Keyword search (4,164 papers available)

"Stiharu I" Authored Publications:

Title Authors PubMed ID
1 Synthesis and Characterization of CNC/CNF/rGO Composite Films for Advanced Functional Applications Ramezani G; Stiharu I; van de Ven TGM; Ramezani H; Nerguizian V; 41900273
ENCS
2 Lasso Model-Based Optimization of CNC/CNF/rGO Nanocomposites Ramezani G; Silva IO; Stiharu I; Ven TGMV; Nerguizian V; 40283268
ENCS
3 A synthetic model of bioinspired liposomes to study cancer-cell derived extracellular vesicles and their uptake by recipient cells López RR; Ben El Khyat CZ; Chen Y; Tsering T; Dickinson K; Bustamante P; Erzingatzian A; Bartolomucci A; Ferrier ST; Douanne N; Mounier C; Stiharu I; Nerguizian V; Burnier JV; 40069225
ENCS
4 Advancements in Hybrid Cellulose-Based Films: Innovations and Applications in 2D Nano-Delivery Systems Ramezani G; Stiharu I; van de Ven TGM; Nerguizian V; 38667550
ENCS
5 Advancement in Biosensor Technologies of 2D MaterialIntegrated with Cellulose-Physical Properties Ramezani G; Stiharu I; van de Ven TGM; Nerguizian V; 38258201
ENCS
6 SiCNFe Ceramics as Soft Magnetic Material for MEMS Magnetic Devices: A Mössbauer Study Stiharu I; Andronenko S; Zinnatullin A; Vagizov F; 37241549
PHYSICS
7 A review on microfluidic-assisted nanoparticle synthesis, and their applications using multiscale simulation methods Agha A; Waheed W; Stiharu I; Nerguizian V; Destgeer G; Abu-Nada E; Alazzam A; 36800044
CONCORDIA
8 Optimizing Biodegradable Starch-Based Composite Films Formulation for Wound-Dressing Applications Delavari MM; Ocampo I; Stiharu I; 36557445
ENCS
9 Comparative Evaluation of Artificial Neural Networks and Data Analysis in Predicting Liposome Size in a Periodic Disturbance Micromixer Ocampo I; López RR; Camacho-León S; Nerguizian V; Stiharu I; 34683215
ENCS
10 Numerical and Experimental Validation of Mixing Efficiency in Periodic Disturbance Mixers López RR; Sánchez LM; Alazzam A; Burnier JV; Stiharu I; Nerguizian V; 34577745
ENCS
11 Surface Response Based Modeling of Liposome Characteristics in a Periodic Disturbance Mixer. López RR, Ocampo I, Sánchez LM, Alazzam A, Bergeron KF, Camacho-León S, Mounier C, Stiharu I, Nerguizian V 32106424
ENCS
12 Fabrication of Porous Gold Film Using Graphene Oxide as a Sacrificial Layer. Alazzam A, Alamoodi N, Abutayeh M, Stiharu I, Nerguizian V 31323903
ENCS
13 The effect of dielectrophoresis on living cells: crossover frequencies and deregulation in gene expression. Nerguizian V, Stiharu I, Al-Azzam N, Yassine-Diab B, Alazzam A 31099354
ENCS

 

Title:Lasso Model-Based Optimization of CNC/CNF/rGO Nanocomposites
Authors:Ramezani GSilva IOStiharu IVen TGMVNerguizian V
Link:https://pubmed.ncbi.nlm.nih.gov/40283268/
DOI:10.3390/mi16040393
Publication:Micromachines
Keywords:CNC/CNF/rGO nanocompositesL-ascorbic acidcitric acidelectrical conductivitygraphene oxide reductionmulti-objective optimizationregression modelingtensile strength
PMID:40283268 Category: Date Added:2025-04-26
Dept Affiliation: ENCS
1 Department of Mechanical and Industrial Engineering, Concordia University, Montreal, QC H3G 1M8, Canada.
2 School of Engineering and Sciences, Tecnológico de Monterrey, Av. Eugenio Garza Sada 2501 Sur, Monterrey 64849, Mexico.
3 Department of Chemistry, McGill University, Montreal, QC H4A 3J1, Canada.
4 Département de Génie Électrique, École de Technologie Supérieure, Montreal, QC H3C 1K3, Canada.

Description:

This study explores the use of citric acid and L-ascorbic acid as reducing agents in CNC/CNF/rGO nanocomposite fabrication, focusing on their effects on electrical conductivity and mechanical properties. Through comprehensive analysis, L-ascorbic acid showed superior reduction efficiency, producing rGO with enhanced electrical conductivity up to 2.5 S/m, while citric acid offered better CNC and CNF dispersion, leading to higher mechanical stability. The research employs an advanced optimization framework, integrating regression models and a neural network with 30 hidden layers, to provide insights into composition-property relationships and enable precise material tailoring. The neural network model, trained on various input variables, demonstrated excellent predictive performance, with R2 values exceeding 0.998. A LASSO model was also implemented to analyze variable impacts on material properties. The findings, supported by machine learning optimization, have significant implications for flexible electronics, smart packaging, and biomedical applications, paving the way for future research on scalability, long-term stability, and advanced modeling techniques for these sustainable, multifunctional materials.





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