scholarly journals Forecast on 2030 Vietnam Electricity Consumption

2018 ◽  
Vol 8 (3) ◽  
pp. 2869-2874 ◽  
Author(s):  
V. H. M. Nguyen ◽  
K. T. P. Nguyen ◽  
C. V. Vo ◽  
B. T. T. Phan

The first but very significant step in electricity system planning is to make an accurate long-term forecast on electricity consumption. This article aims to forecast the consumption for the Vietnam electricity system (GWH) up to 2030. An econometric model with the Cobb Douglas production function is used. The five variables proposed in the forecasting function are GDP, income, population, proportion of industry and service in GDP, and number of households. The forecasting equation is tested in terms of stationary and co-integration to choose meaningful variables and to eliminate the minor ones which account for none or small impacts on the forecast. The results show that: (1) the qualified forecasting equation only includes 3 major variables: the per capita income, the population, and the number of households, (2) with the medium income scenario, the forecasting consumptions in 2020, 2025, 2030 are 230,195 GWH, 349,949 GWH, 511,268 GWH respectively. (3) The GDP and the proportion of industry and service in GDP do not make major impacts on this forecasting in Vietnam. The method and the result of this article are likely a typical example of forecasting electricity consumption in developing countries which have a transforming economy similar to that in Vietnam.

Author(s):  
Viết Cường Võ ◽  
Phuong Hoang Nguyen ◽  
Luan Le Duy Nguyen ◽  
Van-Hung Pham

An accurate forecasting for long-term electricity demand makes a major role in the planning of the power system in any country. Vietnam is one of the most economically developing countries in the world, and its electricity demand has been increased dramatically high of about 15%/y for the last three decades. Contribution of industry and construction sectors in GDP has been increasing year by year, and are currently holding the leading position of largest consumers with more than 50% sharing in national electricity consumption proportion. How to estimate the electricity consumption of these sectors correctly makes a crucial contribution to the planning of the power system. This paper applies an econometric model with Cobb Douglas production function - a top-down method to forecast electricity demand of the industry and construction sectors in Vietnam to 2030. Four variables used are the value of the sectors in GDP, income per person, the proportion of electricity consumption of the sectors in total, and electric price. Forecasted results show that the proposed method has a quite low MAPE of 7.66% for long-term forecasting. Variable of electric price does not affect the demand. This is a very critical result of the study for authority governors in Vietnam. In the base scenario of the GDP and the income per person, the forecasted electricity demands of the sectors are 112,853 GWh, 172,691 GWh, and 242,027 GWh in 2020, 2025, 2030, respectively. In high scenario one, the demands are 115,947 GWh, 181,591 GWh, and 257,272 GWh, respectively. The above values in the high scenario are less than from 9.0% to 15.8 % of that of the based on in the Revised version of master plan N0. VII.


2021 ◽  
Author(s):  
THEODORE MODIS

The growth of GDP is considered as a natural-growth process amenable to description by the logistic-growth equation. The S-shaped logistic pattern provides good descriptions and forecasts for both nominal and real GDP per capita in the US over the last 80 years. This enables the calculation of a long-term forecast for inflation, which is to enter a declining trend not so far in the future. The two logistics are well advanced, more so for nominal GDP. The assumption for logistic growth works even better for Japan whose nominal GDP per capita has already completed tracing out an entire logistic trajectory. The economic woes of industrialized countries could be attributed to the saturation of growth there, as if a niche in nature had been filled to capacity. In contrast, GDP growth in China and India is in the very early stages of logistic growth still indistinguishable from exponential patterns. The ceiling of these logistics can be anywhere between 7 and 15 times today’s levels.


2021 ◽  
Author(s):  
Ian Scott

Uncertainty is an increasingly important aspect of decision-making relating to the electricity systems of the future. Over the long-term time horizons required for investment decisions and government policy making, history indicates that forecasts tend to be varied and uncertain. Hence, long-term forecast uncertainty should be an important aspect of any electricity market modelling or planning exercise. However, surprisingly, we do not find this to be the case in the literature.This thesis contributes to the study of the incorporation of long-term uncertainty into the generation expansion planning class of decision-making models in a number of ways. Firstly, in order to represent a wider range of long-term uncertainties into the generation expansion planning model this thesis first investigates one of the more promising possibilities for reducing model complexity, the representation of time. A methodology for adjusting the weighting derived from common representative day clustering algorithms is proposed for use in generation expansion planning models that ensures the targeted level of net demand is captured in the model without altering the underlying net demand shapes that define ramping challenges. The results demonstrate the importance of carefully performing the clustering of representative days with the model selected expansion plans differing greatly in terms of both the total installed capacity and technology choice. The thesis then investigates the role of uncertainty in the important system planning question of quantifying decarbonization costs. I focus on the Ghanaian system to provide a benchmark for developing countries and provide insight into the relatively under-studied sub-Saharan region. To do so a generation expansion planning model is modified to incorporate the reality of fuel shortages and fuel switching typical of a developing country’s power system. From this modelling, a range of emission reduction costs are generated that provide important benchmarks and I identify drivers of these costs specific to developing countries. The results demonstrate that discount rates, representing Ghana’s access to capital, are a particularly important variable for developing countries. Lower discount rates can lead to more investment in capital intensive renewable energy in the long run but can also lock-in additional conventional generation investment in the short term. The thesis then turns to the investigation of the importance of representing a wide range of economic and physical sources of uncertainty into the modelling of the electricity system and focuses on the method with which uncertainty is incorporated, both for investment decision making and policy analysis. The results of a United Kingdom case study demonstrate the importance of combining uncertainty across different inputs, finding that the difference between a deterministic and stochastic solution increases non-linearly when uncertainty inputs are combined. Further, it is demonstrated that combining uncertainty sources by adding a limited number of scenarios to multiple sources of uncertainty outperforms adding additional scenarios to any individual source of uncertainty. Finally, the representation of uncertainty as individual scenarios is shown to underestimate the range of price outcomes and overestimate the range of potential CO2 emission outcomes, given uncertainty.The final study of the thesis compares six different policy options for reducing carbon emissions in the electricity system: a cap on CO2 emissions (as with a cap and trade scheme), a CO2 price, a renewable capacity target, a green certificates scheme, a renewable generation subsidy, and a renewable capital grant under different treatments of long-term uncertainty. In a case study of a small power system, the results show that using common modelling approaches that attempt to capture uncertainty as multiple different independent scenarios (such as scenario analysis or Monte-Carlo simulation) perform poorly at representing the reaction of a competitive electricity market as measured by a stochastic optimisation model. A policy maker using a scenario-based approach to make decisions could set a policy 55% more restrictive than required to meet their emission target. Further, a deterministic model that ignores uncertainty can underestimate carbon abatement costs by up to 85%. Incorporating uncertainty as individual scenarios only slightly improves this result and biases the estimated costs between price and quantity-based policy approaches to decarbonizing the system. Throughout this thesis, a continuous set of results are presented that make the case for long-term uncertainty being a critical consideration for the electricity system modeller.


2021 ◽  
Vol 16 ◽  
pp. 1-16
Author(s):  
Robiul Islam Rubel ◽  
Md. Hasan Ali ◽  
Md. Ariful Alam

Bangladesh government has announced Vision-2041 of electricity generation and distribution to uplift the socio-economic conditions of Bangladesh. It is now entering into the list of middle-income countries and now planning for energy as one key measure to sustainable development. Policymakers are trying to forecast the future per capita electricity consumption and set up a feasible way of electricity generation over longer periods for sustainable development of Bangladesh through preventing underestimation or overestimation that could cause a huge loss in the financial sector of Bangladesh. This work focuses on long-term estimation of electricity consumption for Bangladesh, time series models have been used to forecast per capita electricity consumption from fiscal year (FY) 2019/20-2040/41 (next 22 years). An actual past historical data of FY 1976/77-2018/19 (43 years) has been analysed on Minitab 17 to get the most favourable time series model for forecasting per capita electricity consumption of Bangladesh. ARIMA has appeared as the most accurate time series model over the actual historical data of 43 years with the lowest MAPE, MAD, and MSD as 4.50, 3.23, and 15.40, respectively.


2021 ◽  
Vol 56 (1) ◽  
pp. 50-58
Author(s):  
Gerrit Manthei

AbstractMany questions have been raised about the political and economic consequences of the recent surge in refugee immigration in Europe. Can refugee immigration promote long-term per capita growth? How are the drivers of per capita growth influenced by immigration? What are the policy implications of refugee immigration? Using an adjusted Cobb-Douglas production function, with labour divided into two complementary groups, this article attempts to provide some answers. By applying the model to current immigration data from Germany, this study finds that refugee immigration can lead to long-term per capita growth in the host country and that the growth is higher if refugee immigrants are relatively young and have sufficiently high qualifications. Further, capital inflows are a prerequisite for boosting per capita growth. These findings can inform policymakers of countries that continue to grapple with refugee immigration.


Author(s):  
Yousif ABDELRAHIM

This study explores the relationship between the Hofstede's cultural values of indulgence-restraint, long-term-short-term orientation, and risk aversion in 53 developed and developing countries. The author used linear multiple regression analysis, controlled for the countries' per capita income, and religiosity secondary data from multiple sources to test the two hypotheses.


Author(s):  
Parto Fazli ◽  
Ebrahim Abbasi

The objective of the study is to test experimentally the Kuznets curve of energy intensity in selected developing countries (Iran, Turkey, Malaysia, Pakistan, Egypt, Bangladesh, Indonesia and Nigeria) with the focus of D-8 countries during 1990-2014. According to the results, and by using the static and dynamic estimators and the Panel- ARDL model, the Kuznets curve was accepted for energy intensity and the per capita income threshold was estimated $3931.25. The urbanization rate and the degree of industrialization have a positive and significant effect on the GDP of consuming energy of D-8 countries in the long term. The most important policy recommendations were discussed for policy-makers and researchers.


Energies ◽  
2021 ◽  
Vol 14 (21) ◽  
pp. 7098
Author(s):  
Nikita Dmitrievich Senchilo ◽  
Denis Anatolievich Ustinov

The unevenness of the electricity consumption schedule at enterprises leads to a peak power increase, which leads to an increase in the cost of electricity supply. Energy storage devices can optimize the energy schedule by compensating the planned schedule deviations, as well as reducing consumption from the external network when participating in a demand response. However, during the day, there may be several peaks in consumption, which lead to a complete discharge of the battery to one of the peaks; as a result, total peak power consumption does not decrease. To optimize the operation of storage devices, a day-ahead forecast is often used, which allows to determine the total number of peaks. However, the power of the storage system may not be sufficient for optimal peak compensation. In this study, a long-term forecast of power consumption based on the use of exogenous parameters in the decision tree model is used. Based on the forecast, a novel algorithm for determining the optimal storage capacity for a specific consumer is developed, which optimizes the costs of leveling the load schedule.


Author(s):  
Boka Stéphane Kévin Assa

Abstract The importance of forest conservation in the fight against emissions from deforestation and forest degradation has led to reexamination of the deforestation and economic development relationship. For this purpose, we use the recent method of long-term growth rate developed by Stern et al. (2017) on 85 tropical developing countries over the period 1990–2010. Results show that the EKC is not significant. However, we find a beta convergence across developing countries in terms of deforestation per capita. In other words, these countries converge in terms of policies that prevent deforestation and forest degradation. This implies that, just as with growth effects, beta convergence effects are also important in explaining changes in forest cover in tropical developing countries. The convergence effect in forest cover change may be consistent with the forest transition hypothesis.


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