A Deep Calibration Method for Low-Cost Air Monitoring Sensors With Multilevel Sequence Modeling

被引:25
作者
Yu, Haomin [1 ]
Li, Qingyong [1 ]
Wang, Rao [1 ]
Chen, Zechuan [1 ]
Zhang, Yingjun [1 ]
Geng, Yangli-ao [1 ]
Zhang, Ling [2 ]
Cui, Houxin [2 ]
Zhang, Ke [2 ]
机构
[1] Beijing Jiaotong Univ, Beijing Key Lab Traff Data Anal & Min, Beijing 100044, Peoples R China
[2] Hebei Sailhero Environm Protect Hitech Ltd, Shijiazhuang 050035, Hebei, Peoples R China
关键词
Calibration; Time series analysis; Task analysis; Sensor phenomena and characterization; Monitoring; Air pollution; Atmosphere monitoring; low-cost sensor calibration; multilevel sequence modeling; recurrent window-skip component; time series; FIELD CALIBRATION; AVAILABLE SENSORS; QUALITY; POLLUTION; NETWORKS; CLUSTER; OZONE; PART;
D O I
10.1109/TIM.2020.2978596
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Air pollution is growing ever more serious as a result of rising consumption of energy and other natural resources. Generally, governmental static monitoring stations provide accurate air pollution data, but they are sparsely distributed in the space. In contrast, microstations as a kind of low-cost air monitoring equipment can be distributed densely though their accuracy is relatively low. This article proposes a deep calibration method (DeepCM) for low-cost air monitoring sensors equipped in the microstations, which consists of an encoder and a decoder. In the encoding stage, multilevel time-series features are extracted, including local, global, and periodic time-series features. These features can not only capture local, global, and periodic trend information, but also benefit to alleviating cross-interference and noise effect. In the decoding stage, a final feature extracted by the encoder along with initial features of the moment to be calibrated are fed into the decoder to obtain a calibrated result. The proposed method is evaluated on two real-world datasets. The experimental results demonstrate that our method yields the best performance by comparison with eight baseline methods.
引用
收藏
页码:7167 / 7179
页数:13
相关论文
共 45 条
  • [21] HazeEst: Machine Learning Based Metropolitan Air Pollution Estimation From Fixed and Mobile Sensors
    Hu, Ke
    Rahman, Ashfaqur
    Bhrugubanda, Hari
    Sivaraman, Vijay
    [J]. IEEE SENSORS JOURNAL, 2017, 17 (11) : 3517 - 3525
  • [22] dpMood: Exploiting Local and Periodic Typing Dynamics for Personalized Mood Prediction
    Huang, He
    Cao, Bokai
    Yu, Philip S.
    Wang, Chang-Dong
    Leow, Alex D.
    [J]. 2018 IEEE INTERNATIONAL CONFERENCE ON DATA MINING (ICDM), 2018, : 157 - 166
  • [23] King DB, 2015, ACS SYM SER, V1214, P1
  • [24] Node-to-node field calibration of wireless distributed air pollution sensor network
    Kizel, Fadi
    Etzion, Yael
    Shafran-Nathan, Rakefet
    Levy, Ilan
    Fishbain, Barak
    Bartonova, Alena
    Broday, David M.
    [J]. ENVIRONMENTAL POLLUTION, 2018, 233 : 900 - 909
  • [25] Korotcenkov G., 2013, HDB GAS SENSOR MAT P, V2
  • [26] Modeling Long- and Short-Term Temporal Patterns with Deep Neural Networks
    Lai, Guokun
    Chang, Wei-Cheng
    Yang, Yiming
    Liu, Hanxiao
    [J]. ACM/SIGIR PROCEEDINGS 2018, 2018, : 95 - 104
  • [27] TATC Predicting Alzheimer's Disease with Actigraphy Data
    Li, Jia
    Rong, Yu
    Meng, Helen
    Lu, Zhihui
    Kwok, Timothy
    Cheng, Hong
    [J]. KDD'18: PROCEEDINGS OF THE 24TH ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY & DATA MINING, 2018, : 509 - 518
  • [28] Evaluation and calibration of Aeroqual series 500 portable gas sensors for accurate measurement of ambient ozone and nitrogen dioxide
    Lin, C.
    Gillespie, J.
    Schuder, M. D.
    Duberstein, W.
    Beverland, I. J.
    Heal, M. R.
    [J]. ATMOSPHERIC ENVIRONMENT, 2015, 100 : 111 - 116
  • [29] Maag B., 2019, P 16 IEEE INT C UB I, P1
  • [30] A Survey on Sensor Calibration in Air Pollution Monitoring Deployments
    Maag, Balz
    Zhou, Zimu
    Thiele, Lothar
    [J]. IEEE INTERNET OF THINGS JOURNAL, 2018, 5 (06): : 4857 - 4870