3.3. Projecting Average Yields of World Rice between 2020 and 2030 Using ARIMA-TR Model
3.3.1. Projecting Average Yields of World Rice between 2020 and 2030 Using the ARIMA Model
The equations of five basic models for fitting average yields of world rice from 1961 to 2019 were established on the basis of its stationary 1st-differencing series and is shown in
Table 3.
The RMSE of each basic model used for fitting average yields of world rice from 1961 to 2019 is 349.2081 of ARMA(1,2) model, 328.9316 of ARMA(1,1) model, 348.8970 of AR(1) model, 349.5604 of MA(2) model and 344.8092 of MA(1) model, respectively. Thus, the basic model ARMA(1,1) best fitted among the five models, and was used for ARIMA(1,1,1) modelling to project average yields of world rice between 2020 and 2030.
In addition, the absolute values of the inverted AR root (−0.50) and inverted MA root (−0.47) of the ARIMA(1,1,1) are both below 1.00, which indicates the model is stationary and used for projecting average yields of world rice between 2020 and 2030.
Using the ARIMA(1,1,1) model, the average yields of world rice are projected to be 4785 kg/ha in 2020, 4861 kg/ha in 2021, 4939 kg/ha in 2022, 5018 kg/ha in 2023, 5098 kg/ha in 2024, 5179 kg/ha in 2025, 5262 kg/ha in 2026, 5346 kg/ha in 2027, 5431 kg/ha in 2028, 5518 kg/ha in 2029 and 5606 kg/ha in 2030, respectively.
3.3.2. Projecting Average Yields of World Rice between 2020 and 2030 Using TR Model
The equations of variation trends for average yields of world rice from 1961 to 2019 are shown in
Table 4.
As shown in
Figure 1 and
Table 3, the average yield of world rice from 1961 to 2019 rises in a polynomial trend with the highest R squared among five trend-regressed models, which are used for projecting the yields between 2020 and 2030 and results in 4793 kg/ha in 2020, 4835 kg/ha in 2021, 4876 kg/ha in 2022, 4917 kg/ha in 2023, 4958 kg/ha in 2024, 4998 kg/ha in 2025, 5038 kg/ha in 2026, 5078 kg/ha in 2027, 5117 kg/ha in 2028, 5156 kg/ha in 2029 and 5195 kg/ha in 2030, respectively.
3.3.3. Average Yields of World Rice between 2020 and 2030 Estimated by ARIMA-TR Model
The RMSE of the basic model ARMA(1,1) is used for fitting the average yield of world rice from 1961 to 2019 is 328.9316 whereas that of the TR model is 79.815. Thus, average yields of world rice between 2020 and 2030 projected using the TR model are adopted as the estimated result of the ARIMA-TR model. Moreover, actual average yield of world rice in 2020 (4609 kg/ha) is 3.84% lower than its projection, which shows the robustness of validation. Namely, using the ARIMA-TR model average yield of world rice will be increased by 7.45% based on the projection in ensuing decades.
3.4. Projecting Top Yields of World Rice between 2020 and 2030 Using ARIMA-TR Model
3.4.1. Projecting Top Yields of World Rice between 2020 and 2030 Using ARIMA Model
The variation of top yields of world rice in the long-term is also deemed as a stochastic process. Therefore, top yields of world rice between 2020 and 2030 is projected using the ARIMA model, basing the projection on its historic performance since 1961. The equations of five basic models for fitting top yields of world rice from 1961 to 2019 are established on the basis of its 1st-differencing series, as shown in
Table 5.
The RMSE of each basic model used for fitting top yields of world rice from 1961 to 2019 is 1059.049 of the ARMA(1,2) model, 1161.485 of ARMA(1,1) model, 1114.332 of AR(1) model, 1210.790 of MA(2) model and 1199.039 of MA(1) model, respectively. Thus, the basic model ARMA(1,2) best fitted among the five kinds and is used for ARIMA(1,1,2) modelling to project top yields of world rice between 2020 and 2030.
Moreover, theabsolute values of both the inverted AR root (−0.95) and inverted MA roots (0.23 and −0.91) of the ARIMA(1,1,2) are all below 1.00, which indicates the model is stationary and used for projecting top yields of world rice between 2020 and 2030.
Using the ARIMA(1,1,2) model, top yields of world rice between 2020 and 2030 is projected to be 31,600 kg/ha in 9282 kg/ha in 2020, 9337 kg/ha in 2021, 9383 kg/ha in 2022, 9438 kg/ha in 2023, 9486 kg/ha in 2024, 9541 kg/ha in 2025, 9589 kg/ha in 2026, 9645 kg/ha in 2027, 9694 kg/ha in 2028, 9749 kg/ha in 2029 and 9800 kg/ha in 2030, respectively.
3.4.2. Projecting Top Yields of World Rice between 2020 and 2030 Using TR Model
Likewise, the equations of variation trends for top yields of world rice from 1961 to 2019 are shown in
Table 6.
As shown in
Figure 1 and
Table 6, the top yield of world rice rises in a polynomial trend with top R squared among the five trend-regressed models, which are used for projecting the yields between 2020 and 2030 and results in 10,105 kg/ha in 2020, 10,127 kg/ha in 2021, 10,148 kg/ha in 2022, 10,168 kg/ha in 2023, 10,187 kg/ha in 2024, 10,204 kg/ha in 2025, 10,220 kg/ha in 2026, 10,234 kg/ha in 2027, 10,247 kg/ha in 2028, 10,259 kg/ha in 2029 and 10,269 kg/ha in 2030, respectively.
3.4.3. Top Yields of World Rice between 2020 and 2030 Estimated by ARIMA-TR Model
The RMSE of the basic model ARMA(1,2) is used for fitting top yield of world rice from 1961 to 2019 is 1059.049 whereas that of the TR model is 170.517. Thus, top yields of world rice between 2020 and 2030 projected using the TR model are adopted as an estimated result of the ARIMA-TR model as the actual top yield (10,031 kg/ha) in 2020, which is only 0.73% lower than the projection. That is to say, the top yield of world rice in ensuing decades will increase by only 1.40%, as estimated using the ARIMA-TR model, which indicates that the increase range of the top yield is much smaller than that of the average yield during the same period. The top (national) yield of world rice is considered a potential limit of the average because the latter will ‘chase after’ but never approach the former.
Top (national) yields of world rice with corresponding countries of intensity ranges represented as a time (year) number from 1961 to 2020 were labeled using ArcGIS map to show their spatial distribution worldwide, as seen in
Figure 3.
As shown in
Figure 3, from 1961 to 2020, the top (national) yields of world rice were seen in the following countries with corresponding number of distribution-years, respectively: Puerto Rico in fifteen years; Swaziland in six years; Dominica, North Korea and Uzbekistan in one year each; Syria in two years; Egypt in twelve years; and Australia in twenty-two years. The nations with the top (national) yields of world rice are classified into four hierarchic clusters—over 21 years, 11 to 15 years, 6 to 10 years, and 1 to 5 years, among which Australia topped with harvested areas ranging from 2318 hectares in 2008 (minimum) to 176,576 hectares in 2001 (maximum). Intuitively, the map of top yields of world rice from 1961 to 2020 showed stochastic distribution worldwide. These countries with the top yields represent certain conditions—climate, soil and agronomy, under which the population of rice plants grows best at the national level, and an inevitable law limits the average yield of the crop worldwide approaching its top.
3.6. Effects of Global Warming on World Rice Yields Based on Binary Regression Model
It is acknowledged worldwide that annual global mean temperature has been rising in slight fluctuations over time since the industrial revolution. As analyzed above, both the average and top yields of world rice rose from 1961 to 2020 and will rise up to 2030 in general. Theoretically, there must exist certain inner correlations between annual global mean temperature and the yields of world rice because temperature is an essential factor for rice growth and yield. Though all climatic factors such as sunlight, temperature, precipitation and gases each make a respective contribution to the growth and yield of world rice, only the variation (viz. rise) of annual global mean temperature is observed and proven to be the result of higher CO2 concentrations in the atmosphere. Generally speaking, world rice yield is dependent mainly on climatic factors at global or macroscopic levels and primarily on nutritional conditions on a local or microscopic scale. At a global or macroscopic level in climate change, sunlight and gases have changed but have also contributed to the yields of world rice primarily in the form of global warming effect because they cause the decrease or increase of global mean temperature directly or indirectly. Furthermore, the variation of annual precipitation over time on a global scale does not show any trend of increase or decrease. Therefore, theoretically, and for the sake of simplification, the contribution of sunlight, precipitation and gases yearly on a global scale can be treated as constant in modelling when it comes to the yields of rice worldwide.
Thus, taking global mean temperature as the independent (
X) and world rice yield as the dependent variable (
Y), the effects of global warming on average and top yields of world rice from 1961 to 2020 are, respectively, regression-modeled with constants and shown in Formulas (2) and (3).
In Formula (2), R squared = 0.819 and F = 129.355 at a great significance level.
As shown in Formula (2), global warming exerts a negative impact on average yield of world rice from 1961 to 2020 with a Cubic function better simulated, having one of the two highest R squared values than 0.814 of Linear, 0.816 of Logarithmic, 0.817 of Inverse, 0.762 of Compound, 0.766 of Power, 0.769 of S, 0.762 of Growth, 0.762 of Exponential and 0.762 of Logistic, and higher F value than Quadratic (F = 129.125) sharing R squared.
In Formula (3), R squared = 0.675 and F = 59.320 at a great significance level.
As shown in Formula (3), global warming also exerts a negative impact on the top yield of world rice from 1961 to 2020 with a Cubic function better simulated, having one of the two highest R squared values than Linear with 0.637, Logarithmic with 0.642, Inverse with 0.647, Compound with 0.627, Power with 0.633, S with 0.638, Growth with 0.627, Exponential with 0.627 and Logistic with 0.627, and a higher F value than 59.125 of Quadratic with same R squared.
According to different values of b3 coefficients in in Formulas (2) and (3), the average yield of world rice from 1961 to 2020 was negatively affected by global warming less than the top, which partly drives the gap between these two yields and was gradually shrunk in the past.
To see further global warming effects on the yields of world rice in 1961 to 2020 and to 2030, the ARIMA(
p,d,q) model is similarly applied for projecting global mean temperatures in the future. Concretely, the ARIMA(1,0,2) model is established using a stationary logarithmic series of annual global mean temperature and the ARMA(1,2) basic model with the lowest RMSE of 0.176178 between fitted values and actual temperatures from 1961 to 2019 among the five kinds, as shown in
Table 7.
The stationary ARIMA(1,0,2) model with an inverted AR Root of 0.77 and inverted MA Roots of 0.94 + is used for projecting annual global mean temperature resulting from 15.18 °C in 2021 to 15.48 °C in 2030.
Meanwhile, the variation trend of global mean temperature from 1961 2019 is shown in
Table 8.
As shown in
Figure 1 and
Table 8, global mean temperature from 1961 to 2019 rises in a polynomial trend with the highest R squared among the five trend-regressed models. In addition, the RMSE of the TR model for fitting global mean temperature from 1961 to 2019 is 0.033064, which is lower than that of the ARIMA(1,0,2) model. Therefore, the TR model is used for projecting global mean temperature between 2020 and 2030 and resulted in 15.24 °C in 2020, 15.29 °C in 2021, 15.33 °C in 2022, 15.38 °C in 2023, 15.42 °C in 2024, 15.47 °C in 2025, 15.52 °C in 2026, 15.56 °C in 2027, 15.61 °C in 2028, 15.66 °C in 2029and 15.71 °C in 2030, which is adopted as the estimated result of the ARIMA-TR model. Moreover, actual global mean temperature in 2020 is 15.42 °C, being only 1.18% higher than that projected, which indicates a good validation of the projection.
Similarly, different regression models are used for simulating the dependence of world rice yields on annual global mean temperature from 1961 to 2030, which reveals that the average yield of world rice negatively goes with global warming in a Cubic function (Formula (4)), and so does the top (Formula (5)).
In Formula (4), R squared = 0.879 while F = 244.272 at 0.1% level.
In Formula (5), R squared = 0.688 and F = 73.839 at 0.1% level.
As shown in Formulas (4) and (5), global warming exerts a negative impact on the average yield of world rice less than the top from 1961 to 2030, which indicates that the gap between these two kinds of yield will be further narrowed in ensuing decades in accordance with different values of b3 coefficients in the Cubic equations. This result is consistent with the scenario from 1961 to 2020 in terms of the trend that narrows the gap between average and top yields of world rice, in which the difference between 1961–2020 and 1961–2030 is from the variation of three variables with more fluctuation during the former period than that during the latter one.