Department of Electronics, Mangalore University, Mangalore, India.
Rajeev Gandhi College of Engineering and Technology, Puducherry, India.
Sci Rep. 2021 Dec 21;11(1):24321. doi: 10.1038/s41598-021-03674-1.
We report a machine learning approach to accurately correlate the impedance variations in zinc oxide/multi walled carbon nanotube nanocomposite (F-MWCNT/ZnO-NFs) to NH ions concentrations. Impedance response of F-MWCNT/ZnO-NFs nanocomposites with varying ZnO:MWCNT compositions were evaluated for its sensitivity and selectivity to NH ions in the presence of structurally similar analytes. A decision-making model was built, trained and tested using important features of the impedance response of F-MWCNT/ZnO-NF to varying NH concentrations. Different algorithms such as kNN, random forest, neural network, Naïve Bayes and logistic regression are compared and discussed. ML analysis have led to identify the most prominent features of an impedance spectrum that can be used as the ML predictors to estimate the real concentration of NH ion levels. The proposed NH sensor along with the decision-making model can identify and operate at specific operating frequencies to continuously collect the most relevant information from a system.
我们提出了一种机器学习方法,可准确关联氧化锌/多壁碳纳米管纳米复合材料(F-MWCNT/ZnO-NFs)的阻抗变化与 NH 离子浓度。评估了具有不同 ZnO:MWCNT 组成的 F-MWCNT/ZnO-NFs 纳米复合材料对 NH 离子的灵敏度和选择性,同时考虑了结构相似的分析物的影响。使用 F-MWCNT/ZnO-NF 对不同 NH 浓度的阻抗响应的重要特征,构建、训练和测试了决策模型。比较和讨论了不同的算法,如 kNN、随机森林、神经网络、朴素贝叶斯和逻辑回归。ML 分析有助于确定阻抗谱中最突出的特征,这些特征可作为 ML 预测因子来估计 NH 离子实际浓度。所提出的 NH 传感器和决策模型可以在特定工作频率下识别和运行,以从系统中连续收集最相关的信息。