Study on the development and test method of SnO2-based gas sensor array for dissolved gas analysis

Xi Gongwei, Yu Chutian, Chen Weigen, Jin Lingfeng, Tang Sirui
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引用次数: 2

Abstract

Dissolved Gas Analysis (DGA) is one of the most effective method to diagnose the early latent fault in oil-immersed power transformer. Gas sensor detection technology is the core of DGA, which will directly affect the reliability and accuracy of the transformer condition monitoring and fault diagnosis. At present, since the development of gas sensor restricted by the characteristics of dispersion, low sensitivity, ageing or poisoning, therefore, it is actively significance to continuously study the gas sensing technology and develop new type gas detection sensor to improve the on-line monitoring level of gas dissolved in transformer oil. In this work, gas sensor array was developed by synthesizing the Ag/Zn/Cu/Pt-loaded SnO2 hybrid nanocomposite via hydrothermal method. The study of the relationship between input voltage and gas sensitivity, gas selection and the drift characteristics between temperature and humidity to two typical characteristic fault gases hydrogen (H2) and acetylene (C2H2) for as-prepared gas sensor array were carried out. In addition, based on combined intelligent algorithm (PCA-BPNN), the classification and quantitative research of mixed gases were analyzed and discussed. The results laying the foundation for the preparation of gas sensor which serve for the transformer condition monitoring and fault diagnosis.
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溶解气体分析用sno2基气体传感器阵列的研制与测试方法研究
溶解气体分析(DGA)是诊断油浸式电力变压器早期潜在故障最有效的方法之一。气体传感器检测技术是DGA的核心,它将直接影响到变压器状态监测和故障诊断的可靠性和准确性。目前,由于气体传感器的发展受到分散、灵敏度低、老化或中毒等特点的制约,因此,不断研究气体传感技术,开发新型气体检测传感器,对提高变压器油中溶解气体的在线监测水平具有积极意义。本文通过水热法合成负载Ag/Zn/Cu/ pt的SnO2杂化纳米复合材料,开发了气体传感器阵列。研究了气体传感器阵列的输入电压与气体灵敏度的关系、气体的选择以及温度和湿度对两种典型故障气体氢气(H2)和乙炔(C2H2)的漂移特性。此外,基于组合智能算法(PCA-BPNN),对混合气体的分类和定量研究进行了分析和讨论。研究结果为研制用于变压器状态监测和故障诊断的气体传感器奠定了基础。
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