Keyword search (4,163 papers available)

"Sedaghati R" Authored Publications:

Title Authors PubMed ID
1 Advancements in Magnetorheological Foams: Composition, Fabrication, AI-Driven Enhancements and Emerging Applications Khodaverdi H; Sedaghati R; 40732777
ENCS
2 Rubber Fatigue Revisited: A State-of-the-Art Review Expanding on Prior Works by Tee, Mars and Fatemi Wang X; Sedaghati R; Rakheja S; Shangguan W; 40219307
ENCS
3 Development of a Prandtl-Ishlinskii hysteresis model for a large capacity magnetorheological fluid damper Vatandoost H; Abdalaziz M; Sedaghati R; Rakheja S; 39867636
ENCS
4 Topology optimization of adaptive sandwich plates with magnetorheological core layer for improved vibration attenuation Zare M; Sedaghati R; 39398530
ENCS
5 Investigation of Macroscopic Mechanical Behavior of Magnetorheological Elastomers under Shear Deformation Using Microscale Representative Volume Element Approach Abdollahi I; Sedaghati R; 38794567
ENCS
6 Nonlinear dynamic modeling and model-based AI-driven control of a magnetoactive soft continuum robot in a fluidic environment Moezi SA; Sedaghati R; Rakheja S; 37932207
ENCS
7 Design optimization and experimental evaluation of a large capacity magnetorheological damper with annular and radial fluid gaps Abdalaziz M; Sedaghati R; Vatandoost H; 37521729
ENCS
8 Analysis of an Adaptive Periodic Low-Frequency Wave Filter Featuring Magnetorheological Elastomers Jafari H; Sedaghati R; 36772034
ENCS
9 Multidisciplinary Design Optimization of a Novel Sandwich Beam-Based Adaptive Tuned Vibration Absorber Featuring Magnetorheological Elastomer. Asadi Khanouki M, Sedaghati R, Hemmatian M 32422988
ENCS

 

Title:Advancements in Magnetorheological Foams: Composition, Fabrication, AI-Driven Enhancements and Emerging Applications
Authors:Khodaverdi HSedaghati R
Link:https://pubmed.ncbi.nlm.nih.gov/40732777/
DOI:10.3390/polym17141898
Publication:Polymers
Keywords:AI-driven enhancementsMR materialsemerging applicationsfabrication methodsmachine learning for material designmagnetorheological foammultifunctional compositessmart materials
PMID:40732777 Category: Date Added:2025-07-30
Dept Affiliation: ENCS
1 Department of Mechanical, Industrial and Aerospace Engineering, Concordia University, Montreal, QC H3G 1M8, Canada.

Description:

Magnetorheological (MR) foams represent a class of smart materials with unique tunable viscoelastic properties when subjected to external magnetic fields. Combining porous structures with embedded magnetic particles, these materials address challenges such as leakage and sedimentation, typically encountered in conventional MR fluids while offering advantages like lightweight design, acoustic absorption, high energy harvesting capability, and tailored mechanical responses. Despite their potential, challenges such as non-uniform particle dispersion, limited durability under cyclic loads, and suboptimal magneto-mechanical coupling continue to hinder their broader adoption. This review systematically addresses these issues by evaluating the synthesis methods (ex situ vs. in situ), microstructural design strategies, and the role of magnetic particle alignment under varying curing conditions. Special attention is given to the influence of material composition-including matrix types, magnetic fillers, and additives-on the mechanical and magnetorheological behaviors. While the primary focus of this review is on MR foams, relevant studies on MR elastomers, which share fundamental principles, are also considered to provide a broader context. Recent advancements are also discussed, including the growing use of artificial intelligence (AI) to predict the rheological and magneto-mechanical behavior of MR materials, model complex device responses, and optimize material composition and processing conditions. AI applications in MR systems range from estimating shear stress, viscosity, and storage/loss moduli to analyzing nonlinear hysteresis, magnetostriction, and mixed-mode loading behavior. These data-driven approaches offer powerful new capabilities for material design and performance optimization, helping overcome long-standing limitations in conventional modeling techniques. Despite significant progress in MR foams, several challenges remain to be addressed, including achieving uniform particle dispersion, enhancing viscoelastic performance (storage modulus and MR effect), and improving durability under cyclic loading. Addressing these issues is essential for unlocking the full potential of MR foams in demanding applications where consistent performance, mechanical reliability, and long-term stability are crucial for safety, effectiveness, and operational longevity. By bridging experimental methods, theoretical modeling, and AI-driven design, this work identifies pathways toward enhancing the functionality and reliability of MR foams for applications in vibration damping, energy harvesting, biomedical devices, and soft robotics.





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