Big-data empowered traffic signal control could reduce urban carbon emission
Shanghai Jiao Tong University · Zhejiang Police College · +2 more institutions
Abstract
Urban congestion is a pressing challenge, driving up emissions and compromising transport efficiency. Advances in big-data collection and processing now enable adaptive traffic signals, offering a promising strategy for congestion mitigation. In our study of China’s 100 most congested cities, big-data empowered adaptive traffic signals reduced peak-hour trip times by 11% and off-peak by 8%, yielding an estimated annual CO₂ reduction of 31.73 million tonnes. Despite an annual implementation cost of US$1.48 billion, societal benefits—including CO₂ reduction, time savings, and fuel efficiency—amount to US$31.82 billion. Widespread adoption will require enhanced data collection and processing systems, underscoring…
Citation impact
- FWCI
- 76.29
- Percentile
- 100%
- References
- 41
Authors
9Topics & keywords
- Traffic congestion
- Big data
- Business
- China
- Early adopter
- Environmental economics
- Computer science
- Transport engineering