Enhancing water pressure sensing in challenging environments: A strain gage technology integrated with deep learning approach

Thanh Q Nguyen, Vu Ba Tu, Duong N Nguyen
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Abstract

The manuscript introduces a novel approach to design and construct a pore water pressure sensor utilizing strain gage technology integrated with deep learning principles. This sensor type is specifically tailored for measuring pressure at the vertex of pile bases in structures with substantial load-bearing capacity. While existing pressure sensors employing strain gage technology are available, this research addresses a unique measurement model suited for deep-water environments characterized by high corrosiveness and heavy loads. Consequently, the manuscript proposes design innovations aimed at optimizing the sensor’s form and dimensions to accommodate these demanding conditions. Computational simulations are conducted to perform relevant calculations, with results validated through rigorous analysis and experimentation against real-world datasets. Moreover, the study incorporates a pioneering deep learning-based data acquisition model to enhance output values, a feature currently underutilized in sensor technology. The findings demonstrate the viability of the proposed water pressure sensor model in various challenging working environments. This research underscores the potential for proactive manufacturing of sensors in diverse configurations, emphasizing adaptability and efficiency.
增强挑战性环境中的水压感应:应变计技术与深度学习方法相结合
该手稿介绍了一种利用应变计技术并结合深度学习原理来设计和构建孔隙水压力传感器的新方法。这种传感器专门用于测量具有较大承载能力的结构中桩基顶点的压力。虽然现有的压力传感器都采用了应变片技术,但本研究针对的是一种独特的测量模型,适合于以高腐蚀性和重负荷为特征的深水环境。因此,手稿提出了创新设计方案,旨在优化传感器的外形和尺寸,以适应这些苛刻的条件。通过计算模拟进行相关计算,并根据实际数据集进行严格的分析和实验,对结果进行验证。此外,该研究还采用了一种基于深度学习的开创性数据采集模型来提高输出值,而这一功能目前在传感器技术中尚未得到充分利用。研究结果证明了所提出的水压传感器模型在各种具有挑战性的工作环境中的可行性。这项研究强调了以不同配置主动制造传感器的潜力,强调了适应性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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