Predicting Levels of Household Electricity Consumption in Low-Access Settings
Simone Fobi, Joel Mugyenyi, Nathaniel J. Williams, Vijay Modi, Jay, Taneja

TL;DR
This study develops a CNN-based method using satellite imagery and geospatial data to predict individual household electricity consumption in low-income settings, aiding utility planning and resource allocation.
Contribution
It introduces a novel two-stage approach combining building segmentation and satellite imagery analysis to predict consumption at the building level in low-income areas.
Findings
Achieves competitive prediction accuracy at the building level.
Shows building characteristics and surroundings are key predictors.
Demonstrates potential for site selection and distribution planning.
Abstract
In low-income settings, the most critical piece of information for electric utilities is the anticipated consumption of a customer. Electricity consumption assessment is difficult to do in settings where a significant fraction of households do not yet have an electricity connection. In such settings the absolute levels of anticipated consumption can range from 5-100 kWh/month, leading to high variability amongst these customers. Precious resources are at stake if a significant fraction of low consumers are connected over those with higher consumption. This is the first study of it's kind in low-income settings that attempts to predict a building's consumption and not that of an aggregate administrative area. We train a Convolutional Neural Network (CNN) over pre-electrification daytime satellite imagery with a sample of utility bills from 20,000 geo-referenced electricity customers in…
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Videos
Predicting Levels of Household Electricity Consumption in Low-Access Settings· youtube
Taxonomy
TopicsImpact of Light on Environment and Health · Energy and Environment Impacts · Human Mobility and Location-Based Analysis
