You Only Look Twice! for Failure Causes Identification of Drill Bits
- URL: http://arxiv.org/abs/2410.14282v1
- Date: Fri, 18 Oct 2024 08:39:49 GMT
- Title: You Only Look Twice! for Failure Causes Identification of Drill Bits
- Authors: Asma Yamani, Nehal Al-Otaiby, Haifa Al-Shemmeri, Imane Boudellioua,
- Abstract summary: This study investigates various causes of drill bit failure using images of different blades.
The process involves annotating cutters with their respective locations and damage types.
The integration of the complete automated pipeline successfully identified 100% of the 24 failure causes.
- Score: 0.0
- License:
- Abstract: Efficient identification of the root causes of drill bit failure is crucial due to potential impacts such as operational losses, safety threats, and delays. Early recognition of these failures enables proactive maintenance, reducing risks and financial losses associated with unforeseen breakdowns and prolonged downtime. Thus, our study investigates various causes of drill bit failure using images of different blades. The process involves annotating cutters with their respective locations and damage types, followed by the development of two YOLO Location and Damage Cutter Detection models, as well as multi-class multi-label Decision Tree and Random Forests models to identify the causes of failure by assessing the cutters' location and damage type. Additionally, RRFCI is proposed for the classification of failure causes. Notably, the cutter location detection model achieved a high score of 0.97 mPA, and the cutter damage detection model yielded a 0.49 mPA. The rule-based approach over-performed both DT and RF in failure cause identification, achieving a macro-average F1-score of 0.94 across all damage causes. The integration of the complete automated pipeline successfully identified 100\% of the 24 failure causes when tested on independent sets of ten drill bits, showcasing its potential to efficiently assist experts in identifying the root causes of drill bit damages.
Related papers
- DeepDamageNet: A two-step deep-learning model for multi-disaster building damage segmentation and classification using satellite imagery [12.869300064524122]
We present a solution that performs the two most important tasks in building damage assessment, segmentation and classification, through deep-learning models.
Our best model couples a building identification semantic segmentation convolutional neural network (CNN) to a building damage classification CNN, with a combined F1 score of 0.66.
We find that though our model was able to identify buildings with relatively high accuracy, building damage classification across various disaster types is a difficult task.
arXiv Detail & Related papers (2024-05-08T04:21:03Z) - FaultGuard: A Generative Approach to Resilient Fault Prediction in Smart Electrical Grids [53.2306792009435]
FaultGuard is the first framework for fault type and zone classification resilient to adversarial attacks.
We propose a low-complexity fault prediction model and an online adversarial training technique to enhance robustness.
Our model outclasses the state-of-the-art for resilient fault prediction benchmarking, with an accuracy of up to 0.958.
arXiv Detail & Related papers (2024-03-26T08:51:23Z) - Malicious Agent Detection for Robust Multi-Agent Collaborative Perception [52.261231738242266]
Multi-agent collaborative (MAC) perception is more vulnerable to adversarial attacks than single-agent perception.
We propose Malicious Agent Detection (MADE), a reactive defense specific to MAC perception.
We conduct comprehensive evaluations on a benchmark 3D dataset V2X-sim and a real-road dataset DAIR-V2X.
arXiv Detail & Related papers (2023-10-18T11:36:42Z) - Causal Disentanglement Hidden Markov Model for Fault Diagnosis [55.90917958154425]
We propose a Causal Disentanglement Hidden Markov model (CDHM) to learn the causality in the bearing fault mechanism.
Specifically, we make full use of the time-series data and progressively disentangle the vibration signal into fault-relevant and fault-irrelevant factors.
To expand the scope of the application, we adopt unsupervised domain adaptation to transfer the learned disentangled representations to other working environments.
arXiv Detail & Related papers (2023-08-06T05:58:45Z) - Zero-Shot Motor Health Monitoring by Blind Domain Transition [17.664784126708742]
We propose a zero-shot bearing fault detection method that can detect any fault on a new (target) machine regardless of the working conditions, sensor parameters, or fault characteristics.
Experimental results demonstrate that this novel approach can accurately detect any bearing fault achieving an average recall rate of around 89% and 95% on two target machines regardless of its type, severity, and location.
arXiv Detail & Related papers (2022-12-12T18:36:02Z) - A New Knowledge Distillation Network for Incremental Few-Shot Surface
Defect Detection [20.712532953953808]
This paper proposes a new knowledge distillation network, called Dual Knowledge Align Network (DKAN)
The proposed DKAN method follows a pretraining-finetuning transfer learning paradigm and a knowledge distillation framework is designed for fine-tuning.
Experiments have been conducted on the incremental Few-shot NEU-DET dataset and results show that DKAN outperforms other methods on various few-shot scenes.
arXiv Detail & Related papers (2022-09-01T15:08:44Z) - Learning to Identify Drilling Defects in Turbine Blades with Single
Stage Detectors [15.842163335920954]
We propose a model based on Retina drilling defects in X-ray images of turbine blades.
The application is challenging due to the image resolutions in which defects are very small and hardly captured by the commonly used anchor sizes.
We validate the model with $3$-fold cross-validation, showing a very high accuracy in identifying images with defects.
arXiv Detail & Related papers (2022-08-08T18:44:51Z) - Tightening the Approximation Error of Adversarial Risk with Auto Loss
Function Search [12.263913626161155]
A common type of evaluation is to approximate the adversarial risk of a model as a robustness indicator.
We propose AutoLoss-AR, the first method for searching loss functions for tightening the error.
The results demonstrate the effectiveness of the proposed methods.
arXiv Detail & Related papers (2021-11-09T11:47:43Z) - Real-Time Anomaly Detection in Edge Streams [49.26098240310257]
We propose MIDAS, which focuses on detecting microcluster anomalies, or suddenly arriving groups of suspiciously similar edges.
We further propose MIDAS-F, to solve the problem by which anomalies are incorporated into the algorithm's internal states.
Experiments show that MIDAS-F has significantly higher accuracy than MIDAS.
arXiv Detail & Related papers (2020-09-17T17:59:27Z) - RescueNet: Joint Building Segmentation and Damage Assessment from
Satellite Imagery [83.49145695899388]
RescueNet is a unified model that can simultaneously segment buildings and assess the damage levels to individual buildings and can be trained end-to-end.
RescueNet is tested on the large scale and diverse xBD dataset and achieves significantly better building segmentation and damage classification performance than previous methods.
arXiv Detail & Related papers (2020-04-15T19:52:09Z) - Transferable, Controllable, and Inconspicuous Adversarial Attacks on
Person Re-identification With Deep Mis-Ranking [83.48804199140758]
We propose a learning-to-mis-rank formulation to perturb the ranking of the system output.
We also perform a back-box attack by developing a novel multi-stage network architecture.
Our method can control the number of malicious pixels by using differentiable multi-shot sampling.
arXiv Detail & Related papers (2020-04-08T18:48:29Z)
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.