Key Laboratory of Thin Film and Microfabrication (Ministry of Education), Department of Micro/Nano Electronics, School of Electronic Information and Electrical Engineering, Shanghai Jiao Tong University, Shanghai 200240, P. R. China.
Department of Dermatology, Shanghai Ninth People's Hospital, Affiliated to Shanghai Jiao Tong University School of Medicine, Center for Specialty Strategy Research of Shanghai Jiao Tong University China Hospital Development Institute, Shanghai 200011, P. R. China.
Phys Chem Chem Phys. 2021 Oct 27;23(41):23933-23944. doi: 10.1039/d1cp02394b.
A simple microwave-assisted method was applied to synthesize zinc oxide (ZnO) with controllable hierarchical structures. In a surfactant-free solvent system, the hierarchical structure of the ZnO precursor can be regulated by the concentration of urea at normal temperature and pressure. Upon annealing, ZnO with different morphologies shows its unique response towards six kinds of gases. The response data were clustered and analyzed by principal component analysis (PCA) to provide a basis for feature extraction. The classification to six kinds of gases was conducted through a model based on linear ridge classification (LRC), support vector machine (SVM). The prediction of ethanol concentration was achieved using backpropagation (BP) neural network and extreme learning machine (ELM). The results indicate that the six confusing gases can be distinguished clearly using SVM with an accuracy more than 0.99. Furthermore, the prediction of ethanol concentration shows a prominent performance ( > 0.98) by the ELM-based regressor, despite the nearly saturated response of the sensor array. This study explores the possibility of pattern recognition analysis based on machine learning to further improve the detection performance of the gas sensor array with different response characteristics regulated by the morphology.
一种简单的微波辅助法被应用于可控分级结构氧化锌(ZnO)的合成。在无表面活性剂的溶剂体系中,在常温常压下,通过尿素浓度来调控 ZnO 前驱体的分级结构。煅烧后,不同形貌的 ZnO 对六种气体表现出独特的响应。通过主成分分析(PCA)对响应数据进行聚类和分析,为特征提取提供了依据。采用基于线性脊回归分类(LRC)和支持向量机(SVM)的模型对六种气体进行分类。采用反向传播(BP)神经网络和极限学习机(ELM)预测乙醇浓度。结果表明,SVM 对六种混淆气体的分类准确率超过 0.99。此外,基于 ELM 的回归器对乙醇浓度的预测性能突出(>0.98),尽管传感器阵列的响应几乎达到饱和。该研究探索了基于机器学习的模式识别分析的可能性,以进一步提高具有不同形貌调控的分级结构气体传感器阵列的检测性能。