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Dynamic reservoir rule curves – Their creation and utilization 动态水库规则曲线--其创建和利用
IF 4 Q2 GEOSCIENCES, MULTIDISCIPLINARY Pub Date : 2024-01-01 DOI: 10.1016/j.hydroa.2023.100166
Nesa Ilich

This paper presents a methodology for the creation of dynamic reservoir rule curves on the basis of the results of implicit stochastic optimization coupled with optimized demand hedging embedded as constraints to optimization. The novelty of the method is a dynamic rule curve that always starts from the current storage level and projects a range of anticipated target levels in the immediate future based on the statistical analyses of the results of implicit stochastic optimization. The method is particularly useful in dry years when storage is not completely filled at the end of wet seasons. Such situations cannot be addressed with standard traditional rule curves, thus causing reservoir operators to base their decisions on mere judgment. The proposed method can be helpful in such situations. The method has been demonstrated on the Tawa reservoir in the Narmada River Basin in India.

本文介绍了一种在隐式随机优化结果的基础上创建动态水库规则曲线的方法,并将优化需求对冲作为优化的约束条件嵌入其中。该方法的新颖之处在于,动态规则曲线总是从当前的储量水平出发,并根据隐式随机优化结果的统计分析,预测出近期的预期目标水平范围。这种方法在干旱年份特别有用,因为在雨季结束时,蓄水并没有完全蓄满。这种情况无法用标准的传统规则曲线来解决,从而导致水库运营商仅凭判断做出决策。所提出的方法在这种情况下很有帮助。该方法已在印度纳尔马达河流域的塔瓦水库得到验证。
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引用次数: 0
Can local drain flow measurements be utilized to improve catchment scale modelling? 能否利用当地的排水流量测量来改进集水规模建模?
IF 4 Q2 GEOSCIENCES, MULTIDISCIPLINARY Pub Date : 2024-01-01 DOI: 10.1016/j.hydroa.2023.100170
Ida Karlsson Seidenfaden , Xin He , Anne Lausten Hansen , Bo V. Iversen , Anker Lajer Højberg

Tile drains constitute a shortcut from agricultural fields to surface water systems, significantly altering the transport pathways and fate of nitrate during transport. A correct representation of tile drainage flow is thus crucial for estimating nitrate load at the catchment scale and to identify optimal locations for N-mitigation measures. Drainage is a local process, controlled by local properties and drain configurations, which are rarely known for individual fields, making drainage flow and transport a challenging task in catchment scale models. This study tests the potential for improving drainage flow dynamics at catchment scale, by utilising local drainage flow measurements in a spatial calibration scheme. A distributed hydrological model, MIKE SHE, for the agricultural-dominated Norsminde catchment (145 km2) in Denmark, was calibrated using spatially distributed surrogate parameters (pilot points) to represent heterogeneity in the soil (top 3 m) and the deeper geology below 3 m. The model was calibrated using hydraulic heads, stream discharge, and measured drainage flow from eight drain catchments. Drain measurements were very important in guiding the calibration of top 3 m and subsurface pilot points located in the drainage fields, showing that drain flow hold information on both local (shallow) and regional (deeper) flow patterns. Contrarily, pilot points located outside the drained fields were mainly sensitive to the hydraulic head measurements and the summer water balance of the stream discharge on a catchment scale. Consequently, incorporation of the drain data improved local performance, but did not improve the parameterization and drain description of the entire catchment. Exploitation of the drain flow information is thus difficult beyond the drain catchments, and other approaches are needed to extrapolate and exploit the local data.

瓦片排水是农田通往地表水系统的捷径,极大地改变了硝酸盐的迁移路径和迁移过程中的归宿。因此,正确表示瓦片排水流量对于估算集水区范围内的硝酸盐负荷以及确定硝酸盐减缓措施的最佳位置至关重要。排水是一个局部过程,受局部属性和排水沟配置的控制,而单个田块的排水属性和排水沟配置很少为人所知,这使得排水流动和迁移成为集水尺度模型中的一项具有挑战性的任务。本研究通过在空间校准方案中利用当地的排水流量测量数据,测试了改善集水规模排水流量动态的潜力。丹麦以农业为主的 Norsminde 流域(145 平方公里)的分布式水文模型 MIKE SHE 采用空间分布式代用参数(试验点)进行校核,以表示土壤(顶部 3 米)和 3 米以下深层地质的异质性。排水测量对于校准位于排水区内的顶部 3 米和地下先导点非常重要,这表明排水流包含了当地(浅层)和区域(深层)水流模式的信息。与此相反,位于渠田以外的试验点主要对水头测量和集水尺度上的夏季溪流水量平衡敏感。因此,纳入渠流数据可改善局部性能,但并不能改善整个集水区的参数化和渠流描述。因此,在渠集水区之外很难利用渠流信息,需要采用其他方法来推断和利用局部数据。
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引用次数: 0
Quantifying and valuing irrigation in energy and water limited agroecosystems 对能源和水资源有限的农业生态系统中的灌溉进行量化和估价
IF 4 Q2 GEOSCIENCES, MULTIDISCIPLINARY Pub Date : 2023-12-22 DOI: 10.1016/j.hydroa.2023.100169
Mehmet Evren Soylu , Rafael L. Bras

Agriculture in regions with limited water availability is possible because of irrigation. Irrigated croplands are expanding, and irrigation water demand is increasing. Nevertheless, there is a limited understanding of how much water is consumed for irrigation and how effective irrigation increases crop productivity in various climates. In this study, we aim to understand how irrigation water affects crop productivity in different climates. To achieve this goal, we developed a simple approach to quantify irrigation quantities from SMAP satellite soil moisture observations based on a zero-dimensional bucket-type hydrology model. The central assumption is that irrigation quantities can be estimated from the gap between the modeled and observed soil moisture by iteratively providing irrigation as a model input until the soil moisture simulations agree well with the observations. We then used the estimated amount of irrigation to simulate water, energy, and carbon fluxes at two agricultural sites on the west coast of the US: one that was water-limited (Central Valley, CA) and one that was energy-limited (Eugene, OR). An agroecosystem model, AgroIBIS-VSF, was used to conduct simulations. To verify our simulations, we used data from two AmeriFlux Eddy covariance towers at each site. We found that incorporating estimated irrigation amounts into our simulations improved the accuracy of energy balance components and soil moisture predictions, reducing the root-mean-square error of soil moisture predictions by up to 22%. We also discovered that the irrigation value, in terms of increased productivity of actual irrigation water used, is more than five times more valuable at the energy-limited site than at the water-limited site. Soil hydraulic properties have a strong influence on irrigation water valuation. Our study highlights the potential of satellite soil moisture observations to improve our understanding of water productivity in different climates. By better understanding the efficiency of resources used for crop production, we can ensure the sustainability and resilience of agricultural systems, leading to better management practices.

有了灌溉,才有可能在水资源有限的地区进行农业生产。灌溉农田不断扩大,灌溉用水需求也在增加。然而,人们对不同气候条件下灌溉耗水量以及灌溉如何有效提高作物产量的了解还很有限。本研究旨在了解灌溉用水如何影响不同气候条件下的作物生产力。为实现这一目标,我们开发了一种简单的方法,基于零维水桶型水文模型,从 SMAP 卫星土壤水分观测数据中量化灌溉量。其核心假设是,可以根据模型和观测土壤水分之间的差距估算灌溉量,方法是反复提供灌溉作为模型输入,直到土壤水分模拟与观测结果完全一致。然后,我们利用估算的灌溉量来模拟美国西海岸两个农业区的水、能量和碳通量:一个是限水区(加利福尼亚州中央山谷),另一个是限能区(俄勒冈州尤金)。我们使用农业生态系统模型 AgroIBIS-VSF 进行了模拟。为了验证模拟结果,我们在每个地点使用了两个 AmeriFlux 涡协方差塔的数据。我们发现,将估算的灌溉量纳入模拟可提高能量平衡成分和土壤水分预测的准确性,使土壤水分预测的均方根误差减少达 22%。我们还发现,就实际灌溉用水所提高的生产率而言,限能区的灌溉价值是限水区的五倍以上。土壤水力特性对灌溉水价值有很大影响。我们的研究强调了卫星土壤水分观测在提高我们对不同气候条件下水生产率的认识方面所具有的潜力。通过更好地了解用于作物生产的资源的效率,我们可以确保农业系统的可持续性和恢复力,从而改进管理方法。
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引用次数: 0
Data driven real-time prediction of urban floods with spatial and temporal distribution 数据驱动的城市洪水时空分布实时预测
IF 4 Q2 GEOSCIENCES, MULTIDISCIPLINARY Pub Date : 2023-12-20 DOI: 10.1016/j.hydroa.2023.100167
Simon Berkhahn, Insa Neuweiler

The increase in extreme rainfall events due to climate change, combined with urbanisation, leads to increased risks to urban infrastructure and human life. Physically based urban flood models capable of producing water depth maps with sufficient spatial and temporal resolution are generally too slow for decision makers to react in time during an extreme event. We present a surrogate model with high temporal and spatial resolution for real-time prediction of water levels during a pluvial urban flood. We used machine learning techniques to achieve short computation times. The recursive approach used in this work combines convolutional and fully coupled multilayer architectures. The database for the machine learning was pre-simulated results from a physically based urban flood model. The forcing input of the prediction is precipitation and the output is water level maps with a temporal resolution of 5 min and a spatial resolution of 6 x 6 meters. The prediction performance can be considered promising for testing the model in real operational applications.

气候变化导致极端降雨事件增加,再加上城市化进程,城市基础设施和人类生活面临的风险也随之增加。以物理为基础的城市洪水模型能够绘制出具有足够时空分辨率的水深图,但速度通常太慢,决策者无法在极端事件发生时及时做出反应。我们提出了一种具有高时空分辨率的替代模型,用于实时预测城市洪水冲积过程中的水位。我们使用机器学习技术来缩短计算时间。这项工作中使用的递归方法结合了卷积和全耦合多层架构。机器学习的数据库是基于物理的城市洪水模型的预模拟结果。预测的强迫输入是降水量,输出是水位图,时间分辨率为 5 分钟,空间分辨率为 6 x 6 米。预测结果可用于在实际应用中测试该模型。
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引用次数: 0
Forecasting groundwater levels using machine learning methods: The case of California’s Central Valley 使用机器学习方法预测地下水位:加州中央河谷案例
IF 4 Q2 GEOSCIENCES, MULTIDISCIPLINARY Pub Date : 2023-12-01 DOI: 10.1016/j.hydroa.2023.100161
Gabriela May-Lagunes , Valerie Chau , Eric Ellestad , Leyla Greengard , Paolo D'Odorico , Puya Vahabi , Alberto Todeschini , Manuela Girotto

Groundwater, the second largest stock of freshwater on the planet, is an important water source used for municipal water supply, irrigation, or industrial needs. For instance, California’s arid Central Valley relies on groundwater resources to produce a quarter of the United States’ food demand as farmers rely on this precious resource when surface water is scarce. Despite its importance, the nexus between groundwater dynamics and climate drivers remains difficult to quantify, model, and predict because of the lack of a comprehensive observation network. In this study, machine learning techniques were used to predict groundwater levels with a 3-month forecasting horizon for the Sacramento River Basin. For this, publicly available meteorological and hydrological datasets and in-situ well-level measurements were used. Time series, ensemble-based, and deep-learning models including transformers were all tested, with an ensemble-based, XGBoost model, producing the best mean standard deviation percent error (MSPE) of 32.23% and a root mean squared error (RMSE) of 1.05 m (m) when using a 3- month forecasting horizon and when tested using a monthly rolling window over the years 2017–2020. The model proved to be better at predicting into wet months than the dry summer months and was found to be better at extracting seasonality than explaining well-level residuals, with well-specific features, as opposed to exogenous meteorological features specific to the hydrological unit of the well, ranking as the most important features to the model. Though other forecasting horizons were tested, a 3-month look-ahead window resulted in the best balance of precision and accuracy, where smaller forecasting horizons resulted in smaller RMSE but larger MSPE scores and vice-versa for larger forecasting horizons.

地下水是地球上第二大淡水储量,是用于市政供水、灌溉或工业需求的重要水源。例如,加利福尼亚干旱的中央河谷依靠地下水资源生产的粮食占美国粮食需求的四分之一,因为在地表水稀缺的情况下,农民依赖这一宝贵资源。尽管地下水动态与气候驱动因素之间的关系非常重要,但由于缺乏全面的观测网络,因此仍难以对其进行量化、建模和预测。本研究采用机器学习技术预测萨克拉门托河流域 3 个月预报期的地下水位。为此,使用了可公开获取的气象和水文数据集以及现场井水水位测量数据。对包括变压器在内的时间序列模型、基于集合的模型和深度学习模型都进行了测试,其中基于集合的 XGBoost 模型在使用 3 个月的预测范围和使用 2017-2020 年的月滚动窗口进行测试时,产生了 32.23% 的最佳平均标准偏差百分比误差(MSPE)和 1.05 米的均方根误差(RMSE)。事实证明,该模型对潮湿月份的预测能力优于对夏季干旱月份的预测能力,并且发现该模型在提取季节性方面优于解释井级残差,井的特定特征,而不是井的水文单元的外生气象特征,是该模型最重要的特征。虽然还测试了其他预报视角,但 3 个月的前瞻窗口在精度和准确度之间取得了最佳平衡,较小的预报视角导致较小的 RMSE 但较大的 MSPE 分数,反之亦然。
{"title":"Forecasting groundwater levels using machine learning methods: The case of California’s Central Valley","authors":"Gabriela May-Lagunes ,&nbsp;Valerie Chau ,&nbsp;Eric Ellestad ,&nbsp;Leyla Greengard ,&nbsp;Paolo D'Odorico ,&nbsp;Puya Vahabi ,&nbsp;Alberto Todeschini ,&nbsp;Manuela Girotto","doi":"10.1016/j.hydroa.2023.100161","DOIUrl":"10.1016/j.hydroa.2023.100161","url":null,"abstract":"<div><p>Groundwater, the second largest stock of freshwater on the planet, is an important water source used for municipal water supply, irrigation, or industrial needs. For instance, California’s arid Central Valley relies on groundwater resources to produce a quarter of the United States’ food demand as farmers rely on this precious resource when surface water is scarce. Despite its importance, the nexus between groundwater dynamics and climate drivers remains difficult to quantify, model, and predict because of the lack of a comprehensive observation network. In this study, machine learning techniques were used to predict groundwater levels with a 3-month forecasting horizon for the Sacramento River Basin. For this, publicly available meteorological and hydrological datasets and in-situ well-level measurements were used. Time series, ensemble-based, and deep-learning models including transformers were all tested, with an ensemble-based, XGBoost model, producing the best mean standard deviation percent error (MSPE) of 32.23% and a root mean squared error (RMSE) of 1.05 m (m) when using a 3- month forecasting horizon and when tested using a monthly rolling window over the years 2017–2020. The model proved to be better at predicting into wet months than the dry summer months and was found to be better at extracting seasonality than explaining well-level residuals, with well-specific features, as opposed to exogenous meteorological features specific to the hydrological unit of the well, ranking as the most important features to the model. Though other forecasting horizons were tested, a 3-month look-ahead window resulted in the best balance of precision and accuracy, where smaller forecasting horizons resulted in smaller RMSE but larger MSPE scores and vice-versa for larger forecasting horizons.</p></div>","PeriodicalId":36948,"journal":{"name":"Journal of Hydrology X","volume":"21 ","pages":"Article 100161"},"PeriodicalIF":4.0,"publicationDate":"2023-12-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.sciencedirect.com/science/article/pii/S2589915523000147/pdfft?md5=aab140af4d0a28517df303e628b13bca&pid=1-s2.0-S2589915523000147-main.pdf","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"136127854","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":0,"RegionCategory":"","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"OA","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
Corrigendum to “Optimizing nature-based solutions by combining social equity, hydro-environmental performance, and economic costs through a novel Gini coefficient” [J. Hydrol. 16 (2022) 100127] 通过新型基尼系数将社会公平、水文环境绩效和经济成本结合起来,优化基于自然的解决方案》[J. Hydrol. 16 (2022) 100127] 更正
IF 4 Q2 GEOSCIENCES, MULTIDISCIPLINARY Pub Date : 2023-12-01 DOI: 10.1016/j.hydroa.2023.100162
C.V. Castro
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引用次数: 0
Corrigendum to “Optimizing nature-based solutions by combining social equity, hydro-environmental performance, and economic costs through a novel Gini coefficient” [J. Hydrol. 16 (2022) 100127] 通过新型基尼系数将社会公平、水文环境绩效和经济成本结合起来,优化基于自然的解决方案》[J. Hydrol. 16 (2022) 100127] 更正
IF 4 Q2 GEOSCIENCES, MULTIDISCIPLINARY Pub Date : 2023-12-01 DOI: 10.1016/j.hydroa.2023.100164
C.V. Castro
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引用次数: 0
Modeling the distribution of headwater streams using topoclimatic indices, remote sensing and machine learning. 利用地形气候指数、遥感和机器学习对水源分布进行建模。
IF 4 Q2 GEOSCIENCES, MULTIDISCIPLINARY Pub Date : 2023-11-18 DOI: 10.1016/j.hydroa.2023.100165
Joshua L. Erickson , Zachary A. Holden , James A. Efta

Headwater streams (HWS) are ecologically important components of montane ecosystems. However, they are difficult to map and may not be accurately represented in existing spatial datasets. We used topographically resolved climatic water balance data and satellite indices retrieved from Google Earth Engine to model the occurrence (presence or absence) of HWS across Northwest Montana. A multi-scale feature selection (MSFS) procedure and boosted regression tree models/machine learning algorithms were used to identify variables associated with HWS occurrence. In final model evaluation, models that included climatic water balance deficit were more accurate (83.5% ranging from 82.9% to 83.7%) than using only terrain indices (81.1% ranging from 80.7% to 81.4%) and improved upon estimates of stream extent represented by the National Hydrography Dataset Plus High Resolution (NHDPlus HR) (82.7% ranging from 82.5% to 83.1%). Including topoclimate captured the varying effect of upslope accumulated area across a strong moisture gradient. Multi-scale cross-validation, coupled with a MSFS algorithm allowed us to find a parsimonious model that was not immediately evident using standard cross-validation procedures. More accurate spatial model predictions of HWS have potential for immediate application in land and water resource management, where significant field time can be spent identifying potential stream impacts prior to contracting and planning.

源流是山地生态系统的重要组成部分。然而,它们很难绘制,并且可能无法在现有的空间数据集中准确地表示。我们使用地形分辨率的气候水平衡数据和从谷歌地球引擎检索的卫星指数来模拟蒙大拿州西北部HWS的发生(存在或不存在)。使用多尺度特征选择(MSFS)程序和增强回归树模型/机器学习算法来识别与HWS发生相关的变量。在最终的模型评估中,包含气候水平衡赤字的模型比仅使用地形指数(80.7% ~ 81.4%,81.1%)的模型更准确(82.9% ~ 83.7%,83.5%),并且比国家水文数据集加高分辨率(NHDPlus HR)代表的河流范围估计(82.7%,82.5% ~ 83.1%)的模型更好。包括地形气候捕获的变化效应的上坡累积面积跨越一个强的湿度梯度。多尺度交叉验证,加上MSFS算法,使我们能够找到一个简约的模型,使用标准交叉验证程序不能立即明显。更准确的HWS空间模型预测有可能立即应用于土地和水资源管理,在承包和规划之前,可以花费大量的现场时间来识别潜在的溪流影响。
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引用次数: 0
The response of borehole water levels in an ophiolitic, peridotite aquifer to atmospheric, solid Earth, and ocean tides 蛇绿岩、橄榄岩含水层中钻孔水位对大气、固体地球和海洋潮汐的响应
IF 4 Q2 GEOSCIENCES, MULTIDISCIPLINARY Pub Date : 2023-09-20 DOI: 10.1016/j.hydroa.2023.100163
R.A. Sohn , J.M. Matter

Peridotite aquifers are ubiquitous on Earth, but most are in the deep-sea, and thus difficult to access. Ophiolites provide a unique opportunity to study peridotite aquifers, and the Oman Drilling Project established a Multi-Borehole Observatory in a peridotite terrain of the Samail ophiolite. We use the water level response of two 400-m deep boreholes (BA1B, BA1D) to solid Earth, ocean, and atmospheric tides to investigate the hydromechanical structure of the aquifer. The two boreholes are offset by ∼ 100 m but exhibit markedly different tidal responses, indicating a high degree of short-length-scale heterogeneity. Hole BA1B does not respond to tidal strain or barometric loading, consistent with the behavior of an unconfined aquifer. Hole BA1D responds to both tidal strain and barometric loading, indicating some degree of confinement. The response to applied strain, which includes a non-negligible ocean tidal loading component, is consistent with a partially confined, low conductivity aquifer. The response to barometric loading appears to be affected by the complex hydrological structure of the surficial zone and we were not able to fit the observations to within error. Aquifer conductivity estimates for Hole BA1D based on the response to tidal strain are within a factor of ∼ 3 of pumping test estimates.

橄榄石含水层在地球上无处不在,但大多数都在深海,因此很难进入。蛇绿岩为研究橄榄岩含水层提供了一个独特的机会,阿曼钻探项目在Samail蛇绿岩的橄榄岩地形中建立了一个多孔观测站。我们使用两个400米深的钻孔(BA1B、BA1D)对固体地球、海洋和大气潮汐的水位响应来研究含水层的流体力学结构。两个钻孔偏移约100m,但潮汐响应明显不同,表明存在高度的短尺度非均质性。BA1B孔对潮汐应变或气压载荷没有响应,这与无侧限含水层的行为一致。BA1D孔对潮汐应变和气压载荷都有响应,表明存在一定程度的限制。对外加应变的响应,包括不可忽略的海洋潮汐荷载分量,与部分封闭的低电导率含水层一致。对气压载荷的响应似乎受到表层带复杂水文结构的影响,我们无法将观测结果拟合到误差范围内。根据对潮汐应变的响应,BA1D孔的含水层电导率估计值在抽水试验估计值的3倍以内。
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引用次数: 0
Sensitivity of fish habitat suitability to multi-resolution hydraulic modeling and field-based description of meso-scale river habitats 鱼类栖息地适宜性对中尺度河流栖息地多分辨率水力建模和基于现场描述的敏感性
IF 4 Q2 GEOSCIENCES, MULTIDISCIPLINARY Pub Date : 2023-08-28 DOI: 10.1016/j.hydroa.2023.100160
David Farò , Katharina Baumgartner , Paolo Vezza , Guido Zolezzi

In-stream habitat models at the meso-scale are increasingly used to quantify the effects of hydro-morphological pressures in rivers. The spatial distributions of water depth and velocity represent key attributes of physical habitat. Choosing between field surveys, hydraulic modeling or their integration is made depending on available tools, technical skills, budget and time. However, the sensitivity to such choices of estimated habitat conditions suitable for biological organisms, such as fish, is poorly known.

In this study, three commonly used approaches in hydraulic-habitat modeling were compared and tested on a mountain stream, the Mareta River (NE Italy). Two approaches were based on 2D hydraulic modeling, calculated on computational meshes with varying resolution and quality: (1) high-resolution meshes derived from topographical data obtained from Airborne Bathymetric LiDAR; (2) a mesh extrapolated from topographical cross-sectional profiles. The third approach (3) was based on in-stream surveys. From these, suitable channel-area for two fish species, the marble trout (juvenile and adult), and the European bullhead (adult), were estimated.

Results showed that decreasing mesh resolution and quality affects the simulated water depth and velocity distributions, both in terms of their average and their standard deviation. The largest differences were found for the in-stream survey-based results. Morphologically complex unit types, such as steps, rapids and pools were more sensitive than simpler mesohabitats, such as glides and riffles. The most sensitive hydro-morphological unit types to the chosen approach were backwaters, glides being the least sensitive, also in terms of their suitability as mesohabitats. Despite that, a key finding is that errors are minimized when deriving habitat - streamflow rating curves at the reach scale, for which all approaches were largely able to reproduce the main characteristics of the curve, i.e. maxima, minima and inflection points.

中尺度的河流生境模型越来越多地用于量化河流中水文形态压力的影响。水深和流速的空间分布代表了自然生境的关键属性。根据可用的工具、技术技能、预算和时间,在现场调查、水力建模或集成之间进行选择。然而,对诸如鱼类等生物有机体适宜的估计生境条件的这种选择的敏感性却知之甚少。在这项研究中,比较了三种常用的水力栖息地建模方法,并在意大利东北部的马雷塔河(Mareta River)山间溪流上进行了测试。两种方法基于二维水力建模,在不同分辨率和质量的计算网格上进行计算:(1)从机载测深激光雷达获得的地形数据中获得高分辨率网格;(2)从地形剖面推算出的网格。第三种方法(3)基于流内调查。据此,对大理鳟鱼(幼鱼和成鱼)和欧洲牛头鱼(成鱼)这两种鱼类的适宜河道面积进行了估计。结果表明,网格分辨率和质量的降低对模拟水深和速度分布的平均值和标准差都有影响。基于流内调查的结果差异最大。形态复杂的单元类型(如台阶、急流和水池)比简单的中生境(如滑梯和河床)更敏感。对选择的方法最敏感的水文形态单元类型是回水,最不敏感的是滑水道,也就其作为中生境的适用性而言。尽管如此,一个关键的发现是,在得出河段尺度的生境-水流等级曲线时,误差最小,所有方法都能在很大程度上再现曲线的主要特征,即最大值、最小值和拐点。
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引用次数: 0
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Journal of Hydrology X
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