
管理科学与工程系学术讲座
Lecture: A Deep Learning Approach to Jointly Exploit Spatial and Temporal Patterns for Accurate Air Quality Forecasting
Speaker: Yao-Yi Chiang, Associate Professor , University of Southern California
Time: 10:00 a.m., 17th, Dec. , 2018
Venue: Room208, Tongji Building A
Abstract:
Predicting and forecasting air quality at a fine spatiotemporal scale is not only essential for studying the impact of air pollutant on health conditions but also critical for making informed decisions. For example, accurately forecasting the air quality at a fine spatial resolution in a city can help school officials make their advanced prevention plan based on their locations. (School on the east side of the town might need to cancel the afternoon physical education classes due to the poor air quality but not other schools.) Existing work on air quality modeling typically relies on area-specific, expert-selected data features and fail to model the complex spatial and temporal relationships between the air quality data generated from a sensor network. In this talk, I will present our latest approach for forecasting the short-term (next 24 hours) PM 2.5 concentrations using a deep learning model. The model learns the spatial relationships between air quality sensors by first mining publicly available geographic data to determine how the built environment affects air quality and then performing a diffusion convolutional process on the sensor network. Next, the model learns the temporal dependencies of the air quality readings by leveraging the sequence-to-sequence encoder-decoder architecture. We have evaluated our model on two real-world air quality datasets (Beijing and Los Angeles) and showed consistent improvement over the state-of-the-art deep learning approaches.
Bio:
Yao–Yi Chiang, Ph.D.
Spatial Sciences Institute
Dana and David Dornsife College of Letters, Arts and Sciences
University of Southern California
3616 Trousdale Parkway, AHF B55C
Los Angeles, CA 90089-0374
Phone: (213) 740-5910
E-mail: yaoyic@usc.edu
Personal Website: https://yaoyichi.github.io
Spatial Computing Lab Website: https://spatial–computing.github.io/
Current Appointments
University of Southern California
2017 – Associate Professor (Research) of Spatial Sciences, Spatial Sciences Institute
2017 – Associate Director, Integrated Media System Center
2013 – Director, Spatial Computing Lab, Spatial Sciences Institute
2013 – Visiting Computer Scientist, Information Sciences Institute
GeoInformatica (An International Journal on Advances of Computer Science for Geographic Information
Systems, Springer)
2017 – Action Editor
Education
2007 – 2010 Ph.D., Computer Science, University of Southern California, USA
Dissertation Title: Harvesting Geographic Features from Heterogeneous Raster
Maps
2003 – 2004 M.S., Computer Science, University of Southern California, USA
1996 – 2000 B.B.A. in Information Management, National Taiwan University, Taiwan
Research Focus
My research focus lies at the intersection of computer science and spatial sciences. I build artificial intelligence algorithms and applications (in particular, with technologies in machine learning and data mining) for discovering, collecting, fusing, and analyzing spatial data from heterogeneous sources, ranging from streaming data and time series data (e.g., traffic and air monitoring sensors) to images
(e.g., scanned maps and satellite imagery).