Transient bending analysis of the graphene nanoplatelets reinforced sandwich concrete building structure validated by machine learning algorithm DOI
Xia Zhou, Yu-Yuan Chen,

Mohamed Abbas

et al.

Mechanics of Advanced Materials and Structures, Journal Year: 2024, Volume and Issue: unknown, P. 1 - 22

Published: May 17, 2024

This paper demonstrates a thorough examination of the bending behavior sandwich concrete building structures that are reinforced with graphene nanoplatelets (GPLs). The analysis is confirmed using machine learning technique. Sandwich have notable benefits in terms strength, longevity, and thermal insulation, making them well-suited for many applications. Integrating GPLs into matrix improves mechanical characteristics performance these structures, especially behavior. study utilizes technique to verify characterization temporary structure nanoplatelets. approach dataset consisting simulated data create prediction model can reliably estimate response under different loading situations. algorithm's effectiveness dependability optimizing design demonstrated through validation against results. provides engineers designers powerful tool. enhances comprehension use approaches analyzing designing sophisticated structural materials systems.

Language: Английский

Conversion of waste into sustainable construction materials: A review of recent developments and prospects DOI Creative Commons
Lin Chen, Mingyu Yang, Zhonghao Chen

et al.

Materials Today Sustainability, Journal Year: 2024, Volume and Issue: 27, P. 100930 - 100930

Published: July 26, 2024

The production and use of traditional building materials contribute to environmental pollution natural resource depletion. Besides, disposal agricultural, industrial, construction waste other solid wastes is a significant contemporary for both developing developed countries. Consequently, this study comprehensively examines sustainable (SCMs) sourced from materials. It analyzes 190 peer-reviewed papers, evaluating their properties, engineering suitability, impacts on the environment, economy, society. Findings reveal that most SCMs have good performance, yet improvements are needed in demonstrating (33.3%), economic (40%), social sustainability (73.3%). Also, experimental stages, requiring further research human toxicity, long-term savings, maintenance costs, vital indicators. This review highlights some current challenges facing promote studies, reduce non-renewable energy consumption recycling, facilitate application green buildings.

Language: Английский

Citations

30

Fiber-reinforced polymer waste in the construction industry: a review DOI

Huanyu Li,

Jian Yang, Dongmin Yang

et al.

Environmental Chemistry Letters, Journal Year: 2024, Volume and Issue: 22(6), P. 2777 - 2844

Published: Aug. 29, 2024

Language: Английский

Citations

24

Performance evaluation of concrete made with plastic waste using multi-expression programming DOI
Usama Asif, Muhammad Faisal Javed, Mana Alyami

et al.

Materials Today Communications, Journal Year: 2024, Volume and Issue: 39, P. 108789 - 108789

Published: April 1, 2024

Language: Английский

Citations

22

Machinability investigation of natural fibers reinforced polymer matrix composite under drilling: Leveraging machine learning in bioengineering applications DOI Creative Commons
Md. Rezaul Karim, Shah Md Ashiquzzaman Nipu,

Md. Sabbir Hossain Shawon

et al.

AIP Advances, Journal Year: 2024, Volume and Issue: 14(4)

Published: April 1, 2024

The growing demand for fiber-reinforced polymer (FRP) in industrial applications has prompted the exploration of natural fiber-based composites as a viable alternative to synthetic fibers. Using jute–rattan composite offers potential environmentally sustainable waste material decomposition and cost reduction compared conventional fiber materials. This article focuses on impact different machining constraints surface roughness delamination during drilling process FRP composite. Inspired by this unexplored research area, emphasizes influence various Response methodology designs experiment using drill bit material, spindle speed, feed rate input variables measure factors. technique order preference similarity ideal solution method is used optimize parameters, predicting delamination, two machine learning-based models named random forest (RF) support vector (SVM) are utilized. To evaluate accuracy predicted values, correlation coefficient (R2), mean absolute percentage error, squared error were used. RF performed better comparison with SVM, higher value R2 both testing training datasets, which 0.997, 0.981, 0.985 roughness, entry exit respectively. Hence, study presents an innovative through learning techniques.

Language: Английский

Citations

22

Microbial induce carbonate precipitation derive bio-concrete formation: A sustainable solution for carbon sequestration and eco-friendly construction DOI
Ashiq Hussain, Danish Ali,

Suprokash Koner

et al.

Environmental Research, Journal Year: 2025, Volume and Issue: unknown, P. 121006 - 121006

Published: Jan. 1, 2025

Language: Английский

Citations

5

Promoted decomposition in straw return to double-cropped rice fields controls soil acidity, increases soil fertility and improves rice yield DOI
Nan Zhang,

Lingyu Bai,

Xiangcai Wei

et al.

Chemical Engineering Journal, Journal Year: 2025, Volume and Issue: unknown, P. 161309 - 161309

Published: March 1, 2025

Language: Английский

Citations

3

Introducing ANN-GP algorithm to estimate transient bending of the functionally graded graphene origami-enabled auxetic metamaterial structures DOI

Chunlei Lin,

Guangyong Pan,

Mohamed Abbas

et al.

Mechanics of Advanced Materials and Structures, Journal Year: 2024, Volume and Issue: unknown, P. 1 - 20

Published: April 27, 2024

This article presents a new method called the artificial neural networks-genetic programming (ANNs-GP) algorithm, which effectively predicts bending behavior of functionally graded graphene origami-enabled auxetic metamaterial (FG-GORAM) structures under transient conditions. Functionally materials (FGMs) display spatial heterogeneity in their composition and microstructure, resulting distinctive mechanical characteristics that make them well-suited for wide range engineering applications. The objective this study is to create prediction model can accurately capture intricate FGM structures. To do this, researchers have used ANN-GP technique, combines ANNs with GP. ANN component acquires knowledge from dataset including actual or simulated data, while GP fine-tunes structure parameters network improve its ability accurate predictions. proposed algorithm strengths predict FG-GORAM robust efficient, allowing designers engineers optimize performance reliability these various effectiveness proved by comparing it experimental data. shows has potential be useful tool designing analyzing sophisticated

Language: Английский

Citations

15

Development of Bambusa tulda fiber-micro particle reinforced hybrid green composite: A sustainable solution for tomorrow's challenges in construction and building engineering DOI
Abir Saha, Nikhil Dilip Kulkarni,

Poonam Kumari

et al.

Construction and Building Materials, Journal Year: 2024, Volume and Issue: 441, P. 137486 - 137486

Published: July 24, 2024

Language: Английский

Citations

14

Towards sustainable transportation: A case study analysis of climate-responsive strategies in a developing nation DOI Creative Commons

Rabiya Nasir,

Hui Jun Meng, Sajid Rashid Ahmad

et al.

Case Studies in Thermal Engineering, Journal Year: 2024, Volume and Issue: 55, P. 104117 - 104117

Published: Feb. 12, 2024

According to the Global Climate Risk Index, Pakistan is fifth most vulnerable nation in world climate change. The growing phenomena of change and global warming have increased on a worldwide level. To combat effects change, transition sustainable transportation system essential. Developed countries evaluated costs benefits such transition. However, developing like rarely investigated this matter thoroughly. So, context, paper case study analyzing transport sector Punjab-Pakistan achieve some targets for transportation. analysis carried out by using energy model Low Emission Analysis Platform (LEAP) from 2019 2050. Three scenarios are made, i.e., Business as Usual Scenario (BAUS) following current policies, Efficient Combustion (ECS), Electrical Vehicle (EVS) figure environmental social costs. It concluded that 2050, ECS EVS will reduce carbon dioxide emissions 21.6 18.5 million metric tons equivalent, compared Business-as-Usual Scenario. These savings terms cost be $ 157.1 134.6 Electric This research may help find suitable policy decisions at provincial level enhance sustainability increasing share electric vehicles Punjab, results replicated whole country South Asia.

Language: Английский

Citations

13

Demand side management optimization and energy labeling of multi-purpose buildings DOI
Amir Hossein Heydari, Ramin Haghighi Khoshkhoo, Rahim Zahedi

et al.

Journal of Building Engineering, Journal Year: 2024, Volume and Issue: 88, P. 109143 - 109143

Published: March 28, 2024

Language: Английский

Citations

11