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Main Authors: Grimmeisen, Philipp, Sautter, Friedrich, Morozov, Andrey
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2401.14147
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author Grimmeisen, Philipp
Sautter, Friedrich
Morozov, Andrey
author_facet Grimmeisen, Philipp
Sautter, Friedrich
Morozov, Andrey
contents AI-controlled robotic systems pose a risk to human workers and the environment. Classical risk assessment methods cannot adequately describe such black box systems. Therefore, new methods for a dynamic risk assessment of such AI-controlled systems are required. In this paper, we introduce the concept of a new dynamic risk assessment approach for AI-controlled robotic systems. The approach pipelines five blocks: (i) a Data Logging that logs the data of the given simulation, (ii) a Skill Detection that automatically detects the executed skills with a deep learning technique, (iii) a Behavioral Analysis that creates the behavioral profile of the robotic systems, (iv) a Risk Model Generation that automatically transforms the behavioral profile and risk data containing the failure probabilities of robotic hardware components into advanced hybrid risk models, and (v) Risk Model Solvers for the numerical evaluation of the generated hybrid risk models. Keywords: Dynamic Risk Assessment, Hybrid Risk Models, M2M Transformation, ROS, AI-Controlled Robotic Systems, Deep Learning, Reinforcement Learning
format Preprint
id arxiv_https___arxiv_org_abs_2401_14147
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Concept: Dynamic Risk Assessment for AI-Controlled Robotic Systems
Grimmeisen, Philipp
Sautter, Friedrich
Morozov, Andrey
Robotics
AI-controlled robotic systems pose a risk to human workers and the environment. Classical risk assessment methods cannot adequately describe such black box systems. Therefore, new methods for a dynamic risk assessment of such AI-controlled systems are required. In this paper, we introduce the concept of a new dynamic risk assessment approach for AI-controlled robotic systems. The approach pipelines five blocks: (i) a Data Logging that logs the data of the given simulation, (ii) a Skill Detection that automatically detects the executed skills with a deep learning technique, (iii) a Behavioral Analysis that creates the behavioral profile of the robotic systems, (iv) a Risk Model Generation that automatically transforms the behavioral profile and risk data containing the failure probabilities of robotic hardware components into advanced hybrid risk models, and (v) Risk Model Solvers for the numerical evaluation of the generated hybrid risk models. Keywords: Dynamic Risk Assessment, Hybrid Risk Models, M2M Transformation, ROS, AI-Controlled Robotic Systems, Deep Learning, Reinforcement Learning
title Concept: Dynamic Risk Assessment for AI-Controlled Robotic Systems
topic Robotics
url https://arxiv.org/abs/2401.14147