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Agricultural Drought Model Based on Machine Learning Cubist Algorithm and Its Evaluation 基于机器学习 Cubist 算法的农业干旱模型及其评估
Pub Date : 2024-07-09 DOI: 10.3390/hydrology11070100
S. Sha, Lijuan Wang, Die Hu, Yulong Ren, Xiaoping Wang, Liang Zhang
Soil moisture is the most direct evaluation index for agricultural drought. It is not only directly affected by meteorological conditions such as precipitation and temperature but is also indirectly influenced by environmental factors such as climate zone, surface vegetation type, soil type, elevation, and irrigation conditions. These influencing factors have a complex, nonlinear relationship with soil moisture. It is difficult to accurately describe this non-linear relationship using a single indicator constructed from meteorological data, remote sensing data, and other data. It is also difficult to fully consider environmental factors using a single drought index on a large scale. Machine learning (ML) models provide new technology for nonlinear problems such as soil moisture retrieval. Based on the multi-source drought indexes calculated by meteorological, remote sensing, and land surface model data, and environmental factors, and using the Cubist algorithm based on a classification decision tree (CART), a comprehensive agricultural drought monitoring model at 10 cm, 20 cm, and 50 cm depth in Gansu Province is established. The influence of environmental factors and meteorological factors on the accuracy of the comprehensive model is discussed, and the accuracy of the comprehensive model is evaluated. The results show that the comprehensive model has a significant improvement in accuracy compared to the single variable model, which is a decrease of about 26% and 28% in RMSE and MAPE, respectively, compared to the best MCI model. Environmental factors such as season, DEM, and climate zone, especially the DEM, play a crucial role in improving the accuracy of the integrated model. These three environmental factors can comprehensively reduce the average RMSE of the comprehensive model by about 25%. Compared to environmental factors, meteorological factors have a slightly weaker effect on improving the accuracy of comprehensive models, which is a decrease of about 6.5% in RMSE. The fitting accuracy of the comprehensive model in humid and semi-humid areas, as well as semi-arid and semi-humid areas, is significantly higher than that in arid and semi-arid areas. These research results have important guiding significance for improving the accuracy of agricultural drought monitoring in Gansu Province.
土壤水分是农业干旱最直接的评价指标。它不仅受到降水和温度等气象条件的直接影响,还受到气候带、地表植被类型、土壤类型、海拔高度和灌溉条件等环境因素的间接影响。这些影响因素与土壤水分有着复杂的非线性关系。利用气象数据、遥感数据和其他数据构建的单一指标很难准确描述这种非线性关系。在大范围内使用单一干旱指数也很难全面考虑环境因素。机器学习(ML)模型为土壤水分检索等非线性问题提供了新技术。基于气象、遥感和地表模型数据计算的多源干旱指数和环境因素,利用基于分类决策树(CART)的 Cubist 算法,建立了甘肃省 10 厘米、20 厘米和 50 厘米深度的农业干旱综合监测模型。讨论了环境因素和气象因素对综合模型精度的影响,并对综合模型的精度进行了评估。结果表明,与单变量模型相比,综合模型的精度有显著提高,与最佳 MCI 模型相比,RMSE 和 MAPE 分别降低了约 26% 和 28%。季节、DEM 和气候区等环境因素,尤其是 DEM,对提高综合模型的精度起着至关重要的作用。这三个环境因素可将综合模型的平均有效值全面降低约 25%。与环境因素相比,气象因素对提高综合模型精度的作用稍弱,RMSE 下降约 6.5%。综合模型在湿润和半湿润地区以及半干旱和半湿润地区的拟合精度明显高于干旱和半干旱地区。这些研究成果对提高甘肃省农业干旱监测精度具有重要的指导意义。
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引用次数: 0
Groundwater Characteristics’ Assessment for Productivity Planning in Al-Madinah Al-Munawarah Province, KSA 对地下水特征进行评估,以制定沙特阿拉伯 Al-Madinah Al-Munawarah 省的生产力规划
Pub Date : 2024-07-08 DOI: 10.3390/hydrology11070099
M. Masoud, M. El Osta, N. Al-Amri, B. Niyazi, Abdulaziz M. Alqarawy, Mohamed Rashed
In recent times, drilling groundwater wells for irrigation, domestic, and industrial uses is increasing at a high rate in Saudi Arabia, meaning that groundwater is becoming a primary water resource. In the study region, over-exploitation and unsustainable performance severely deteriorate groundwater. Therefore, it is important to monitor the groundwater levels and quality as well as to detect the hydraulic parameters in order to plan and maintain groundwater sustainability. Knowledge of aquifer hydraulic parameters and groundwater quality is essential for the productivity planning of an aquifer. Therefore, this study carried out a thorough analysis on measured depth to groundwater data (2017 and 2022), borehole pumping test records, and chemical analysis of the collected water samples, especially in the presence of overexploitation and scarcity of recharge scale. To accomplish this aim, measurements of 113 groundwater wells (including 103 water samples) and analysis of 29 pumping tests between step and long-duration tests were made of all aquifer characteristics. These parameters consist of well loss, formation loss, well efficiency, specific capacity, transmissivity, hydraulic conductivity, resulted drawdown, and physiochemical parameters. Thematic maps were generated for all parameters using the geographic information system (GIS) and diagrams to strategize the groundwater productivity in Al-Madinah Al-Munawarah Province. The estimated hydraulic parameters are highly variable. Four distinct portions were identified for aquifer potentiality based on these varying ranges. Both the north and east of the region are good for groundwater productivity due to good aquifer materials, whereas the southwestern and western portions have relatively poor values. The analyzed groundwater was categorized as fresh to slightly salty water, with two primary chemical types identified showing a prevalence of mixed NaCl and Ca-Mg-SO4/Cl water. Finally, groundwater productivity assessment predicts that the aquifers can support the Al-Madinah Al-Munawarah Province demand for several years if certain well distributions are adopted and for a few hours/day of pumping rate. The maps that have been created can be examined to aid in making decisions related to hydrology.
近来,沙特阿拉伯用于灌溉、家庭和工业用途的地下水钻井数量正在高速增长,这意味着地下水正在成为一种主要的水资源。在研究地区,过度开采和不可持续的表现严重恶化了地下水。因此,监测地下水水位和水质以及检测水力参数对于规划和保持地下水的可持续性非常重要。了解含水层的水力参数和地下水质量对含水层的生产力规划至关重要。因此,本研究对测量到的地下水深度数据(2017 年和 2022 年)、钻孔抽水测试记录以及所采集水样的化学分析进行了全面分析,尤其是在过度开采和补给规模稀缺的情况下。为实现这一目标,对 113 口地下水井(包括 103 个水样)进行了测量,并对 29 次阶梯测试和长时间测试之间的抽水测试的所有含水层特征进行了分析。这些参数包括水井损耗、地层损耗、水井效率、比容、渗透率、水力传导率、抽水结果和理化参数。利用地理信息系统(GIS)和图表为所有参数绘制了专题地图,以便对 Al-Madinah Al-Munawarah 省的地下水生产力进行战略分析。估计的水力参数变化很大。根据这些变化范围,确定了含水层潜力的四个不同部分。该地区的北部和东部由于含水层材料良好,地下水生产力较高,而西南部和西部的含水层价值相对较低。经分析的地下水被归类为淡水至微咸水,确定的两种主要化学类型显示,氯化钠混合水和 Ca-Mg-SO4/Cl 混合水较多。最后,地下水生产力评估预测,如果采用特定的水井分布和每天几小时的抽水速度,含水层可以满足 Al-Madinah Al-Munawarah 省几年的需求。绘制的地图可供研究,以帮助做出与水文有关的决策。
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引用次数: 0
Groundwater Pollution: Sources, Mechanisms, and Prevention 地下水污染:来源、机制和预防
Pub Date : 2024-07-05 DOI: 10.3390/hydrology11070098
P. Sidiropoulos
Groundwater resources are vital for ecosystems and human health and prosperity [...]
地下水资源对生态系统、人类健康和繁荣至关重要 [...]
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引用次数: 0
Jucazinho Dam Streamflow Prediction: A Comparative Analysis of Machine Learning Techniques Jucazinho 大坝的水流预测:机器学习技术比较分析
Pub Date : 2024-07-04 DOI: 10.3390/hydrology11070097
Erickson Johny Galindo da Silva, Artur Paiva Coutinho, Jean Firmino Cardoso, Saulo de Tarso Marques Bezerra
The centuries-old history of dam construction, from the Saad el-Kafara Dam to global expansion in the 1950s, highlights the importance of these structures in water resource management. The Jucazinho Dam, built in 1998, emerged as a response to the scarcity of water in the Agreste region of Pernambuco, Brazil. After having less than 1% of its water storage capacity in 2016, the dam recovered in 2020 after interventions by the local water utility. In this context, the reliability of influent flow prediction models for dams becomes crucial for managers. This study proposed hydrological models based on artificial intelligence that aim to generate flow series, and we evaluated the adaptability of these models for the operation of the Jucazinho Dam. Data normalization between 0 and 1 was applied to avoid the predominance of variables with high values. The model was based on machine learning and employed support vector regression (SVM), random forest (RF) and artificial neural networks (ANNs), as provided by the Python Sklearn library. The selection of the monitoring stations took place via the Brazilian National Water and Sanitation Agency’s (ANA) HIDROWEB portal, and we used Spearman’s correlation to identify the relationship between precipitation and flow. The evaluation of the performance of the model involved graphical analyses and statistical criteria such as the Nash–Sutcliffe model efficiency coefficient (NSE), the percentage of bias (PBIAS), the coefficient of determination (R2) and the root mean standard deviation ratio (RSR). The results of the statistical coefficients for the test data indicated unsatisfactory performance for long-term predictions (8, 16 and 32 days ahead), revealing a downward trend in the quality of the fit with an increase in the forecast horizon. The SVM model stood out by obtaining the best indices of NSE, PBIAS, R2 and RSR. The graphical results of the SVM models showed underestimation of the flow values with an increase in the forecast horizon due to the sensitivity of the SVM to complex patterns in the time series. On the other hand, the RF and ANN models showed hyperestimation of the flow values as the number of forecast days increased, which was mainly attributed to overfitting. In summary, this study highlights the relevance of artificial intelligence in flow prediction for the efficient management of dams, especially in water scarcity and data-scarce scenarios. A proper choice of models and the ensuring of reliable input data are crucial for obtaining accurate forecasts and can contribute to water security and the effective operation of dams such as Jucazinho.
从 Saad el-Kafara 大坝到 20 世纪 50 年代的全球扩张,几个世纪的大坝建设史凸显了这些建筑在水资源管理中的重要性。建于 1998 年的 Jucazinho 大坝是为了应对巴西伯南布哥州阿格里斯特地区的缺水问题而兴建的。2016 年,大坝的蓄水能力不足 1%,在当地水务公司的干预下,大坝于 2020 年恢复了蓄水能力。在这种情况下,大坝进水流量预测模型的可靠性对管理者来说至关重要。本研究提出了基于人工智能的水文模型,旨在生成流量序列,并评估了这些模型对 Jucazinho 大坝运行的适应性。数据在 0 和 1 之间进行了归一化处理,以避免高值变量占主导地位。该模型基于机器学习,采用了 Python Sklearn 库提供的支持向量回归 (SVM)、随机森林 (RF) 和人工神经网络 (ANN)。监测站的选择是通过巴西国家水和卫生局(ANA)的 HIDROWEB 门户网站进行的,我们使用斯皮尔曼相关性来确定降水和流量之间的关系。对模型性能的评估包括图形分析和统计标准,如纳什-萨特克利夫模型效率系数(NSE)、偏差百分比(PBIAS)、判定系数(R2)和根平均标准偏差率(RSR)。测试数据的统计系数结果表明,长期预测(提前 8 天、16 天和 32 天)的表现并不令人满意,随着预测范围的扩大,拟合质量呈下降趋势。SVM 模型在 NSE、PBIAS、R2 和 RSR 方面获得了最佳指数,表现突出。SVM 模型的图形结果显示,随着预测范围的增加,流量值被低估,这是因为 SVM 对时间序列中的复杂模式非常敏感。另一方面,随着预报天数的增加,RF 和 ANN 模型高估了流量值,这主要是由于过度拟合造成的。总之,本研究强调了人工智能在流量预测中的相关性,以促进大坝的有效管理,尤其是在缺水和数据稀缺的情况下。正确选择模型和确保可靠的输入数据是获得准确预测的关键,有助于水安全和 Jucazinho 等水坝的有效运行。
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引用次数: 0
Climate Change Projections of Potential Evapotranspiration for the North American Monsoon Region 气候变化对北美季风区潜在蒸散量的预测
Pub Date : 2024-06-14 DOI: 10.3390/hydrology11060083
E. Shamir, Lourdes Mendoza Fierro, Sahar Mohsenzadeh Karimi, N. Pelak, Emilie Tarouilly, Hsin-I Chang, Christopher L. Castro
We assessed and quantified future projected changes in terrestrial evaporative demand by calculating Potential Evapotranspiration (PET) for the North American Monsoon region in the Southwestern U.S. and Mexico. The PET projections were calculated using the daily Penman–Monteith equation. The terrestrial meteorological variables needed for the equation (i.e., minimum and maximum daily temperature, specific humidity, wind speed, incoming shortwave radiation, and pressure) were obtained from the North American–CORDEX initiative. We used dynamically downscaled projections of three CMIP5 GCMs for RCP8.5 emission scenarios (i.e., HadGEM2-ES, MPI-ESM-LR, and GFDL-ESM2M), and each was dynamically downscaled to ~25 km by two RCMs (i.e., WRF and regCM4). All terrestrial annual PET projections showed a statistically significant increase when comparing the historical period (1986–2005) to future projections (2020–2039 and 2040–2059). The regional spatial average of the six GCM-RCM combinations projected an increase in the annual PET of about +4% and +8% for 2020–2039 and 2040–2059, respectively. The projected average 20-year annual changes over the study area range for the two projection periods were +1.4%–+8.7% and +3%–+14.2%, respectively. The projected annual PET increase trends are consistent across the entire region and for the six GCM-RCM combinations. Higher annual changes are projected in the northeast part of the region, while smaller changes are projected along the pacific coast. The main drivers for the increase are the projected warming and increase in the vapor pressure deficit. The projected changes in PET, which represent the changes in the atmospheric evaporative demand, are substantial and likely to impact vegetation and the hydrometeorological regime in the area. Quantitative assessments of the projected PET changes provided by this study should be considered in upcoming studies to develop resilience plans and adaptation strategies for mitigating the projected future changes.
我们通过计算美国西南部和墨西哥北美季风区的潜在蒸散量 (PET),对陆地蒸发需求的未来预测变化进行了评估和量化。PET 预测是通过彭曼-蒙蒂斯日方程计算得出的。该方程所需的陆地气象变量(即每日最低和最高气温、特定湿度、风速、短波辐射入射量和气压)来自北美-CORDEX 计划。我们使用了三个 CMIP5 GCM 对 RCP8.5 排放情景的动态降尺度预测(即 HadGEM2-ES、MPI-ESM-LR 和 GFDL-ESM2M),每个预测都由两个 RCM(即 WRF 和 regCM4)动态降尺度到 ~25 公里。与历史时期(1986-2005 年)和未来预测(2020-2039 年和 2040-2059 年)相比,所有陆地年 PET 预测在统计上都有显著增加。六个 GCM-RCM 组合的区域空间平均值预测 2020-2039 年和 2040-2059 年的年 PET 分别增加约 +4% 和 +8%。在这两个预测期,研究区域范围内的预测 20 年平均年变化率分别为 +1.4%-+8.7%和 +3%-+14.2%。预测的 PET 年增长率趋势在整个区域和六个 GCM-RCM 组合中是一致的。预计该地区东北部的年变化较大,而太平洋沿岸的变化较小。预计变暖和蒸汽压力不足的增加是导致年变化增加的主要原因。预测的 PET 变化代表大气蒸发需求的变化,变化幅度很大,可能会影响该地区的植被和水文气象系统。在即将开展的研究中,应考虑对本研究提供的 PET 预计变化进行定量评估,以制定复原计划和适应战略,减缓未来的预计变化。
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引用次数: 0
Anthropogenic Activity in the Topo-Climatic Interaction of the Tapajós River Basin, in the Brazilian Amazon 巴西亚马逊塔帕约斯河流域地形-气候相互作用中的人为活动
Pub Date : 2024-06-13 DOI: 10.3390/hydrology11060082
V. S. Franco, A. M. Lima, Rodrigo Rafael Souza de Oliveira, E. B. D. Souza, Giordani Rafael Conceição Sodré, Diogo Correa Santos, Marcos Adami, Edivaldo Afonso de Oliveira Serrão, Thaiane Soeiro da Silva Dias
This research aimed to analyze the relationship between deforestation (DFT) and climatic variables during the rainy (CHU+) and less-rainy (CHU−) seasons in the Tapajós River basin. Data were sourced from multiple institutions, including the Climatic Research Unit (CRU), Center for Weather Forecasts and Climate Studies (CPTEC), PRODES Program (Monitoring of Brazilian Amazon Deforestation Project), National Water Agency (ANA) and National Centers for Environmental Prediction/National Oceanic and Atmospheric Administration (NCEP/NOAA). The study assessed anomalies (ANOM) in maximum temperature (TMAX), minimum temperature (TMIN) and precipitation (PREC) over three years without the occurrence of the El Niño–Southern Oscillation (ENSO) atmospheric–oceanic phenomenon. It also examined areas with higher DFT density using the Kernel methodology and analyzed the correlation between DFT and climatic variables. Additionally, it assessed trends using the Mann–Kendall technique for both climatic and environmental data. The results revealed significant ANOM in TEMP and PREC. In PREC, the highest values of ANOM were negative in CHU+. Regarding temperature, the most significant values were positive ANOM in the south, southwest and northwestern regions of the basin. Concerning DFT density, data showed that the highest concentration was of medium density, primarily along the highways. The most significant correlations were found between DFT and TEMP during the CHU− season in the Middle and Lower Tapajós sub-basins, regions where the forest still exhibits more preserved characteristics. Furthermore, the study identified a positive trend in TEMP and a negative trend in PREC.
本研究旨在分析塔帕约斯河流域雨季(CHU+)和少雨季节(CHU-)的森林砍伐(DFT)与气候变量之间的关系。数据来源于多个机构,包括气候研究机构 (CRU)、天气预报和气候研究中心 (CPTEC)、PRODES 计划(巴西亚马逊森林砍伐监测项目)、国家水务局 (ANA) 以及国家环境预测中心/国家海洋和大气管理局 (NCEP/NOAA)。该研究评估了在没有出现厄尔尼诺-南方涛动(ENSO)大气-海洋现象的三年中,最高气温(TMAX)、最低气温(TMIN)和降水量(PREC)的异常情况(ANOM)。研究还利用核方法研究了 DFT 密度较高的地区,并分析了 DFT 与气候变量之间的相关性。此外,它还利用 Mann-Kendall 技术评估了气候和环境数据的趋势。结果显示,在 TEMP 和 PREC 中存在明显的 ANOM。在 PREC 中,CHU+ 的 ANOM 值最高,为负值。在温度方面,盆地南部、西南部和西北部地区的 ANOM 值最大,为正值。关于 DFT 密度,数据显示中等密度的浓度最高,主要集中在高速公路沿线。在中塔帕霍斯分流域和下塔帕霍斯分流域的 CHU- 季节,DFT 和 TEMP 之间的相关性最为明显,这些地区的森林仍具有较多的保留特征。此外,研究还发现 TEMP 呈正趋势,PREC 呈负趋势。
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引用次数: 0
Prioritization of Hydrological Restoration Areas Using AHP and GIS in Dulcepamba River Basin in Bolivar–Ecuador 利用 AHP 和地理信息系统确定玻利维亚-厄瓜多尔杜尔塞潘巴河流域水文恢复区域的优先次序
Pub Date : 2024-06-12 DOI: 10.3390/hydrology11060081
Eddy Fernando Sanchez, C. I. Álvarez
In this study, we performed a preliminary soil analysis and collected environmental data for the Dulcepamba River Basin in Bolivar–Ecuador, before carrying out its hydrological restoration (HR). A geographic information system (GIS) and the multicriterion Analytical Hierarchy Process (AHP) decision-making method were used. The comprehensive evaluation included morphological aspects, soil properties, climatic conditions, vegetation, and land use. The terrain conditions were investigated using indicators such as the flow capacity, topographic moisture, soil resistance, sediment transport, current density, curve number, NDVI, precipitation, and distance to rivers. The results and analysis are presented in a series of maps, which establish a starting point for the HR of the Dulcepamba watershed. The key factors for assessing soil degradation in the watershed include land use, vegetation cover, sedimentation, humidity, and precipitation. Of the studied territory, 10.7 do not require HR, while 20.28% demand HR in the long term. In addition, 30.67% require HR in the short term, and 33.35% require HR immediately. Based on the findings, it is suggested that authorities consider the environmental remediation of the watershed and propose various HR measures. This analytical approach could prove valuable as a tool for the environmental restoration of watersheds in Ecuador.
在这项研究中,我们对玻利维亚-厄瓜多尔杜尔塞潘巴河流域进行了初步土壤分析,并收集了环境数据,然后对其进行水文修复(HR)。采用了地理信息系统(GIS)和多标准层次分析法(AHP)决策方法。综合评估包括形态方面、土壤特性、气候条件、植被和土地利用。地形条件采用的指标包括流量、地形湿度、土壤阻力、泥沙输运、水流密度、曲线数、NDVI、降水量和与河流的距离。研究结果和分析以一系列地图的形式呈现,为 Dulcepamba 流域的 HR 工作奠定了基础。评估流域土壤退化的关键因素包括土地利用、植被覆盖、沉积、湿度和降水。在所研究的地区中,10.7%的地区不需要人力资源,20.28%的地区需要长期人力资源。此外,30.67%的人在短期内需要人力资源,33.35%的人立即需要人力资源。根据调查结果,建议有关部门考虑流域环境整治问题,并提出各种人力资源措施。这种分析方法可被证明是厄瓜多尔流域环境恢复的宝贵工具。
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引用次数: 0
The Use of Unmanned Aerial Systems for River Monitoring: A Bibliometric Analysis Covering the Last 25 Years 无人机系统在河流监测中的应用:过去 25 年的文献计量分析
Pub Date : 2024-06-07 DOI: 10.3390/hydrology11060080
A. Pizarro, D. Valera-Gran, E. Navarrete-Muñoz, S. F. Dal Sasso
Cutting-edge technology for fluvial monitoring has revolutionised the field, enabling more comprehensive data collection, analysis, and interpretation. Traditional monitoring methods were limited in their spatial and temporal resolutions, but advancements in remote sensing, unmanned aerial systems (UASs), and other innovative technologies have significantly enhanced the fluvial monitoring capabilities. UASs equipped with advanced sensors enable detailed and precise fluvial monitoring by capturing high-resolution topographic data, generate accurate digital elevation models, and provide imagery of river channels, banks, and riparian zones. These data enable the identification of erosion and deposition patterns, the quantification of sediment transport, the evaluation of habitat quality, and the monitoring of river flows. The latter allows us to understand the dynamics of rivers during various hydrological events, including floods, droughts, and seasonal variations. This manuscript aims to provide an update on the main research themes and topics in the literature on the use of UASs for river monitoring. The latter is achieved through a bibliometric analysis of the publication trends and identifies the field’s key themes and collaborative networks. The bibliometric analysis shows trends in the number of publications, number of citations, top contributing countries, top publishing journals, top contributing institutions, and top authors. A total of 1085 publications on UAS monitoring in rivers are identified, published between 1999 and 2023, showing a steady annual growth rate of 24.44%. Bibliographic records are exported from the Web of Science (WoS) database using a comprehensive set of keywords. The bibliometric analysis of the raw data obtained from the WoS database is performed using the R software. The results highlight important trends and valuable insights related to the use of UASs in river monitoring, particularly in the last decade. The most frequently used author keywords outline the core themes of UASs monitoring research and highlight the interdisciplinary nature and collaborative efforts within the field. “River”, “topography”, “photogrammetry”, and “Structure-from-Motion” are the core themes of UASs monitoring research. These findings can guide future research and promote new interdisciplinary collaborations.
用于河道监测的尖端技术为这一领域带来了革命性的变化,使数据收集、分析和解释更加全面。传统监测方法的空间和时间分辨率有限,但遥感、无人机系统(UASs)和其他创新技术的进步极大地增强了河流监测能力。配备先进传感器的无人机系统可以捕捉高分辨率地形数据,生成精确的数字高程模型,并提供河道、河岸和河岸带的图像,从而实现详细而精确的河道监测。通过这些数据可以识别侵蚀和沉积模式、量化沉积物迁移、评估栖息地质量以及监测河流流量。后者使我们能够了解河流在各种水文事件(包括洪水、干旱和季节性变化)期间的动态变化。本手稿旨在提供有关使用无人机系统进行河流监测的主要研究主题和文献的最新情况。后者是通过对出版趋势进行文献计量分析来实现的,并确定了该领域的关键主题和合作网络。文献计量分析显示了出版物数量、引用次数、贡献最多的国家、出版最多的期刊、贡献最多的机构和贡献最多的作者的趋势。从 1999 年到 2023 年,共有 1085 篇关于河流无人机系统监控的论文发表,年增长率稳定在 24.44%。书目记录是从 Web of Science (WoS) 数据库导出的,使用了一套完整的关键词。使用 R 软件对从 WoS 数据库获得的原始数据进行了文献计量分析。分析结果突出显示了在河流监测中使用无人机系统的重要趋势和宝贵见解,尤其是在过去十年中。作者最常使用的关键词概括了无人机系统监测研究的核心主题,并强调了该领域的跨学科性质和合作努力。"河流"、"地形"、"摄影测量 "和 "运动结构 "是无人机系统监测研究的核心主题。这些发现可以指导未来的研究,促进新的跨学科合作。
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引用次数: 0
Temporal Assessment of Phosphorus Speciation in a Model Ramsar Lake System in Asia 亚洲拉姆萨尔示范湖泊系统磷物种的时间评估
Pub Date : 2024-05-17 DOI: 10.3390/hydrology11050070
Anjali Venukumar, Abdugani M. Azimov, Gani M. Iztleuov, Vishnu S. Moorchilot, U. Aravind, Marat I. Sataev, Valsamma J. Koshy, C. Aravindakumar
This study focused on monitoring phosphorus (P) concentrations in the water of the Ramsar site, Lake Vembanad, with a special focus on the mouths of the river bodies draining into the lake, a known hotspot for eutrophication. Four phosphorus fractions—total reactive phosphorus (TRP), total acid hydrolysable phosphorus (TAHP), total organic phosphorus (TOP), and total phosphorus (TP)—were monitored during the pre-monsoon and post-monsoon seasons. The results revealed high levels of all monitored phosphorus fractions, with an average concentration exceeding 300 ppb P across both seasons, indicating a highly eutrophic state. Notably, TRP, TOP, and TP showed high concentrations in both the pre-monsoon and post-monsoon periods. These data suggest significant phosphorus input into the lake’s surface water, potentially triggering excessive algal growth and threatening the biodiversity of this rich wetland ecosystem.
这项研究的重点是监测拉姆萨尔湿地文巴纳德湖水体中的磷(P)浓度,特别关注排入文巴纳德湖的河口,这是一个已知的富营养化热点地区。在季风前和季风后季节,对四种磷组分--总活性磷 (TRP)、总酸水解磷 (TAHP)、总有机磷 (TOP) 和总磷 (TP) 进行了监测。结果显示,所有监测到的磷组分含量都很高,两个季节的平均浓度都超过了 300 ppb P,表明水体处于高度富营养化状态。值得注意的是,季风前和季风后的 TRP、TOP 和 TP 浓度都很高。这些数据表明,大量磷元素进入湖泊表层水,可能会引发藻类过度生长,威胁这一丰富湿地生态系统的生物多样性。
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引用次数: 0
Effects of Cascading Dams on Streamflow within the Downstream Areas of the Rufiji River Basin in Tanzania 梯级大坝对坦桑尼亚鲁菲济河流域下游地区溪流的影响
Pub Date : 2024-05-13 DOI: 10.3390/hydrology11050069
S. Mwitalemi, S. Kantoush, Binh Quang Nguyen
Despite their popularity, the construction and operation of hydropower reservoirs pose challenges to water resources. This study investigated the impacts of cascading dams on streamflow in Tanzania’s Rufiji River Basin. The SWAT model was developed to represent the entire Rufiji River Basin. The model simulated the streamflow for 41 years, from 1982 to 2022, and developed two main scenarios: with-dam and without-dam. To capture the influence of all dams, the results were emphasized from 2000 to 2022, when all three dams were operating. Calibration and validation were applied at the Rufiji-Stiegler and Kilombero-Swero stations with good performance. The results show that cascading dams annually decrease the streamflow by 1% at Rufiji-Stiegler station. In contrast, individually, the Mtera Dam displayed a 5% decrease while the Kidatu and Kihansi Dams exerted a 1% increase on the annual streamflow downstream at Rufiji-Stiegler. During 2000–2022, the Rufiji River Basin showed an annual reduction in streamflow contribution of 104.97 m3/s. Therefore, the reservoir’s operation significantly impacts the downstream streamflow. The findings are expected to guide policymakers, water resource managers, and environmentalists in mitigating potential adverse effects while optimizing the benefits of hydropower generation and water regulation within the region.
尽管水力发电站水库很受欢迎,但其建设和运行也给水资源带来了挑战。本研究调查了坦桑尼亚鲁菲济河流域的梯级大坝对河水流量的影响。开发的 SWAT 模型代表了整个鲁菲济河流域。该模型模拟了从 1982 年到 2022 年 41 年的河水流量,并开发了两种主要情景:有坝和无坝。为了捕捉所有大坝的影响,对 2000 年至 2022 年的结果进行了强调,当时所有三座大坝都在运行。在 Rufiji-Stiegler 和 Kilombero-Swero 站进行了校准和验证,效果良好。结果表明,在 Rufiji-Stiegler 站,级联大坝每年会使溪流流量减少 1%。相比之下,姆特拉(Mtera)大坝的年径流量减少了 5%,而基达图(Kidatu)大坝和基汉西(Kihansi)大坝的年径流量则增加了 1%。2000-2022 年期间,鲁菲济河流域的年径流量减少了 104.97 立方米/秒。因此,水库的运行对下游的溪流产生了重大影响。预计研究结果将指导政策制定者、水资源管理者和环境学家减轻潜在的不利影响,同时优化该地区的水力发电和水调节效益。
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引用次数: 0
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Hydrology
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