Carbyne as a promising material for E-nose applications with machine learning.

IF 2.9 4区 材料科学 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY
Alexey Kucherik, Ashok Kumar, Abramov Andrey, Vladislav Samyshkin, Osipov Anton, Ilya Bordanov, Sergey Andreevich Shchanikov, Mahesh Kumar
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Abstract

There has been a lot of study and advancement in the area of carbon allotropes in the last several decades, driven by the exceptional and diverse physical and chemical characteristics of carbon nanomaterials. For example, nanostructured forms such as carbon nanotubes, graphene, and carbon quantum dots have the potential to revolutionize various industries [1-3]. The global scientific community continues to research in the field of creating new materials, particularly low-dimensional carbon allotropes such as carbon nanotubes (CNTs) and carbyne. Carbyne is a one-dimensional carbon allotrope with a large surface area, chemical reactivity, and gas molecule adsorption potential that makes it extremely sensitive to gases and electronic nose (E-nose) applications due to its linear sp-hybridized atomic chain structure. The primary objective of this work is to increase the sensitivity, selectivity, and overall efficiency of E-nose systems using a synergistic combination of carbyne-based sensing components with cutting-edge machine learning techniques. The exceptional electronic properties of carbyne, such as its high electron mobility and adjustable bandgap, enable rapid and specific adsorption of various gas molecules. Additionally, its significant surface area-to-volume ratio enhances the detection of trace concentrations. Our suggested advanced hybrid system utilises support vector machines (SVMs) and convolutional neural networks (CNNs) as sophisticated machine learning approaches to analyse data provided by carbyne sensors. These algorithms enhance the precision and durability of gas detection by effectively recognising intricate patterns and correlations in the sensor data. Empirical evidence suggests that E-nose systems based on carbyne have superior performance in terms of reaction time, sensitivity, and specificity compared to conventional materials. This research emphasises the revolutionary potential of carbyne in the advancement of next-generation gas sensing systems, which has significant implications for applications in environmental monitoring, medical diagnostics, and industrial process control. .

通过机器学习,将卡宾作为电子鼻应用的理想材料。
过去几十年来,由于碳纳米材料具有卓越而多样的物理和化学特性,人们在碳同素异形体领域进行了大量研究,并取得了很大进展。例如,碳纳米管、石墨烯和碳量子点等纳米结构形式有可能给各行各业带来革命性的变化 [1-3]。全球科学界继续在创造新材料领域开展研究,尤其是低维碳同素异形体,如碳纳米管(CNTs)和碳化碳(carbyne)。卡宾是一种一维碳同素异形体,具有较大的表面积、化学反应活性和气体分子吸附潜力,由于其线性sp杂化原子链结构,使其对气体和电子鼻(E-nose)应用极为敏感。这项工作的主要目标是利用基于碳粉的传感元件与尖端机器学习技术的协同组合,提高电子鼻系统的灵敏度、选择性和整体效率。碳化烯具有优异的电子特性,如高电子迁移率和可调带隙,能快速、特异地吸附各种气体分子。此外,其显著的表面积与体积比也提高了对痕量浓度的检测能力。我们建议的先进混合系统利用支持向量机(SVM)和卷积神经网络(CNN)作为复杂的机器学习方法来分析卡宾传感器提供的数据。这些算法能有效识别传感器数据中错综复杂的模式和相关性,从而提高气体检测的精度和耐用性。经验证据表明,与传统材料相比,基于卡宾的电子鼻系统在反应时间、灵敏度和特异性方面具有更优越的性能。这项研究强调了卡宾在推动下一代气体传感系统方面的革命性潜力,对环境监测、医疗诊断和工业过程控制等应用具有重要意义。
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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来源期刊
Nanotechnology
Nanotechnology 工程技术-材料科学:综合
CiteScore
7.10
自引率
5.70%
发文量
820
审稿时长
2.5 months
期刊介绍: The journal aims to publish papers at the forefront of nanoscale science and technology and especially those of an interdisciplinary nature. Here, nanotechnology is taken to include the ability to individually address, control, and modify structures, materials and devices with nanometre precision, and the synthesis of such structures into systems of micro- and macroscopic dimensions such as MEMS based devices. It encompasses the understanding of the fundamental physics, chemistry, biology and technology of nanometre-scale objects and how such objects can be used in the areas of computation, sensors, nanostructured materials and nano-biotechnology.
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