water quality and quantity
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Author(s):  
Balraj Singh ◽  
Isa Ebtehaj ◽  
Parveen Sihag ◽  
Hossein Bonakdari

Abstract Infiltration plays a fundamental role in streamflow, groundwater recharge, subsurface flow, and surface and subsurface water quality and quantity. This study includes a comparative analysis of the two machine learning techniques; M5P model tree (M5P) and Gene Expression Programming (GEP) in predictions of the infiltration characteristics. The models were trained and tested using the 7 combination (CMB1 – CMB7) of input parameters; moisture content (m), bulk density of soil (D), percentage of the silt (SI), sand (SA) & Clay (C), and time (t), with output parameters; cumulative infiltration (CI) and infiltration rate (IR). Results suggested that GEP has an edge over M5P to predict the IR and CI with R, RMSE & MAE values 0.9343, 15.9667 mm/hr & 8.7676 mm/hr, and 0.9586, 9.2522 mm and 7.7865 mm for IR and CI, respectively with CMB1. Although the M5P model also gave good results with R, RMSE & MAE values 0.9192, 14.1821 mm/hr, & 19.2497 mm/hr, and 0.8987, 11.2144 mm & 18.4328 mm for IR and CI, respectively, but lower than GEP. Furthermore, single-factor ANOVA and uncertainty analysis were used to show the significance of the predicted results and to find the most efficient soft computing techniques respectively.


2021 ◽  
Author(s):  
Joanna Doummar ◽  
Marwan Fahs ◽  
Michel Aoun ◽  
Reda Elghawi ◽  
Jihad Othman ◽  
...  

Author(s):  
Sahere Golzari ◽  
Hamid Zare Abyaneh ◽  
Naghmeh Mobarghaee Dinan ◽  
Majid Delavar ◽  
Paul Daniel Wagner

Water ◽  
2021 ◽  
Vol 13 (20) ◽  
pp. 2868
Author(s):  
Ahsen Maqsoom ◽  
Bilal Aslam ◽  
Mamdooh Alwetaishi ◽  
Muhammad Awais ◽  
Usman Hassan ◽  
...  

Groundwater contamination along with anthropogenic actions and land use forms are increasing threats in urbanized zones around the world. Additionally, water quality and quantity are declining due to urbanization development. DRASTIC parameters (depth to the water table, net recharge, aquifer media, soil media, topography, impact of the vadose zone, hydraulic conductivity) were considered to investigate hydrological characteristics for assessment of contamination. Having a major effect of anthropogenic activities, various susceptibility zones were produced by modifying the DRASTIC model into DRASTICA, integrating anthropogenic effects as the “A” parameter in an alphabetic system. After the assessment, the research exposes that from the total area, 14% is under very high susceptibility, 44% is of high susceptibility, 39% is of moderate susceptibility, and 3% is of low susceptibility to groundwater pollution. The results in the built-up areas and based on the parameter of nitrate in quality of water show that the altered DRASTIC model or DRASTICA model proved to give better outcomes compared with the usual DRASTIC model. The policy advisers and management authorities must use the analysis data as precaution measures so that future calamities can be avoided.


Drones ◽  
2021 ◽  
Vol 5 (3) ◽  
pp. 84
Author(s):  
Mbulisi Sibanda ◽  
Onisimo Mutanga ◽  
Vimbayi G. P. Chimonyo ◽  
Alistair D. Clulow ◽  
Cletah Shoko ◽  
...  

Accurate and timely information on surface water quality and quantity is critical for various applications, including irrigation agriculture. In-field water quality and quantity data from unmanned aerial vehicle systems (UAVs) could be useful in closing spatial data gaps through the generation of near-real-time, fine resolution, spatially explicit information required for water resources accounting. This study assessed the progress, opportunities, and challenges in mapping and modelling water quality and quantity using data from UAVs. To achieve this research objective, a systematic review was adopted. The results show modest progress in the utility of UAVs, especially in the global south. This could be attributed, in part, to high costs, a lack of relevant skills, and the regulations associated with drone procurement and operational costs. The progress is further compounded by a general lack of research focusing on UAV application in water resources monitoring and assessment. More importantly, the lack of robust and reliable water quantity and quality data needed to parameterise models remains challenging. However, there are opportunities to advance scientific inquiry for water quality and quantity accounting by integrating UAV data and machine learning.


2021 ◽  
Author(s):  
Bartlomiej K. Bancewicz

Arsenic is a threat to human health. Long-term Arsenic exposure can lead to numerous cancers and non-carcinogenic diseases. Over 230 million across 107 countries are drinking groundwater Arsenic concentrations above the maximum concentration limit of 10 μg/L. The number of affected individuals is expected to rise in parallel with a growing dependence on groundwater, driven by diminishing surface water quality and quantity. A growing number of people will come in contact with Arsenic-contaminated water at new locations, while excessive pumping, geogenic processes, and industrial sources raise Arsenic concentrations at active groundwater sites. It is time to begin implementing Arsenic remediation techniques to save human lives, boost the global economy, and instill the foundations of a global collaborative framework. The continued research and development of remediation technologies is crucial, but these technologies will remain ineffective unless implemented. This chapter reviews the ongoing Arsenic crisis and suggests a simplified plan of action for resolving this problem. This is a transcontinental endeavor, which must begin with world leaders identifying and engaging new stakeholders. This will require education and awareness campaigns to boost involvement of the public sector, private sector, and the general public.


PLoS ONE ◽  
2021 ◽  
Vol 16 (7) ◽  
pp. e0254547
Author(s):  
Yang Li ◽  
Jiancang Xie ◽  
Rengui Jiang ◽  
Dongfei Yan

The purposes are to use water resources efficiently and ensure the sustainable development of social water resources. The edge computing technology and GIS (Geographic Information Science) image data are combined from the perspective of sustainable development. A prediction model for the water resources in the irrigation area is constructed. With the goal of maximizing comprehensive benefits, the optimal allocation of water quality and quantity of water resources is determined. Finally, the actual effect of the model is verified through specific instance data in a province. Results demonstrate that the proposed irrigation area ecological prediction model based on edge computing and GIS images can provide better performance than other state of the art models on water resources prediction. Specifically, the accuracy can remain above 90%. The proposed model for ecological water demand prediction in the irrigation area and optimal allocation of water resources is based on the principle of quality water supply. The optimal allocation of water resources reveals the sustainable development ideas and the requirements of the optimal allocation model, which is very reasonable. The improvement of the system is effective and feasible, and the optimal allocation results are reasonable. This allocation model aims at the water quality and quantity conditions, water conservancy project conditions, and specific water demand requirements in the study area. The calculation results have great practicability and a strong guiding significance for the sustainable utilization and management of the irrigation area.


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