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首页> 外文期刊>Boundary-Layer Meteorology >Gap Filling and Quality Assessment of CO2 and Water Vapour Fluxes above an Urban Area with Radial Basis Function Neural Networks
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Gap Filling and Quality Assessment of CO2 and Water Vapour Fluxes above an Urban Area with Radial Basis Function Neural Networks

机译:基于径向基函数神经网络的城市上方CO 2 和水汽通量的空缺填充及质量评估

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Vertical turbulent fluxes of water vapour, carbon dioxide, and sensible heat were measured from 16 August to the 28 September 2006 near the city centre of Münster in north-west Germany. In comparison to results of measurements above homogeneous ecosystem sites, the CO2 fluxes above the urban investigation area showed more peaks and higher variances during the course of a day, probably caused by traffic and other varying, anthropogenic sources. The main goal of this study is the introduction and establishment of a new gap filling procedure using radial basis function (RBF) neural networks, which is also applicable under complex environmental conditions. We applied adapted RBF neural networks within a combined modular expert system of neural networks as an innovative approach to fill data gaps in micrometeorological flux time series. We found that RBF networks are superior to multi-layer perceptron (MLP) neural networks in the reproduction of the highly variable turbulent fluxes. In addition, we enhanced the methodology in the field of quality assessment for eddy covariance data. An RBF neural network mapping system was used to identify conditions of a turbulence regime that allows reliable quantification of turbulent fluxes through finding an acceptable minimum of the friction velocity. For the data analysed in this study, the minimum acceptable friction velocity was found to be 0.15 m s−1. The obtained CO2 fluxes, measured on a tower at 65 m a.g.l., reached average values of 12 μmol m−2 s−1 and fell to nighttime minimum values of 3 μmol m −2 s−1. Mean daily CO2 emissions of 21 g CO2 m−2d −1 were obtained during our 6-week experiment. Hence, the city centre of Münster appeared to be a significant source of CO2. The half-hourly average values of water vapour fluxes ranged between 0.062 and 0.989 mmol m−2 s−1and showed lower variances than the simultaneously measured fluxes of CO2.
机译:从2006年8月16日至9月28日在德国西北部明斯特市中心附近测量了水蒸气,二氧化碳和显热的垂直湍流。与同质生态系统地点上方的测量结果相比,城市调查区域上方的CO 2 通量在一天中显示出更多的峰值和更高的方差,这可能是由于交通和其他人为来源引起的。这项研究的主要目的是介绍和建立一种新的使用径向基函数(RBF)神经网络的间隙填充程序,该程序也适用于复杂的环境条件。我们在组合的神经网络模块化专家系统中应用了适应性的RBF神经网络,作为一种填补微气象通量时间序列中数据空白的创新方法。我们发现,在高度可变的湍流通量的再现中,RBF网络优于多层感知器(MLP)神经网络。此外,我们增强了涡度协方差数据质量评估领域的方法。使用RBF神经网络映射系统来确定湍流状态的条件,该条件允许通过找到可接受的最小摩擦速度来可靠地量化湍流。对于本研究中分析的数据,发现最小可接受的摩擦速度为0.15 m s -1 。在塔上以65 m agl测得的CO 2 通量达到平均值12μmolm −2 s -1 并下降到夜间最小值3μmolm -2 s -1 。在我们的6-年期间,获得了21 g CO 2 m -2 d -1 的平均每日CO 2 排放量周实验。因此,明斯特市中心似乎是CO 2 的重要来源。水蒸气通量的半小时平均值介于0.062和0.989 mmol m -2 s -1 之间,并且其方差低于同时测量的CO 2

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