Evaluating Urban
Carbon Neutrality Pathways and Co-benefits
through an Integrated Downscaling Framework: A Case Study of the Beijing–Tianjin–Hebei
Region, China
To address the dual challenges of climate change and
air pollution,
an urban-scale decision-making framework is required in China to quantify
energy–environment–health co-benefits, thereby addressing
the limitations of existing macro-level research. This study proposes
a novel analytical framework integrating scenario prediction, dynamic
downscaling, pathway optimization, and benefit evaluation. The framework
combines the provincial-level Global Change Analysis Model (GCAM-China)
with a municipal-level dynamic downscaling model, a high-resolution
emission inventory (Gridemis), the Scenario Model Intercomparison
Project (ScenarioMIP), and an air quality and health assessment model.
This approach effectively translates national climate goals into heterogeneous,
sector-specific, municipal-scale emission pathways. It quantifies
energy structure transitions, pollutant mitigation, and health co-benefits
under various policy mixes while also considering future climate-related
risks. Applied to the Beijing–Tianjin–Hebei region,
the results show that synergistic efforts for carbon neutrality and
stringent air quality policies will drive the regional energy system
from coal dominance to a diversified, cleaner structure. By 2060,
this optimized pathway could reduce major air pollutant emissions
by 30–88%, promote a more equitable distribution of environmental
and health benefits, and significantly lower premature mortality risks.
This study provides a practical tool for energy and environmental
policy, offering broad applicability for other regions.
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Hou, Xiaosong; Wang, Xiaoqi; Cheng, Shuiyuan; Wang, Chuanda; Wang, Ning (1753). Evaluating Urban
Carbon Neutrality Pathways and Co-benefits
through an Integrated Downscaling Framework: A Case Study of the Beijing–Tianjin–Hebei
Region, China. ACS Publications. Collection. https://doi.org/10.1021/acs.est.5c12973
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