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首页> 外文期刊>Atmospheric Measurement Techniques >Testing the performance of field calibration techniques for low-cost gas sensors in new deployment locations: across a county line and across Colorado
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Testing the performance of field calibration techniques for low-cost gas sensors in new deployment locations: across a county line and across Colorado

机译:在新的部署位置(横跨县线和科罗拉多州)测试低成本气体传感器的现场校准技术的性能

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We assessed the performance of ambient ozone ( Osub3/sub ) and carbon dioxide ( COsub2/sub ) sensor field calibration techniques when they were generated using data from one location and then applied to data collected at a new location. This was motivated by a previous study (Casey et al., 2018), which highlighted the importance of determining the extent to which field calibration regression models could be aided by relationships among atmospheric trace gases at a given training location, which may not hold if a model is applied to data collected in a new location. We also explored the sensitivity of these methods in response to the timing of field calibrations relative to deployment periods. Employing data from a number of field deployments in Colorado and New Mexico that spanned several years, we tested and compared the performance of field-calibrated sensors using both linear models (LMs) and artificial neural networks (ANNs) for regression. Sampling sites covered urban and rural–peri-urban areas and environments influenced by oil and gas production. We found that the best-performing model inputs and model type depended on circumstances associated with individual case studies, such as differing characteristics of local dominant emissions sources, relative timing of model training and application, and the extent of extrapolation outside of parameter space encompassed by model training. In agreement with findings from our previous study that was focused on data from a single location (Casey et al., 2018), ANNs remained more effective than LMs for a number of these case studies but there were some exceptions. For COsub2/sub models, exceptions included case studies in which training data collection took place more than several months subsequent to the test data period. For Osub3/sub models, exceptions included case studies in which the characteristics of dominant local emissions sources (oil and gas vs.?urban) were significantly different at model training and testing locations. Among models that were tailored to case studies on an individual basis, Osub3/sub ANNs performed better than Osub3/sub LMs in six out of seven case studies, while COsub2/sub ANNs performed better than COsub2/sub LMs in three out of five case studies. The performance of Osub3/sub models tended to be more sensitive to deployment location than to extrapolation in time, while the performance of COsub2/sub models tended to be more sensitive to extrapolation in time than to deployment location. The performance of Osub3/sub ANN models benefited from the inclusion of several secondary metal-oxide-type sensors as inputs in five of seven case studies.
机译:当使用一个位置的数据生成然后将其应用于数据时,我们评估了环境臭氧(O 3 )和二氧化碳(CO 2 )传感器场校准技术的性能在新位置收集。这是由先前的研究(Casey et al。,2018)激发的,该研究强调了确定给定训练地点的大气痕量气体之间的关系对田间标定回归模型可在多大程度上帮助的重要性,如果将模型应用于在新位置收集的数据。我们还探讨了这些方法对现场校准相对于部署周期的响应的敏感性。我们使用了跨越科罗拉多州和新墨西哥州的多年现场部署中的数据,使用线性模型(LM)和人工神经网络(ANN)进行回归测试并比较了现场校准传感器的性能。采样地点覆盖了受石油和天然气生产影响的城市和农村-近郊地区和环境。我们发现,表现最佳的模型输入和模型类型取决于与个案研究相关的情况,例如本地主导排放源的不同特征,模型训练和应用的相对时机以及由参数所涵盖的参数空间之外的外推范围模型训练。与我们以前的研究结果集中于单个位置的数据相一致(Casey等人,2018),在许多此类案例研究中,人工神经网络仍然比线性运动更有效,但也有一些例外。对于CO 2 模型,例外情况包括案例研究,在该案例研究中,在测试数据期之后的几个月内收集了培训数据。对于O 3 模型,例外情况包括案例研究,其中模型训练和测试位置的主要局部排放源(油气与城市)的特征显着不同。在针对个案进行量身定制的模型中,在七个案例研究中的六个案例中,O 3 人工神经网络的性能优于O 3 LM,而CO 2在五分之三的案例研究中,神经网络的性能优于CO 2 LM。 O 3 模型的性能倾向于对部署位置敏感,而不是对时间外推,而CO 2 模型的性能倾向于对时间外推更敏感。而不是部署位置。 O 3 神经网络模型的性能得益于七个案例研究中的五个案例,其中包括多个辅助金属氧化物型传感器作为输入。

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