Keyword search (4,163 papers available)

"Degradation" Keyword-tagged Publications:

Title Authors PubMed ID
1 Laboratory-scale simulation study on the bioremediation of marine oil pollution by phosphate-solubilizing bacteria Bacillus subtilis PSB-1 Du Z; Li Z; Chen X; Liu M; Feng L; Li Q; Chen Z; Chen Q; 41707285
ENCS
2 Synthesis and Acidic pH-Responsive Disassembly of Dual-Location Shell-Sheddable/Core-Degradable Block Copolymer Nanoassemblies and Their Controlled Drug Delivery Andrade-Gagnon B; Casillas-Popova SN; Shamekhi M; Bairagi K; Peslherbe GH; Oh JK; 41524627
CHEMBIOCHEM
3 Stability of Acetals/Ketals Under Controlled Radical and Ring Opening Polymerization Andrade-Gagnon B; Casillas-Popova SN; Oh JK; 40614241
CHEMBIOCHEM
4 Enhanced biodegradation of crude oil by phosphate-solubilizing bacteria Bacillus subtilis PSB-1: Overcoming soluble phosphorus deficiency Wang X; Du Z; Li Z; Liu M; Mu J; Feng L; Chen Z; Chen Q; 40609441
ENCS
5 Application of machine learning for predicting the incubation period of water droplet erosion in metals AlHammad K; Medraj M; Tembely M; 40612685
ENCS
6 Konjac glucomannan (KGM) aerogel immobilized microalgae: A new way for marine oil spills remediation Wang X; Du Z; Song Z; Liu M; He P; Feng L; Chen Z; Chen Q; 40381443
ENCS
7 Photocatalytic innovations in PFAS removal: Emerging trends and advances Tabatabaei M; Cho DW; Fahad S; Jeong DW; Hwang JH; 40315548
ENCS
8 Radiation tolerance and biodegradation performance of a marine bacterium Acinetobacter sp. Y9 in radioactive composite oil-contaminated wastewater Yan J; Luo Q; Zhu B; Chen Z; Chen Q; 39806541
ENCS
9 Insights from multiple stable isotopes (C, N, Cl) into the photodegradation of herbicides atrazine and metolachlor Levesque-Vargas M; Ohlund L; Sleno L; Gélinas Y; Höhener P; Ponsin V; 39716600
CHEMBIOCHEM
10 The degradation of polylactic acid face mask components in different environments Lyu L; Bagchi M; Ng KTW; Markoglou N; Chowdhury R; An C; Chen Z; Yang X; 39378804
ENCS
11 pH-Responsive Degradable Electro-Spun Nanofibers Crosslinked via Boronic Ester Chemistry for Smart Wound Dressings Casillas-Popova SN; Lokuge ND; Andrade-Gagnon B; Chowdhury FR; Skinner CD; Findlay BL; Oh JK; 38989606
BIOLOGY
12 Design, Synthesis, and Acid-Responsive Disassembly of Shell-Sheddable Block Copolymer Labeled with Benzaldehyde Acetal Junction Andrade-Gagnon B; Casillas-Popova SN; Jazani AM; Oh JK; 38499007
CHEMBIOCHEM
13 Janus Micromotors for Photophoretic Motion and Photon Upconversion Applications Using a Single Near-Infrared Wavelength Mena-Giraldo P; Kaur M; Maurizio SL; Mandl GA; Capobianco JA; 38197400
CHEMBIOCHEM
14 Effects of electron acceptors and donors on anaerobic biodegradation of PAHs in marine sediments Chen Q; Li Z; Chen Y; Liu M; Yang Q; Zhu B; Mu J; Feng L; Chen Z; 38113802
ENCS
15 Towards environmentally sustainable management: A review on the generation, degradation, and recycling of polypropylene face mask waste Lyu L; Bagchi M; Markoglou N; An C; Peng H; Bi H; Yang X; Sun H; 37742382
ENCS
16 Comparative Analysis of Enzyme Production Patterns of Lignocellulose Degradation of Two White Rot Fungi: Obba rivulosa and Gelatoporia subvermispora Marinovíc M; Di Falco M; Aguilar Pontes MV; Gorzsás A; Tsang A; de Vries RP; Mäkelä MR; Hildén K; 35892327
CSFG
17 Perfluorocarbon Nanodroplets for Dual Delivery with Ultrasound/GSH-Responsive Release of Model Drug and Passive Release of Nitric Oxide Choi M; Jazani AM; Oh JK; Noh SM; 35683912
CHEMBIOCHEM
18 Hypersaline Pore Water in Gulf of Mexico Beaches Prevented Efficient Biodegradation of Deepwater Horizon Beached Oil Geng X; Khalil CA; Prince RC; Lee K; An C; Boufadel MC; 34617733
ENCS
19 Sustainable chemical processing of flowing wastewater through microwave energy Siddique F; Mirzaei A; Gonzalez-Cortes S; Slocombe D; Al-Megren HA; Xiao T; Rafiq MA; Edwards PP; 34474383
PHYSICS
20 Kinetic and reaction mechanism of generated by-products in a photocatalytic oxidation reactor: Model development and validation Malayeri M; Lee CS; Niu J; Zhu J; Haghighat F; 34182424
ENCS
21 Imidazole-Mediated Dual Location Disassembly of Acid-Degradable Intracellular Drug Delivery Block Copolymer Nanoassemblies Jazani AM; Shetty C; Movasat H; Bawa KK; Oh JK; 34050688
CHEMBIOCHEM
22 Direct Polymerization Approach to Synthesize Acid-Degradable Block Copolymers Bearing Imine Pendants for Tunable pH-Sensitivity and Enhanced Release. Hu X, Oh JK 32964550
CHEMBIOCHEM
23 Reduction-Responsive Sheddable Carbon Nanotubes Dispersed in Aqueous Solution. An SY, Sun S, Oh JK 26890479
CNSR
24 Rab-Effector-Kinase Interplay Modulates Intralumenal Fragment Formation during Vacuole Fusion. Karim MA, McNally EK, Samyn DR, Mattie S, Brett CL 30269949
BIOLOGY
25 Transcriptome and exoproteome analysis of utilization of plant-derived biomass by Myceliophthora thermophila. Kolbusz MA, Di Falco M, Ishmael N, Marqueteau S, Moisan MC, Baptista CDS, Powlowski J, Tsang A 24881579
BIOLOGY
26 Closely related fungi employ diverse enzymatic strategies to degrade plant biomass. Benoit I, Culleton H, Zhou M, DiFalco M, Aguilar-Osorio G, Battaglia E, Bouzid O, Brouwer CPJM, El-Bushari HBO, Coutinho PM, Gruben BS, Hildén KS, Houbraken J, Barboza LAJ, Levasseur A, Majoor E, Mäkelä MR, Narang HM, Trejo-Aguilar B, van den Brink J, vanKuyk PA, Wiebenga A, McKie V, McCleary B, Tsang A, Henrissat B, de Vries RP 26236396
CSFG
27 Expression-based clustering of CAZyme-encoding genes of Aspergillus niger. Gruben BS, Mäkelä MR, Kowalczyk JE, Zhou M, Benoit-Gelber I, De Vries RP 29169319
CSFG
28 Genomic and exoproteomic diversity in plant biomass degradation approaches among Aspergilli Mäkelä MR; DiFalco M; McDonnell E; Nguyen TTM; Wiebenga A; Hildén K; Peng M; Grigoriev IV; Tsang A; de Vries RP; 30487660
CSFG
29 The presence of trace components significantly broadens the molecular response of Aspergillus niger to guar gum. Coconi Linares N, Di Falco M, Benoit-Gelber I, Gruben BS, Peng M, Tsang A, Mäkelä MR, de Vries RP 30797054
CSFG

 

Title:Application of machine learning for predicting the incubation period of water droplet erosion in metals
Authors:AlHammad KMedraj MTembely M
Link:https://pubmed.ncbi.nlm.nih.gov/40612685/
DOI:10.1007/s42452-025-07268-8
Publication:Discover applied sciences
Keywords:Data transformationIncubation periodMachine learningMaterial degradationPrediction modelsWater droplet erosion
PMID:40612685 Category: Date Added:2025-07-04
Dept Affiliation: ENCS
1 Department of Mechanical, Industrial and Aerospace Engineering, Concordia University, Montreal, QC Canada.

Description:

Water droplet erosion (WDE) is a critical degradation phenomenon that significantly affects component lifespan and performance in power generation, aerospace, and wind energy industries. The incubation period-the initial phase before visible material loss occurs-is particularly crucial for maintenance planning and material selection yet remains challenging to predict accurately due to the complex interplay of material properties and impact conditions. Traditional empirical models have shown limited predictive capability due to their reliance on numerous adjustable parameters with insufficient physical interpretation. This study aimed to develop and validate a machine learning (ML) approach for accurately predicting the WDE incubation period across different metallic materials and impact conditions. The performance of various ML algorithms is evaluated while investigating the effect of data transformation techniques on prediction accuracy. A range of ML models-linear regression (LR), decision tree regressor (DT), random forest regressor (RF), gradient boosting regressor (GBR), and artificial neural networks (ANN)-were trained and validated using experimental data from five different alloys under various impact conditions. Data transformation methods significantly enhanced model performance, with the LR model using Box-Cox transformation achieving the highest accuracy (R2 > 90%, low MAE), followed by the ANN model with Yeo-Johnson transformation (R2 > 85%). Feature importance analysis through SHAP values revealed that impact velocity and surface hardness were the most influential factors affecting incubation period, providing valuable physical insights into the erosion mechanism. Hyperparameter optimization techniques showed minimal improvement in model performance, suggesting that the transformations effectively captured the underlying relationships in the data. This research represents the first comprehensive application of ML techniques to WDE incubation period prediction, establishing a methodological framework that integrates experimental data, statistical analysis, and advanced ML algorithms. Unlike previous approaches, our methodology (1) systematically evaluates multiple ML algorithms and transformation techniques for WDE prediction, (2) provides quantitative assessment of feature importance that aligns with physical understanding of erosion mechanisms, (3) demonstrates superior predictive accuracy compared to traditional empirical models, and (4) offers a generalizable approach applicable across different metallic materials and impact conditions. This work bridges the gap between data-driven modeling and physical understanding of WDE, providing a valuable tool for engineers to optimize material selection and maintenance strategies in erosion-prone applications.





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