517 results on '"Deng, Zhu"'
Search Results
2. lncSNHG16 promotes hepatocellular carcinoma development by inhibiting autophagy
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Deng, Zhu-Jian, Liu, Hao-Tian, Yuan, Bao-Hong, Pan, Li-Xin, Teng, Yu-Xian, Su, Jia-Yong, Luo, Cheng-Piao, Guo, Ping-Ping, and Zhong, Jian-Hong
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- 2024
- Full Text
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3. On the Formation of Double Neutron Stars in the Milky Way: Influence of Key Parameters
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Deng, Zhu-Ling, Li, Xiang-Dong, Shao, Yong, and Xu, Kun
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Astrophysics - High Energy Astrophysical Phenomena ,Astrophysics - Astrophysics of Galaxies ,Astrophysics - Solar and Stellar Astrophysics - Abstract
The detection of gravitational wave events has stimulated theoretical modeling of the formation and evolution of double compact objects (DCOs). However, even for the most studied isolated binary evolution channel, there exist large uncertainties in the input parameters and treatments of the binary evolution process. So far, double neutron stars (DNSs) are the only DCOs for which direct observations are available through traditional electromagnetic astronomy. In this work, we adopt a population synthesis method to investigate the formation and evolution of Galactic DNSs. We construct 324 models for the formation of Galactic DNSs, taking into account various possible combinations of critical input parameters and processes such as mass transfer efficiency, supernova type, common envelope efficiency, neutron star kick velocity, and pulsar selection effect. We employ Bayesian analysis to evaluate the adopted models by comparing with observations. We also compare the expected DNS merger rate in the Galaxy with that inferred from the known Galactic population of Pulsar-NS systems. Based on these analyses we derive favorable range of the aforementioned key parameters., Comment: 29 pages, 9 figures, 2 tables, accepted by ApJ
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- 2024
4. ESGReveal: An LLM-based approach for extracting structured data from ESG reports
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Zou, Yi, Shi, Mengying, Chen, Zhongjie, Deng, Zhu, Lei, ZongXiong, Zeng, Zihan, Yang, Shiming, Tong, HongXiang, Xiao, Lei, and Zhou, Wenwen
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Computer Science - Computation and Language ,Computer Science - Information Retrieval - Abstract
ESGReveal is an innovative method proposed for efficiently extracting and analyzing Environmental, Social, and Governance (ESG) data from corporate reports, catering to the critical need for reliable ESG information retrieval. This approach utilizes Large Language Models (LLM) enhanced with Retrieval Augmented Generation (RAG) techniques. The ESGReveal system includes an ESG metadata module for targeted queries, a preprocessing module for assembling databases, and an LLM agent for data extraction. Its efficacy was appraised using ESG reports from 166 companies across various sectors listed on the Hong Kong Stock Exchange in 2022, ensuring comprehensive industry and market capitalization representation. Utilizing ESGReveal unearthed significant insights into ESG reporting with GPT-4, demonstrating an accuracy of 76.9% in data extraction and 83.7% in disclosure analysis, which is an improvement over baseline models. This highlights the framework's capacity to refine ESG data analysis precision. Moreover, it revealed a demand for reinforced ESG disclosures, with environmental and social data disclosures standing at 69.5% and 57.2%, respectively, suggesting a pursuit for more corporate transparency. While current iterations of ESGReveal do not process pictorial information, a functionality intended for future enhancement, the study calls for continued research to further develop and compare the analytical capabilities of various LLMs. In summary, ESGReveal is a stride forward in ESG data processing, offering stakeholders a sophisticated tool to better evaluate and advance corporate sustainability efforts. Its evolution is promising in promoting transparency in corporate reporting and aligning with broader sustainable development aims.
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- 2023
5. AutoPCF: Efficient Product Carbon Footprint Accounting with Large Language Models
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Deng, Zhu, Liu, Jinjie, Luo, Biao, Yuan, Can, Yang, Qingrun, Xiao, Lei, Zhou, Wenwen, and Liu, Zhu
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Computer Science - Artificial Intelligence ,Computer Science - Computers and Society - Abstract
The product carbon footprint (PCF) is crucial for decarbonizing the supply chain, as it measures the direct and indirect greenhouse gas emissions caused by all activities during the product's life cycle. However, PCF accounting often requires expert knowledge and significant time to construct life cycle models. In this study, we test and compare the emergent ability of five large language models (LLMs) in modeling the 'cradle-to-gate' life cycles of products and generating the inventory data of inputs and outputs, revealing their limitations as a generalized PCF knowledge database. By utilizing LLMs, we propose an automatic AI-driven PCF accounting framework, called AutoPCF, which also applies deep learning algorithms to automatically match calculation parameters, and ultimately calculate the PCF. The results of estimating the carbon footprint for three case products using the AutoPCF framework demonstrate its potential in achieving automatic modeling and estimation of PCF with a large reduction in modeling time from days to minutes.
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- 2023
6. Prevalence of metabolic syndrome among patients with hepatocellular carcinoma of different etiologies: a retrospective study
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Yang, Da-Long, Liu, Shao-Ping, Wang, Hong-Liang, Li, Jian-Rong, Su, Jia-Yong, Li, Min-Jun, Teng, Yu-Xian, Deng, Zhu-Jian, Li, Zhong-Hai, Huang, Jian-Li, Guo, Ping-Ping, Ma, Liang, Li, Zhen-Zhen, and Zhong, Jian-Hong
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- 2024
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- View/download PDF
7. The effect of dexmedetomidine on the postoperative recovery of patients with severe traumatic brain injury undergoing craniotomy treatment: a retrospective study
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Deng, Zhu, Gu, Yong, Luo, Le, Deng, Lin, Li, Yingwei, and Huang, Wanyong
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- 2024
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8. Assessment of methane emissions from oil, gas and coal sectors across inventories and atmospheric inversions
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Tibrewal, Kushal, Ciais, Philippe, Saunois, Marielle, Martinez, Adrien, Lin, Xin, Thanwerdas, Joel, Deng, Zhu, Chevallier, Frederic, Giron, Clément, Albergel, Clément, Tanaka, Katsumasa, Patra, Prabir, Tsuruta, Aki, Zheng, Bo, Belikov, Dmitry, Niwa, Yosuke, Janardanan, Rajesh, Maksyutov, Shamil, Segers, Arjo, Tzompa-Sosa, Zitely A., Bousquet, Philppe, and Sciare, Jean
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- 2024
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9. Carbon Monitor Europe near-real-time daily CO2 emissions for 27 EU countries and the United Kingdom.
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Ke, Piyu, Deng, Zhu, Zhu, Biqing, Zheng, Bo, Wang, Yilong, Boucher, Olivier, Arous, Simon Ben, Zhou, Chuanlong, Andrew, Robbie M, Dou, Xinyu, Sun, Taochun, Song, Xuanren, Li, Zhao, Yan, Feifan, Cui, Duo, Hu, Yifan, Huo, Da, Chang, Jean-Pierre, Engelen, Richard, Davis, Steven J, Ciais, Philippe, and Liu, Zhu
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Climate Action - Abstract
With the urgent need to implement the EU countries pledges and to monitor the effectiveness of Green Deal plan, Monitoring Reporting and Verification tools are needed to track how emissions are changing for all the sectors. Current official inventories only provide annual estimates of national CO2 emissions with a lag of 1+ year which do not capture the variations of emissions due to recent shocks including COVID lockdowns and economic rebounds, war in Ukraine. Here we present a near-real-time country-level dataset of daily fossil fuel and cement emissions from January 2019 through December 2021 for 27 EU countries and UK, which called Carbon Monitor Europe. The data are calculated separately for six sectors: power, industry, ground transportation, domestic aviation, international aviation and residential. Daily CO2 emissions are estimated from a large set of activity data compiled from different sources. The goal of this dataset is to improve the timeliness and temporal resolution of emissions for European countries, to inform the public and decision makers about current emissions changes in Europe.
- Published
- 2023
10. Multi-objective Evolutionary Algorithm Based on Competitive Swarm Optimizer and Constraint Handling Techniques.
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Deng Zhu and Jun Li
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- 2024
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11. CarbonMonitor-Power near-real-time monitoring of global power generation on hourly to daily scales.
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Zhu, Biqing, Deng, Zhu, Song, Xuanren, Zhao, Wenli, Huo, Da, Sun, Taochun, Ke, Piyu, Cui, Duo, Lu, Chenxi, Zhong, Haiwang, Hong, Chaopeng, Qiu, Jian, Davis, Steven J, Gentine, Pierre, Ciais, Philippe, and Liu, Zhu
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Affordable and Clean Energy ,Climate Action - Abstract
We constructed a frequently updated, near-real-time global power generation dataset: CarbonMonitor-Power since January, 2016 at national levels with near-global coverage and hourly-to-daily time resolution. The data presented here are collected from 37 countries across all continents for eight source groups, including three types of fossil sources (coal, gas, and oil), nuclear energy and four groups of renewable energy sources (solar energy, wind energy, hydro energy and other renewables including biomass, geothermal, etc.). The global near-real-time power dataset shows the dynamics of the global power system, including its hourly, daily, weekly and seasonal patterns as influenced by daily periodical activities, weekends, seasonal cycles, regular and irregular events (i.e., holidays) and extreme events (i.e., the COVID-19 pandemic). The CarbonMonitor-Power dataset reveals that the COVID-19 pandemic caused strong disruptions in some countries (i.e., China and India), leading to a temporary or long-lasting shift to low carbon intensity, while it had only little impact in some other countries (i.e., Australia). This dataset offers a large range of opportunities for power-related scientific research and policy-making.
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- 2023
12. Carbon Monitor Europe, near-real-time daily CO$_2$ emissions for 27 EU countries and the United Kingdom
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Ke, Piyu, Deng, Zhu, Zhu, Biqing, Zheng, Bo, Wang, Yilong, Boucher, Olivier, Arous, Simon Ben, Zhou, Chuanlong, Dou, Xinyu, Sun, Taochun, Li, Zhao, Yan, Feifan, Cui, Duo, Hu, Yifan, Huo, Da, Pierre, Jean, Engelen, Richard, Davis, Steven J., Ciais, Philippe, and Liu, Zhu
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Physics - Geophysics ,Economics - General Economics ,Physics - Atmospheric and Oceanic Physics - Abstract
With the urgent need to implement the EU countries pledges and to monitor the effectiveness of Green Deal plan, Monitoring Reporting and Verification tools are needed to track how emissions are changing for all the sectors. Current official inventories only provide annual estimates of national CO$_2$ emissions with a lag of 1+ year which do not capture the variations of emissions due to recent shocks including COVID lockdowns and economic rebounds, war in Ukraine. Here we present a near-real-time country-level dataset of daily fossil fuel and cement emissions from January 2019 through December 2021 for 27 EU countries and UK, which called Carbon Monitor Europe. The data are calculated separately for six sectors: power, industry, ground transportation, domestic aviation, international aviation and residential. Daily CO$_2$ emissions are estimated from a large set of activity data compiled from different sources. The goal of this dataset is to improve the timeliness and temporal resolution of emissions for European countries, to inform the public and decision makers about current emissions changes in Europe.
- Published
- 2022
13. Near-real-time global gridded daily CO$_2$ emissions 2021
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Dou, Xinyu, Hong, Jinpyo, Ciais, Philippe, Chevallier, Frédéric, Yan, Feifan, Yu, Ying, Hu, Yifan, Huo, Da, Sun, Yun, Wang, Yilong, Davis, Steven J., Crippa, Monica, Janssens-Maenhout, Greet, Guizzardi, Diego, Solazzo, Efisio, Lin, Xiaojuan, Song, Xuanren, Zhu, Biqing, Cui, Duo, Ke, Piyu, Wang, Hengqi, Zhou, Wenwen, Huang, Xia, Deng, Zhu, and Liu, Zhu
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Physics - Atmospheric and Oceanic Physics - Abstract
We present a near-real-time global gridded daily CO$_2$ emissions dataset (GRACED) throughout 2021. GRACED provides gridded CO$_2$ emissions at a 0.1degree*0.1degree spatial resolution and 1-day temporal resolution from cement production and fossil fuel combustion over seven sectors, including industry, power, residential consumption, ground transportation, international aviation, domestic aviation, and international shipping. GRACED is prepared from a near-real-time daily national CO$_2$ emissions estimates (Carbon Monitor), multi-source spatial activity data emissions and satellite NO$_2$ data for time variations of those spatial activity data. GRACED provides the most timely overview of emissions distribution changes, which enables more accurate and timely identification of when and where fossil CO$_2$ emissions have rebounded and decreased. Uncertainty analysis of GRACED gives a grid-level two-sigma uncertainty of value of 19.9% in 2021, indicating the reliability of GRACED was not sacrificed for the sake of higher spatiotemporal resolution that GRACED provides. Continuing to update GRACED in a timely manner could help policymakers monitor energy and climate policies' effectiveness and make adjustments quickly.
- Published
- 2022
- Full Text
- View/download PDF
14. Carbon Monitor-Power: near-real-time monitoring of global power generation on hourly to daily scales
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Zhu, Biqing, Song, Xuanren, Deng, Zhu, Zhao, Wenli, Huo, Da, Sun, Taochun, Ke, Piyu, Cui, Duo, Lu, Chenxi, Zhong, Haiwang, Hong, Chaopeng, Qiu, Jian, Davis, Steven J., Gentine, Pierre, Ciais, Philippe, and Liu, Zhu
- Subjects
Physics - Data Analysis, Statistics and Probability ,Economics - Econometrics - Abstract
We constructed a frequently updated, near-real-time global power generation dataset: Carbon Monitor-Power since January, 2016 at national levels with near-global coverage and hourly-to-daily time resolution. The data presented here are collected from 37 countries across all continents for eight source groups, including three types of fossil sources (coal, gas, and oil), nuclear energy and four groups of renewable energy sources (solar energy, wind energy, hydro energy and other renewables including biomass, geothermal, etc.). The global near-real-time power dataset shows the dynamics of the global power system, including its hourly, daily, weekly and seasonal patterns as influenced by daily periodical activities, weekends, seasonal cycles, regular and irregular events (i.e., holidays) and extreme events (i.e., the COVID-19 pandemic). The Carbon Monitor-Power dataset reveals that the COVID-19 pandemic caused strong disruptions in some countries (i.e., China and India), leading to a temporary or long-lasting shift to low carbon intensity, while it had only little impact in some other countries (i.e., Australia). This dataset offers a large range of opportunities for power-related scientific research and policy-making.
- Published
- 2022
15. Monitoring global carbon emissions in 2022
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Liu, Zhu, Deng, Zhu, Davis, Steve, and Ciais, Philippe
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Climate Action ,Climate-change impacts ,Climate-change mitigation - Abstract
Global CO2 emissions for 2022 increased by 1.5% relative to 2021 (+7.9% and +2.0% relative to 2020 and 2019, respectively), reaching 36.1 GtCO2. These 2022 emissions consumed 13%-36% of the remaining carbon budget to limit warming to 1.5 °C, suggesting permissible emissions could be depleted within 2-7 years (67% likelihood).
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- 2023
16. Near-real-time global gridded daily CO2 emissions 2021
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Dou, Xinyu, Hong, Jinpyo, Ciais, Philippe, Chevallier, Frédéric, Yan, Feifan, Yu, Ying, Hu, Yifan, Huo, Da, Sun, Yun, Wang, Yilong, Davis, Steven J, Crippa, Monica, Janssens-Maenhout, Greet, Guizzardi, Diego, Solazzo, Efisio, Lin, Xiaojuan, Song, Xuanren, Zhu, Biqing, Cui, Duo, Ke, Piyu, Wang, Hengqi, Zhou, Wenwen, Huang, Xia, Deng, Zhu, and Liu, Zhu
- Subjects
Earth Sciences ,Engineering ,Geoinformatics ,Climate Action - Abstract
We present a near-real-time global gridded daily CO2 emissions dataset (GRACED) throughout 2021. GRACED provides gridded CO2 emissions at a 0.1° × 0.1° spatial resolution and 1-day temporal resolution from cement production and fossil fuel combustion over seven sectors, including industry, power, residential consumption, ground transportation, international aviation, domestic aviation, and international shipping. GRACED is prepared from the near-real-time daily national CO2 emissions estimates (Carbon Monitor), multi-source spatial activity data emissions and satellite NO2 data for time variations of those spatial activity data. GRACED provides the most timely overview of emissions distribution changes, which enables more accurate and timely identification of when and where fossil CO2 emissions have rebounded and decreased. Uncertainty analysis of GRACED gives a grid-level two-sigma uncertainty of value of ±19.9% in 2021, indicating the reliability of GRACED was not sacrificed for the sake of higher spatiotemporal resolution that GRACED provides. Continuing to update GRACED in a timely manner could help policymakers monitor energy and climate policies' effectiveness and make adjustments quickly.
- Published
- 2023
17. Near-real-time estimates of daily CO2 emissions from 1500 cities worldwide
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Huo, Da, Huang, Xiaoting, Dou, Xinyu, Ciais, Philippe, Li, Yun, Deng, Zhu, Wang, Yilong, Cui, Duo, Benkhelifa, Fouzi, Sun, Taochun, Zhu, Biqing, Roest, Geoffrey, Gurney, Kevin R., Ke, Piyu, Guo, Rui, Lu, Chenxi, Lin, Xiaojuan, Lovell, Arminel, Appleby, Kyra, DeCola, Philip L., Davis, Steven J., and Liu, Zhu
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Physics - Physics and Society ,Physics - Atmospheric and Oceanic Physics - Abstract
Building on near-real-time and spatially explicit estimates of daily carbon dioxide (CO2) emissions, here we present and analyze a new city-level dataset of fossil fuel and cement emissions. Carbon Monitor Cities provides daily, city-level estimates of emissions from January 2019 through December 2021 for 1500 cities in 46 countries, and disaggregates five sectors: power generation, residential (buildings), industry, ground transportation, and aviation. The goal of this dataset is to improve the timeliness and temporal resolution of city-level emission inventories and includes estimates for both functional urban areas and city administrative areas that are consistent with global and regional totals. Comparisons with other datasets (i.e. CEADs, MEIC, Vulcan, and CDP) were performed, and we estimate the overall uncertainty to be 21.7%. Carbon Monitor Cities is a near-real-time, city-level emission dataset that includes cities around the world, including the first estimates for many cities in low-income countries. A more complete description of this dataset is published in Scientific Data (https://doi.org/10.1038/s41597-022-01657-z).
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- 2022
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18. Peak patterns and drivers of city-level daily CO2 emissions in China
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Huang, Yingjian, Ou, Jinpei, Deng, Zhu, Zhou, Wenwen, Liang, Yuchen, and Huang, Xiaolei
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- 2024
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19. Platycodin D: A promising anti tilapia lake virus natural compound from Platycodon grandiflorus
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Sheng, Jun-Jie, Wei, Xue-Feng, Deng, Zhu-Yang, Jiang, Hai-Feng, and Zhu, Bin
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- 2025
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20. Global increase in biomass carbon stock dominated by growth of northern young forests over past decade
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Yang, Hui, Ciais, Philippe, Frappart, Frédéric, Li, Xiaojun, Brandt, Martin, Fensholt, Rasmus, Fan, Lei, Saatchi, Sassan, Besnard, Simon, Deng, Zhu, Bowring, Simon, and Wigneron, Jean-Pierre
- Published
- 2023
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21. miR-17-5p slows progression of hepatocellular carcinoma by downregulating TGFβR2
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Liu, Hao-Tian, Luo, Cheng-Piao, Jiang, Meng-Jie, Deng, Zhu-Jian, Teng, Yu-Xian, Su, Jia-Yong, Pan, Li-Xin, Ma, Liang, Guo, Ping-Ping, and Zhong, Jian-Hong
- Published
- 2023
- Full Text
- View/download PDF
22. Global carbon emissions in 2023
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Liu, Zhu, Deng, Zhu, Davis, Steven J., and Ciais, Philippe
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- 2024
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23. Deep learning of pretreatment multiphase CT images for predicting response to lenvatinib and immune checkpoint inhibitors in unresectable hepatocellular carcinoma
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Liao, Nan-Qing, Deng, Zhu-Jian, Wei, Wei, Lu, Jia-Hui, Li, Min-Jun, Ma, Liang, Chen, Qing-Feng, and Zhong, Jian-Hong
- Published
- 2024
- Full Text
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24. Global fossil carbon emissions rebound near pre-COVID-19 levels
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Jackson, RB, Friedlingstein, P, Quere, C Le, Abernethy, S, Andrew, RM, Canadell, JG, Ciais, P, Davis, SJ, Deng, Zhu, Liu, Zhu, and Peters, GP
- Subjects
Physics - Atmospheric and Oceanic Physics - Abstract
Global fossil CO2 emissions in 2020 decreased 5.4%, from 36.7 Gt CO2 in 2019 to 34.8 Gt CO2 in 2020, an unprecedented decline of ~1.9 Gt CO2. We project that global fossil CO2 emissions in 2021 will rebound 4.9% (4.1% to 5.7%) compared to 2020 to 36.4 Gt CO2, returning nearly to 2019 emission levels of 36.7 Gt CO2. Emissions in China are expected to be 7% higher in 2021 than in 2019 (reaching 11.1 Gt CO2) and only slightly higher in India (a 3% increase in 2021 relative to 2019, and reaching 2.7 Gt CO2). In contrast, projected 2021 emissions in the United States (5.1 Gt CO2), European Union (2.8 Gt CO2), and rest of the world (14.8 Gt CO2, in aggregate) remain below 2019 levels. For fuels, CO2 emissions from coal in 2021 are expected to rebound above 2019 levels to 14.7 Gt CO2, primarily because of increased coal use in China, and will remain only slightly (0.8%) below their previous peak in 2014. Emissions from natural gas use should also rise above 2019 levels in 2021, continuing a steady trend of rising gas use that dates back at least sixty years. Only CO2 emissions from oil remain well below 2019 levels in 2021., Comment: 14 pages, 5 figures
- Published
- 2021
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25. Global Gridded Daily CO$_2$ Emissions
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Dou, Xinyu, Wang, Yilong, Ciais, Philippe, Chevallier, Frédéric, Davis, Steven J., Crippa, Monica, Janssens-Maenhout, Greet, Guizzardi, Diego, Solazzo, Efisio, Yan, Feifan, Huo, Da, Bo, Zheng, Deng, Zhu, Zhu, Biqing, Wang, Hengqi, Zhang, Qiang, Gentine, Pierre, and Liu, Zhu
- Subjects
Physics - Atmospheric and Oceanic Physics ,Economics - General Economics - Abstract
Precise and high-resolution carbon dioxide (CO$_2$) emission data is of great importance of achieving the carbon neutrality around the world. Here we present for the first time the near-real-time Global Gridded Daily CO$_2$ Emission Datasets (called GRACED) from fossil fuel and cement production with a global spatial-resolution of 0.1$^\circ$ by 0.1$^\circ$ and a temporal-resolution of 1-day. Gridded fossil emissions are computed for different sectors based on the daily national CO$_2$ emissions from near real time dataset (Carbon Monitor), the spatial patterns of point source emission dataset Global Carbon Grid (GID), Emission Database for Global Atmospheric Research (EDGAR) and spatiotemporal patters of satellite nitrogen dioxide (NO$_2$) retrievals. Our study on the global CO$_2$ emissions responds to the growing and urgent need for high-quality, fine-grained near-real-time CO2 emissions estimates to support global emissions monitoring across various spatial scales. We show the spatial patterns of emission changes for power, industry, residential consumption, ground transportation, domestic and international aviation, and international shipping sectors between 2019 and 2020. This help us to give insights on the relative contributions of various sectors and provides a fast and fine-grained overview of where and when fossil CO$_2$ emissions have decreased and rebounded in response to emergencies (e.g. COVID-19) and other disturbances of human activities than any previously published dataset. As the world recovers from the pandemic and decarbonizes its energy systems, regular updates of this dataset will allow policymakers to more closely monitor the effectiveness of climate and energy policies and quickly adapt.
- Published
- 2021
- Full Text
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26. Monitoring global carbon emissions in 2021
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Liu, Zhu, Deng, Zhu, Davis, Steven J, Giron, Clement, and Ciais, Philippe
- Subjects
Climate Action ,Climate-change mitigation ,Projection and prediction - Abstract
Following record-level declines in 2020, near-real-time data indicate that global CO2 emissions rebounded by 4.8% in 2021, reaching 34.9 GtCO2. These 2021 emissions consumed 8.7% of the remaining carbon budget for limiting anthropogenic warming to 1.5 °C, which if current trajectories continue, might be used up in 9.5 years at 67% likelihood.
- Published
- 2022
27. Carbon Monitor Cities near-real-time daily estimates of CO2 emissions from 1500 cities worldwide
- Author
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Huo, Da, Huang, Xiaoting, Dou, Xinyu, Ciais, Philippe, Li, Yun, Deng, Zhu, Wang, Yilong, Cui, Duo, Benkhelifa, Fouzi, Sun, Taochun, Zhu, Biqing, Roest, Geoffrey, Gurney, Kevin R, Ke, Piyu, Guo, Rui, Lu, Chenxi, Lin, Xiaojuan, Lovell, Arminel, Appleby, Kyra, DeCola, Philip L, Davis, Steven J, and Liu, Zhu
- Subjects
Built Environment and Design ,Urban and Regional Planning ,Sustainable Cities and Communities ,Climate Action - Abstract
Building on near-real-time and spatially explicit estimates of daily carbon dioxide (CO2) emissions, here we present and analyze a new city-level dataset of fossil fuel and cement emissions, Carbon Monitor Cities, which provides daily estimates of emissions from January 2019 through December 2021 for 1500 cities in 46 countries, and disaggregates five sectors: power generation, residential (buildings), industry, ground transportation, and aviation. The goal of this dataset is to improve the timeliness and temporal resolution of city-level emission inventories and includes estimates for both functional urban areas and city administrative areas that are consistent with global and regional totals. Comparisons with other datasets (i.e. CEADs, MEIC, Vulcan, and CDP-ICLEI Track) were performed, and we estimate the overall annual uncertainty range to be ±21.7%. Carbon Monitor Cities is a near-real-time, city-level emission dataset that includes cities around the world, including the first estimates for many cities in low-income countries.
- Published
- 2022
28. Near-real-time global gridded daily CO2 emissions
- Author
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Dou, Xinyu, Wang, Yilong, Ciais, Philippe, Chevallier, Frédéric, Davis, Steven J, Crippa, Monica, Janssens-Maenhout, Greet, Guizzardi, Diego, Solazzo, Efisio, Yan, Feifan, Huo, Da, Zheng, Bo, Zhu, Biqing, Cui, Duo, Ke, Piyu, Sun, Taochun, Wang, Hengqi, Zhang, Qiang, Gentine, Pierre, Deng, Zhu, and Liu, Zhu
- Subjects
Affordable and Clean Energy ,Climate Action ,2020 ,daily ,global change ,gridded CO2 emission ,near real time - Abstract
Precise and high-resolution carbon dioxide (CO2) emission data is of great importance in achieving carbon neutrality around the world. Here we present for the first time the near-real-time Global Gridded Daily CO2 Emissions Dataset (GRACED) from fossil fuel and cement production with a global spatial resolution of 0.1° by 0.1° and a temporal resolution of 1 day. Gridded fossil emissions are computed for different sectors based on the daily national CO2 emissions from near-real-time dataset (Carbon Monitor), the spatial patterns of point source emission dataset Global Energy Infrastructure Emissions Database (GID), Emission Database for Global Atmospheric Research (EDGAR), and spatiotemporal patters of satellite nitrogen dioxide (NO2) retrievals. Our study on the global CO2 emissions responds to the growing and urgent need for high-quality, fine-grained, near-real-time CO2 emissions estimates to support global emissions monitoring across various spatial scales. We show the spatial patterns of emission changes for power, industry, residential consumption, ground transportation, domestic and international aviation, and international shipping sectors from January 1, 2019, to December 31, 2020. This gives thorough insights into the relative contributions from each sector. Furthermore, it provides the most up-to-date and fine-grained overview of where and when fossil CO2 emissions have decreased and rebounded in response to emergencies (e.g., coronavirus disease 2019 [COVID-19]) and other disturbances of human activities of any previously published dataset. As the world recovers from the pandemic and decarbonizes its energy systems, regular updates of this dataset will enable policymakers to more closely monitor the effectiveness of climate and energy policies and quickly adapt.
- Published
- 2022
29. Impact of lockdowns and winter temperatures on natural gas consumption in Europe
- Author
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Ciais, Philippe, Bréon, François-Marie, Dellaert, Stijn, Wang, Yilong, Tanaka1, Katsumasa, Gurriaran, Léna, Françoise, Yann, Davis, Steven, Hong, Chaopeng, Penuelas, Josep, Janssens, Ivan, Obersteiner, Michael, Deng, Zhu, and Liu, Zhu
- Subjects
Physics - Atmospheric and Oceanic Physics - Abstract
As the COVID-19 virus spread over the world, governments restricted mobility to slow transmission. Public health measures had different intensities across European countries but all had significant impact on peoples daily lives and economic activities, causing a drop of CO2 emissions of about 10% for the whole year 2020. Here, we analyze changes in natural gas use in the industry and built environment sectors during the first half of year 2020 with daily gas flows data from pipeline and storage facilities in Europe. We find that reductions of industrial gas use reflect decreases in industrial production across most countries. Surprisingly, natural gas use in buildings also decreased despite most people being confined at home and cold spells in March 2020. Those reductions that we attribute to the impacts of COVID-19 remain of comparable magnitude to previous variations induced by cold or warm climate anomalies in the cold season. We conclude that climate variations played a larger role than COVID-19 induced stay-home orders in natural gas consumption across Europe.
- Published
- 2021
30. Unprecedented decarbonization of China's power system in the post-COVID era
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Zhu, Biqing, Guo, Rui, Deng, Zhu, Zhao, Wenli, Ke, Piyu, Dou, Xinyu, Davis, Steven J., Ciais, Philippe, Gentine, Pierre, and Liu, Zhu
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Physics - Physics and Society ,Economics - General Economics ,Physics - Atmospheric and Oceanic Physics - Abstract
In October of 2020, China announced that it aims to start reducing its carbon dioxide (CO2) emissions before 2030 and achieve carbon neutrality before 20601. The surprise announcement came in the midst of the COVID-19 pandemic which caused a transient drop in China's emissions in the first half of 2020. Here, we show an unprecedented de-carbonization of China's power system in late 2020: although China's power related carbon emissions were 0.5% higher in 2020 than 2019, the majority (92.9%) of the increased power demand was met by increases in low-carbon (renewables and nuclear) generation (increased by 9.3%), as compared to only 0.4% increase for fossil fuels. China's low-carbon generation in the country grew in the second half of 2020, supplying a record high of 36.7% (increased by 1.9% compared to 2019) of total electricity in 2020, when the fossil production dropped to a historical low of 63.3%. Combined, the carbon intensity of China's power sector decreased to an historical low of 519.9 tCO2/GWh in 2020. If the fast decarbonization and slowed down power demand growth from 2019 to 2020 were to continue, by 2030, over half (50.8%) of China's power demand could be provided by low carbon sources. Our results thus reveal that China made progress towards its carbon neutrality target during the pandemic, and suggest the potential for substantial further decarbonization in the next few years if the latest trends persist.
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- 2021
31. Global Daily CO$_2$ emissions for the year 2020
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Liu, Zhu, Deng, Zhu, Ciais, Philippe, Tan, Jianguang, Zhu, Biqing, Davis, Steven J., Andrew, Robbie, Boucher, Olivier, Arous, Simon Ben, Canadel, Pep, Dou, Xinyu, Friedlingstein, Pierre, Gentine, Pierre, Guo, Rui, Hong, Chaopeng, Jackson, Robert B., Kammen, Daniel M., Ke, Piyu, Quere, Corinne Le, Monica, Crippa, Janssens-Maenhout, Greet, Peters, Glen, Tanaka, Katsumasa, Wang, Yilong, Zheng, Bo, Zhong, Haiwang, Sun, Taochun, and Schellnhuber, Hans Joachim
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Physics - Atmospheric and Oceanic Physics ,Economics - General Economics - Abstract
The diurnal cycle CO$_2$ emissions from fossil fuel combustion and cement production reflect seasonality, weather conditions, working days, and more recently the impact of the COVID-19 pandemic. Here, for the first time we provide a daily CO$_2$ emission dataset for the whole year of 2020 calculated from inventory and near-real-time activity data (called Carbon Monitor project: https://carbonmonitor.org). It was previously suggested from preliminary estimates that did not cover the entire year of 2020 that the pandemics may have caused more than 8% annual decline of global CO$_2$ emissions. Here we show from detailed estimates of the full year data that the global reduction was only 5.4% (-1,901 MtCO$_2$, ). This decrease is 5 times larger than the annual emission drop at the peak of the 2008 Global Financial Crisis. However, global CO$_2$ emissions gradually recovered towards 2019 levels from late April with global partial re-opening. More importantly, global CO$_2$ emissions even increased slightly by +0.9% in December 2020 compared with 2019, indicating the trends of rebound of global emissions. Later waves of COVID-19 infections in late 2020 and corresponding lockdowns have caused further CO$_2$ emissions reductions particularly in western countries, but to a much smaller extent than the declines in the first wave. That even substantial world-wide lockdowns of activity led to a one-time decline in global CO$_2$ emissions of only 5.4% in one year highlights the significant challenges for climate change mitigation that we face in the post-COVID era. These declines are significant, but will be quickly overtaken with new emissions unless the COVID-19 crisis is utilized as a break-point with our fossil-fuel trajectory, notably through policies that make the COVID-19 recovery an opportunity to green national energy and development plans.
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- 2021
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32. De-carbonization of global energy use during the COVID-19 pandemic
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Liu, Zhu, Zhu, Biqing, Ciais, Philippe, Davis, Steven J., Lu, Chenxi, Zhong, Haiwang, Ke, Piyu, Cui, Yanan, Deng, Zhu, Cui, Duo, Sun, Taochun, Dou, Xinyu, Tan, Jianguang, Guo, Rui, Zheng, Bo, Tanaka, Katsumasa, Zhao, Wenli, and Gentine, Pierre
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Physics - Atmospheric and Oceanic Physics ,Economics - General Economics ,Statistics - Other Statistics - Abstract
The COVID-19 pandemic has disrupted human activities, leading to unprecedented decreases in both global energy demand and GHG emissions. Yet a little known that there is also a low carbon shift of the global energy system in 2020. Here, using the near-real-time data on energy-related GHG emissions from 30 countries (about 70% of global power generation), we show that the pandemic caused an unprecedented de-carbonization of global power system, representing by a dramatic decrease in the carbon intensity of power sector that reached a historical low of 414.9 tCO2eq/GWh in 2020. Moreover, the share of energy derived from renewable and low-carbon sources (nuclear, hydro-energy, wind, solar, geothermal, and biomass) exceeded that from coal and oil for the first time in history in May of 2020. The decrease in global net energy demand (-1.3% in the first half of 2020 relative to the average of the period in 2016-2019) masks a large down-regulation of fossil-fuel-burning power plants supply (-6.1%) coincident with a surge of low-carbon sources (+6.2%). Concomitant changes in the diurnal cycle of electricity demand also favored low-carbon generators, including a flattening of the morning ramp, a lower midday peak, and delays in both the morning and midday load peaks in most countries. However, emission intensities in the power sector have since rebounded in many countries, and a key question for climate mitigation is thus to what extent countries can achieve and maintain lower, pandemic-level carbon intensities of electricity as part of a green recovery.
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- 2021
33. Evolution of LMXBs under Different Magnetic Braking Prescriptions
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Deng, Zhu-Ling, Li, Xiang-Dong, Gao, Zhi-Fu, and Shao, Yong
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Astrophysics - High Energy Astrophysical Phenomena - Abstract
Magnetic braking (MB) likely plays a vital role in the evolution of low-mass X-ray binaries (LMXBs). However, it is still uncertain about the physics of MB, and there are various proposed scenarios for MB in the literature. To examine and discriminate the efficiency of MB, we investigate the LMXB evolution with five proposed MB laws. Combining detailed binary evolution calculation with binary population synthesis, we obtain the expected properties of LMXBs and their descendants binary millisecond pulsars. We then discuss the strength and weakness of each MB law by comparing the calculated results with observations. We conclude that the $\tau$-boosted MB law seems to best match the observational characteristics., Comment: 30 pages, 9 figures, 3 tables, accepted for publication in ApJ
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- 2021
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34. Transportation CO$_2$ emissions stayed high despite recurrent COVID outbreaks
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Wang, Yilong, Deng, Zhu, Ciais, Philippe, Liu, Zhu, Davis, Steven J., Gentine, Pierre, Lauvaux, Thomas, and Ge, Quansheng
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Physics - Physics and Society ,Physics - Atmospheric and Oceanic Physics ,Physics - Geophysics - Abstract
After steep drops and then rebounds in transportation-related CO$_2$ emissions over the first half of 2020, a second wave of COVID-19 this fall has caused further -- but less substantial -- emissions reductions. Here, we use near-real-time estimates of daily emissions to explore differences in human behavior and restriction policies over the course of 2020.
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- 2021
35. Estimates of daily ground-level NO2 concentrations in China based on big data and machine learning approaches
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Dou, Xinyu, Liao, Cuijuan, Wang, Hengqi, Huang, Ying, Tu, Ying, Huang, Xiaomeng, Peng, Yiran, Zhu, Biqing, Tan, Jianguang, Deng, Zhu, Wu, Nana, Sun, Taochun, Ke, Piyu, and Liu, Zhu
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Physics - Atmospheric and Oceanic Physics ,Computer Science - Machine Learning - Abstract
Nitrogen dioxide (NO2) is one of the most important atmospheric pollutants. However, current ground-level NO2 concentration data are lack of either high-resolution coverage or full coverage national wide, due to the poor quality of source data and the computing power of the models. To our knowledge, this study is the first to estimate the ground-level NO2 concentration in China with national coverage as well as relatively high spatiotemporal resolution (0.25 degree; daily intervals) over the newest past 6 years (2013-2018). We advanced a Random Forest model integrated K-means (RF-K) for the estimates with multi-source parameters. Besides meteorological parameters, satellite retrievals parameters, we also, for the first time, introduce socio-economic parameters to assess the impact by human activities. The results show that: (1) the RF-K model we developed shows better prediction performance than other models, with cross-validation R2 = 0.64 (MAPE = 34.78%). (2) The annual average concentration of NO2 in China showed a weak increasing trend . While in the economic zones such as Beijing-Tianjin-Hebei region, Yangtze River Delta, and Pearl River Delta, the NO2 concentration there even decreased or remained unchanged, especially in spring. Our dataset has verified that pollutant controlling targets have been achieved in these areas. With mapping daily nationwide ground-level NO2 concentrations, this study provides timely data with high quality for air quality management for China. We provide a universal model framework to quickly generate a timely national atmospheric pollutants concentration map with a high spatial-temporal resolution, based on improved machine learning methods.
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- 2020
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36. Carbon Monitor: a near-real-time daily dataset of global CO2 emission from fossil fuel and cement production
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Liu, Zhu, Ciais, Philippe, Deng, Zhu, Davis, Steven J., Zheng, Bo, Wang, Yilong, Cui, Duo, Zhu, Biqing, Dou, Xinyu, Ke, Piyu, Sun, Taochun, Guo, Rui, Boucher, Olivier, Breon, Francois-Marie, Lu, Chenxi, Guo, Runtao, Boucher, Eulalie, and Chevallier, Frederic
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Physics - Physics and Society ,Economics - General Economics ,Physics - Atmospheric and Oceanic Physics ,Physics - Geophysics - Abstract
We constructed a near-real-time daily CO2 emission dataset, namely the Carbon Monitor, to monitor the variations of CO2 emissions from fossil fuel combustion and cement production since January 1st 2019 at national level with near-global coverage on a daily basis, with the potential to be frequently updated. Daily CO2 emissions are estimated from a diverse range of activity data, including: hourly to daily electrical power generation data of 29 countries, monthly production data and production indices of industry processes of 62 countries/regions, daily mobility data and mobility indices of road transportation of 416 cities worldwide. Individual flight location data and monthly data were utilised for aviation and maritime transportation sectors estimates. In addition, monthly fuel consumption data that corrected for daily air temperature of 206 countries were used for estimating the emissions from commercial and residential buildings. This Carbon Monitor dataset manifests the dynamic nature of CO2 emissions through daily, weekly and seasonal variations as influenced by workdays and holidays, as well as the unfolding impacts of the COVID-19 pandemic. The Carbon Monitor near-real-time CO2 emission dataset shows a 7.8% decline of CO2 emission globally from Jan 1st to Apr 30th in 2020 when compared with the same period in 2019, and detects a re-growth of CO2 emissions by late April which are mainly attributed to the recovery of economy activities in China and partial easing of lockdowns in other countries. Further, this daily updated CO2 emission dataset could offer a range of opportunities for related scientific research and policy making.
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- 2020
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37. COVID-19 causes record decline in global CO2 emissions
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Liu, Zhu, Ciais, Philippe, Deng, Zhu, Lei, Ruixue, Davis, Steven J., Feng, Sha, Zheng, Bo, Cui, Duo, Dou, Xinyu, He, Pan, Zhu, Biqing, Lu, Chenxi, Ke, Piyu, Sun, Taochun, Wang, Yuan, Yue, Xu, Wang, Yilong, Lei, Yadong, Zhou, Hao, Cai, Zhaonan, Wu, Yuhui, Guo, Runtao, Han, Tingxuan, Xue, Jinjun, Boucher, Olivier, Boucher, Eulalie, Chevallier, Frederic, Wei, Yimin, Zhong, Haiwang, Kang, Chongqing, Zhang, Ning, Chen, Bin, Xi, Fengming, Marie, François, Zhang, Qiang, Guan, Dabo, Gong, Peng, Kammen, Daniel M., He, Kebin, and Schellnhuber, Hans Joachim
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Economics - General Economics ,Physics - Geophysics ,Physics - Physics and Society - Abstract
The considerable cessation of human activities during the COVID-19 pandemic has affected global energy use and CO2 emissions. Here we show the unprecedented decrease in global fossil CO2 emissions from January to April 2020 was of 7.8% (938 Mt CO2 with a +6.8% of 2-{\sigma} uncertainty) when compared with the period last year. In addition other emerging estimates of COVID impacts based on monthly energy supply or estimated parameters, this study contributes to another step that constructed the near-real-time daily CO2 emission inventories based on activity from power generation (for 29 countries), industry (for 73 countries), road transportation (for 406 cities), aviation and maritime transportation and commercial and residential sectors emissions (for 206 countries). The estimates distinguished the decline of CO2 due to COVID-19 from the daily, weekly and seasonal variations as well as the holiday events. The COVID-related decreases in CO2 emissions in road transportation (340.4 Mt CO2, -15.5%), power (292.5 Mt CO2, -6.4% compared to 2019), industry (136.2 Mt CO2, -4.4%), aviation (92.8 Mt CO2, -28.9%), residential (43.4 Mt CO2, -2.7%), and international shipping (35.9Mt CO2, -15%). Regionally, decreases in China were the largest and earliest (234.5 Mt CO2,-6.9%), followed by Europe (EU-27 & UK) (138.3 Mt CO2, -12.0%) and the U.S. (162.4 Mt CO2, -9.5%). The declines of CO2 are consistent with regional nitrogen oxides concentrations observed by satellites and ground-based networks, but the calculated signal of emissions decreases (about 1Gt CO2) will have little impacts (less than 0.13ppm by April 30, 2020) on the overserved global CO2 concertation. However, with observed fast CO2 recovery in China and partial re-opening globally, our findings suggest the longer-term effects on CO2 emissions are unknown and should be carefully monitored using multiple measures.
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- 2020
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38. On the formation of PSR J1640+2224: a neutron star born massive?
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Deng, Zhu-Ling, Gao, Zhi-Fu, Li, Xiang-Dong, and Shao, Yong
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Astrophysics - High Energy Astrophysical Phenomena ,Astrophysics - Solar and Stellar Astrophysics - Abstract
PSR J1640+2224 is a binary millisecond pulsar (BMSP) with a white dwarf (WD) companion. Recent observations indicate that the WD is very likely to be a $\sim 0.7\,M_{\odot}$ CO WD. Thus the BMSP should have evolved from an intermediate-mass X-ray binary (IMXB). However, previous investigations on IMXB evolution predict that the orbital periods of the resultant BMSPs are generally $<40$ days, in contrast with the 175 day orbital period of PSR J1640+2224. In this paper, we explore the influence of the mass of the neutron star (NS) and the chemical compositions of the companion star on the formation of BMSPs. Our results show that, the final orbital period becomes longer with increasing NS mass, and the WD mass becomes larger with decreasing metallicity. In particular, to reproduce the properties of PSR J1640+2224, the NS was likely born massive ($>2.0\,M_{\odot}$)., Comment: 24 pages, 5 figures, accepted for publication in ApJ
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- 2020
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- View/download PDF
39. Population ageing and deaths attributable to ambient PM2.5 pollution: a global analysis of economic cost (vol 5, pg e356, 2021)
- Author
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Yin, Hao, Brauer, Michael, Zhang, Junfeng Jim, Cai, Wenjia, Navrud, Stale, Burnett, Richard, Howard, Courtney, Deng, Zhu, Kammen, Daniel M, Schellnhuber, Hans Joachim, Chen, Kai, Kan, Haidong, Chen, Zhan-Ming, Chen, Bin, Zhang, Ning, Mi, Zhifu, Coffman, D'Maris, Cohen, Aaron J, Guan, Dabo, Zhang, Qiang, Gong, Peng, and Liu, Zhu
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- 2021
40. Author Correction: Near-real-time monitoring of global CO2 emissions reveals the effects of the COVID-19 pandemic.
- Author
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Liu, Zhu, Ciais, Philippe, Deng, Zhu, Lei, Ruixue, Davis, Steven J, Feng, Sha, Zheng, Bo, Cui, Duo, Dou, Xinyu, Zhu, Biqing, Guo, Rui, Ke, Piyu, Sun, Taochun, Lu, Chenxi, He, Pan, Wang, Yuan, Yue, Xu, Wang, Yilong, Lei, Yadong, Zhou, Hao, Cai, Zhaonan, Wu, Yuhui, Guo, Runtao, Han, Tingxuan, Xue, Jinjun, Boucher, Olivier, Boucher, Eulalie, Chevallier, Frédéric, Tanaka, Katsumasa, Wei, Yiming, Zhong, Haiwang, Kang, Chongqing, Zhang, Ning, Chen, Bin, Xi, Fengming, Liu, Miaomiao, Bréon, François-Marie, Lu, Yonglong, Zhang, Qiang, Guan, Dabo, Gong, Peng, Kammen, Daniel M, He, Kebin, and Schellnhuber, Hans Joachim
- Abstract
A Correction to this paper has been published: https://doi.org/10.1038/s41467-020-20254-5.
- Published
- 2020
41. Local Anomalies in the Column‐Averaged Dry Air Mole Fractions of Carbon Dioxide Across the Globe During the First Months of the Coronavirus Recession
- Author
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Chevallier, Frédéric, Zheng, Bo, Broquet, Grégoire, Ciais, Philippe, Liu, Zhu, Davis, Steven J, Deng, Zhu, Wang, Yilong, Bréon, François‐Marie, and O'Dell, Christopher W
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Climate Action ,carbon dioxide ,emissions ,OCO‐ ,2 ,Paris Agreement ,plume ,satellite ,OCO‐2 ,Meteorology & Atmospheric Sciences - Abstract
We use a global transport model and satellite retrievals of the carbon dioxide (CO2) column average to explore the impact of CO2 emissions reductions that occurred during the economic downturn at the start of the Covid-19 pandemic. The changes in the column averages are substantial in a few places of the model global grid, but the induced gradients are most often less than the random errors of the retrievals. The current necessity to restrict the quality-assured column retrievals to almost cloud-free areas appears to be a major obstacle in identifying changes in CO2 emissions. Indeed, large changes have occurred in the presence of clouds, and in places that were cloud free in 2020, the comparison with previous years is hampered by different cloud conditions during these years. We therefore recommend to favor all-weather CO2 monitoring systems, at least in situ, to support international efforts to reduce emissions.
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- 2020
42. Near-real-time monitoring of global CO2 emissions reveals the effects of the COVID-19 pandemic.
- Author
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Liu, Zhu, Ciais, Philippe, Deng, Zhu, Lei, Ruixue, Davis, Steven J, Feng, Sha, Zheng, Bo, Cui, Duo, Dou, Xinyu, Zhu, Biqing, Guo, Rui, Ke, Piyu, Sun, Taochun, Lu, Chenxi, He, Pan, Wang, Yuan, Yue, Xu, Wang, Yilong, Lei, Yadong, Zhou, Hao, Cai, Zhaonan, Wu, Yuhui, Guo, Runtao, Han, Tingxuan, Xue, Jinjun, Boucher, Olivier, Boucher, Eulalie, Chevallier, Frédéric, Tanaka, Katsumasa, Wei, Yiming, Zhong, Haiwang, Kang, Chongqing, Zhang, Ning, Chen, Bin, Xi, Fengming, Liu, Miaomiao, Bréon, François-Marie, Lu, Yonglong, Zhang, Qiang, Guan, Dabo, Gong, Peng, Kammen, Daniel M, He, Kebin, and Schellnhuber, Hans Joachim
- Subjects
Humans ,Pneumonia ,Viral ,Coronavirus Infections ,Carbon Dioxide ,Nitrogen Dioxide ,Air Pollutants ,Fossil Fuels ,Environmental Monitoring ,Industry ,Pandemics ,Betacoronavirus ,COVID-19 ,SARS-CoV-2 - Abstract
The COVID-19 pandemic is impacting human activities, and in turn energy use and carbon dioxide (CO2) emissions. Here we present daily estimates of country-level CO2 emissions for different sectors based on near-real-time activity data. The key result is an abrupt 8.8% decrease in global CO2 emissions (-1551 Mt CO2) in the first half of 2020 compared to the same period in 2019. The magnitude of this decrease is larger than during previous economic downturns or World War II. The timing of emissions decreases corresponds to lockdown measures in each country. By July 1st, the pandemic's effects on global emissions diminished as lockdown restrictions relaxed and some economic activities restarted, especially in China and several European countries, but substantial differences persist between countries, with continuing emission declines in the U.S. where coronavirus cases are still increasing substantially.
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- 2020
43. A carbon-monitoring strategy through near-real–time data and space technology
- Author
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Liu, Zhu, Deng, Zhu, and Huang, Xiaoting
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- 2023
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44. Global patterns of daily CO2 emissions reductions in the first year of COVID-19
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Liu, Zhu, Deng, Zhu, Zhu, Biqing, Ciais, Philippe, Davis, Steven J., Tan, Jianguang, Andrew, Robbie M., Boucher, Olivier, Arous, Simon Ben, Canadell, Josep G., Dou, Xinyu, Friedlingstein, Pierre, Gentine, Pierre, Guo, Rui, Hong, Chaopeng, Jackson, Robert B., Kammen, Daniel M., Ke, Piyu, Le Quéré, Corinne, Monica, Crippa, Janssens-Maenhout, Greet, Peters, Glen P., Tanaka, Katsumasa, Wang, Yilong, Zheng, Bo, Zhong, Haiwang, Sun, Taochun, and Schellnhuber, Hans Joachim
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- 2022
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45. Near-Real-Time Carbon Emission Accounting Technology Toward Carbon Neutrality
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Liu, Zhu, Sun, Taochun, Yu, Ying, Ke, Piyu, Deng, Zhu, Lu, Chenxi, Huo, Da, and Ding, Xiang
- Published
- 2022
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46. Lenvatinib with or without immune checkpoint inhibitors for patients with unresectable hepatocellular carcinoma in real-world clinical practice
- Author
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Chen, Kang, Wei, Wei, Liu, Lei, Deng, Zhu-Jian, Li, Le, Liang, Xiu-Mei, Guo, Ping-Ping, Qi, Lu-Nan, Zhang, Zhi-Ming, Gong, Wen-Feng, Huang, Shan, Yuan, Wei-Ping, Ma, Liang, Xiang, Bang-De, Li, Le-Qun, and Zhong, Jian-Hong
- Published
- 2022
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47. Near-real-time daily estimates of fossil fuel CO2 emissions from major high-emission cities in China
- Author
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Huo, Da, Liu, Kai, Liu, Jianwu, Huang, Yingjian, Sun, Taochun, Sun, Yun, Si, Caomingzhe, Liu, Jinjie, Huang, Xiaoting, Qiu, Jian, Wang, Haijin, Cui, Duo, Zhu, Biqing, Deng, Zhu, Ke, Piyu, Shan, Yuli, Boucher, Olivier, Dannet, Grégoire, Liang, Gaoqi, Zhao, Junhua, Chen, Lei, Zhang, Qian, Ciais, Philippe, Zhou, Wenwen, and Liu, Zhu
- Published
- 2022
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48. On the use of Earth Observation to support estimates of national greenhouse gas emissions and sinks for the Global stocktake process: lessons learned from ESA-CCI RECCAP2
- Author
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Bastos, Ana, Ciais, Philippe, Sitch, Stephen, Aragão, Luiz E. O. C., Chevallier, Frédéric, Fawcett, Dominic, Rosan, Thais M., Saunois, Marielle, Günther, Dirk, Perugini, Lucia, Robert, Colas, Deng, Zhu, Pongratz, Julia, Ganzenmüller, Raphael, Fuchs, Richard, Winkler, Karina, Zaehle, Sönke, and Albergel, Clément
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- 2022
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49. A Comparative Study on the Accuracy of Prognosis of the End-of-life Assessment Form and Common Survival Prediction Scales in Advanced Cancer Patients
- Author
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YU Wenkai, CHEN Jianlin, LEI Rui, LUO Wei, HU Min, LIU Deng, ZHU Yu, CHEN Qi
- Subjects
advanced cancer patients ,survival period ,prediction ,hospice care ,Medicine - Abstract
BackgroundAccurately predicting the survival period of patients with advanced cancer can not only lay the foundation for palliative care centers to regulate the admission of patients and provide standardized services, but also help reduce "meaningless" over-treatment in the process of palliative care.However, there is still a lack of comparative study on the common survival prediction scales in China.ObjectiveTo compare the accuracy of the End-of-life Assessment Form and common survival prediction scale〔Palliative Prognostic Index (PPI) 、Palliative Performance Scale (PPS) 、Karnofsky Score (KPS) 〕in predicting the survival of patients with advanced malignant tumors, in order to provide a basis for the selection of survival prediction tools for advanced cancer patients.MethodsPatients with advanced malignant tumors admitted to the hospice ward of Linfen Road Community Health Service Center of Jing'an Distirct of Shanghai from April 1, 2018 to February 1, 2020 were retrospectively selected as researchsubjects. At the time of admission, the general information questionnaire, End-of-life Assessment Form, PPI, PPS, KPS were used to evaluate the patient, and the survival time of the patient was observed and recorded (from admission to the date of death) . The survival time of all patients was analyzed by Kaplan-Meier method, and the survival curve was drawn. The Kaplan-Meier method was used to calculate the median survival of patients in different groups of each scale, the log-rank test was used to compare the differences in survival among patients in different groups of each scale, and the survival curves were drawn. Finally, by comparing the predicted survival time and the actual survival time of patients with different score segments of each scale, the accuracy rate of the End-of-life Assessment Form, PPI, PPS and KPS in predicting the survival time of patients with advanced malignant tumors were calculated.ResultsA total of 315 patients with advanced malignant tumors were included in this study, of which 266 (84.4%) patients died during hospitalization and 49 (15.6%) patients were censored (right censored, type Ⅲ censored) . The median survival time of 315 patients was 10.00〔95%CI (8.10, 11.90) 〕d. The median survival time of patients in groups of 20.0~35.0 points, 35.5~45.0 points, 45.5~50.0 points, 50.5~60.0 points and 60.0~100.0 points of the End-of-life Assessment Form were 1.00〔95%CI (0.79, 1.22) 〕d, 5.00〔95%CI (3.92, 6.08) 〕d, 10.00〔95%CI (7.83, 12.17) 〕d, 22.00〔95%CI (18.42, 25.58〕d and 45.00〔95%CI (26.23, 63.77〕d (χ2=360.561, P
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- 2022
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50. The HSP70 and IL‐1β of Nile tilapia as molecular adjuvants can enhance the immune protection of DNA vaccine against Streptococcus agalactiae infection.
- Author
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Xu, Fei‐Fan, Deng, Zhu‐Yang, Sheng, Jun‐Jie, and Zhu, Bin
- Subjects
- *
DNA vaccines , *NILE tilapia , *COMBINED vaccines , *STREPTOCOCCAL diseases , *STREPTOCOCCUS agalactiae , *IMMUNOGLOBULIN M - Abstract
Globally, streptococcal disease caused by Streptococcus agalactiae is known for its high mortality rate, which severely limits the development of the tilapia breeding industry. As a third‐generation vaccine, DNA vaccines have shown great application prospects in the prevention and control of aquatic diseases, but their low immunogenicity limits their development. The combination of DNA vaccines and molecular adjuvants proved to be an effective method for inducing protective immunity. This study constructed recombinant plasmids encoding tilapia HSP70 and IL‐1β genes (pcHSP70 and pcIL‐1β) to verify their effectiveness as molecular adjuvants for S. agalactiae DNA vaccine (pcSIP) in the immunized tilapia model. The results revealed that serum‐specific IgM production, enzyme activities, and immune‐related gene expression in tilapia immunized with pcSIP plus pcHSP70 or pcIL‐1β were significantly higher than those in tilapia immunized with pcSIP alone. It is worth noting that combination with molecular adjuvants improved the immune protection of DNA vaccines, with a relative percentage survival (RPS) of 51.72% (pcSIP plus pcHSP70) and 44.83% (pcSIP plus pcIL‐1β), respectively, compared with that of pcSIP alone (24.14%). Thus, our study indicated that HSP70 and IL‐1β in tilapia are promising molecular adjuvants of the DNA vaccine in controlling S. agalactiae infection. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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