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基于SVM核機器學習的三文魚新鮮度檢測系統(tǒng)
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北京市重點研發(fā)計劃項目(Z181100001018033)和中央高?;究蒲袠I(yè)務費專項資金項目(2019TC044)


Detection System of Salmon Freshness Based on SVM Kernel-based Machine Learning
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    摘要:

    為了實現對不同冷藏溫度下三文魚新鮮度的檢測與識別,設計了一種用于三文魚氣味指紋采集與新鮮度辨識的電子鼻系統(tǒng),。電子鼻系統(tǒng)由密閉檢測氣室,、半導體氣體傳感器陣列,、數據采集模塊,、模式識別模塊和顯示界面等組成,。電子鼻模式識別方法采用核機器學習方法,,以支持向量機(SVM)作為學習機,。采集0、4,、6℃溫度下冷藏三文魚樣本的氣味數據,,對不同核函數及參數的核機器學習模型進行訓練與測試,最終確定了適于此電子鼻系統(tǒng)識別三文魚新鮮度的最佳核機器學習模型:核函數選用多項式核函數,,核參數q取3,,γ取15,c取0,。此模型對不同溫度冷藏三文魚樣本的冷藏時間具有一定的辨識能力,,對于測試集,0℃允許偏差1d預測正確率為92.86%,,4℃無偏差預測正確率為8889%,、允許偏差1d預測正確率100%,6℃無偏差預測正確率為75.00%,、允許偏差1d預測正確率100%,。將辨識結果與主成分分析結果(PCA)進行對比,此模型具有明顯的優(yōu)勢,。

    Abstract:

    In order to detect the odor of salmon refrigerated at different refrigerating temperatures and identify its freshness more accurately, an electronic nose based on kernelbased machine learning model was designed. It consisted of five parts, which were the detection air chamber, the array of six gas sensors, the data acquisition module, the pattern recognition module and the display interface. Kernelbased machine learning model was selected as the pattern recognition method of the electronic nose, and support vector machine (SVM) was selected as the learning machine of kernelbased machine learning model. The odor fingerprint data of salmon samples respectively refrigerated at 0℃, 4℃ and 6℃ was collected to train and test the kernelbased machine learning models with different kernel functions and kernel parameters. Finally, a kernelbased machine learning model that had the best salmon freshness identification effect was determined. And it was determined that the polynomial function was taken in the kernel function, and the kernel parameters of q, γ and c were taken as 3, 15 and 0, respectively. Analysis of identification result of test set salmon samples was conducted, which showed that no days deviation correct rate was 57.14% and allowable deviation of 1 day correct rate was 92.86% at 0℃, no days deviation correct rate was 88.89% and allowable deviation of 1 day correct rate was 100% at 4℃, no days deviation correct rate was 75.00% and allowable deviation of 1 day correct rate was 100% at 6℃. It proved that the model had certain ability to identify the freshness of salmons refrigerated at different temperatures. Compared with the result of principal component analysis (PCA), the kernelbased machine learning model had a better ability.

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李鑫星,董保平,楊銘松,張國祥,張小栓,成建紅.基于SVM核機器學習的三文魚新鮮度檢測系統(tǒng)[J].農業(yè)機械學報,2019,50(5):376-384. LI Xinxing, DONG Baoping, YANG Mingsong, ZHANG Guoxiang, ZHANG Xiaoshuan, CHENG Jianhong. Detection System of Salmon Freshness Based on SVM Kernel-based Machine Learning[J]. Transactions of the Chinese Society for Agricultural Machinery,2019,50(5):376-384.

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  • 收稿日期:2019-01-14
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  • 在線發(fā)布日期: 2019-05-10
  • 出版日期: 2019-05-10
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