Estimating hourly lighting load profiles of rural households in East Africa applying a data-driven characterization of occupant behavior and lighting devices ownership

Q1 Economics, Econometrics and Finance
Cristina Dominguez , Kristina Orehounig , Jan Carmeliet
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引用次数: 6

Abstract

To design energy access solutions for rural households in developing countries it is important to have an accurate estimation of what their electricity consumption is. Studies reveal that they mainly use electricity to meet their lighting needs, as they cannot afford high power-consuming appliances. However, the scarce data availability and modeling complexity are a challenge to compute correctly the load profiles without collecting data on-site. This paper presents a methodology that computes the hourly lighting load profiles of rural households in East Africa requiring a small amount of publicly available input data. Combining data from household surveys, climate, and satellite imagery, the methodology applies machine learning for determining occupant behavior patterns, and lamps ownership for indoor and outdoor usage. For this, an average prediction accuracy of 80% is reached. After applying lighting requirement functions, load profiles are generated and then validated using measured data from 13 households in Kenya. Results show that the methodology is able to compute the load profiles with an average normalized root mean squared error of 0.7%, which is less compared to existing simulation approaches using on-site data. To demonstrate a broad application, the monthly lighting consumption is computed and projected geospatially for households in Kenya.

利用居住者行为和照明设备所有权的数据驱动特征估计东非农村家庭每小时照明负荷概况
要为发展中国家的农村家庭设计能源获取解决方案,重要的是要准确估计他们的用电量。研究显示,他们主要用电来满足照明需求,因为他们买不起高能耗的电器。然而,数据的稀缺和建模的复杂性是在不收集现场数据的情况下正确计算负载概况的挑战。本文提出了一种计算东非农村家庭每小时照明负荷概况的方法,该方法需要少量公开可用的输入数据。结合来自家庭调查、气候和卫星图像的数据,该方法应用机器学习来确定居住者的行为模式,以及室内和室外使用的灯具所有权。因此,平均预测精度达到80%。在应用了照明需求功能后,系统生成了负荷分布图,然后使用肯尼亚13个家庭的测量数据进行验证。结果表明,该方法能够计算出平均归一化均方根误差为0.7%的负荷曲线,与使用现场数据的现有模拟方法相比,这一误差较小。为了展示其广泛的应用,对肯尼亚家庭每月的照明消耗进行了计算和地理空间预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Development Engineering
Development Engineering Economics, Econometrics and Finance-Economics, Econometrics and Finance (all)
CiteScore
4.90
自引率
0.00%
发文量
11
审稿时长
31 weeks
期刊介绍: Development Engineering: The Journal of Engineering in Economic Development (Dev Eng) is an open access, interdisciplinary journal applying engineering and economic research to the problems of poverty. Published studies must present novel research motivated by a specific global development problem. The journal serves as a bridge between engineers, economists, and other scientists involved in research on human, social, and economic development. Specific topics include: • Engineering research in response to unique constraints imposed by poverty. • Assessment of pro-poor technology solutions, including field performance, consumer adoption, and end-user impacts. • Novel technologies or tools for measuring behavioral, economic, and social outcomes in low-resource settings. • Hypothesis-generating research that explores technology markets and the role of innovation in economic development. • Lessons from the field, especially null results from field trials and technical failure analyses. • Rigorous analysis of existing development "solutions" through an engineering or economic lens. Although the journal focuses on quantitative, scientific approaches, it is intended to be suitable for a wider audience of development practitioners and policy makers, with evidence that can be used to improve decision-making. It also will be useful for engineering and applied economics faculty who conduct research or teach in "technology for development."
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