PATH PLANNING BASED ON RRT-KINODYNAMIC WITH NONLINEAR MODEL PREDICTIVE CONTROL FOR HYBRID AUTONOMOUS UNDERWATER GLIDER
Indonesia, as an archipelagic nation, holds tremendous potential in the maritime sector. However, the vast maritime territory also poses serious threats, both concerning natural resource issues and territorial disputes. To address these threats, an effective surveillance system is necessary, one...
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Format: | Dissertations |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/84510 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Indonesia, as an archipelagic nation, holds tremendous potential in the maritime
sector. However, the vast maritime territory also poses serious threats, both
concerning natural resource issues and territorial disputes. To address these
threats, an effective surveillance system is necessary, one of which is through the
development of underwater vehicles capable of conducting long-term surveillance.
One suitable option for such vehicles is the Autonomous Underwater Glider (AUG)-
Hybrid. AUGs have been recognized for a decade as efficient vehicles for
exploration and operations. However, to enhance their capabilities, the addition of
"Hybrid" components such as thrusters becomes a fitting choice as it can improve
the vehicle's maneuverability and speed. With the addition of hybrid systems, the
need for adaptive and efficient control systems in navigating complex underwater
environments becomes increasingly important. Therefore, the development of
adaptive and efficient control systems, as well as accurate path and route planning,
becomes the main focus of this research.
This dissertation aims to develop an integrated approach in the development of a
hybrid autonomous underwater glider (HAUG), which includes four main stages.
The first stage involves the construction of mathematical models of the vehicle and
the underwater environment as the basis for further development. The second stage
focuses on the creation of simulations and the implementation of actual vehicles
based on the developed models. In the third stage, efficient and adaptive control
systems are introduced using Nonlinear Model Predictive Control (NMPC) and
Trapezoidal Proportional Integral Derivative (PID) methods to address navigation
challenges in dynamic environments. Finally, the fourth stage introduces a new
approach to path and routing planning that utilizes RRT* algorithm with
kinodynamic and NMPC integration, aimed at enhancing the navigation and
control capabilities of HAUG vehicles in exploring underwater environments more
efficiently and adaptively. Performance evaluation is conducted through
simulations and field experiments, showing significant improvements in the
navigation and control capabilities of HAUG vehicles.
The results of this dissertation include several important contributions. First, it
produces dynamic and kinematic models of the HAUG, as well as energy
consumption and environmental models. These models are built using the Mission
Oriented Operating Suite - Interval Programming (MOOS-IvP) and Robot
Operating System (ROS) application frameworks. Simulations show that the
performance of HAUG is in line with its design, achieving a maximum speed of 2
m/s in Autonomous Underwater Vehicle (AUV) mode and 0.503 m/s in glider mode.
Additionally, in glider mode, simulations show pitch angle stability at angles
between 21° and 30° with the lowest energy at 21° angle. Furthermore, the research
shows that the NMPC-based control system has lower energy consumption
compared to the Trapezoidal PID method. During testing, the energy consumption
using the Trapezoidal PID method reached 113.64 J, while the NMPC control
system required only 91.75 J with angles produced between 19° and 25°. Although
tested with the same target and time, the results showed that NMPC is more efficient
with 19.2% lower energy consumption. Additionally, simulation results using
RRT*-Kinodynamic demonstrated that the developed algorithm could reduce the
vehicle's travel time by up to 9.7% and energy usage by up to 12.03% in the tested
cases.
Performance evaluation is implemented through a combination of simulations and
experiments. The results show that the RRT-Kinodynamic approach enhances the
vehicle's ability to adapt to changing environmental conditions. The integration of
NMPC and the RRT-Kinodynamic algorithm allows HAUG to reach almost all
waypoints with an average Cross-Track Error (CTE) of 0.71 meters from GPS
sensor measurements and 1.03 meters from simulations against the desired
waypoint path. The standard deviation of CTE is 0.45 meters for the GPS path and
0.49 meters for the simulated path, confirming the adaptive and dynamic
capabilities of this approach in dealing with complex environmental conditions. |
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