Learning the Noise of Failure: Intelligent System Tests for Robots
- URL: http://arxiv.org/abs/2102.08080v1
- Date: Tue, 16 Feb 2021 11:06:45 GMT
- Title: Learning the Noise of Failure: Intelligent System Tests for Robots
- Authors: Felix Sygulla and Daniel Rixen
- Abstract summary: We propose a simulated noise estimate for the detection of failures in automated system tests of robots.
The technique may empower real-world automated system tests without human evaluation of success or failure.
- Score: 1.713291434132985
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Roboticists usually test new control software in simulation environments
before evaluating its functionality on real-world robots. Simulations reduce
the risk of damaging the hardware and can significantly increase the
development process's efficiency in the form of automated system tests.
However, many flaws in the software remain undetected in simulation data,
revealing their harmful effects on the system only in time-consuming
experiments. In reality, such irregularities are often easily recognized solely
by the robot's airborne noise during operation. We propose a simulated noise
estimate for the detection of failures in automated system tests of robots. The
classification of flaws uses classical machine learning - a support vector
machine - to identify different failure classes from the scalar noise estimate.
The methodology is evaluated on simulation data from the humanoid robot LOLA.
The approach yields high failure detection accuracy with a low false-positive
rate, enabling its use for stricter automated system tests. Results indicate
that a single trained model may work for different robots. The proposed
technique is provided to the community in the form of the open-source tool
NoisyTest, making it easy to test data from any robot. In a broader scope, the
technique may empower real-world automated system tests without human
evaluation of success or failure.
Related papers
- Simulation-Aided Policy Tuning for Black-Box Robot Learning [47.83474891747279]
We present a novel black-box policy search algorithm focused on data-efficient policy improvements.
The algorithm learns directly on the robot and treats simulation as an additional information source to speed up the learning process.
We show fast and successful task learning on a robot manipulator with the aid of an imperfect simulator.
arXiv Detail & Related papers (2024-11-21T15:52:23Z) - Unsupervised Learning of Effective Actions in Robotics [0.9374652839580183]
Current state-of-the-art action representations in robotics lack proper effect-driven learning of the robot's actions.
We propose an unsupervised algorithm to discretize a continuous motion space and generate "action prototypes"
We evaluate our method on a simulated stair-climbing reinforcement learning task.
arXiv Detail & Related papers (2024-04-03T13:28:52Z) - Model-Based Runtime Monitoring with Interactive Imitation Learning [30.70994322652745]
This work aims to endow a robot with the ability to monitor and detect errors during task execution.
We introduce a model-based runtime monitoring algorithm that learns from deployment data to detect system anomalies and anticipate failures.
Our method outperforms the baselines across system-level and unit-test metrics, with 23% and 40% higher success rates in simulation and on physical hardware.
arXiv Detail & Related papers (2023-10-26T16:45:44Z) - DiAReL: Reinforcement Learning with Disturbance Awareness for Robust
Sim2Real Policy Transfer in Robot Control [0.0]
Delayed Markov decision processes fulfill the Markov property by augmenting the state space of agents with a finite time window of recently committed actions.
We introduce a disturbance-augmented Markov decision process in delayed settings as a novel representation to incorporate disturbance estimation in training on-policy reinforcement learning algorithms.
arXiv Detail & Related papers (2023-06-15T10:11:38Z) - Distributional Instance Segmentation: Modeling Uncertainty and High
Confidence Predictions with Latent-MaskRCNN [77.0623472106488]
In this paper, we explore a class of distributional instance segmentation models using latent codes.
For robotic picking applications, we propose a confidence mask method to achieve the high precision necessary.
We show that our method can significantly reduce critical errors in robotic systems, including our newly released dataset of ambiguous scenes.
arXiv Detail & Related papers (2023-05-03T05:57:29Z) - Real-to-Sim: Predicting Residual Errors of Robotic Systems with Sparse
Data using a Learning-based Unscented Kalman Filter [65.93205328894608]
We learn the residual errors between a dynamic and/or simulator model and the real robot.
We show that with the learned residual errors, we can further close the reality gap between dynamic models, simulations, and actual hardware.
arXiv Detail & Related papers (2022-09-07T15:15:12Z) - Revisiting the Adversarial Robustness-Accuracy Tradeoff in Robot
Learning [121.9708998627352]
Recent work has shown that, in practical robot learning applications, the effects of adversarial training do not pose a fair trade-off.
This work revisits the robustness-accuracy trade-off in robot learning by analyzing if recent advances in robust training methods and theory can make adversarial training suitable for real-world robot applications.
arXiv Detail & Related papers (2022-04-15T08:12:15Z) - Robot Learning from Randomized Simulations: A Review [59.992761565399185]
Deep learning has caused a paradigm shift in robotics research, favoring methods that require large amounts of data.
State-of-the-art approaches learn in simulation where data generation is fast as well as inexpensive.
We focus on a technique named 'domain randomization' which is a method for learning from randomized simulations.
arXiv Detail & Related papers (2021-11-01T13:55:41Z) - AURSAD: Universal Robot Screwdriving Anomaly Detection Dataset [80.6725125503521]
This report describes a dataset created using a UR3e series robot and OnRobot Screwdriver.
The resulting data contains 2042 samples of normal and anomalous robot operation.
Brief ML benchmarks using this data are also provided, showcasing the data's suitability and potential for further analysis and experimentation.
arXiv Detail & Related papers (2021-02-02T09:59:23Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.