Recieved:

12/11/2025

Accepted:

03/12/2025

Page: 

3427

3444

doi:

http://dx.doi.org/10.17515/resm2025-1350ma1112rv

Views:

15

Comparative bibliometric and AI-Enhanced analysis of dredged sediments, plant residues, and plastic fibers as eco-friendly additives for sustainable concrete, toward an integrated AI framework

Othmane Karrame1, Mohammed Aqil2, Mohammed Ammari1, Laïla Ben Allal1

1Research Team, Materials, Environment and Sustainable Development (MEDD), FST Tangier, Abdelmalek Essaadi University, Tetouan, Morocco
23GIE laboratory, Mohammadia School of Enginnering, Mohamed V University, Rabat, Morocco

Abstract

Current research in the field of sustainable concrete is part of an evolutionary transition toward a circular economic model aimed at reducing the environmental footprint of construction materials. This study proposes a bibliometric and comparative analysis of three families of eco-sustainable additives: dredged sediments, plastic fibers, and plant residues incorporated into the concrete matrix. From a database of 245 formulations extracted from the literature (52 sediments, 147 plastic fibers, 46 plant residues), optimal performance ranges were identified: 10–20% sediment substitution, 0.3–1% plastic fiber incorporation, and 1–8% plant residue addition. Research trends were examined using VOSviewer, followed by a semantic analysis assisted by artificial intelligence to refine the interpretation of bibliometric clusters and uncover significant conceptual relationships. The AI-enhanced analysis highlights pretreatment processes (thermal activation, washing, alkali/mineralization treatments) and mixing protocols as key variables controlling mechanical, microstructural, and durability outcomes across studies. The results emphasize the specific strengths and limitations of each additive family and reveal a clearly structured scientific landscape. The integration of artificial intelligence into the bibliometric workflow provides an integrated and reproducible methodological framework, supporting future AI-driven modeling and predictive optimization of eco-sustainable concrete formulations.

Keywords

Civil engineering; Concrete durability; Dredged sediments; Plant residues; Plastic fibers; Bibliometric analysis; AI-based clustering; Sustainable construction; Marine environment

Cite this article as: 

Karrame Oe, Aqil M, Ammari M, Allal L B. Comparative bibliometric and AI-Enhanced analysis of dredged sediments, plant residues, and plastic fibers as eco-friendly additives for sustainable concrete, toward an integrated AI framework. Res. Eng. Struct. Mater., 2025; 11(6): 3427-3444.
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