首页> 外文期刊>International Journal of Biometeorology: Journal of the International Society of Biometeorology >Artificial neural network models of relationships between Alternaria spores and meteorological factors in Szczecin (Poland).
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Artificial neural network models of relationships between Alternaria spores and meteorological factors in Szczecin (Poland).

机译:什切青(波兰)中链格孢菌孢子与气象因子之间关系的人工神经网络模型。

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Alternaria is an airborne fungal spore type known to trigger respiratory allergy symptoms in sensitive patients. Aiming to reduce the risk for allergic individuals, we constructed predictive models for the fungal spore circulation in Szczecin, Poland. Monthly forecasting models were developed for the airborne spore concentrations of Alternaria, which is one of the most abundant fungal taxa in the area. Aerobiological sampling was conducted over 2004-2007, using a Lanzoni trap. Simultaneously, the following meteorological parameters were recorded: daily level of precipitation; maximum and average wind speed; relative humidity; and maximum, minimum, average, and dew point temperature. The original factors as well as with lags (up to 3 days) were used as the explaining variables. Due to non-linearity and non-normality of the data set, the modelling technique applied was the artificial neural network (ANN) method. The final model was a split model with classification (spore presence or absence) followed by regression for spore seasons and log(x+1) transformed Alternaria spore concentration. All variables except maximum wind speed and precipitation were important factors in the overall classification model. In the regression model for spore seasons, close relationships were noted between Alternaria spore concentration and average and maximum temperature (on the same day and 3 days previously), humidity (with lag 1) and maximum wind speed 2 days previously. The most important variable was humidity recorded on the same day. Our study illustrates a novel approach to modelling of time series with short spore seasons, and indicates that the ANN method provides the possibility of forecasting Alternaria spore concentration with high accuracy.
机译:链格孢菌是一种空气传播的真菌孢子,已知会触发敏感患者的呼吸道过敏症状。为了降低过敏性个体的风险,我们为波兰什切青建立了真菌孢子循环的预测模型。开发了链格孢菌的空气传播孢子浓度的月度预测模型,链格孢菌是该地区最丰富的真菌类群之一。使用Lanzoni捕集阱于2004-2007年进行了空气生物学采样。同时,记录了以下气象参数:日降水量;最大和平均风速;相对湿度;最高,最低,平均和露点温度。原始因素以及滞后因素(最多3天)均用作解释变量。由于数据集的非线性和非正态性,因此采用的建模技术是人工神经网络(ANN)方法。最终模型是具有分类(孢子存在或不存在)的分裂模型,然后对孢子季节和log(x + 1)转化的链格孢菌孢子浓度进行回归。除了最大风速和降水以外,所有变量都是整体分类模型中的重要因素。在孢子季节的回归模型中,链格孢的孢子浓度与平均和最高温度(在同一天和前三天),湿度(滞后1)和最大风速在两天之间密切相关。最重要的变量是当天记录的湿度。我们的研究表明了一种新的方法来建模短孢子季节的时间序列,并表明ANN方法提供了高精度预测链格孢菌孢子浓度的可能性。

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