SPEED CONTROL DESIGN OF THE AUTOMATED PEOPLE MOVER SYSTEM TRAIN USING PID PARTICLE SWARM OPTIMIZATION PARALLELED WITH FUZZY LOGIC SUGENO FOR SPEED AND POSITION TARGET TO NUMBER OF PASSENGERS VARIATIONS
Technology development has made an impact to the transportation system and Automated People Movers (APMS) at Soekarno-Hatta Airport is one of it. APMS is a transportation system designed to operated automatically. However, at the moment, the operation is still carried out manually because the spe...
Saved in:
Main Author: | |
---|---|
Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/52583 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Technology development has made an impact to the transportation system and
Automated People Movers (APMS) at Soekarno-Hatta Airport is one of it. APMS is
a transportation system designed to operated automatically. However, at the
moment, the operation is still carried out manually because the speed controller on
Automatic Train Operation (ATO) subsystem in signal of Communication Based
Train Control (CBTC) does not work optimally which results in low performances
in the time schedule and the final position of the train. Because of that, this
research's goal is to make a speed control design of the APMS that controsl the
operation of the train optimally and automatically.
The research begins with determination the dynamic system model of the train and
the speed profile of the train. After that, the optimal speed control is designed to
follow the reference of speed control using Proportional Integral Derivative
Particle Swarm Optimization (PID PSO) with minimun errors as the objective
function. Next, the fuzzy logic Sugeno is designed parallel with the PID PSO to
compensate the error by the change of the number of passengers, so the train
controller is able to overcome the uncertainty of the number of passengers.
In this research, there were three parts of control simulation, PID auto tuning as a
comparison, PID PSO, and PID PSO paralleled with Fuzzy Logic Sugeno.
Simulation was carried out by five variations of the train mass based on the number
of passengers to compare the performance of each controller in handling the
variation of condition caused by the uncertainty of number of passengers. The
simulation result showed that the speed controller design can follow the train
profile determined by means of speed Root Mean Square Error (RMSE) is 7,940x10-
4 for the PID PSO and 7,620x10-4 for the PID PSO with Fuzzy Logic Sugeno and
also standard deviation of speed RMSE is 8,182x10-5 for the PID PSO and
4,228x10-5 for the PID PSO with Fuzzy Logic Sugeno. |
---|