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温带森林集水区人为盐分季节性模式。

Seasonal pattern of anthropogenic salinization in temperate forested headwater streams.

机构信息

Virginia Water Resources Research Center, Virginia Tech, 310 West Campus Dr, RM 210, Blacksburg, VA 24061, USA.

Crop and Soil Environmental Sciences, Virginia Tech, 185 Ag Quad Ln, RM 416, Blacksburg VA 24061, USA.

出版信息

Water Res. 2018 Apr 15;133:8-18. doi: 10.1016/j.watres.2018.01.012. Epub 2018 Jan 8.

Abstract

Salinization of freshwaters by human activities is of growing concern globally. Consequences of salt pollution include adverse effects to aquatic biodiversity, ecosystem function, human health, and ecosystem services. In headwater streams of the temperate forests of eastern USA, elevated specific conductance (SC), a surrogate measurement for the major dissolved ions composing salinity, has been linked to decreased diversity of aquatic insects. However, such linkages have typically been based on limited numbers of SC measurements that do not quantify intra-annual variation. Effective management of salinization requires tools to accurately monitor and predict salinity while accounting for temporal variability. Toward that end, high-frequency SC data were collected within the central Appalachian coalfield over 4 years at 25 forested headwater streams spanning a gradient of salinity. A sinusoidal periodic function was used to model the annual cycle of SC, averaged across years and streams. The resultant model revealed that, on average, salinity deviated approximately ±20% from annual mean levels across all years and streams, with minimum SC occurring in late winter and peak SC occurring in late summer. The pattern was evident in headwater streams influenced by surface coal mining, unmined headwater reference streams with low salinity, and larger-order salinized rivers draining the study area. The pattern was strongly responsive to varying seasonal dilution as driven by catchment evapotranspiration, an effect that was amplified slightly in unmined catchments with greater relative forest cover. Evaluation of alternative sampling intervals indicated that discrete sampling can approximate the model performance afforded by high-frequency data but model error increases rapidly as discrete sampling intervals exceed 30 days. This study demonstrates that intra-annual variation of salinity in temperate forested headwater streams of Appalachia USA follows a natural seasonal pattern, driven by interactive influences on water quantity and quality of climate, geology, and terrestrial vegetation. Because climatic and vegetation dynamics vary annually in a seasonal, cyclic manner, a periodic function can be used to fit a sinusoidal model to the salinity pattern. The model framework used here is broadly applicable in systems with streamflow-dependent chronic salinity stress.

摘要

人类活动导致的淡水盐渍化在全球范围内受到越来越多的关注。盐污染的后果包括对水生生物多样性、生态系统功能、人类健康和生态系统服务的不利影响。在美国东部温带森林的源头溪流中,升高的比电导(specific conductance,SC),一种表示盐分主要溶解离子的替代测量值,与水生昆虫多样性的降低有关。然而,这种关联通常基于有限数量的 SC 测量值,这些测量值不能量化年内变化。有效的盐渍化管理需要能够准确监测和预测盐分并考虑时间变化的工具。为此,在过去的 4 年中,在美国阿巴拉契亚中部煤田的 25 条森林源头溪流中,收集了高频 SC 数据,这些溪流跨越了盐分梯度。使用正弦周期性函数来对 SC 的年周期进行建模,该模型是在多年和多条溪流的基础上平均得到的。结果表明,该模型平均表明,在所有年份和溪流中,盐度大约偏离年度平均值±20%,最小的 SC 出现在冬季末,最大的 SC 出现在夏季末。这种模式在受地表煤矿开采影响的源头溪流、盐分较低的未开采源头参考溪流以及较大的河流中都很明显。这种模式对由流域蒸散驱动的季节性稀释变化非常敏感,在相对森林覆盖率较高的未开采流域中,这种影响略有放大。对替代采样间隔的评估表明,离散采样可以近似高频数据提供的模型性能,但随着离散采样间隔超过 30 天,模型误差会迅速增加。本研究表明,美国阿巴拉契亚温带森林源头溪流的盐度年内变化遵循自然季节性模式,这是由气候、地质和陆地植被对水量和水质的相互影响驱动的。由于气候和植被动态以季节性、周期性的方式逐年变化,因此可以使用周期性函数来拟合盐度模式的正弦模型。这里使用的模型框架在具有依赖于水流的慢性盐胁迫的系统中具有广泛的适用性。

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