Editorial: Highly Intervened Estuaries: Impacts, Dynamics and System Responses
Frontiers in Earth Science(2024)
Univ Norte
Abstract
Guo al., 2021)determined by the processes driving the change, the size of the system, and the magnitude of such 61 interventions. Nevertheless, distinctive effects must consider the unique patterns of each specific site. 62The collection also highlights the interest in addressing approaches aimed at recovering and 63 increasing the environmental resilience of these valuable ecosystems. 64Authors Contribution 65 JCR: Writing-original draft, Writing-review and editing. AN: Writing-review and editing. BvM: 66Writing-review and editing. JDRA Writing-review and editing. MB: Writing-review and editing. 67The authors declare that the Editorial Note was conducted in the absence of any commercial or 69 financial relationships that could be construed as a potential conflict of interest. 70The author(s) declare that financial support was not received for the authorship, and/or publication of 72 this Editorial Note. 73As guest editors, we highly acknowledge all authors and reviewers who contributed to this Research 75 Topic. Their effort, commitment, and innovation ensured the high quality of the accepted papers. We 76 incredibly grateful to the Editor in Chief of the journal and Frontiers' specialist team for their 77 and 78 6
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Key words
morphological and hydrodynamic responses,timescales,human interventions,altered processes,management and restoration
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