基于机器人的比色气敏实验程序开发。

IF 1.2 4区 综合性期刊 Q3 MULTIDISCIPLINARY SCIENCES
Zechen Li, Siyuan Xu, Mengyang Cui, Jie Deng, Jing Jiang, Yijian Shi
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引用次数: 0

摘要

本文提出了一种基于机器人的实验方案,旨在开发一种高效、快速的比色气体传感器。该程序采用自动化设计-构建-测试-学习(DBTL)方法,迭代优化搜索过程,同时针对不同的气体浓度间隔优化多种配方。在每次迭代中,算法根据不同的采集函数生成一批食谱建议,随着迭代次数的增加,各浓度区间的加权目标函数值显著提高。DBTL方法从参数初始化开始,设置硬件和软件环境。基线测试建立性能标准。随后,DBTL方法根据每轮食谱的比例设计下一轮优化,并迭代测试性能。性能评估通过比较基线数据来评估DBTL方法的有效性。如果性能改进未达到预期,则迭代执行该方法;如果目标达到了,实验就结束了。整个过程通过DBTL迭代优化过程实现系统性能的最大化。与传统的人工开发过程相比,本实验过程采用的DBTL方法采用了多目标优化和多种机器学习算法。DBTL方法在确定构件体积的上下限后,对迭代实验进行动态优化,得到性能最佳的最优比例。该方法大大提高了效率,降低了成本,并且在寻找最优配方时,在多配方变量空间内执行效率更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robotic-based Experimental Procedure for Colorimetric Gas Sensing Development.

This paper presents a robot-based experimental program aimed at developing an efficient and fast colorimetric gas sensor. The program employs an automated Design-Build-Test-learning (DBTL) approach, which optimizes the search process iteratively while optimizing multiple recipes for different concentration intervals of the gas. In each iteration, the algorithm generates a batch of recipe suggestions based on various acquisition functions, and with the increase in the number of iterations, the values of weighted objective function for each concentration interval significantly improve. The DBTL method begins with parameter initialization, setting up the hardware and software environment. Baseline tests establish performance standards. Subsequently, the DBTL method designs the following round of optimization based on the proportion of recipes in each round and tests performance iteratively. Performance evaluation compares baseline data to assess the effectiveness of the DBTL method. If the performance improvement does not meet expectations, the method will be performed iteratively; if the objectives are achieved, the experiment concludes. The entire process maximizes system performance through the DBTL iterative optimization process. Compared to the traditional manual developing process, the DBTL method adopted by this experimental process uses multi-objective optimization and various machine learning algorithms. After defining the upper and lower limits of component volume, the DBTL method dynamically optimizes iterative experiments to obtain the optimal ratio with the best performance. This method greatly improves efficiency, reduces costs, and performs more efficiently within the multi-formulation variable space when finding the optimal recipe.

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来源期刊
Jove-Journal of Visualized Experiments
Jove-Journal of Visualized Experiments MULTIDISCIPLINARY SCIENCES-
CiteScore
2.10
自引率
0.00%
发文量
992
期刊介绍: JoVE, the Journal of Visualized Experiments, is the world''s first peer reviewed scientific video journal. Established in 2006, JoVE is devoted to publishing scientific research in a visual format to help researchers overcome two of the biggest challenges facing the scientific research community today; poor reproducibility and the time and labor intensive nature of learning new experimental techniques.
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