This study aimed to develop a new approach to build a functioning groundwater monitoring system by detecting a reduced set of observation wells (OWs) that optimally matches the hydraulic heads measured by other OWs within the field, namely as leader wells (LWs). The optimization models used in this work are the well-known genetic algorithm (GA), modfied genetic algorithm (MGA) and a new progressive combination (PC) model. Optimization was applied to achieve three sequential selection processes: best input combinations (BICk), LWs and core leader wells (CLWs) selection. This approach was applied to the Assiut New Barrage (ANB), a megaproject located in Assiut city, Egypt. The results show that nine LWs among 33 OWs are adequate for regular monitoring, with a reduction ratio of 72.72%. Moreover, assigning CLWs among LWs increases the accuracy of fitting to existing OWs, and helps to understand the spatial relationships between OWs.
Research Member
Research Department
Research Date
Research Year
2021
Research Journal
Hydrological Sciences Journal
Research Publisher
Taylor & Francis
Research Vol
VOL. 66, NO. 13
Research Rank
https://doi.org/10.1080/02626667.2021.1968404
Research_Pages
1963–1978
Research Website
https://www.tandfonline.com/doi/abs/10.1080/02626667.2021.1968404?src=&journalCode=thsj20
Research Abstract