Impact of Climate Change on Cassava Yield in Nigeria: An Autoregressive Distributed Lag Bound Approach
Abstract
:1. Introduction
2. Material and Methods
Description of Study Area
3. Data Sources
4. Model Estimation Procedures
- identifying the order of integration of variables using the unit root tests as presented in Table 1;
- conducting the Bounds test co-integration (long-run) relationship as presented in Table 2 and
- estimation of an Error Correction Model (ECM) to ascertain the speed of adjustment and spurious status of the estimation.
4.1. Unit Root Test
4.2. Co-Integration Analysis: ARDL Bounds Test
4.3. Error Correction Model (ECM)
5. Results and Discussion
5.1. ADF Test for Stationarity (Unit Root Test)
5.2. Bounds Test for Co-Integration
5.3. Long-Run Impacts of Climate Change on Cassava Yield
5.4. Error Correction Model (ECM) Regression
5.5. Diagnostic Test
6. Conclusions
Recommendations
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variables | at Level 1(0) | Remarks | at 1st Deference 1(1) | Remarks | Decision: H0 | Order of Integration |
---|---|---|---|---|---|---|
t-statistic | t-statistic | |||||
Results of Augmented Dickey–Fuller Test | ||||||
Y | 0.05 | Not stationary | −3.29 ** | Stationary | Reject | 1(1) at 5% |
X1 | −0.25 | Not stationary | −4.03 ** | Stationary | Reject | 1(1) at 5% |
X2 | −3.50 ** | Stationary | −4.51 ** | Stationary | Reject | 1(0) at 5% |
X3 | 1.00 | Not stationary | −4.37 ** | Stationary | Reject | 1(1) at 5% |
X4 | −0.76 | Not stationary | −4.07 ** | Stationary | Reject | 1(1) at 5% |
X5 | −0.82 | Not stationary | −4.72 ** | Reject | 1(1) at 5% | |
X6 | −2.62 | Not stationary | −13.00 ** | Stationary | Reject | 1(1) at 5% |
Results of Phillips–Perron Test | ||||||
Y | −2.35 | Not stationary | −16.67 *** | Stationary | Reject | 1(1) at 1% |
X1 | −1.78 | Not stationary | −7.67 *** | Stationary | Reject | 1(1) at 1% |
X2 | −3.46 ** | Stationary | 19.18 *** | Stationary | Reject | 1(0) at 1% |
X3 | 0.10 | Not stationary | −4.35 *** | Stationary | Reject | 1(1) at 1% |
X4 | −0.63 | Not stationary | −6.51 *** | Stationary | Reject | 1(1) at 1% |
X5 | −0.89 | Not stationary | −4.61 *** | Stationary | Reject | 1(1) at 1% |
X6 | −6.58 | Not stationary | −15.11 *** | Stationary | Reject | 1(1) at 1% |
Equation | F-Statistic | Lower Bound 1(0) 5% | Upper Bound 1(1) 5% |
---|---|---|---|
lnYield = lnLand lnTemp lnCO2 lnN2O lnCH4 lnRF | 9.27 | 2.45 | 3.61 |
Predictor Variables | Coefficient | Standard Error | t-Statistic | p-Value |
---|---|---|---|---|
Area of land (ha) | 0.2 | 0.11 | 1.81 | 0.09 * |
Temperature | 0.02 | 0.03 | 0.62 | 0.54 |
CO2 | 3.24 | 1.66 | 1.95 | 0.07 * |
N2O | 0.82 | 0.43 | 1.92 | 0.07 * |
CH4 | −0.46 | 0.26 | −1.75 | 0.10 * |
Rainfall | 0.07 | 0.04 | 1.80 | 0.09 * |
Constant | 26.24 | 16.85 | −1.56 | 0.14 |
Variables | Coefficient | Standard Error | t-Stat | p-Value |
---|---|---|---|---|
CointEq (−1) | −0.57 | 0.06 | −9.24 | 0.00 |
Constant | −26.24 | 2.84 | −9.23 | 0.00 |
R2 | 0.80 | - | - | - |
Adjusted R2 | 0.77 | - | - | - |
F-statistic | 33.03 | - | - | - |
Prob(F-statistic) | 0.00 | - | - | - |
Durbin-Watson stat | 2.50 | - | - | - |
Diagnostic Test | Test | Probability Value | t-Statistic | F-Statistic | Prob Chi-Square |
---|---|---|---|---|---|
Stability test | Ramsey RESET test | - | 0.79 | 0.79 | - |
Normality test | Jarque–Bera stat | 0.13 | - | - | - |
Serial correlation test | LM test | 0.17 | - | - | 0.09 |
Heteroscedasticity test | Breusch–Pagan–Godfrey | 0.46 | - | - | 0.39 |
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Anyaegbu, C.N.; Okpara, K.E.; Taweepreda, W.; Akeju, D.; Techato, K.; Onyeneke, R.U.; Poshyachinda, S.; Pongpiachan, S. Impact of Climate Change on Cassava Yield in Nigeria: An Autoregressive Distributed Lag Bound Approach. Agriculture 2023, 13, 80. https://doi.org/10.3390/agriculture13010080
Anyaegbu CN, Okpara KE, Taweepreda W, Akeju D, Techato K, Onyeneke RU, Poshyachinda S, Pongpiachan S. Impact of Climate Change on Cassava Yield in Nigeria: An Autoregressive Distributed Lag Bound Approach. Agriculture. 2023; 13(1):80. https://doi.org/10.3390/agriculture13010080
Chicago/Turabian StyleAnyaegbu, Casmir Ndukaku, Kingsley Ezechukwu Okpara, Wirach Taweepreda, David Akeju, Kuaanan Techato, Robert Ugochukwu Onyeneke, Saran Poshyachinda, and Siwatt Pongpiachan. 2023. "Impact of Climate Change on Cassava Yield in Nigeria: An Autoregressive Distributed Lag Bound Approach" Agriculture 13, no. 1: 80. https://doi.org/10.3390/agriculture13010080
APA StyleAnyaegbu, C. N., Okpara, K. E., Taweepreda, W., Akeju, D., Techato, K., Onyeneke, R. U., Poshyachinda, S., & Pongpiachan, S. (2023). Impact of Climate Change on Cassava Yield in Nigeria: An Autoregressive Distributed Lag Bound Approach. Agriculture, 13(1), 80. https://doi.org/10.3390/agriculture13010080