Study on settlement prediction of soft ground considering multiple feature parameters based on ISSA-RF model

Author:

Sun Changshuai,Yu Tianwen,Li Min,Wei Huanwei,Tan Fang

Abstract

AbstractBy collecting a large amount of data from various preloading engineering projects, a settlement prediction database was established including up to 15 feature parameters, such as final measured time, magnitude of surcharge loading, porosity ratio, internal friction angle, and others. Furthermore, a settlement prediction model of soft foundation based on random forest (RF) model was also developed. To enhance the accuracy of settlement prediction, the improved sparrow search algorithm (ISSA), which incorporates several enhancements such as the use of Logistic-tent chaotic mapping, adaptive nonlinear inertia-decreasing weight parameters, and Levy flight strategy, was proposed to optimize the hyperparameters of the RF model. The optimization results of various algorithms on benchmark functions revealed that the ISSA algorithm excelled in terms of accuracy and stability when compared to conventional algorithms such as particle swarm optimization and butterfly optimization. The ISSA-RF settlement prediction model was subsequently constructed and applied to practical projects. The results demonstrated that the ISSA-RF model exhibited superior prediction accuracy and applicability compared to the RF model. It can therefore provide valuable guidance for the planning and implementation of preloading engineering projects.

Funder

Delegated Projects for Enterprises and Institutions

Shandong Provincial Natural Science Foundation of China

Doctoral Fund Project of Shandong Jianzhu University

Publisher

Springer Science and Business Media LLC

Reference57 articles.

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