Modelling and optimization of residential electricity load under stochastic demand
Date
2024-01
Journal Title
Journal ISSN
Volume Title
Publisher
International Journal of Research in Industrial Engineering
Abstract
The paper considers a modelling framework for a set of households in residential areas using electricity as a form of
energy for domestic consumption. Considering the demand and availability of units for electricity consumption,
optimal decisions for electricity load allocation are paramount to sustain energy management. We formulate this
problem as a stochastic decision-making process model where electricity demand is characterized by Markovian
demand. The demand and supply phenomena govern the loading and operational framework, where shortage costs
are realized when demand exceeds supply. Empirical data for electricity consumption was collected from fifty
households in two residential areas within the suburbs of Kampala in Uganda. Data collection was made at hourly
intervals over a period of four months. The major problem focussed on determining an optimal electricity loading
decision to minimize consumption costs as demand changes from one state to another. Considering a multi-period
planning horizon, an optimal decision was determined for loading or not loading additional electricity units using the
Markov decision process approach. The model was tested, and the results demonstrated the existence of optimal
state-dependent decision and consumption costs considering the case study used in this study. The proposed model
can be cost-effective for managers in the electricity industry. Improved efficiency and utilization of resources for
electricity distribution systems to residential areas were realized, with subsequently enhanced service reliability to
essential energy market customers.
Description
Keywords
Demand, Electricity load, Modelling, Optimization, Stochastic
Citation
Mubiru, K. P., & Ssempijja, M. N. (2024). Modelling and optimization of residential electricity load under stochastic demand. International Journal of Research in Industrial Engineering, 13(1), 48-61.