气溶胶对新疆冰雹形成物理过程影响的数值模拟研究
wf(2021)
Abstract
利用带有分档微物理方案的中尺度模式(WRF-SBM)模拟了一次新疆夏季的冰雹天气过程,并通过敏感性试验研究了气溶胶浓度变化对雹云微物理特征、降水过程及冰雹形成机制的影响.结果表明:初始气溶胶浓度越大,对流云发展越旺盛.雹云发展阶段,云中液水含量随气溶胶浓度增加而增多,冰水含量在中度污染时最多.冰雹的含量随气溶胶浓度的增加呈现先增加后减小的趋势,相较而言中度污染条件下,云滴尺度适当,过冷云水含量相对充足,更有利于液相水成物向冰粒子的转化,也更有利于冰雹的生长.冰雹最初几乎全部由冰晶碰冻过冷水生成,随后该过程迅速减弱,液滴冻结过程短暂地成为主要来源,但冰雹一旦形成,自身就会迅速收集过冷水开始生长,成为冰雹生长的主导过程.重度污染条件导致各种成雹过程推迟发生.气溶胶浓度增大导致地面液相累积降水增加,冰相累积降水先增加减少,并且气溶胶浓度适当增大可使降雹量及冰相降水中冰雹的比重增加,过量则会减小.在此基础上,本文提出最适合冰雹生长的"最优气溶胶浓度",同时也是人工防雹工作中应重点关注的浓度.
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