开发用于预测发展中地区电力需求的建模框架:利用乌干达进行概念验证

C. Ajinjeru, Adewale Odukomaiya, O. Omitaomu
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引用次数: 2

摘要

准确和详细的能源需求估算对于实现充分的能源基础设施规划至关重要。在许多发展中国家,这些估计往往不存在或不足,因此,电力供应不可靠。提出了一种估算电力需求的新方法。我们的方法使用1平方公里空间分辨率的全球地理人口数据库作为基础输入。空间人口数据的使用是基于这样一个前提,即用电量取决于人们所处的位置。这些人口计数被转换为电力客户,以创建可以映射的空间电力需求数据。由此产生的电力需求图可能对能源基础设施规划有价值。在这项研究中,乌干达被用作试点案例研究。分析表明,要满足最低电力需求情景,还需要增加1.5吉瓦的发电能力。所开发的方法可以推广到其他感兴趣的地区。
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Development of a modeling framework to forecast power demands in developing regions: Proof of concept using Uganda
Accurate and detailed energy demand estimates are crucial to achieving adequate energy infrastructure planning. These estimates are often non-existent or deficient in many developing countries, and consequently, electricity supply is unreliable. A novel approach for estimating electricity demand is presented. Our approach uses a global geographical population database with 1km2 spatial resolution as the foundational input. The use of spatial population data is based on the premise that electricity consumption is dependent on where people are located. These population counts are converted to electrical customers to create spatial power demand data which can be mapped. The resulting power demand maps could be valuable for energy infrastructure planning. In this study, Uganda is used as a pilot case-study. Analysis suggests that an additional 1.5 GW of power generation capacity needs to be availed to meet the lowest power demand scenario. The methodology developed can be extended to other regions of interest.
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