Abstract: |
Energy consumption of a rail
transit system depends on many parameters. One of the most effective
methods of reducing energy consumption in a rail transit system is
optimising the speed profile of the trains along the route. A new
efficient method will be presented for the optimisation of the coasting
points for trains in a global manner. The proposed approach includes
realistic system modelling using multi-train, multi-line simulation
software and application of artificial neural networks (ANN) and genetic
algorithms (GA). The simulation software used can model regenerative
braking and train performance at low voltages. Using ANN and GA together,
optimal coasting points for long line sections covering five stations
and two lines are achieved. Simulation software is used for creating
training and test data for the ANN. These data are used for training of
the ANN. Trained ANNs are then used for estimating energy consumption
and travel time for new sets of coasting points. Finally, the outputs of
the ANN are optimised to find optimal train coasting points. For this
purpose, a fitness function with target travel time, energy consumption
and weighting factors is proposed. An interesting observation is that
the use of ANN increases the speed of optimisation. The proposed method
is used for optimising coasting points for minimum energy consumption
for a given travel time on the first 5 km section of Istanbul AksarayAirport
metro line, where trains operate every 150 s. The section covers five
passenger stations, which means four coasting points for each line. It
has been demonstrated that an eight input ANNs can be trained with
acceptable error margins for such a system.
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