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A hydrochemically guided landscape classification system for modelling spatial variation in multiple water quality indices: Process- attribute mapping

机译:一种水溶性导向景观分类系统,用于在多种水质指标中建模空间变化:过程 - 属性映射

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Spatial variation in landscape attributes can account for much of the variability in water quality relative to land use on its own. Such variation results from the coupling between the dominant processes governing water quality, namely hydrological, redox, and weathering and gradients in key landscape attributes, such as topography, geology, and soil drainage. Despite the importance of 'process-attribute' gradients (PAG), few water quality models explicitly account for their influence. Here a processes-based water quality modelling framework is presented that more completely accounts for the role of landscape variability over water quality - Process-Attribute Mapping (PoAM). Critically, hydrochemical measures form the basis for the identification and mapping of effective landscape attributes, producing PAG maps that attempt to replicate the natural landscape gradients governing each dominant process. Application to the province of Southland (31,824 km(2)), New Zealand, utilised 12 existing geospatial datasets and a total of 28,626 surface water, groundwater, spring, soil water, and precipitation analyses to guide the identification and mapping of 11 individual PAG. The ability of PAGs to replicate regional hydrological, redox, and weathering gradients was assessed on the accuracy with which the hydrochemical indicators of each dominant process (e.g. hydrological tracers, redox indicators) were estimated across 93 long-term surface water monitoring sites (cross-validated R-2 values of 0.75-0.95). Given hydrochemical evidence that PAGs replicate actual landscape gradients governing the dominant processes, they were combined with a land use intensity layer and used to estimate steady-state surface water quality. Cross-validated R-2 values ranged between 0.81 and 0.92 for median total nitrogen, total oxidised nitrogen, total phosphorus and dissolved reactive phosphorus. Models of particulate species E. coli and total suspended sediment, although reasonable (R-2 0.72-0.73), were less accurate, suggesting finer-grained land use, landscape attribute, and/or flow normalised measures are required to improve estimation. (C) 2019 Published by Elsevier B.V.
机译:景观属性的空间变化可以考虑到其自身的土地使用的水质的大部分变异性。这种变化是由治疗水质,即水文,氧化还原和风化属性的耦合,即关键景观属性,如地形,地质和土壤排水。尽管“流程属性”梯度(PAG)重要性,但很少有水质模型明确占他们的影响。在这里,提出了一种基于过程的水质建模框架,更完全占景观变异性在水质的作用 - 过程属性映射(POAM)。批判性地,水化学措施构成了有效景观属性的识别和映射的基础,产生了试图复制管理每个主机过程的自然景观梯度的PAG地图。在南部省(31,824公里(2)),新西兰,采用12个现有地理空间数据集,总共28,626个地表水,地下水,弹簧,土壤水和降水分析,以指导11个单独的PAG的识别和映射。评估PAG以重复区域水文,氧化还原和耐候梯度的能力,以估计在93个长期表面水监测网站上估计每种主要过程的水化学指标(例如水文示踪剂,氧化还原指标)(交叉经过验证的R-2值为0.75-0.95)。鉴于PAG复制实际景观梯度的水化证据,它们与土地利用强度层相结合,用于估计稳态地表水质。交叉验证的R-2值范围为0.81和0.92,用于总氮,总氧化氮,总磷和溶解的反应性磷。颗粒状物种大肠杆菌和总悬浮沉积物的模型,但合理(R-2 0.72-0.73)较低,表明需要更精细的土地使用,景观属性和/或流量规范化措施,以改善估计。 (c)2019年由elestvier b.v发布。

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