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香梨脆度的力声同步检测 被引量:5

Simultaneous mechanical-acoustic measurement of the crispness of Korla pears
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摘要 为了实现香梨脆度接近触听感官的准确评价,该研究采用质构仪和声音包络检波器(Acoustic Envelop Detector,AED)相结合同步采集香梨穿刺的力声信号,然后用峰值法从力声曲线中分别提取15个力学参数和6个声学参数,在对各参数自相关分析的基础上,选取12个力学参数和4个声学参数应用人工神经网络(Artificial Neural Network,ANN)和支持向量机(Support Vector Machine,SVM)两种算法分别基于力学参数、声学参数和力声参数融合构建不同香梨果肉脆度分类模型,并比较各模型分类性能。研究结果表明,无论SVM模型还是ANN模型,力声学参数融合所构建的模型比单独使用任一种参数所构建的模型能更准确进行香梨脆度分类,ANN模型采用三层隐藏层每层14个隐藏节点结构,脆度分类准确率较高,为96.1%;采用二次核函数构建SVM模型的分类准确率较高,为93.8%。两种分类模型对不同脆度香梨具有基本相同的分类能力,均可满足对不同脆度香梨准确分类的要求,可为香梨及其他湿脆性果蔬脆度分类检测提供参考。 Korla pear,a native fruit,is famous for its crispy and sweet taste.There is a large difference in the internal quality of pears,due to the changes in soil,water,and light intensity of the ever-increasing planting area for Korla pear.At present,only firmness and soluble solid content are used as indicators for the internal quality evaluation in the pear grading standard.Nevertheless,the indicator“crispness”is not equivalent to the firmness of the fruit.The crispness reflects the tactile and auditory comprehensive perception of force and sound behavior generated in the process of chewing pear flesh.Since it is difficult to measure and explain through clear semantics,the crispness has not been taken as the standard of internal quality evaluation and classification.A sensory testing is widely accepted to evaluate the crispness,providing by experts or trained panelists,but sensory testers are prone to fatigue and low efficiency.Therefore,it is necessary to investigate an approach to accurately detect the crispness of pears to the taste of consumers.In this study,a total of 250 pears were stored at(26±2)℃and 20%relative humidity(RH),where the storage time was 0,10,20,30 and 40 d.A texture analyzer combined with an acoustic envelope detector was used to simultaneously collect the signals of force and sound,where 4-6 cylindrical samples were tested in each pear.15 mechanical parameters and 6 acoustic parameters were extracted from force and sound signals using the peak,particularly on the parameters autocorrelation.The results showed that there was a highly strong correlation with relatively little redundancy in 5 pairs of parameters,including the acoustic power and sound linear distance,the average level of sound pressure and sound peak number,Young's modulus and low strain stiffness,average force and work,force difference and force ratio.All the mechanical and acoustic parameters can be directly used to construct the classification model without dimensionality reduction.The artificial neural network(ANN)and support vector machine(SVM)were used to classify the crispness of Korla pears.Three types of parameter datasets were fed to train the ANN and SVM models:mechanical and acoustic parameters,as well as the combination of mechanical and acoustic parameters.A comparison of ANN models showed that the model using a three-layer hidden structure(14 nodes in each layer)achieved the highest classification accuracy.In the SVM with different kernel functions,the model with the quadratic kernel function displayed the best classification performance.A combination of mechanical and acoustic parameters was more applicable to detect the crispness of pear flesh than only mechanical or acoustic parameters.In learning curve,the classification accuracy of the SVM and ANN models achieved 96.1%and 93.8%,respectively.Therefore,the models can meet the requirements of accurate classification for pears with different crispness.This finding can provide practical guidance to evaluate the crispness of pear flesh during harvest,processing,and storage.
作者 张金阁 周婷 王鹏 吴杰 Zhang Jinge;Zhou Ting;Wang Peng;Wu Jie(College of Mechanical and Electrical Engineering,Shihezi University,Shihezi 832000,China;Research Center of Agricultural Mechanization for Economic Crop in Oasis,Ministry of Education,Shihezi 832003,China)
出处 《农业工程学报》 EI CAS CSCD 北大核心 2021年第1期290-298,共9页 Transactions of the Chinese Society of Agricultural Engineering
基金 国家自然科学基金地区科学基金项目(31860466)。
关键词 机器学习 模型 库尔勒香梨 脆度 力声测量 machine learning models Korla pear crispness mechanical-acoustic measure
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