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Forecast for the Cameroon's Residential Electricity Demand Based on the Multilinear Regression Model

机译:基于多线性回归模型的喀麦隆住宅需求预测

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The electricity needs of populations in Cameroon are increasing and are still very inadequate. Companies, public buildings and households are facing frequent blackout which constrain development and social well-being. Therefore, the present work tried to forecast the electricity demand in the residential sector in Cameroon, in order to contribute significantly to the mastery of electricity consumption and highlight decision-makers in this sector. Six macroeconomics parameters covering the period 1994-2014 are used for these issues. Stationarity tests within gross domestic product, gross domestic product per capita, electricity consumption, population and numbers of subscribers and households respectively; reveal that all the series are Ⅰ(1). Thus, the VAR (Vector Autoregressive) model has been retained to forecast the electricity demand until 2020. The cusum test and the cusum of squared test attest the stability of that model with a margin of error of 0.02%. Previsions are then more reliable and show that the electric request will skip from 1721 GWh in 2014 to more than 2481 GWh in 2020 approximatively, following a growing yearly rate of 5.36%. In order to reach its emergence, Cameroon ought to speed up its production in the domain of hydroelectric and thermal grid in order to meet the requirements in electric power in short and long term.
机译:喀麦隆人口的电力需求正在增加,仍然是非常不充分的。公司,公共建筑和家庭正面临频繁的停电,这限制了发展和社会福祉。因此,目前的工作试图预测喀麦隆的住宅行业的电力需求,以便在掌握电力消费和突出这一部门的决策者的掌握方面贡献。涵盖1994 - 2014年期间的六个宏观经济学参数用于这些问题。国内生产总值内的实体性测试,人均国内生产总值,电力消费,人口和家庭人数和家庭数量;揭示所有系列都是Ⅰ(1)。因此,已经保留了VAR(载体自回归)模型以预测到2020年的电力需求。小心试验和平方试验的CuSum以0.02%的误差幅度证明了该模型的稳定性。然后更可靠,表明电动请求将在2014年的1721年GWH跳跃到2020年的大约2481年,近似地,越来越大的速率为5.36%。为了达到其出现,喀麦隆应该加快水电和热网领域的生产,以便在短期和长期内满足电力的要求。

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