Estimating the Fine-Grained PM2.5 for Airbox Sensor Fault Detection in Taiwan

被引:0
作者
Vivancos, Hector Ordonez [1 ]
Li, Guanyao [1 ]
Peng, Wen-Chih [1 ]
机构
[1] Natl Chiao Tung Univ, Dept Comp Sci, Hsinchu, Taiwan
来源
2017 CONFERENCE ON TECHNOLOGIES AND APPLICATIONS OF ARTIFICIAL INTELLIGENCE (TAAI) | 2017年
关键词
PM10; PREDICTION; MODEL; TIME;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Recently, PM2.5 becomes one critical threat for the health of human. To monitor the PM2.5, the Airbox project that consists of more than 2000 PM2.5 sensors is executing in Taiwan. Thanks to the Airbox sensors, people can know the fine-grained air quality. However. Airbox sensors can fail and it is important to detect which sensor is failed to prevent the noise in the data. In this work, we focus on fault detection and value estimation for PM2.5 monitoring. To achieve our goal, we utilize the data from Environmental Protection Administration(EPA) for estimation. We firstly propose two estimation methods which consider the distance and similarity between the Airbox sensors and EPA monitoring stations for PM2.5 estimation. Then based on the estimation result, we detect which sensors is failed. We collect the data from Airhox Edimax web page and Taiwan's Environmental Protection Administration for our experiment. The experiment results reveal the good performance of our proposed methods.
引用
收藏
页码:54 / 57
页数:4
相关论文
共 13 条
[1]   A National Prediction Model for PM2.5 Component Exposures and Measurement Error-Corrected Health Effect Inference [J].
Bergen, Silas ;
Sheppard, Lianne ;
Sampson, Paul D. ;
Kim, Sun-Young ;
Richards, Mark ;
Vedal, Sverre ;
Kaufman, Joel D. ;
Szpiro, Adam A. .
ENVIRONMENTAL HEALTH PERSPECTIVES, 2013, 121 (09) :1017-1025
[2]   An enhanced PM2.5 air quality forecast model based on nonlinear regression and back-trajectory concentrations [J].
Cobourn, W. Geoffrey .
ATMOSPHERIC ENVIRONMENT, 2010, 44 (25) :3015-3023
[3]   PM2.5 concentration prediction using hidden semi-Markov model-based times series data mining [J].
Dong, Ming ;
Yang, Dong ;
Kuang, Yan ;
He, David ;
Erdal, Serap ;
Kenski, Donna .
EXPERT SYSTEMS WITH APPLICATIONS, 2009, 36 (05) :9046-9055
[4]   Complex time series analysis of PM10 and PM2.5 for a coastal site using artificial neural network modelling and k-means clustering [J].
Elangasinghe, M. A. ;
Singhal, N. ;
Dirks, K. N. ;
Salmond, J. A. ;
Samarasinghe, S. .
ATMOSPHERIC ENVIRONMENT, 2014, 94 :106-116
[5]   Artificial neural networks forecasting of PM2.5 pollution using air mass trajectory based geographic model and wavelet transformation [J].
Feng, Xiao ;
Li, Qi ;
Zhu, Yajie ;
Hou, Junxiong ;
Jin, Lingyan ;
Wang, Jingjie .
ATMOSPHERIC ENVIRONMENT, 2015, 107 :118-128
[6]   An empirical approach for the prediction of daily mean PM10 concentrations [J].
Fuller, GW ;
Carslaw, DC ;
Lodge, HW .
ATMOSPHERIC ENVIRONMENT, 2002, 36 (09) :1431-1441
[7]  
Kruskall JB., 1983, Time Warps, String Edits and Macromolecules
[8]   Artificial intelligence based approach to forecast PM2.5 during haze episodes: A case study of Delhi, India [J].
Mishra, Dhirendra ;
Goyal, P. ;
Upadhyay, Abhishek .
ATMOSPHERIC ENVIRONMENT, 2015, 102 :239-248
[9]   Forecasting of the daily meteorological pollution using wavelets and support vector machine [J].
Osowski, Stanislaw ;
Garanty, Konrad .
ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2007, 20 (06) :745-755
[10]   Spatial-temporal analysis and projection of extreme particulate matter (PM10 and PM2.5) levels using association rules: A case study of the Jing-Jin-Ji region, China [J].
Qin, Shanshan ;
Liu, Feng ;
Wang, Chen ;
Song, Yiliao ;
Qu, Jiansheng .
ATMOSPHERIC ENVIRONMENT, 2015, 120 :339-350