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Scale Analysis and Correlation Study of Wildfire and the Meteorological Factors That Influence It

机译:野火的尺度分析,相关性研究及影响其的气象因素

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摘要

Wildfire is a large-scale complex system. Insight into the mechanism that drives wildfires can be revealed by the distribution of the wildfire over a large time scale, which is one of the important topics in wildfire research. In this study, the scaling properties of four meteorological factors (relative humidity, daily precipitation, daily average temperature, and maximum wind speed) that can affect wildfires (number of wildfires per day) were investigated by using the detrended fluctuation analysis method. Tire results showed that the time series for these meteorological factors and wildfires have similar power exponents and turning points for the power exponents curve. The five types of time series have a lasting and steady long-range power law correlation over a certain time scale range, where the corresponding exponents were 0.6484, 0.5724, 0.8647, 0.7344, and 0.6734, respectively. They also have a reversible long-range power law correlation beyond a certain time scale, where the corresponding exponents are 0.3862, 0.2218, 0.1372, 0.2621, and 0.2678. The multifractal detrended fluctuation analysis results showed that the wildfire time series were multifractal. The results of the research based on the detrended cross-correlation analysis and the multifractal detrended cross-correlation analysis showed that relative humidity and daily precipitation have a considerable impact on the wildfire time series, while the impacts of daily average temperature and the maximum wind speed are relatively small. This study showed that identifying the factors causing the inherent volatility in the wildfire time series can improve understanding of the dynamic mechanism controlling wildfires and the meteorological parameters. These results can also be used to quantify the correlation between wildfire and the meteorological factors investigated in this study.
机译:野火是一个大型的复杂系统。野火在长时间范围内的分布可以揭示对引起野火的机制的了解,这是野火研究的重要主题之一。在这项研究中,使用去趋势波动分析方法研究了会影响野火(每天野火数量)的四个气象因素(相对湿度,每日降水,每日平均温度和最大风速)的缩放特性。轮胎结果表明,这些气象因素和野火的时间序列具有相似的幂指数和幂指数曲线的转折点。这五种时间序列在特定时间范围内具有持久且稳定的远程幂律相关性,其中相应的指数分别为0.6484、0.5724、0.8647、0.7344和0.6734。它们在一定时间范围之外还具有可逆的远程幂定律相关性,其中相应的指数为0.3862、0.2218、0.1372、0.2621和0.2678。多重分形趋势分析结果表明,野火时间序列是多重分形的。基于去趋势互相关分析和多重分形去趋势互相关分析的研究结果表明,相对湿度和日降水量对野火时间序列有相当大的影响,而日平均温度和最大风速的影响相对较小。这项研究表明,识别引起野火时间序列内在波动的因素可以增进对控制野火的动力学机制和气象参数的了解。这些结果还可以用于量化野火与本研究中调查的气象因素之间的相关性。

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  • 来源
    《Mathematical Problems in Engineering》 |2018年第7期|5739805.1-5739805.10|共10页
  • 作者单位

    Fire Prevent Dept, State Key Lab Disaster Prevent & Reduct Power Gri, Changsha 410007, Hunan, Peoples R China;

    Fire Prevent Dept, State Key Lab Disaster Prevent & Reduct Power Gri, Changsha 410007, Hunan, Peoples R China;

    Fire Prevent Dept, State Key Lab Disaster Prevent & Reduct Power Gri, Changsha 410007, Hunan, Peoples R China;

    Fire Prevent Dept, State Key Lab Disaster Prevent & Reduct Power Gri, Changsha 410007, Hunan, Peoples R China;

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