深圳河感潮河段洪水特性变化及成因分析
Journal of China Hydrology(2021)
Abstract
感潮河道洪水特性受陆海双相复杂动力的共同影响.选取深圳和香港的界河——深圳河,基于实测降雨、流量及水位资料,分析潮动力作用下2018年"0829"典型洪水的变化过程,并与流量量级和洪潮遭遇过程相当的2008年6月洪水进行对比,发现"0829"洪水期间河道中上部水位升高约1.4m,河道防洪压力增大.分析发现河道淤积、河道阻力增大和河口平均潮位抬升是导致"0829"洪水水位壅高的主要原因.
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