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Sensor Array Optimization of Electronic Nose for Detection of Bacteria in Wound Infection

机译:用于检测伤口感染细菌的电子鼻传感器阵列优化

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摘要

In order to identify the bacteria in wound infection, an electronic nose system with a sensor array of 34 sensors was designed. Eight kinds of samples were detected, i.e., culture medium, Escherichia coli, Staphylococcus aureus, Pseudomonas aeruginosa and their mixture with different concentration. Using support vector machine as the classifier and without sensor array optimization, the recognition rate is up to 86.54%. To simplify the sensor array and improve the recognition rate for bacteria samples, Wilks’ lambda statistic (Wilks’ Λ-statistic), Mahalanobis distance, principal component analysis (PCA), linear discriminant analysis (LDA), and genetic algorithm are used to optimize the sensor array. It is shown that the sensor array optimization may be realized efficiently by these methods except PCA. After sensor array optimization by Wilks’ Λ-statistic and LDA, both of their recognition rates are the highest and up to 96.15%, while the numbers of sensors in optimized sensor arrays are 22 and 20, respectively. Under the limitation of ten sensors, the recognition rate optimized by Wilks’ Λ-statistic and LDA may still reach 95.19%.
机译:为了识别伤口感染中的细菌,设计了带有34个传感器的传感器阵列的电子鼻系统。检出了八种样品,即培养基,大肠杆菌,金黄色葡萄球菌,铜绿假单胞菌及其混合物的不同浓度。使用支持向量机作为分类器,无需传感器阵列优化,识别率可达86.54%。为了简化传感器阵列并提高细菌样品的识别率,使用了威尔克斯的拉姆达统计量(Wilks的Λ统计量),马氏距离,主成分分析(PCA),线性判别分析(LDA)和遗传算法进行优化传感器阵列。结果表明,除了PCA以外,这些方法还可以有效地实现传感器阵列的优化。经过Wilks的Λ-statistic和LDA对传感器阵列进行优化后,它们的识别率最高,达到96.15%,而优化后的传感器阵列中的传感器数量分别为22和20。在十个传感器的限制下,Wilks的Λ统计和LDA优化的识别率仍可能达到95.19%。

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