting both the duration and prevalence of an insect infestation in stored grain and provides a reference for the intelligent monitoring of an insect infestation in stored grains.
机译:这项研究的目的是探索将电子鼻用于在储粮环境中智能监控有害昆虫的可行性。在这项研究中,我们使用电子鼻对糙米进行了采样,该糙米包含在不同持续时间-轻度(LD),中度(MD)和重度(HD)的三度红色甲虫(Tribolium castaneum Herbst)侵染-并同时手动调查了昆虫的状况。人工昆虫情况调查显示,在所有三种水稻处理中,侵染后昆虫数量逐渐减少。当储存的糙米的昆虫数量低于每60克糙米中的13种昆虫时,昆虫数量的自然下降速度变得非常缓慢,并达到了最佳的人工杀虫期。线性判别分析(LDA)为MD和HD昆虫危害持续时间的识别提供了良好的性能,但对于LD昆虫危害持续时间的识别却表现不佳。 k均值聚类分析(K均值)和模糊c均值分析(FCM)都可以有效地识别出储存的糙米的害虫持续时间。反向传播人工神经网络(BPNN)对三度稻米大面积侵染的昆虫盛行率预测结果表明,电子鼻可以有效预测储粮中的昆虫盛行率(拟合系数大于0.89)。预测能力对LD最好,对MD最好,而对HD则最不准确。该实验证明了用电子鼻检测储粮中昆虫侵染的持续时间和流行程度,并为智能监控储粮中昆虫侵染提供了参考。

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