Impact Assessment of Climate Mitigation Finance on Climate Change in South Asia
Abstract
:1. Introduction
2. Literature Review
3. Materials and Methods
4. Results and Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Sectors | Sub-Sectors |
---|---|
Energy | Energy education/training; Hydro-electric power plants; Oil-fired electric power plants; Energy policy and administrative management; Nuclear energy electric power plants and nuclear safety; Solar energy for centralized grids; Electric power transmission and distribution (centralized grids); Energy generation, non-renewable sources, unspecified; Electric power transmission and distribution (centralized grids); Biofuel-fired power plants; Energy generation, renewable sources—multiple technologies; Retail gas distribution |
Transport and Storage | Transport policy and administrative management; Rail transport; Road transport; Water transport; Education and training in transport and storage |
Agricultural, forestry, fishing | Forestry education/training; Forestry development; Forestry policy and administrative management; Agricultural education/training; Agricultural development; Agricultural research; Food crop production |
Water and Sanitation | Basic drinking water supply and basic sanitation; Water sector policy and administrative management; Waste management/disposal; River basins development; Water resources conservation; Water supply and sanitation—large systems; Education and training in water supply and sanitation; Water sector policy and administrative management |
General Environmental Protection | Environmental policy and administrative management; Biosphere protection; Environmental education/training; Biodiversity |
Multisector | Disaster Risk Reduction; Urban development and management |
Variables | Abbreviation | Source | Unit |
---|---|---|---|
Climate change index | CCI | Author calculation | Index |
Climate mitigation finance | CMF | [59] | Million current US dollar |
Globalization | GI | [60] | Index |
Gross domestic product | GDP | [61] | GDP measured in constant 2015 billion US dollar |
Energy consumption | EC | [62] | QDBTU |
Extant Studies on Climate Change for South Asian Region/Countries | |||||
Authors | Sample Area | Title | Technique | Source | Findings |
[34] | South Asia/1982–2017 | Effect of urbanization and energy consumption on CO2 | Panel cointegration tests | Environmental Science and Pollution Research | Positive effect of both variables on CO2 |
[35] | South Asia/1983–2013 | Impact of energy consumption and urbanization on CO2 | Padroni cointegration and panel Granger causality tests | Journal of South Asian Studies | Positive effect of both variables on CO2 |
[36] | South Asia/1980–2012 | Financial stability, energy consumption and environmental quality | Bound cointegration test and Granger causality test | Renewable and Sustainable Energy Reviews | Negative effect of financial stability and positive effect of energy consumption on CO2 |
[37] | South Asia/1971–2013 | What drives carbon dioxide emissions in the long-run? | Panel cointegration tests and FMOLS | Renewable and Sustainable Energy Reviews | Energy, trade and population have positive and income has negative effect on CO2 |
[40] | Pakistan/1965 to 2015 | Relationship between energy consumption, economic growth and CO2 | FMOLS | Financial Innovation | Positive effects of both variables on CO2 |
[39] | Pakistan/1975–2014 | Testing the relationship between globalization and CO2 emissions | Johansen co-integration, ARDL bound testing approach and variance decomposition analysis | Environmental Science and Pollution Research | Positive relation of CO2 emission with globalization |
[38] | Pakistan/1972–2014 | Does agricultural ecosystem cause environmental pollution? | Johansen cointegration and ARDL tests | Environmental Science and Pollution Research | Positive effects of all crops on CO2 |
Extant Studies on Climate Change for Other Regions | |||||
[41] | MENA countries/ 1990–2015 | Analysis of CO2 emissions and energy consumption | Panel quantile regression | Environmental Science and Pollution Research | Positive effect of energy consumption on CO2 |
[42] | 16 African countries/1980–2014 | Renewable and non-renewable electricity consumption, economic growth and climate change | PMG | Energy | Negative effect of renewable energy and positive effect of non-renewable energy on climate change |
[43] | 5 different regions/ 1975–2011 | Does energy consumption contribute to climate change? | Vector autoregressive technique | Renewable and Sustainable Energy Reviews | Energy consumption does affect climate change |
[44] | Nigeria/1970–2008 | Electricity consumption, carbon emissions and economic growth | ARDL | International Journal of Energy Economics and Policy | Rapid growth in energy consumption causes a rapid growth in CO2 |
[45] | China/1970–2015 | Urbanization and industrialization impact of CO2 emissions in China | ARDL | Journal of Cleaner Production 2018 | Urbanization and industrialization cause increase in CO2 emissions |
[46] | OECD and non-OECD/1990–2009 | Globalization and climate change | Instrumental variable method | Journal of Economic Surveys | Positive effect of globalization climate in non-OECD countries and negative effect of globalization on climate change in OECD countries |
[47] | CEECs/1995–2015 | Investigation on the role of economic, social, and political globalization on environment | Durbin Hausman cointegration, augmented mean group, panel DH causality test | Environmental Science and Pollution Research | Social, economic and overall globalization has positive effect on globalization and political globalization has negative effect on climate change |
[48] | United Kingdom/1970–2019 | Recent scenario and nexus of globalization to CO2 emissions | Quantile on quantile regression and wavelet coherence approach | Environmental Research | Positive relation of carbon emission with overall globalization, economic globalization and coal consumption |
[49] | Selected OECD countries/1990–2014 | The impact of globalization and financial development on environmental quality | Continuously updated fully modified ordinary least square (CUP-FM) and continuously updated bias-corrected (CUP-BC) approaches | Environmental Science and Pollution Research | Negative effect of globalization on CO2 |
[50] | Two groups of countries: countries above average per capita income and countries below average per capita income/2000–2019 | Does economic globalization harm climate? | Panel cointegration test and Granger causality test | Energies | Economic globalization increases CO2 in both groups, whereas financial globalization increases CO2 in a group of countries having income below average per capita |
Variables | Afghanistan | Bhutan | India | Nepal | Pakistan | Sri Lanka |
---|---|---|---|---|---|---|
CCI | ||||||
Mean | 1.184 | 1.804 | 4.308 | 1.408 | 3.081 | 3.724 |
SD | 0.131 | 0.572 | 0.527 | 0.211 | 1.41 × 10−1 | 0.29 |
Min | 1 | 1.118 | 3.618 | 1.225 | 2.865 | 3.411 |
Max | 1.431 | 2.769 | 5.086 | 1.897 | 3.366 | 4.27 |
CF | ||||||
Mean | 115.34 | 20.76 | 2670.57 | 92.34 | 395.97 | 114.24 |
SD | 144.74 | 30.63 | 2733.96 | 111.31 | 517.12 | 132.28 |
Min | 0.062 | 0.29 | 6.45 | 1.61 | 1.90 | 0.88 |
Max | 577.24 | 126.91 | 10041.88 | 442.94 | 1335.89 | 464.25 |
GI | ||||||
Mean | 33.5 | 33.65 | 57.8 | 41.217 | 52.194 | 57.564 |
SD | 5.395 | 6.098 | 5.288 | 5.305 | 2.789 | 1.97 |
Min | 24 | 25 | 46 | 32.693 | 45.741 | 52.223 |
Max | 39 | 42 | 63 | 47.481 | 54.671 | 59.819 |
GDP | ||||||
Mean | 13.7 | 1.48 | 1570.00 | 19.97 | 225.60 | 60.95 |
SD | 5.4 | 0.59 | 603.00 | 5.12 | 54.21 | 19.64 |
Min | 5.95 | 0.66 | 801.00 | 13.43 | 146.50 | 35.56 |
Max | 21.12 | 2.47 | 2690.00 | 30.61 | 324.40 | 92.19 |
EC | ||||||
Mean | 0.081 | 0.047 | 21.233 | 0.088 | 2.556 | 0.264 |
SD | 0.054 | 0.019 | 6.556 | 0.037 | 0.542 | 0.065 |
Min | 0.015 | 0.017 | 12.207 | 0.05 | 1.811 | 0.193 |
Max | 0.161 | 0.076 | 31.783 | 0.17 | 3.434 | 0.368 |
Correlation Matrix | ||||
---|---|---|---|---|
Variables | CO2 | Temp | ||
CO2 | 1.000 | 0.55 | ||
Temp | 0.55 | 1.000 | ||
Component analysis | ||||
Component | Eigenvalue | Difference | Proportion | Cumulative |
Comp1 | 1.547 | 1.093 | 0.773 | 0.773 |
Comp2 | 0.453 | 0.227 | 1.000 | |
Principal components (eigenvectors) | ||||
Variable | Comp1 | Unexplained | ||
CO2 | 0.71 | 0.23 | ||
Temp | 0.71 | 0.23 |
Variables | Breusch–Pagan | Pesaran Scaled | Bias-Corrected Scaled | Pesaran CD | ||||
---|---|---|---|---|---|---|---|---|
Statistics | p-Value | Stat | p-Value | Stat | p-Value | stat | p-Value | |
CCI | 177.64 *** | <0.01 | 29.70 *** | <0.01 | 29.54 *** | <0.01 | 13.06 *** | <0.01 |
CF | 108.37 *** | <0.01 | 17.05 *** | <0.01 | 16.89 *** | <0.01 | 9.92 *** | <0.01 |
EC | 243.57 *** | <0.01 | 41.73 *** | <0.01 | 41.57 *** | <0.01 | 15.57 *** | <0.01 |
GDP | 291.46 *** | <0.01 | 50.47 *** | <0.01 | 50.32 *** | <0.01 | 17.07 *** | <0.01 |
GI | 242.34 *** | <0.01 | 41.51 *** | <0.01 | 41.35 *** | <0.01 | 15.5 *** | <0.01 |
Variables | CIPS | |||
---|---|---|---|---|
Level | 1st Difference | |||
Constant | Constant and Trend | Constant | Constant and Trend | |
CCI | −1.71 | −2.00 | −4.56 *** | −4.57 *** |
CF | −3.27 *** | −3.32 *** | - | - |
GI | −2.78 *** | −3.09 *** | - | - |
GDP | −1.61 | −2.85 * | −3.43 *** | −3.36 *** |
EC | −1.30 | −2.46 | −3.65 *** | −3.62 *** |
Variables | Coefficient | St. Error | T-Statistics | p-Value | |
---|---|---|---|---|---|
Long-run coefficients | |||||
LnCF | −0.01 ** | 0.003 | −2.55 | <0.05 | |
LnGI | −0.25 ** | 0.12 | −2.06 | <0.05 | |
LnGDP | −0.23 *** | 0.04 | −5.75 | <0.01 | |
LnEC | 0.66 *** | 0.05 | 12.29 | <0.01 | |
Short-run coefficients | |||||
COINTEQ01 | −0.36 * | 0.21 | −1.73 | <0.1 | |
D(LCF) | −0.001 | 0.004 | −0.11 | 0.91 | |
D(LGI) | 0.040 | 0.13 | 0.30 | 0.76 | |
D(LGDP) | 0.20 | 0.12 | 1.59 | 0.12 | |
D(LEC) | 0.09 | 0.13 | 0.68 | 0.50 | |
Hausman Test | |||||
Chi-square test value | 3.46 | ||||
p-value | 0.48 |
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Rasheed, N.; Khan, D.; Gul, A.; Magda, R. Impact Assessment of Climate Mitigation Finance on Climate Change in South Asia. Sustainability 2023, 15, 6429. https://doi.org/10.3390/su15086429
Rasheed N, Khan D, Gul A, Magda R. Impact Assessment of Climate Mitigation Finance on Climate Change in South Asia. Sustainability. 2023; 15(8):6429. https://doi.org/10.3390/su15086429
Chicago/Turabian StyleRasheed, Noman, Dilawar Khan, Aisha Gul, and Róbert Magda. 2023. "Impact Assessment of Climate Mitigation Finance on Climate Change in South Asia" Sustainability 15, no. 8: 6429. https://doi.org/10.3390/su15086429
APA StyleRasheed, N., Khan, D., Gul, A., & Magda, R. (2023). Impact Assessment of Climate Mitigation Finance on Climate Change in South Asia. Sustainability, 15(8), 6429. https://doi.org/10.3390/su15086429