基于多传感器优化部署的大型三维物理相似性仿真中高效同步数据采集

IF 1.9 4区 计算机科学 Q3 AUTOMATION & CONTROL SYSTEMS Assembly Automation Pub Date : 2022-01-05 DOI:10.1108/aa-06-2021-0074
Yuyu Hao, Shugang Li, Tian-cai Zhang
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摘要

目的本文旨在基于遗传算法和数值模拟,提出一种用于应力分布规律研究的压应力传感器的部署优化和高效同步采集方法。作者建立了一种收集采矿压缩应力-应变分布数据的新方法,以解决传感器数量的问题,并在物理相似性模拟中优化传感器位置,从而提高数据收集的效率和准确性。设计/方法/方法首先,使用数值模拟获得特定开采条件下的压应力分布曲线。其次,通过比较不同数量传感器的拟合曲线和模拟数据之间的均方误差,使用遗传算法优化传感器的三维空间部署。第三,作者设计了一个高效的同步采集模块,通过内置的机载数据库和同步采样通信结构,使分布式传感器能够实现数百个数据点的同步高效采集。发现通过遗传算法建立了传感器部署方案,建立了一种同步选择性数据采集方法,减少了同步采集所需的传感器数据量,提高了系统采集效率。作者在大型三维物理相似性模拟平台上获得了推进200米时的三维压应力分布。独创性/价值该方法为物理相似性模拟中的传感器部署提供了一种新的优化方法,提高了系统数据采集的效率和准确性,为实验数据分析提供了准确的采集数据。
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Multi-sensor optimal deployment based efficient and synchronous data acquisition in large three-dimensional physical similarity simulation
Purpose This paper aims to propose a deployment optimization and efficient synchronous acquisition method for compressive stress sensors used by stress distribution law research based on the genetic algorithm and numerical simulations. The authors established a new method of collecting the mining compressive stress-strain distribution data to address the problem of the number of sensors and to optimize the sensor locations in physical similarity simulations to improve the efficiency and accuracy of data collection. Design/methodology/approach First, numerical simulations were used to obtain the compressive stress distribution curve under specific mining conditions. Second, by comparing the mean square error between a fitted curve and simulation data for different numbers of sensors, a genetic algorithm was used to optimize the three-dimensional (3D) spatial deployment of sensors. Third, the authors designed an efficient synchronous acquisition module to allow distributed sensors to achieve synchronous and efficient acquisition of hundreds of data points through a built-in on-board database and a synchronous sampling communication structure. Findings The sensor deployment scheme was established through the genetic algorithm, A synchronous and selective data acquisition method was established for reduced the amount of sensor data required under synchronous acquisition and improved the system acquisition efficiency. The authors obtained a 3D compressive stress distribution when the advancement was 200 m on a large-scale 3D physical similarity simulation platform. Originality/value The proposed method provides a new optimization method for sensor deployment in physical similarity simulations, which improves the efficiency and accuracy of system data acquisition, providing accurate acquisition data for experimental data analysis.
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来源期刊
Assembly Automation
Assembly Automation 工程技术-工程:制造
CiteScore
4.30
自引率
14.30%
发文量
51
审稿时长
3.3 months
期刊介绍: Assembly Automation publishes peer reviewed research articles, technology reviews and specially commissioned case studies. Each issue includes high quality content covering all aspects of assembly technology and automation, and reflecting the most interesting and strategically important research and development activities from around the world. Because of this, readers can stay at the very forefront of industry developments. All research articles undergo rigorous double-blind peer review, and the journal’s policy of not publishing work that has only been tested in simulation means that only the very best and most practical research articles are included. This ensures that the material that is published has real relevance and value for commercial manufacturing and research organizations.
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