about
Atmospheric mercury footprints of nations.Forecast Modelling via Variations in Binary Image-Encoded Information Exploited by Deep Learning Neural Networks.Income-Based Greenhouse Gas Emissions of Nations.Lifting China's water spell.Life cycle assessment of biodiesel production in China.Comparing urban solid waste recycling from the viewpoint of urban metabolism based on physical input-output model: A case of Suzhou in China.Socioeconomic drivers of mercury emissions in China from 1992 to 2007.Decoupling analysis and socioeconomic drivers of environmental pressure in China.Comparisons of four categories of waste recycling in China's paper industry based on physical input-output life-cycle assessment model.Waste oil derived biofuels in China bring brightness for global GHG mitigation.Reutilisation-extended material flows and circular economy in China.Virtual atmospheric mercury emission network in China.Virtual Water Scarcity Risk to the Global Trade System.CO2 Emissions Embodied in Interprovincial Electricity Transmissions in China.Correction to CO2 Emissions Embodied in Interprovincial Electricity Transmissions in China.Temporal Trend and Spatial Distribution of Speciated Atmospheric Mercury Emissions in China During 1978-2014.Mercury Flows in China and Global Drivers.Trade-Induced Atmospheric Mercury Deposition over China and Implications for Demand-Side Controls.Unintended environmental consequences and co-benefits of economic restructuring.Betweenness-Based Method to Identify Critical Transmission Sectors for Supply Chain Environmental Pressure Mitigation.Socioeconomic Drivers of Greenhouse Gas Emissions in the United States.Virtual scarce water embodied in inter-provincial electricity transmission in ChinaTargeted opportunities to address the climate–trade dilemma in ChinaGlobal Drivers of Russian Timber HarvestFeatures, trajectories and driving forces for energy-related GHG emissions from Chinese mega cites: The case of Beijing, Tianjin, Shanghai and ChongqingAtmospheric mercury outflow from China and interprovincial tradeChina high resolution emission database (CHRED) with point emission sources, gridded emission data, and supplementary socioeconomic dataEmerging challenges and opportunities for the food–energy–water nexus in urban systemsBig Data and Industrial EcologyFour system boundaries for carbon accountsCarbon dioxide emission drivers for a typical metropolis using input–output structural decomposition analysisTrans-provincial health impacts of atmospheric mercury emissions in ChinaSaving less in China facilitates global CO2 mitigationQuantifying the Urban Food-Energy-Water Nexus: The Case of the Detroit Metropolitan AreaDeterminants of Greenhouse Gas Emissions from Interconnected Grids in ChinaMapping global carbon footprint in China
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Sai Liang
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P214
P106
P1153
36453970600
P214
P31
P496
0000-0002-6306-5800
P7859
viaf-241938870