Eine Plattform für die Wissenschaft: Bauingenieurwesen, Architektur und Urbanistik
Autonomous soil vision scanning system for intelligent subgrade compaction
Abstract The wide application of intelligent compaction in subgrade construction is limited by the evaluation accuracy. The current practice assumes the compacted site as a homogeneous soil condition, ignoring the influence of soil property. This paper describes an advanced autonomous soil scanning system based on the computer-vision approach to recognize the soil gradation in real-time. A hybrid intelligent model is developed through a series of field compaction tests, integrating Deeplabv3+ and XGBoost algorithms. The proposed method is effective in segmenting and quantifying the large particles while the fine-grained soil is completed by the prediction model. The scanned soil information correlates well with the intelligent compaction indicators, providing essential parameters for the accurate assessment of subgrade compaction quality. The soil vision scanning system is combined with the intelligent compaction system to enable the roller autonomous learning of the whole construction area.
Highlights A vision scanning system is proposed to recognize the soil property in real-time. A hybrid intelligent model is developed to segment and quantify the soil gradation. The recognized soil information correlates well with intelligent compaction indicators. The vision scanning system is integrated into the intelligent compaction for autonomous subgrade construction.
Autonomous soil vision scanning system for intelligent subgrade compaction
Abstract The wide application of intelligent compaction in subgrade construction is limited by the evaluation accuracy. The current practice assumes the compacted site as a homogeneous soil condition, ignoring the influence of soil property. This paper describes an advanced autonomous soil scanning system based on the computer-vision approach to recognize the soil gradation in real-time. A hybrid intelligent model is developed through a series of field compaction tests, integrating Deeplabv3+ and XGBoost algorithms. The proposed method is effective in segmenting and quantifying the large particles while the fine-grained soil is completed by the prediction model. The scanned soil information correlates well with the intelligent compaction indicators, providing essential parameters for the accurate assessment of subgrade compaction quality. The soil vision scanning system is combined with the intelligent compaction system to enable the roller autonomous learning of the whole construction area.
Highlights A vision scanning system is proposed to recognize the soil property in real-time. A hybrid intelligent model is developed to segment and quantify the soil gradation. The recognized soil information correlates well with intelligent compaction indicators. The vision scanning system is integrated into the intelligent compaction for autonomous subgrade construction.
Autonomous soil vision scanning system for intelligent subgrade compaction
Wang, Xuefei (Autor:in) / Wang, Tingkai (Autor:in) / Zhang, Jianmin (Autor:in) / Ma, Guowei (Autor:in)
05.12.2023
Aufsatz (Zeitschrift)
Elektronische Ressource
Englisch
Advanced intelligent compaction strategy for subgrade soil considering heterogeneous database
Elsevier | 2024
|Quality Improvement of Subgrade Through Intelligent Compaction
British Library Online Contents | 2016
|Intelligent compaction monitoring system for highway subgrade and pavement
Europäisches Patentamt | 2022
|