面向大气环境污染气体监测的MOS传感器阵列自确认软测量方法的研究

项目来源

国家自然科学基金(NSFC)

项目主持人

陈寅生

项目受资助机构

哈尔滨理工大学

项目编号

61803128

立项年度

2018

立项时间

未公开

项目级别

国家级

研究期限

未知 / 未知

受资助金额

24.00万元

学科

信息科学-自动化-自动化检测技术与装置

学科代码

F-F03-F0306

基金类别

青年科学基金项目

关键词

故障识别 ; 故障检测 ; 混合气体浓度检测 ; 隔离与重构 ; 自确认软测量模型 ; 污染气体监测 ; 故障识别 ; 故障检测 ; 混合气体浓度检测 ; 隔离与重构 ; 自确认软测量模型 ; 污染气体监测

参与者

赵文杰;王天;张宁;吴雪;龚建铧

参与机构

哈尔滨理工大学

项目标书摘要:本项目面向大气环境污染气体监测的新需求,将自确认传感器技术与软测量技术相结合,提出MOS传感器阵列自确认软测量方法,在保证测量值可靠性的基础上实现污染气体成分与浓度的有效测量。研究基于移动窗稀疏非负矩阵分解的故障检测、隔离与重构方法,准确实现传感器的故障检测、多故障隔离与故障数据重构;研究基于多尺度熵特征提取与多分类相关向量机的传感器故障识别方法,有效实现传感器故障信号的特征提取与故障模式识别,提高MOS气体传感器阵列的自诊断能力。研究基于快速多输出相关向量机回归的软测量方法,准确实现混合污染气体成分与浓度测量,提高测量准确性与实时性。利用以上算法构建自确认软测量模型并固化于监测系统样机中进行实验验证。本项目的研究成果对软测量技术在大气环境监测领域的发展与应用具有重大的理论与实践意义。

Application Abstract: This project facing the new requirements for air pollution monitoring,combined with self-validating sensor technology and soft sensor technology,proposes the self-validating soft sensor method of MOS gas sensor arrays.On the basis of guaranteeing the reliability of measurements,the effective measurement of the pollution gas composition is realized,and the credibility of detection results is improved.A fault detection,isolation and configuration method based on moving window sparse non-negative matrix decomposition is presented to accurately realize the fault detection,multiple faults isolation and faulty data reconfiguration.A sensor fault identification method based on multi-scale entropy feature extraction and multi-classification correlation vector machine is proposed to effectively realize the time-frequency feature extraction and fault pattern recognition of fault sensor signals for improving the self-diagnosis ability of MOS gas sensor array.In the aspect of contaminated gas mixture concentration soft sensor,a soft sensor modeling method based on fast multi-outputs correlation vector machine regression is researched to accurately realize composition and concentration measurement for improving measurements accuracy and real-time performance.The above algorithms are fused into a self-validating soft sensor model,and it is solidified in the prototype of the pollution gas monitoring system for experimental verification.The research results of the project will have great theoretical and practical significance for the application and development of soft sensor technology in the field of atmospheric environment monitoring.

项目受资助省

黑龙江省

项目结题报告(全文)

基于MOS气体传感器阵列的大气环境污染气体监测系统的实用化主要受限于长期监测过程中的异常状态监测与浓度测量的准确性问题。鉴于此,本项目开展MOS气体传感器阵列自确认软测量方法研究以提升系统检测结果的可靠性和准确性。为了解决长期监测过程中模型自适应性较差而导致的故障检测准确率较低的问题,提出了基于移动窗核主成分分析(MWKPCA)与极限学习机(ELM)相结合的故障检测、隔离与重构方法,该方法利用KPCA对非线性信号的处理能力,增强了对故障信号的敏感性,再利用移动窗技术对KPCA模型进行自适应更新,增强方法自适应能力,提高故障检测准确率;利用KPCA的SPE统计量贡献图实现故障传感器隔离;最后利用ELM预测模型对故障传感器信号进行重构,具有较高的故障信号重构精度。针对传感器故障特征提取结果可分性较差的问题,提出了一种基于改进多尺度幅值感知排列熵(AAPE)的故障特征提取方法,利用AAPE对信号幅度变化的敏感特性,提取不同尺度下的AAPE值描述故障特征,提取的特征具有更好的可分性;进一步地,针对实际应用中各种故障训练样本不均衡问题,提出一种基于深度卷积生成对抗网络(DCGAN)的MOS气体传感器故障诊断方法,利用GAN扩充小样本的故障信号数据集,以此来弥补数据不均衡的故障信号样本空间,显著提升样本不均衡条件下的故障识别准确率。为了解决混合气体定性识别和定量分析准确率较低的问题,分别利用模式识别方法和深度学习方法研究混合气体软测量模型,提出的基于SSA-SVM与GA-ADASYN-SVR的软测量方法和基于WOA-LSTM与LSSVM的软测量方法均能够取得较高的测量精度,且对湍流条件下混合气体具有较好的测量效果。设计并研制了大气环境污染气体监测系统样机,通过其获得的实验样本对以上提出的自确认软测量方法进行验证,并证明了方法有效性和可行性,对自确认软测量方法的进一步改进和优化提供硬件基础。项目的研究成果对低成本、便携式的大气污染气体监测系统的研制具有重要的理论与应用价值。

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  • 2.Self-validating sensor technology and its application in artificial olfaction: A review

    • 关键词:
    • Electronic nose;Gas detectors;Artificial olfaction;Automatic Detection;Detection device;Faults diagnosis;FDI;Gas detection;ITS applications;Self validating sensors;Sensor technologies;Technology application
    • Chen, Yinsheng;Wang, Mingyang;Chen, Ziyan;Zhao, Wenjie;Shi, Yunbo
    • 《Measurement: Journal of the International Measurement Confederation》
    • 2025年
    • 242卷
    • 期刊

    Automatic detection devices rely on accurate and reliable sensor readings, which is a prerequisite for their good running. Self-validating sensor technology that realizes sensor operating status estimation and data validation can provide an intelligent functional framework for sensor status monitoring to improve the reliability and maintainability of the system. After nearly thirty years of development, self-validating sensors have achieved numerous theoretical and application results. In particular, the stability and reliability of gas chemical sensors in the field of artificial olfaction have been a bottleneck that limits the industrialization of the electronic nose system. Obviously, self-validating sensor technology exactly provides a potential solution for artificial olfaction application. This paper aims to systematically review the current development and typical applications of self-validating sensor technology, summarize the implementation methods to its different functional modules as well and demonstrate its potential application value in artificial olfaction. © 2024 Elsevier Ltd

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  • 3.Electronic nose and its application in the food industry: a review

    • 关键词:
    • E-nose; Food industry; Gas sensor; Food detection; Informationprocessing;CONVOLUTIONAL NEURAL-NETWORK; SENSORS; DISCRIMINATION; CLASSIFICATION;IDENTIFICATION; ADULTERATION; SPOILAGE; QUALITY; ORIGIN

    Food is closely related to human life. With the development of the times, the human demand for food has changed dramatically. People pay closer attention to the safety, health, composition, brand, origin, and processing method of food, which is precisely inseparable from food testing technology. Currently, there are many food inspection technologies, and the electronic nose (E-nose), as an efficient, fast, non-destructive, and promising technology, has been successfully applied in many aspects of the food industry and has shown promising results. This paper first introduces the basic principle and composition of the E-nose. Then it describes in detail the key elements, including gas sensor selection, sampling method design, data acquisition and information processing. Further summarizes the various typical applications of E-nose technology in the food industry in recent years, including six application directions: freshness assessment, process monitoring, flavor evaluation, authenticity evaluation, quality control, origin traceability and pesticide residue detection. Finally, the critical problems that need to be solved in the current application of E-nose technology in the food industry are discussed, and the potential future research directions in this field are foreseen.

    ...
  • 4.大气环境污染物监测系统的设计与实现

    • 关键词:
    • μC/OS-Ⅲ;STM32;大气环境监测;反向传播神经网络
    • 闫占威
    • 指导老师:哈尔滨理工大学 陈寅生
    • 学位论文

    大气环境污染对人类的健康与可持续发展产生巨大威胁,我国政府高度重视并相继出台多部关于大气污染综合防治的相关文件,指导大气污染治理工作。大气环境数据为大气污染综合防治提供数据和理论支撑。因此,开展大气环境污染物实时在线监测的研究具有很强的实践意义。针对当前对低成本、多功能的大气环境污染物监测系统的需求,本文的主要研究内容如下:通过分析大气环境监测领域的国内外研究现状,得出本文的设计需求,在此基础上进行了系统方案设计,得出了由感知层、网络层、应用层组成的系统结构,划分了监测节点的硬件功能单元,选出了主要器件的具体型号。在感知层监测节点功能单元划分中,NO2传感器、CO传感器、温湿度传感器、颗粒物传感器构成传感器单元用来实现多种环境参数的获取;基于高性能微控制器STM32F103ZET6构成主控单元负责节点功能控制及算法实现;利用超低功耗远距离通信技术NBIOT实现监测节点配网;采用DC/DC变换技术构成电源单元给节点供电。在感知层监测节点软件设计中,基于μC/OS-Ⅲ编程,通过对节点功能的分析设计了6个任务,采用信号量、消息队列、事件标志组等内核对象进行任务管理。在系统网络层,完成云平台二次开发后,监测节点可通过NBIOT组网进而利用MQTT协议实现监测节点数据上传及云端存储;在应用层,利用Web界面开发工具IOT Studio设计了网页与业务逻辑,实现了监测节点的数据可视化及超阈值报警。本文提出了一种基于遗传算法(GA)优化反向传播神经网络(BPNN)的气体定量分析的方法,利用GA优化BPNN的权值和偏置,并给出了训练后模型的C语言实现流程。为了验证本文的硬件设计及所提方法的有效性,搭建了实验系统,采用平均相对误差(MRE)进行模型评价并与其他方法进行了对比。最后进行了硬件单元测试及系统测试,实验表明,系统能稳定运行,能够满足对多种大气环境污染物实时在线监测的需求。

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  • 5.A Novel Fault Diagnosis Method for Rolling Bearing Based on Hierarchical Refined Composite Multiscale Fluctuation-Based Dispersion Entropy and PSO-ELM

    • 关键词:
    • rolling bearing fault diagnosis; feature extraction; hierarchicalrefined composite multiscale fluctuation-based dispersion entropy(HRCMFDE); particle swarm optimization-based extreme learning machine(PSO-ELM); load migration;EXTREME LEARNING-MACHINE; APPROXIMATE ENTROPY; PERMUTATION ENTROPY;NEURAL-NETWORK; DECOMPOSITION; COMPLEXITY; TRANSFORM; ALGORITHM
    • Chen, Yinsheng;Yuan, Zichen;Chen, Jiahui;Sun, Kun
    • 《ENTROPY》
    • 2022年
    • 24卷
    • 11期
    • 期刊

    This paper proposes a novel fault diagnosis method for rolling bearing based on hierarchical refined composite multiscale fluctuation-based dispersion entropy (HRCMFDE) and particle swarm optimization-based extreme learning machine (PSO-ELM). First, HRCMFDE is used to extract fault features in the vibration signal at different time scales. By introducing the hierarchical theory algorithm into the vibration signal decomposition process, the problem of missing high-frequency signals in the coarse-grained process is solved. Fluctuation-based dispersion entropy (FDE) has the characteristics of insensitivity to noise interference and high computational efficiency based on the consideration of nonlinear time series fluctuations, which makes the extracted feature vectors more effective in describing the fault information embedded in each frequency band of the vibration signal. Then, PSO is used to optimize the input weights and hidden layer neuron thresholds of the ELM model to improve the fault identification capability of the ELM classifier. Finally, the performance of the proposed rolling bearing fault diagnosis method is verified and analyzed by using the CWRU dataset and MFPT dataset as experimental cases, respectively. The results show that the proposed method has high identification accuracy for the fault diagnosis of rolling bearings with varying loads and has a good load migration effect.

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  • 6.Hyperspectral image classification method based on M-3DCNN-Attention

    • 关键词:
    • hyperspectral image classification; Mixup; three-dimensionalconvolutional neural network; attention module;SPECTRAL-SPATIAL CLASSIFICATION; NETWORK
    • Sun, Kun;Wang, Ao;Sun, Xiaoming;Zhang, Tianyi
    • 《JOURNAL OF APPLIED REMOTE SENSING》
    • 2022年
    • 16卷
    • 2期
    • 期刊

    Hyperspectral image (HSI) classification methods based on three-dimensional convolutional neural network (3DCNN) have problems of overfitting the in-sample training process and difficulty in highlighting the role of discriminant features, which reduce the classification accuracy. To solve the above problems, an HSI classification method based on M-3DCNN-Attention is proposed. First, the Mixup algorithm is used to construct HSI virtual samples to expand the original data set. The sample size of the expanded data set is twice that of the original data set, which greatly alleviates the overfitting phenomenon caused by the small sample of HSI. Second, the structure of 3DCNN is improved. A convolutional block attention module (CBAM) is added between each 3D convolutional layer and ReLU layer, and a total of three CBAMs are used so as to highlight the discriminant features in spectral and spatial dimensions of HSI and suppress the nondiscriminant features. Finally, the spectral-spatial features are transferred to the Softmax classifier to obtain the final classification results. The comparative experiments are conducted on three hyperspectral data sets (Indian Pines, University of PaviaU, and Salinas), and the overall accuracy of M-3DCNN-Attention is 99.90%, 99.93%, and 99.36%, respectively, which is better than the comparative methods. (c) 2022 Society of Photo-Optical Instrumentation Engineers (SPIE)

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  • 7.基于混合扫描的碳足迹采集终端可测性设计及融合诊断

    • 《电测与仪表》
    • 2022年
    • 期刊

    在“双碳”战略的背景下,针对国内对碳足迹采集终端及系统的迫切需求,提出了基于电力采集终端及通信系统的解决方案,并利用混合边界扫描技术提出了具体的“虚拟探针”可测性设计方案。还针对基于单一类型故障特征进行非线性“簇”电路故障诊断准确率低的难题,在研究小波包变换、PCA及Volterra核特征提取的基础上,提出了小波包变换与PCA特征层融合,并与基于Volterra核特征的初级诊断结果进行决策层融合的故障诊断方法。实验表明,该方法可以有效提高故障诊断的准确率。

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