This paper proposes a probabilistic graphical model that integrates interpretive structural modeling (ISM) and Bayesian belief network (BBN) approaches to predict cone penetration test (CPT)-based soil liquefaction potential. In this study, an ISM approach was employed to identify relationships between influence factors, whereas BBN approach was used to describe the quantitative strength of their relationships using conditional and marginal probabilities. The proposed model combines major causes, such as soil, seismic and site conditions, of seismic soil liquefaction at once. To demonstrate the application of the propose framework, the paper elaborates on each phase of the BBN framework, which is then validated with historical empirical data. In context of the rate of successful prediction of liquefaction and non-liquefaction events, the proposed probabilistic graphical model is proven to be more effective, compared to logistic regression, support vector machine, random forest and naive Bayes methods. This research also interprets sensitivity analysis and the most probable explanation of seismic soil liquefaction appertaining to engineering perspective.

Download full-text PDF

Source
http://dx.doi.org/10.3934/mbe.2021454DOI Listing

Publication Analysis

Top Keywords

soil liquefaction
16
seismic soil
12
liquefaction potential
8
interpretive structural
8
structural modeling
8
bayesian belief
8
belief network
8
probabilistic graphical
8
graphical model
8
soil
5

Similar Publications

To investigate the bacterial community structure and physicochemical characteristics of different types of Daqu in the Binzhou region, this study employed traditional pure culture methods, high-throughput sequencing technology, and conventional physicochemical assays for analysis. The research results indicate that Enterococcus faecium and Bacillus licheniformis emerged as the main LAB and Bacillus species in Daqu from Binzhou region, respectively. In addition, high-throughput sequencing revealed significant differences in bacterial community structure between the two types of Daqu (P < 0.

View Article and Find Full Text PDF
Article Synopsis
  • - Sustainable agriculture benefits from combining Hydrothermal Liquefaction (HTL) and anaerobic digestion (AD), enhancing biomass efficiency and nutrient recovery, which is crucial for a circular bioeconomy.
  • - The study evaluated HTL solids derived from biogas digestate for direct-use fertilizers, demonstrating favorable nutrient composition and carbon stability while keeping contaminants within safe limits as per Danish regulations.
  • - Testing revealed a moderate level of biotoxicity in the mineral products but showed significant potential for stimulating plant growth, with recommended application rates of 39 kg/ha and 55 kg/ha, along with a 90% recovery of phosphates for fertilizer production.
View Article and Find Full Text PDF
Article Synopsis
  • Liquefaction poses a serious threat in earthquake-prone areas like Taiwan, making accurate prediction models crucial for assessing soil vulnerability during seismic events.
  • This study uses the random forest (RF) method, analyzing a dataset of 540 soil and seismic parameters to evaluate liquefaction potential in central Taiwan.
  • The RF model demonstrates high accuracy (98.89%) and reveals that the SPT-N value and peak ground acceleration are the most influential factors for predicting liquefaction, outperforming traditional methods even with fewer input variables.
View Article and Find Full Text PDF
Article Synopsis
  • Saturated sand foundations can experience liquefaction when subjected to dynamic loads, which may lead to structural failures like roadbed subsidence and underground flotation.
  • Enzyme-induced calcium carbonate precipitation technology (EICP) offers an eco-friendly alternative to traditional methods by using enzymes to strengthen soil and reduce liquefaction risks through cementation of soil particles.
  • The study involves testing EICP-solidified sand to establish a dynamic strength model, revealing that factors like confining pressure, cementation times, and dry density significantly influence the sand's dynamic strength, providing key insights for preventing liquefaction.
View Article and Find Full Text PDF

Study on Pore Water Pressure Model of EICP-Solidified Sand under Cyclic Loading.

Materials (Basel)

September 2024

Shaanxi Key Laboratory of Safety and Durability of Concrete Structures, Xijing University, Xi'an 710123, China.

Article Synopsis
  • Saturated sand foundations can experience liquefaction under various loads, making foundation reinforcement crucial for stability and resistance.
  • Traditional methods of foundation treatment have drawbacks such as high costs, lengthy construction times, and negative environmental impacts, while enzyme-induced calcium carbonate precipitation (EICP) offers a more sustainable and cost-effective alternative.
  • Experimental tests on EICP-treated sand revealed factors like confining pressure and cyclic stress influence pore water pressure and liquefaction resistance, leading to the establishment of a predictive model for pore water pressure behavior, which could help in preventing sand liquefaction.
View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!