
 
The multi-agent based approach only consumes 63 
kW or more during approximately 10% of the 
duration of the experiment. This is contrasted to 
30% for no load balancing at all. 
6  CONCLUSIONS 
We have performed a small-scale experiment in a 
controlled environment to evaluate the possibility of 
distributed load balancing in district heating 
systems. The results show that it is possible to 
automatically load balance district heating systems 
without any central control. Other possibilities that 
integration of substations into a communications 
network may have, besides environmental and 
economical are for example the possibility to 
prioritize certain customers, e.g., hospitals. To our 
knowledge, agent technology has never been used 
for monitoring and control of district heating 
systems. There have been experiments performed 
with centralized control of substations (Österlind, 
1982), however we show that we can achieve 
distributed concurrent automatic load balancing by 
the use of agent technology. The experiments 
described are only initial tests and there is much 
room for improvements. For instance, because of the 
flow gauges used, the agents had a limited and 
delayed view of the environment, resulting in long 
reaction times. By having continuous readings of 
consumption we believe that it is possible to better 
decide the persistence of household heating 
reductions, which makes it possible to limit 
unnecessary reductions to household heating. In 
general, it is also possible to make more informed 
decisions regarding reductions, e.g., if reduction 
assistance should be requested from several 
substations or just a few. Furthermore, it should also 
be possible to develop strategies to even out the 
negative effects of reductions over larger areas by 
manipulating the willingness for agents to cooperate 
and accept reductions. Future work includes: 
–  Investigating the scaling effects of the different 
strategies using a simulation tool (Wernstedt et 
al., 2003), as well as comparing this and other 
strategies with centralized control strategies. 
–  Performing experiments in full-scale district 
heating systems. 
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