Bayesian Optimization-Based SVR and RF Models for Predicting Compaction Quality of SBS-Modified Asphalt Pavements Using Intelligent Compaction Data
收藏NIAID Data Ecosystem2026-05-10 收录
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This repository contains the source code for the study titled “Bayesian Optimization-Based SVR and RF Models for Predicting Compaction Quality of SBS-Modified Asphalt Pavements Using Intelligent Compaction Data.” The code implements Bayesian Optimization (BO)-tuned Support Vector Regression (SVR) and Random Forest (RF) models for predicting Intelligent Compaction Measurement Values (ICMVs) and Non-Nuclear Density Gauge (NNDG) values using field-collected data from SBS-modified asphalt pavement projects. Input variables include section length, vibratory roller passes, roller speed, vibration amplitude, and mat temperature. The framework also includes multi-output modeling, model evaluation, and SHAP-based explainable AI analysis to quantify feature importance and interpret compaction behavior.
创建时间:
2026-03-30



