| Literature DB >> 35291256 |
Zhaohui Yin1, Xiaomeng Jiang1, Songyue Lin2, Jin Liu3.
Abstract
While the COVID-19 pandemic has had various impacts on economic and social development, it may have partially reduced human energy use, thereby helping achieve the goals of reducing carbon emissions and promoting carbon neutrality. During the pandemic, online education was widely used to replace traditional education all over the world. There is a lack of empirical studies on whether and to what extent the change of education model can reduce carbon emissions. Taking Chinese universities as cases, this study, concentrating on two main elements - transportation and electricity consumption - constructs a model and calculates the impact of online education on carbon emissions. The results show that online education can significantly reduce energy consumption and lower carbon emissions. In the field of higher education alone, the carbon emissions reduction caused by online education in half a year is equivalent to the total carbon emissions reduction of college students caused by online education during the half-year is equivalent to the total carbon emissions in 1.296 h in China, 2.688 h in the United States, 5.544 h in India, 12 h in Japan and 3.864 h in European countries of OECD. Therefore, this study suggests that the impact of online education on carbon emissions should be further studied, online education should be promoted through legislation and other systemic measures, and the goals of carbon emissions and carbon neutrality should be explored further within the field of education.Entities:
Keywords: COVID-19 pandemic; Carbon emissions; Carbon neutrality; Chinese universities; Electricity consumption; Online education
Year: 2022 PMID: 35291256 PMCID: PMC8913334 DOI: 10.1016/j.apenergy.2022.118875
Source DB: PubMed Journal: Appl Energy ISSN: 0306-2619 Impact factor: 11.446
Fig. 1Schematic diagram of research definition.
Sample provinces/cities and universities.
| NO. | Province/City | Universities |
|---|---|---|
| 1 | Beijing | Beijing Normal University, Beijing Institute of Technology, China Agricultural University, Beijing Foreign Studies University, University of Science and Technology Beijing |
| 2 | Shanghai | Fudan University, Shanghai Jiao Tong University, Tongji University, East China Normal University, Shanghai University of Finance and Economics |
| 3 | Jiangsu | Nanjing University, Southeast University, Nanjing University Of Science And Technology, Nanjing University of Aeronautics and Astronautics, Soochow University |
| 4 | Hubei | Wuhan University, Huazhong University of Science and Technology, Wuhan University Of Technology, Huazhong Agricultural University, China University of Geosciences (Wuhan) |
| 5 | Guangdong | Sun Yat-sen University, South China University of Technology, Jinan University, South China Normal University, South China Agricultural University |
| 6 | Shandong | Shandong University, Ocean University of China, China University Of Petroleum(East China), Shandong Normal University, Qilu University of Technology |
| 7 | He’ nan | Zhengzhou University, He’ nan University, He’ nan Normal University, He’ nan Agricultural University, He’ nan Polytechnic University |
| 8 | Sichuan | Sichuan University, University of Electronic Science and Technology of China, Southwest Jiaotong University, Chengdu University of Technology, Southwestern University Of Finance And Economics |
Fig. 2Transportation distance of students from five universities in Beijing. (Note: The size of the blue circle represents the number of students, the larger the circle, the more students.) (For interpretation of the references to colour in this figure legend, the reader is referred to the web version of this article.)
Samples of milometre between some railway stations (unit: kilometres).
| Beijing | |||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| Tianjin | 137 | ||||||||||
| Shenyang | 741 | 707 | |||||||||
| Changchun | 1,046 | 1,012 | 305 | ||||||||
| Harbin | 1,288 | 1,354 | 547 | 242 | |||||||
| Ji’ nan | 497 | 360 | 1,067 | 1,372 | 1,614 | ||||||
| Hefei | 1,074 | 973 | 1,680 | 1,985 | 2,227 | 613 | |||||
| Nanjing | 1,160 | 1,023 | 1,730 | 2,035 | 2,277 | 663 | 312 | ||||
| Shanghai | 1,463 | 1,326 | 2,033 | 2,335 | 2,577 | 966 | 615 | 303 | |||
| Hangzhou | 1,589 | 1,452 | 2,159 | 2,464 | 2,706 | 1,092 | 451 | 429 | 201 | ||
| Nanchang | 1,449 | 1,444 | 2,151 | 2,456 | 2,689 | 1,137 | 478 | 838 | 837 | 636 | |
The regional power grid baseline emissions factors of China.
| Power grids | EFgrid, OMSimple,y |
|---|---|
| North China grid | 0.9419 |
| Northeast China grid | 1.0826 |
| East China grid | 0.7921 |
| Central China grid | 0.8587 |
| Northwest China grid | 0.8922 |
| South China grid | 0.8042 |
The simple marginal emissions factor OM (unit: tCO2/MWh) of the power system where the emissions reduction projects are located in year y.
Fig. 3The scale of internet users and internet penetration rate in China (2015–2020).
The scale and annual growth rate of internet users (2015–2020).
| Date | 2015.06 | 2016.06 | 2017.06 | 2018.06 | 2019.06 | 2020.06 |
|---|---|---|---|---|---|---|
| Scale(unit:100 million) | 6.68 | 7.1 | 7.51 | 8.02 | 8.54 | 9.4 |
| Growth rate | 5.70% | 6.29% | 5.77% | 6.79% | 6.48% | 10.07% |
| Date | 2015.12 | 2016.12 | 2017.12 | 2018.12 | 2019.12 | 2020.12 |
| Scale(unit:100 million) | 6.88 | 7.31 | 7.72 | 8.29 | — | 9.89 |
| Growth rate | 6.17% | 6.25% | 7.63% | 7.72% | — | 19.30% |
Fig. 4The scale of online education (2016–2020).
Fig. 5Fitting model diagram of electricity consumption of urban and rural residents (2010–2019).
Fig. 6Daily CO2 emissions of Ground Transport in China (2019–2020).
Fig. 7Daily CO2 emissions of Domestic Aviation in China (2019–2020).
Transportation distance to school of students in the sample.
| Beijing | 17,743,599 | 13,506 | 1313.756775 | 874.3560491 | |
| Shanghai | 18,384,718 | 15,613 | 1177.526292 | ||
| Shandong | 19,832,736 | 27,987 | 708.6410119 | ||
| Jiangsu | 17,241,044 | 19,360 | 890.5497934 | ||
| Guangdong | 22,384,255 | 32,856 | 681.2836316 | ||
| Hubei | 23,803,579 | 26,784 | 888.7238277 | 505.7360784 | |
| He’ nan | 12,269,564 | 44,544 | 275.4481861 | ||
| Sichuan | 36,094,884 | 31,213 | 1156.405472 | 1156.405472 |
Some transportation distance to school of students in the sample.
| Region | Province/City | The number of local students | Average transportation distance of per local student | Total transportation distance of local students (unit: kilometres) | The number of non-local students | Average transportation distance of per non-local students | Total transportation distance of non-local students(unit: kilometres) |
|---|---|---|---|---|---|---|---|
| East | Beijing | 22.31759663 | 88 | 1963.948504 | 37.83240337 | 874.3560491 | 33078.99073 |
| Tianjin | 20.01348566 | 94.5 | 1891.274395 | 33.92651434 | 29663.85304 | ||
| Hebei | 54.69017031 | 475 | 25977.8309 | 92.70982969 | 81061.4004 | ||
| Liaoning | 38.62817931 | 275 | 10622.74931 | 65.48182069 | 57254.42602 | ||
| Shanghai | 19.53856424 | 60 | 1172.313854 | 33.12143576 | 28959.92772 | ||
| Jiangsu | 69.53517515 | 228 | 15854.01993 | 117.8748249 | 103064.5661 | ||
| Central | He’ nan | 132.3140907 | 275 | 36386.37493 | 99.65590935 | 505.7360784 | 50399.58878 |
| Hubei | 85.60459855 | 370 | 31673.70146 | 64.47540145 | 32607.53668 | ||
| Hu’ nan | 80.26001507 | 387 | 31060.62583 | 60.44998493 | 30571.73832 | ||
| West | Sichuan | 55.92592345 | 537.5 | 30060.18386 | 110.2440765 | 1156.405472 | 127486.8534 |
| Guizhou | 25.7702832 | 297.5 | 7666.659251 | 50.7997168 | 58745.07049 | ||
| Yunnan | 29.0786531 | 495 | 14393.93329 | 57.3213469 | 66286.71921 | ||
| Total | 1294.286529 | 5,592,542,112 | 1737.233471 | 15,120,057,220 | |||
Fig. 8Daily residential CO2 emissions in China (January 2019-May 2021).