مشخصات پژوهش

خانه /Enhanced Selectivity ...
عنوان
Enhanced Selectivity Electronic Nose Systems for Agricultural Ammonia Gas Detection via a co-designed WO3-ZnO Sensor Array and Convolutional Neural Networks
نوع پژوهش مقالات در نشریات
کلیدواژه‌ها
Ammonia gas sensor, Electronic nose (E-nose), Metal-oxide semiconductor, Convolutional neutral network (CNN), Sensor data fusion, Agricultural emission monitoring
چکیده
Enhanced Selectivity Electronic Electronic noses (e-noses) offer a practical solution for real-time monitoring of ammonia (NH3) in agricultural environments, where NH3 often coexists with interfering gases such as CO2, CH4, and H2S. However, semiconductor-based gas sensors commonly used in e-nose systems suffer from inherent cross-sensitivity, which reduces measurement accuracy. This study investigates the cross-sensitivity of NH3 detection and introduces a mitigation strategy through convolutional neural networks (CNNs) for sensor data fusion. Experimental results show that WO2-based sensors exhibit strong NH3 selectivity, with response ratios of 7.3:1 against CH4 and 17.8:1 against H2S. Density functional theory (DFT) analysis confirmed that the WO3 sensor exhibited strongest NH3 binding energy (− 1.45 eV), compared to SnO2 (− 1.10 eV), explaining the observed selectivity. Measurement uncertainties (± 8%) were quantified under varying humidity (30–90% RH) and temperature (10–40 °C) using a weighted least squares error propagation model. A quasi-2D sensor array improved NH3 classification accuracy to 96.4% (7.2% increase) while reducing concentration errors by 50.8%, as validated by linear discriminant analysis. Long-term stability tests demonstrated that SnO2 sensors maintained a low baseline drift of 0.18%/day over 180 days, outperforming CH4 (0.31%/day) and ZnO (0.42%/day) sensors. Furthermore, the CNN model, trained on multi-sensor time-series data, achieved 91.7% accuracy in mixed-gas environments by capturing non-linear response patterns, ensuring reliable NH3 quantification despite interferents. These findings highlight the promise of CNN-enhanced e-nose systems for precise NH3 monitoring in complex agricultural settings, addressing key challenges of cross-sensitivity and environmental stability
پژوهشگران Mengying Du (نفر اول)، مختار ایدراوومی عبدالرحیم (نفر دوم)، lUlU xU (نفر سوم)، Yiheng Zang (نفر چهارم)، Yinghang Song (نفر پنجم)، مریم عباسی طریقت (نفر ششم به بعد)، ویجایا راغاوان (نفر ششم به بعد)، جیانگ دونگ هو (نفر ششم به بعد)
تاریخ انجام 1404-08-16