Abstract:
In Pakistan, domestic electricity consumption accounts for approximately 40% of the electricity sale
share, stressing requirement of forecasting this consumption sector load profiles for establishing
demand side management policies ever more important. It has become crucial for power generating
companies to profile their clients' electricity consumption profiles in recent times. This process would
allow them to optimize their grids by providing only enough power to serve their clients keeping in
view the demand and thus avoid wastages and unnecessary strain on whole system particularly
transmission system hence resultantly enables to bridge the gap between electrical supply and demand
efficiently. Moreover, this step helps consider efficient electricity generation from renewable sources,
like solar and wind, which require a power storage device. The best way for these companies to achieve
this goal is by developing load profiling models that simulate consumers’ domestic power consumption
under different load conditions and factors effecting these. Efficient electricity infrastructure based on
accurately monitored load profiles of consumer will help implement smart grid infrastructure and
demand side management solutions in a developing country like Pakistan in near future. This work
undertakes to develop a model which forecast household electricity consumption profiles using
coherent technique i.e. agent-based modelling. It considers a population having 300 households and
then uses the Any-Logic software to model their behaviour according to their activities investigated
through variables and functions. Multi layered hierarchal scheme incorporating agents and their
characteristics subject to actions taken in inter-related environment based on their habits, nature,
occupancy profiles and patterns is considered. This work discusses the processes involved in Agent
based modelling and simulation environment which reflects characteristics in respect of the modelled
entities to simulate actual operating conditions of the appliances for generating a high resolution
household energy demand profile. Results show that the agent-based simulated total electricity
consumption in kWh for a given set of households in a month approximates real time validated data
with difference of 2.4%. Hence, this approach proves viable for the purpose of obtaining this vital
information i.e. electricity load profiles through observing daily, weekly, yearly patterns of the
electrical appliance consumption by households.