Urban Air Computing: For Air Quality Detection
Keywords:
Urban Air Computing, Machine Learning, Interpolation, Prediction, Feature AnalysisAbstract
Air pollution is one of the biggest challenges that every metro-political areas is facing today. There are several tools and techniques evolved to predict pollution level which in turn helps in controlling and mitigating pollution. The three areas for computing pollution level are feature analysis, interpolation and prediction of fine grained air quality. These areas are providing extremely useful information so that one can take steps to mitigate pollution level, thus it also generates big societal impacts. Currently, there are individual models to address these issues separately. This paper proposes proposes single efficient framework by combining interpolation, prediction and feature analysis for air quality detection. This framework evaluates the different machine learning approaches to predict the air pollution components based on real data sets obtained from Bangalore. The main idea of the Urban Air Computing(UAC) is to gather the data of air quality and showing the feature analysis of air quality, interpolation and prediction.
Downloads
References
Avijoychakma, Ben vizena, Tingting Cao, Jerry Ling, and Jing Zhang. “Image based air quality analysis using deep convolutional neural network”. IEEE International Conference on Image Processing (ICIP).
Ruijun Yang, Feng Yan, Nan Zhao “Urban Air Quality Based on Bayesian Network“. IEEE 9th International Conference on Communication Software and Networks (ICCSN).
Zhongang Qi, Tianchun Wang, Guojie Song, Weisong Hu, Xi Li and Zhongfei (Mark) Zhang “Deep Air Learning: Interpolation, Prediction, and Feature Analysis of Fine grained Air Quality”IEEE Transactions on Knowledge and Data Engineering Volume: 30 , Issue: 12 , Dec. 1 2018.
Meng Wei, Zeng Bo, Liu Si-feng, XieNai-ming“A grey incidence evaluation on air quality” Proceedings of 2013 IEEE International Conference on Grey systems and Intelligent Services (GSIS)
VarshaHable-Khandekar, Pravin Srinath “Machine Learning Techniques for Air Quality Forecasting and Study on Real-Time Air Quality Monitoring” 2017 International Conference on Computing, Communication, Control and Automation (ICCUBEA).
NadjetDjebbri; MouniraRouainia “Artificial neural networks based air pollution monitoring in industrial sites” 2017 International Conference on Engineering and Technology (ICET).
C.Rosenberg, M.Hebert and H.Schneiderman, “Semi supervised self-training of object detection models” Seventh IEEE Workshops on Applications of Computer Vision (WACV/MOTION'05) - Volume 1.
R. Ghani “Combining labeled and unlabeled data for text classification with a large number of categories” Proceedings IEEE International Conference on Data Mining.
Lianli Gao, Jingkuan Song, FeipingNie, Yan Yan, NicuSebe, Heng Tao Shen “Optimal graph learning with partial tags and multiple features for image and video annotation” IEEE Conference on Computer Vision and Pattern Recognition (CVPR).
Richard Socher, Jeffrey Pennington, Eric H. Huang, Andrew Y. Ng, Christopher D “Semi-Supervised Recursive Auto encoders for Predicting Sentiment Distributions” Proceedings of the 2011 Conference on Empirical Methods in Natural Language Processing.
Yvan Saeys IñakiInza Pedro Larrañaga “A review of feature selection techniques in bioinformatics” Bioinformatics, Volume 23, Issue 19, 1 October 2007, Pages 2507–2517.
HaoXu ; David J. Eis ; Peter J. Ramadge “The generalized lasso is reducible to a subspace constrained lasso” IEEE International Conference on Acoustics, Speech and Signal Processing.
B. Krishnapuram, L. Carin, M. Figueiredo, and A. Hartemink, “Sparse multinomial logistic regression: fast algorithms and generalization bounds” IEEE Transactions on Pattern Analysis and Machine Intelligence. Volume: 27 , Issue: 6.
Tzu-Hsuan Yang ; Tzu-Hsuan Tseng ; Chia-Ping Chen “Recurrent neural network-based language models with variation in net topology, language, and granularity” 2016 International Conference on Asian Language Processing (IALP).
Mingxia Liu , Daoqiang Zhang “Pair wise Constraint Guided Sparse Learning for Feature Selection” IEEE Transactions on Cybernetics ( Volume: 46 , Issue: 1 , Jan. 2016 ).
Xiabing Zhou, Wenhao Huang, Ni Zhang, Weisong Hu, Sizhen Du, Guojie Song, KunqingXie “Probabilistic dynamic causal model for temporal data” 2015 International Joint Conference on Neural Networks (IJCNN).
SudjitKaruchit ; PongpatSukkasem “Application of AERMOD Model with Clean Technology Principles for Industrial Air Pollution Reduction” 2018 Third International Conference on Engineering Science and Innovative Technology (ESIT).
Hua Yang, Qingjun Liu, Ke Pu, Yanju Liu “Purifying effects on high concentration of benzene, toluene and xylene from air cleaners under ventilation” International Conference on Remote Sensing, Environment and Transportation Engineering.
YaliLv ; Shizhong Liao “Learning Temporal Qualitative Probabilistic Networks from Data” Second International Conference on Intelligent Networks and Intelligent Systems.
Guiliang Liu “Seemingly unrelated regression modeling of urban air quality by direct Monte Carlo algorithm” International Conference on Wavelet Analysis and Pattern Recognition (ICWAPR).