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Study on atmospheric visibility variations and the impacts of meteorological parameters using high temporal resolution data: an application of Environmental Internet of Things in China

机译:利用高时间分辨率数据研究大气能见度变化和气象参数的影响:中国环境物联网的应用

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Atmospheric visibility degradation in China is an important environmental issue because it has been demonstrated to be associated with air pollution. One-year of high temporal resolution visibility data and meteorological parameters including precipitation, relative humidity (RH), wind speed (WS), and wind direction (WD) during June 2011-May 2012 were obtained at Long-term Urban Ecosystems Observation and Research Station in Xiamen (Xiamen LUEORS) by means of Environmental Internet of Things (EIoT) technology. The visibility and meteorological data were analyzed to study the temporal variation of atmospheric visibility and its relationship with meteorological parameters in this region. Optimal empirical regression models were also developed to predict visibility based on meteorological parameters. The annual average visibility during the study period is 8969 m, with 63.2% of the total measurements less than 10 km. ‘Bad’ visibility (i.e., visibility < 10 km) is prone to occur in late winter to early spring. Visibility exhibited a distinct diurnal variation with the minimum of 6508 m at 6:00 Local Time (LT) and the maximum of 11,378 m at 13:00 LT. Visibility is higher in summer (11,410 m) and autumn (10,589 m) than in winter (7070 m) and spring (6807 m), with the highest (12,141 m) and lowest (5376 m) value occurred in August and February, respectively. During hazy, foggy, and rainy periods, the average visibilities were 5020 m, 1044 m, and 3967 m, respectively, much lower than those during normal period (15,970 m). Precipitation decreased the frequency of ‘good’ visibility (i.e., visibility > 10 km) by 1.4% and increased the frequency of ‘extremely bad’ visibility (i.e., visibility < 2 km) by 1.5% during the year. Visibility was mostly below 10 km when the 10-min precipitation was larger than 0.6 mm. No significant correlation exists between visibility change and precipitation. For RH > 80%, over 90% of the visibilities are below 10 km. The average visibility is below 8 km for RH > 70%. For WS < 1.0 m/s, over 80% of the visibilities are below 10 km. When WS < 2.0 m/s, the average visibility is below 9 km. Visibility is negatively correlated with RH and positively correlated with WS, with the annual correlation coefficients of-0.507 and 0.494, respectively. It is prone to have ‘bad’ visibility when the wind is blowing from west and northwest. An optimal empirical multiple regression model based on meteorological parameters can moderately simulate the visibility. The results provide newknowledge for better understanding the characteristics of visibility and its relationship with meteorological parameters, based on which a statistical model for predicting the visibility in this region was developed.
机译:在中国,大气能见度下降是一个重要的环境问题,因为已证明它与空气污染有关。在2011年6月至2012年5月期间,获得了一年的高分辨率高分辨率可见度数据和气象参数,包括降水,相对湿度(RH),风速(WS)和风向(WD),该数据来自长期城市生态系统观察与研究通过环境物联网(EIoT)技术在厦门的厦门(LUEORS)站。分析了能见度和气象数据,以研究该地区大气能见度的时变及其与气象参数的关系。还开发了最佳经验回归模型,以根据气象参数预测能见度。研究期间的年平均能见度为8969 m,其中63.2%的总测量值小于10 km。冬季末到初春容易出现“不良”能见度(即能见度<10 km)。能见度表现出明显的昼夜变化,在当地时间6:00(LT)最小值为6508 m,在LT 13:00最大值为11,378 m。夏季(11,410 m)和秋季(10,589 m)的能见度高于冬季(7070 m)和春季(6807 m)的能见度,分别在8月和2月出现最高值(12,141 m)和最低(5376 m)。 。在朦胧,有雾和下雨期间,平均能见度分别为5020 m,1044 m和3967 m,远低于正常时期(15,970 m)。在一年中,降水使“良好”能见度(即能见度> 10 km)的发生率降低了1.4%,并使“极差”能见度(即能见度<2 km)的发生率增加了1.5%。当10分钟的降水量大于0.6 mm时,能见度大多在10 km以下。能见度变化与降水之间不存在显着相关性。对于RH> 80%,超过90%的能见度在10 km以下。相对湿度> 70%时,平均能见度低于8 km。对于WS <1.0 m / s,超过80%的能见度在10 km以下。当WS <2.0 m / s时,平均能见度低于9 km。可见性与RH呈负相关,与WS呈正相关,年相关系数分别为-0.507和0.494。当风从西部和西北方向吹来时,很容易出现“不良”能见度。基于气象参数的最佳经验多元回归模型可以适度模拟能见度。结果为更好地了解能见度特征及其与气象参数的关系提供了新知识,在此基础上,开发了预测该地区能见度的统计模型。

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