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Return period and Pareto analyses of 45 years of tropical cyclone data (1970-2014) in the Philippines

机译:菲律宾(1970-2014)45年的返回期和帕累托分析

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摘要

The epiphenomena of tropical cyclones (TCs) such as landslides, storm surges, and floods cause the largest loss of life and property in the Philippines. In order to improve the disaster risk management efforts of the country, it is necessary to evaluate the return periods (RPs) or chance of occurrence (CoC)of TCs. Hence, this study generally aimed to investigate the relationship of the RPs/CoC, sea surface temperature (SST) anomaly associated with the Interdecadal Pacific Oscillation (IPO), and the cost of socio-economic damages and the number of deaths caused by TCs. The Weibull parametric models and the Pareto principle were utilised to achieve this overarching objective. Using the maximum sustained wind speed (v), forty-five (45) years of TC data (1970-2014) within the Philippines Area of Responsibility (PAR) were analysed by applying the stationary and non-stationary stochastic modelling techniques. The stationary Weibull probability density function revealed that TCs Rita (1978), Dot (1985) and Haiyan (2013) occupy the wind speed region of 61 &= v &= 64 m/s with a probability of 0.4% for any given year. On the other hand, the analysis of the cumulative distribution function revealed a 60% probability of TCs for the cumulative years with a maximum sustained wind speed of at most 38 m/s. This indicates the central estimate of the wind speed from 1970 to 2014 with TCs Ruby (1988) and Vicki (1998) as the observed cases. Furthermore, the probability values on the annual CoC maps depict the indicative positions of TCs, either singly, co-shared or cross-shared, that made landfall (or not) in the Philippines. Results from the non-stationary stochastic modelling revealed that the low probability values on the decadal CoC maps indicate the locations where extreme TC events are likely to occur within PAR; hence, showing the areas in the country that are more at-risk. The relationship of SST anomaly and CoC values disclosed that the TCs are intensified in the northern Philippines and south of West Philippines Sea dining the positive(+) phase and the negative(-) phase of the IPO, respectively. Finally, the Pareto analysis revealed that 80% of the TC-related damage cost and the number of deaths are shared by three (3) different stationary and non-stationary RPs with TCs Ike (1984), Nina (1987), Fengshen (2008), Mike (1990), Parma (2009), and Haiyan (2013) as the observed extreme events. In the absence of accurate or updated cyclone risk models, the communities that are highly vulnerable to TCs can use the stationary and non-stationary stochastic CoC models as an early warning tool for disaster preparedeness. Ultimately, the results of this study can provide significant insights to support the Philippines in their pursuit of improving cyclone resilience programs.
机译:热带气旋(TCS)的Epiphenomena,如滑坡,风暴潮和洪水,导致菲律宾最大的生命和财产丧失。为了改善国家的灾害风险管理努力,有必要评估TCS的返回期(RPS)或发生机会(COC)。因此,本研究旨在调查RPS / COC,海面温度(SST)异常与跨跨越太平洋振荡(IPO)相关的关系,以及社会经济损害成本和TCS造成的死亡人数。利用Weibull参数模型和帕累托原则来实现这种总体目标。通过应用静止和非静止随机造型技术,使用菲律宾责任地区的最大持续风速(v),四十五(45)年的TC数据(1970-2014)进行分析。静止的Weibull概率密度函数显示TCS丽塔(1978),DOT(1985)和海盐(2013)占据61& GT; = V& LT; = 64米/秒,概率为0.4任何给定年份的百分比。另一方面,累积分布函数的分析显示了累积年度的60%TCS概率,最大持续的风速至多38米/秒。这表明1970年至2014年与TCS Ruby(1988)和Vicki(1998)为观察病例的风速的中央估计。此外,年度COC地图上的概率价值描述了TCS,单独,共同共享或交叉共享的指示性职位,在菲律宾中的登陆(或不)。非静止随机建模的结果显示,Decadal CoC地图上的低概率值表明了极端TC事件可能在PAR内发生的位置;因此,展示了更具风险的国家的区域。 SST异常和COC值的关系透露,TCS在菲律宾北部和西菲律宾南部分别在西菲律宾南部,分别为IPO的正(+)阶段和负( - )阶段。最后,帕累托分析显示,80%的TC相关损害成本和死亡人数由三(3)个不同的固定式和非静止RPS与TCS IKE(1984),Nina(1987),丰申(2008年) ),Mike(1990),Parma(2009)和Haiyan(2013年)作为观察到的极端事件。在没有准确或更新的旋风风险模型的情况下,高度容易受到TCS的社区可以使用静止和非静止的随机COC模型作为灾难饲养的预警工具。最终,本研究的结果可以在追求改善飓风恢复纲领方面提供重要的见解,以支持菲律宾。

著录项

  • 来源
    《Applied Geography》 |2018年第2018期|共20页
  • 作者

    Espada Rudolf;

  • 作者单位

    Univ Southern Queensland Fac Hlth Engn &

    Sci Sch Agr Computat &

    Environm Sci Toowoomba Qld Australia;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自然地理学;
  • 关键词

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