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Reservoir computing compensates slow response of chemosensor arrays exposed to fast varying gas concentrations in continuous monitoring

机译:储层计算可补偿连续监测中暴露于快速变化的气体浓度的化学传感器阵列的慢响应

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摘要

Metal oxide (MOX) gas sensors arrays are a predominant technological choice to perform fundamental tasks of chemical detection. Yet, their use has been mainly limited to relatively controlled instrument configurations where the sensor array is placed within a closed measurement chamber. Usually, the experimental protocol is defined beforehand and it includes three stages: the array is first exposed to a gas reference, then to the gas sample, and finally to the reference again to recover the initial state. Such sampling procedure requires signal acquisition during the complete experimental protocol and usually delays the output prediction until the predefined measurement duration is complete. Due to the slow time response of chemical sensors, the completion of the measurement typically requires minutes. In this paper we propose the use of reservoir computing (RC) algorithms to overcome the slow temporal dynamics of chemical sensor arrays, allowing identification and quantification of chemicals of interest continuously and reducing measurement delays. We generated two datasets to test the ability of RC algorithms to provide accurate and continuous prediction to fast varying gas concentrations in real time. Both datasets - one generated with synthetic data and the other acquired from actual gas sensors -provide time series of MOX sensors exposed to binary gas mixtures where concentration levels change randomly over time. Our results show that our approach improves the time response of the sensory system and provides accurate predictions in real time, making the system specifically suitable for online monitoring applications. Finally, the collected dataset and developed code are made publicly available to the research community for further studies.
机译:金属氧化物(MOX)气体传感器阵列是执行化学检测基本任务的主要技术选择。然而,它们的使用主要限于将传感器阵列放置在封闭的测量室内的相对受控的仪器配置。通常,实验方案是预先定义的,它包括三个阶段:首先将阵列暴露于气体参照物,然后暴露于气体样品,最后再次暴露于参照物以恢复初始状态。这种采样过程需要在完整的实验方案中进行信号采集,通常会延迟输出预测,直到完成预定义的测量持续时间。由于化学传感器的时间响应较慢,因此完成测量通常需要几分钟。在本文中,我们提出使用储层计算(RC)算法来克服化学传感器阵列的缓慢时间动态变化,从而可以连续地识别和量化目标化学物质并减少测量延迟。我们生成了两个数据集,以测试RC算法对实时快速变化的气体浓度提供准确且连续的预测的能力。这两个数据集-一个是用合成数据生成的,另一个是从实际气体传感器获取的-提供了暴露于二元混合气中浓度水平随时间随机变化的MOX传感器的时间序列。我们的结果表明,我们的方法改善了传感系统的时间响应并提供了实时的准确预测,从而使该系统特别适合于在线监视应用程序。最后,收集到的数据集和开发的代码将公开提供给研究社区以供进一步研究。

著录项

  • 来源
    《Sensors and Actuators》 |2015年第8期|618-629|共12页
  • 作者单位

    BioCircuits Institute (BCI), University of California San Diego, 9500 Gilman Drive, La Jolla, CA 92093, USA,Signal and Information Processing for Sensing Systems, Institute for Bioengineering of Catalonia (IBEC), Baldiri Reixac, 4-8, Barcelona 08028, Spain;

    BioCircuits Institute (BCI), University of California San Diego, 9500 Gilman Drive, La Jolla, CA 92093, USA;

    BioCircuits Institute (BCI), University of California San Diego, 9500 Gilman Drive, La Jolla, CA 92093, USA;

    Signal and Information Processing for Sensing Systems, Institute for Bioengineering of Catalonia (IBEC), Baldiri Reixac, 4-8, Barcelona 08028, Spain,Departament d'Electronica, Universitat de Barcelona, Marti i Franques, 1, Barcelona 08028, Spain;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Electronic nose; Chemical sensors; Reservoir computing; Continuous gas prediction; Real-time detection;

    机译:电子鼻;化学传感器;储层计算;连续气体预测;实时检测;

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