Wikan Haryo Rahmantyo, Danang Lelono
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引用次数: 0

摘要

由TOMA和OA脂质制成的16个传感器阵列组成的电子舌头传感器已用于对纯大麻、大麻与茶混合和大麻与烟草混合的样本进行分类,但不涉及特征选择技术,因此数据采样会产生大量重复数据。使用PCA进行特征选择。负载值的数据分析显示了每个传感器的贡献,以及传感器性能在表征样本中的相似性,然后使用相关性测试进行分析,从而知道产生冗余信息的传感器。使用SVM方法进行验证,并将分类性能与原始传感器进行比较。传感器优化在大麻茶样品测试中产生具有6个传感器的特征子集(传感器7、传感器10、传感器12、传感器13、传感器14和传感器15),在大麻烟草样品测试中生成具有3个传感器的特征子集(传感器3、传感器7和传感器14)。已经进行的传感器优化在大麻茶样品的测试中产生了100%的分类准确度,并将运行时间缩短了0.578微秒的差异,在大麻烟草样品的测试中将运行时间缩短1.696微秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analisis Respons Sensor Electroni Tongue terhadap Sampel Ganja menggunakan Support Vector Machine
Electronic tongue sensors consisting of 16 sensor array made of TOMA and OA lipids that have been used to classify samples of pure cannabis, cannabis mixed with tea and cannabis mixed with tobacco does not involve the feature selection technique so that a lot of duplicated data is generated from data sampling. Feature selection is performed using PCA. Data analysis resulted in loading values shows the contribution of each sensor, and the similarity in sensor performance in characterizing samples, then analyzed using the correlation test so that the sensors that produce redundant information are known. Validation is performed using the SVM method and the classification performance is compared to the original sensor.The sensor optimization produces a subset of features with 6 sensors (Sensor 7, Sensor 10, Sensor 12, Sensors 13, Sensor 14 and Sensor 15) in the cannabis-tea sample test and a feature subset with 3 sensors (Sensor 3, Sensor 7 and Sensor 14) in the cannabis-tobacco sample test. Sensor optimization that has been done produced classification accuracy by 100% and shorten the running time by a difference of 0.578 microseconds in the test of cannabis-tea samples and a difference of 1.696 microseconds in the test of cannabis-tobacco samples.
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