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Liquefaction is a phenomenon that occurs when there is a loss of strength in wet and cohesionless soil due to higher pore water pressures, and as a result, the effective stress is reduced due to dynamic loading. A construction site should first investigate the site for liquefaction, and for analyzing liquefaction, the most accurate method should be selected, which provides the most accurate results. In this work, a detailed investigation is performed on the effectiveness of ensemble learning and deep learning (DL) models in assessing the liquefaction susceptibility of soil deposits from a large database consisting of cone penetration test (CPT) measurements and field liquefaction performance observations of historical earthquakes. The performance of the developed models is assessed via several comprehensive performance fitness error matrices (PFEMs), including precision, accuracy, recall, specificity, F1 score, MCC, BA, receiver operating characteristic (ROC) curve analysis, and area under the curve (AUC). Accuracy and validation loss curves were also plotted for all the proposed models. PFEMs are calculated, and a comparative study is performed for all the proposed methods. The BI-LSTM model has the highest accuracy, with 0.9791 in training and 0.8889 in testing, indicating strong predictive ability and good generalizability. LSTM follows closely with training and testing accuracies of 0.9433 and 0.8750, respectively, offering consistent performance. XGBoost also performs well, achieving 0.9194 in training and 0.8750 in testing, reflecting its robustness in handling complex patterns. In contrast, RF displays a significant discrepancy between the training (0.9373) and testing (0.8681) accuracies. Overall, BI-LSTM emerges as the most reliable model for assessing liquefaction potential, with LSTM, XGBoost and the RF also proving effective. Each model can offer unique strengths, with BI-LSTM and LSTM excelling at learning sequential dependencies, whereas XGBoost and RF provide powerful and often interpretable results from structured tabular data. This study advances the development of robust tools for assessing liquefaction hazards, thereby enhancing strategies for seismic risk mitigation.
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http://dx.doi.org/10.1038/s41598-025-04280-1 | DOI Listing |
Food Sci Biotechnol
October 2025
Department of Food Science and Biotechnology, Gachon University, Seongnam, 13120 Republic of Korea.
Unlabelled: SY21 and SY22 exhibit anti-inflammatory activity; however, their safety has not been evaluated. The suitability as probiotic strains were evaluated by using phenotypic and genotypic analyses. Indole production, urease activity, mucin degradation, bile salt hydrolase activity, β-hemolysis, and gelatin liquefaction activity were not found.
View Article and Find Full Text PDFSensors (Basel)
August 2025
Disaster Management Research Center, Seoul Institute, Seoul 06756, Republic of Korea.
Earthquake hazards, such as strong ground motion, liquefaction, and landslides, pose significant threats to structures built on seismically vulnerable, loose, and saturated sandy soils. Therefore, a structural failure evaluation method that accounts for site-specific seismic responses is essential for developing effective and appropriate earthquake hazard mitigation strategies. In this study, a real-time assessment framework for structural seismic susceptibility is developed.
View Article and Find Full Text PDFJ Orthop Surg Res
August 2025
Health Science Center, Ningbo University, Ningbo, 315211, Zhejiang, China.
Purpose: To evaluate the surgical technique and clinical outcomes of the Universal Self-locking Anatomic Plate for Acetabulum (USAPA).
Methods: A retrospective analysis of 155 patients with complete follow-up data from December 2014 to December 2020 was conducted. The study included 119 males and 36 females, aged 18–82 (mean: 40.
Bioresour Technol
December 2025
Key Laboratory of Poyang Lake Environment and Resource Utilization, Ministry of Education, and School of Resources, Environmental & Chemical Engineering, Nanchang University, Nanchang 330031, China.
This study investigates the composition of aqueous phase (AP) from 24 HTL trials of two different municipal sewage sludge (MSS) samples, using homogeneous (NaCO, LiCO, KCO, Ba(OH)) and heterogeneous (FeO, CeO, NiO/MoO, MoS, Ni/NiO, SnO, FeS) catalysts. Principal Component Analysis (PCA) was applied to assess the influence of feedstock and catalyst on AP composition i.e.
View Article and Find Full Text PDFAnal Chem
August 2025
Innovation Center for Advanced Brewing Science and Technology, College of Biomass Science and Engineering, Sichuan University, Chengdu 610065, P. R. China.
The microbial metabolic activity of , a key factor in production, varies due to environmental and raw material diversity. Quality differences exist among batches, even within the same fermentation room, and continue to change during storage. An accurate assessment of 's microbial activity is crucial for enhancing quality and production consistency, yet an in situ, nondestructive detection method remains elusive.
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