Analysis of Slope Stability using Innovative Hybrid BPSO-SVM Machine Learning Techniques for Enhance Environmental Sustainability
DOI:
https://doi.org/10.63278/mme.v31i1.1304Keywords:
Slope Stability, Environmental Sustainability, Soil Quality Assessment, Support Vector Machine, Binary Pso, Grid Search, Cross Validation,Binary Particle Swarm Optimization(BPSO).Abstract
This study aims to improve the forecasting performance of slope stability for impacting environmental sustainability and infrastructure safety predictions by using the Binary Particle Swarm Optimization (BPSO) coupled with Support Vector Machine (BPSO-SVM) models. The BPSO technique is utilized to select relevant features from the dataset, thereby improving the overall effectiveness of the predictive models. The research includes 108 slope stability examples, with the dataset split between 70% training and 30% validation. The dataset comprises seven input parameters: cohesiveness, slope angle, unit weight, angle of internal friction, slope height, pore water pressure coefficient, and factor of safety. The objective is to classify the slope status, turning the problem into a classification task. To obtain optimal hyper-parameters for the SVM model, Grid Search was exploited. The accuracy of the slope stability predictions given by several models was assessed using receiver operating characteristic (ROC) curves. The results indicate that the BPSO-SVM model outperforms the standalone SVM and BPSO models, serving as a robust computational tool capable of accurately predicting slope stability to enhance the environmental sustainability.
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Copyright (c) 2025 Saurabh Kumar Anuragi, D. Kishan

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