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 autonomous robotic system


AS2FM: Enabling Statistical Model Checking of ROS 2 Systems for Robust Autonomy

Henkel, Christian, Lampacrescia, Marco, Klauck, Michaela, Morelli, Matteo

arXiv.org Artificial Intelligence

Designing robotic systems to act autonomously in unforeseen environments is a challenging task. This work presents a novel approach to use formal verification, specifically Statistical Model Checking (SMC), to verify system properties of autonomous robots at design-time. We introduce an extension of the SCXML format, designed to model system components including both Robot Operating System 2 (ROS 2) and Behavior Tree (BT) features. Further, we contribute Autonomous Systems to Formal Models (AS2FM), a tool to translate the full system model into JANI. The use of JANI, a standard format for quantitative model checking, enables verification of system properties with off-the-shelf SMC tools. We demonstrate the practical usability of AS2FM both in terms of applicability to real-world autonomous robotic control systems, and in terms of verification runtime scaling. We provide a case study, where we successfully identify problems in a ROS 2-based robotic manipulation use case that is verifiable in less than one second using consumer hardware. Additionally, we compare to the state of the art and demonstrate that our method is more comprehensive in system feature support, and that the verification runtime scales linearly with the size of the model, instead of exponentially.



Framework for Robust Localization of UUVs and Mapping of Net Pens

Botta, David, Ebner, Luca, Studer, Andrej, Reijgwart, Victor, Siegwart, Roland, Kelasidi, Eleni

arXiv.org Artificial Intelligence

This paper presents a general framework integrating vision and acoustic sensor data to enhance localization and mapping in highly dynamic and complex underwater environments, with a particular focus on fish farming. The proposed pipeline is suited to obtain both the net-relative pose estimates of an Unmanned Underwater Vehicle (UUV) and the depth map of the net pen purely based on vision data. Furthermore, this paper presents a method to estimate the global pose of an UUV fusing the net-relative pose estimates with acoustic data. The pipeline proposed in this paper showcases results on datasets obtained from industrial-scale fish farms and successfully demonstrates that the vision-based TRU-Depth model, when provided with sparse depth priors from the FFT method and combined with the Wavemap method, can estimate both net-relative and global position of the UUV in real time and generate detailed 3D maps suitable for autonomous navigation and inspection purposes.


Biology and Technology Interaction: Study identifying the impact of robotic systems on fish behaviour change in industrial scale fish farms

Evjemo, Linn Danielsen, Zhang, Qin, Alvheim, Hanne-Grete, Amundsen, Herman Biørn, Føre, Martin, Kelasidi, Eleni

arXiv.org Artificial Intelligence

The significant growth in the aquaculture industry over the last few decades encourages new technological and robotic solutions to help improve the efficiency and safety of production. In sea-based farming of Atlantic salmon in Norway, Unmanned Underwater Vehicles (UUVs) are already being used for inspection tasks. While new methods, systems and concepts for sub-sea operations are continuously being developed, these systems generally does not take into account how their presence might impact the fish. This abstract presents an experimental study on how underwater robotic operations at fish farms in Norway can affect farmed Atlantic salmon, and how the fish behaviour changes when exposed to the robot. The abstract provides an overview of the case study, the methods of analysis, and some preliminary results.


3D Water Quality Mapping using Invariant Extended Kalman Filtering for Underwater Robot Localization

Joshi, Kaustubh, Liu, Tianchen, Williams, Alan, Gray, Matthew, Lin, Xiaomin, Chopra, Nikhil

arXiv.org Artificial Intelligence

Water quality mapping for critical parameters such as temperature, salinity, and turbidity is crucial for assessing an aquaculture farm's health and yield capacity. Traditional approaches involve using boats or human divers, which are time-constrained and lack depth variability. This work presents an innovative approach to 3D water quality mapping in shallow water environments using a BlueROV2 equipped with GPS and a water quality sensor. This system allows for accurate location correction by resurfacing when errors occur. This study is being conducted at an oyster farm in the Chesapeake Bay, USA, providing a more comprehensive and precise water quality analysis in aquaculture settings.


Underwater robot guidance, navigation and control in fish net pens

Ohrem, Sveinung Johan

arXiv.org Artificial Intelligence

Abstract--Aquaculture robotics is receiving increased attention and is subject to unique challenges and opportunities for research and development. Guidance, navigation and control are all important aspects for realizing aquaculture robotics solutions that can greatly benefit the industry in the future. Sensor technologies, navigation methods, motion planners and state control all have a role to play, and this paper introduces some technologies and methods that are currently being applied in research and industry before providing some examples of challenges that can be targeted in the future. The pilots can benefit is commonly pointed downwards. In an aquaculture setting from automatic control functions, but the remotely operated however [1] presented a solution where the DVL is instead vehicles (ROVs) rarely have other functions than automatic pointed forwards.


An Autonomous Robotic System for Mapping Abandoned Mines

Neural Information Processing Systems

We present the software architecture of a robotic system for mapping abandoned mines. The software is capable of acquiring consistent 2D maps of large mines with many cycles, represented as Markov random elds. Our system has been deployed in three abandoned mines, two of which inaccessible to people, where it has acquired maps of unprecedented detail and accuracy.


Engineers Develop Tool to Improve Any Autonomous Robotic System

#artificialintelligence

A team of engineers at MIT has developed an optimization code for improving any autonomous robotic system. The code automatically identifies how and where to alter a system to improve a robot’s performance.  The engineers’ findings are set to be presented at the annual Robotics: Science and Systems conference in New York. The team included […]


Engineers devise a recipe for improving any autonomous robotic system

#artificialintelligence

Each of these robotic systems is a product of an ad hoc design process specific to that particular system. In designing an autonomous robot, engineers must run countless trial-and-error simulations, often informed by intuition. These simulations are tailored to a particular robot's components and tasks, in order to tune and optimize its performance. In some respects, designing an autonomous robot today is like baking a cake from scratch, with no recipe or prepared mix to ensure a successful outcome. Now, MIT engineers have developed a general design tool for roboticists to use as a sort of automated recipe for success.


A Survey on Trust Metrics for Autonomous Robotic Systems

DiLuoffo, Vincenzo, Michalson, William R.

arXiv.org Artificial Intelligence

This paper surveys the area of Trust Metrics related to security for autonomous robotic systems. As the robotics industry undergoes a transformation from programmed, task oriented, systems to Artificial Intelligence-enabled learning, these autonomous systems become vulnerable to several security risks, making a security assessment of these systems of critical importance. Therefore, our focus is on a holistic approach for assessing system trust which requires incorporating system, hardware, software, cognitive robustness, and supplier level trust metrics into a unified model of trust. We set out to determine if there were already trust metrics that defined such a holistic system approach. While there are extensive writings related to various aspects of robotic systems such as, risk management, safety, security assurance and so on, each source only covered subsets of an overall system and did not consistently incorporate the relevant costs in their metrics. This paper attempts to put this prior work into perspective, and to show how it might be extended to develop useful system-level trust metrics for evaluating complex robotic (and other) systems.