Soil Compaction Monitoring Technique Using Deep Learning

S. Teramoto, Taizo Kobayashi
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Abstract

It is commonly known that the dynamic behavior of a vibratory drum of a soil compaction machine changes with soil stiffness. Although real-time monitoring techniques of compaction quality by measuring the acceleration of the vibratory drum have already been put into practice use, their applicability depends on the soil type and condition. In this study, to extend the range of applicability and improve accuracy, we propose a deep learning-based technique that allows the regression estimation of soil stiffness from the acceleration responses of a vibration drum. To collect a large amount of noise-free training data, the acceleration responses of a vibratory drum were simulated by numerically solving the equations of the motion mass-spring-damper system. We also conducted a field experiment to verify the proposed technique. The experimental results show that the estimated values of soil stiffness correlate with the measured values, with the correlation coefficient of approximately 0.79. Thus, the proposed method has potential as a new real-time monitoring technique for soil compaction quality.
基于深度学习的土壤压实监测技术
众所周知,土壤压实机振动鼓的动力特性随土壤刚度的变化而变化。虽然通过测量振动鼓的加速度实时监测压实质量的技术已经投入实际应用,但其适用性取决于土壤类型和条件。在本研究中,为了扩大适用性范围并提高准确性,我们提出了一种基于深度学习的技术,该技术允许从振动鼓的加速度响应中回归估计土壤刚度。为了收集大量的无噪声训练数据,通过数值求解运动质量-弹簧-阻尼器系统的方程,模拟了振动鼓的加速度响应。我们还进行了现场实验来验证所提出的技术。试验结果表明,土刚度估计值与实测值具有较好的相关性,相关系数约为0.79。因此,该方法有潜力成为一种新的土壤压实质量实时监测技术。
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