Optimizing Machine Learning with SSA and PSO for Anchor Bolt–Grout Bond Strength Prediction
Detan Liu, Chenglin Liu, Hongwei Zhang, Meng Cui, Chuankai He, Junjie Wang

TL;DR
This paper uses machine learning with SSA and PSO to predict anchor bolt-grout bond strength, improving accuracy and efficiency compared to traditional methods.
Contribution
A novel machine learning approach using SSA and PSO optimization for predicting anchor bolt bond strength is introduced.
Findings
PSO-LSBoost model achieved the highest prediction accuracy (R2 = 0.93) after hyperparameter optimization.
SHAP analysis showed corrosion rate (Cw) has the greatest impact on bond strength (τ), while rebar type (ST) has the least.
Optimized models outperformed empirical formulas in predicting bond strength.
Abstract
The bond strength (τ) of the interface between the anchor bolt and grouting body (or rebar–concrete) is a key indicator used to evaluate the bearing capacity of anchorage engineering. And when rebars are subject to corrosion, τ also serves as an important durability metric. However, traditional experimental measurement of τ is complex, time-consuming and labor-intensive. In this study, based on pullout test data from 429 rebar–concrete specimens, we develop a machine learning method to construct a prediction model with strong generalization ability. Fundamental features—including specimen geometry, dimensions, material strengths, and corrosion rate—are used as inputs. The Sparrow Search Algorithm (SSA) and Particle Swarm Optimization (PSO) are used to fine-tune the hyperparameters of three machine learning models which are Random Forest (RF), Least Squares Boosting (LSBoost), and…
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Taxonomy
TopicsConcrete Corrosion and Durability · Structural Behavior of Reinforced Concrete · Structural Integrity and Reliability Analysis
