Early wind turbine alarm prediction based on machine learning: AlarmForecasting
- URL: http://arxiv.org/abs/2510.06831v1
- Date: Wed, 08 Oct 2025 09:53:49 GMT
- Title: Early wind turbine alarm prediction based on machine learning: AlarmForecasting
- Authors: Syed Shazaib Shah, Daoliang Tan,
- Abstract summary: This study aims to offer a transformativeleap towards preempting alarms, preventing alarms from triggering altogether, and consequently avertingimpending failures.<n>Our proposed Alarm Forecasting and Classification (AFC) framework is designed on twosuccessive modules.<n>14 Senvion MM82turbines with an operational period of 5 years are used as a case study.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Alarm data is pivotal in curbing fault behavior in Wind Turbines (WTs) and forms the backbone for advancedpredictive monitoring systems. Traditionally, research cohorts have been confined to utilizing alarm data solelyas a diagnostic tool, merely indicative of unhealthy status. However, this study aims to offer a transformativeleap towards preempting alarms, preventing alarms from triggering altogether, and consequently avertingimpending failures. Our proposed Alarm Forecasting and Classification (AFC) framework is designed on twosuccessive modules: first, the regression module based on long short-term memory (LSTM) for time-series alarmforecasting, and thereafter, the classification module to implement alarm tagging on the forecasted alarm. Thisway, the entire alarm taxonomy can be forecasted reliably rather than a few specific alarms. 14 Senvion MM82turbines with an operational period of 5 years are used as a case study; the results demonstrated 82%, 52%,and 41% accurate forecasts for 10, 20, and 30 min alarm forecasts, respectively. The results substantiateanticipating and averting alarms, which is significant in curbing alarm frequency and enhancing operationalefficiency through proactive intervention.
Related papers
- Forecasting Continuum Intensity for Solar Active Region Emergence Prediction using Transformers [34.25104679311873]
Early and accurate prediction of solar active region (AR) emergence is crucial for space weather forecasting.<n>We investigate a sliding-window Transformer architecture to forecast continuum intensity evolution up to 12 hours ahead using data from 46 ARs observed by SDO/HMI.<n>Our best-performing model, combining the Early Detection architecture without the Conv1D layer, achieved a Root Mean Square Error (RMSE) of 0.1189.<n>While the Transformer demonstrates superior aggregate timing and accuracy, we note that this high-sensitivity detection comes with increased variance compared to smoother baseline models.
arXiv Detail & Related papers (2026-01-19T15:25:04Z) - Forecasting Fails: Unveiling Evasion Attacks in Weather Prediction Models [60.728124907335]
This work introduces Weather Adaptive Adversarial Perturbation Optimization (WAAPO), a novel framework for generating targeted adversarial perturbations.<n>WAAPO achieves this by incorporating constraints for channel sparsity, spatial localization, and smoothness, ensuring that perturbations remain physically realistic and imperceptible.<n>Our experiments highlight critical vulnerabilities in AI-driven forecasting models, where small perturbations to initial conditions can result in significant deviations.
arXiv Detail & Related papers (2025-12-09T17:20:56Z) - Revisiting Multivariate Time Series Forecasting with Missing Values [74.56971641937771]
Missing values are common in real-world time series.<n>Current approaches have developed an imputation-then-prediction framework that uses imputation modules to fill in missing values, followed by forecasting on the imputed data.<n>This framework overlooks a critical issue: there is no ground truth for the missing values, making the imputation process susceptible to errors that can degrade prediction accuracy.<n>We introduce Consistency-Regularized Information Bottleneck (CRIB), a novel framework built on the Information Bottleneck principle.
arXiv Detail & Related papers (2025-09-27T20:57:48Z) - AI-Enabled Operations at Fermi Complex: Multivariate Time Series Prediction for Outage Prediction and Diagnosis [0.6282171844772421]
Main Control Room of Fermilab accelerator complex continuously gathers extensive time-series data from thousands of sensors monitoring the beam.<n> unplanned events such as trips or voltage fluctuations often result in beam outages, causing operational downtime.<n>This downtime not only consumes operator effort in diagnosing and addressing the issue but also leads to unnecessary energy consumption by idle machines awaiting beam restoration.
arXiv Detail & Related papers (2025-01-02T19:31:48Z) - An AI-Driven Approach to Wind Turbine Bearing Fault Diagnosis from Acoustic Signals [10.64491245858684]
This study developed a deep learning model for the classification of bearing faults in wind turbine generators from acoustic signals.
A convolutional LSTM model was constructed and trained by using audio data from five predefined fault types for both training and validation.
The model exhibited outstanding accuracy on training samples and demonstrated excellent generalization ability during validation.
arXiv Detail & Related papers (2024-03-14T01:46:30Z) - Forecasting Particle Accelerator Interruptions Using Logistic LASSO
Regression [62.997667081978825]
Unforeseen particle accelerator interruptions, also known as interlocks, lead to abrupt operational changes despite being necessary safety measures.
We propose a simple yet powerful binary classification model aiming to forecast such interruptions.
The model is formulated as logistic regression penalized by at least absolute shrinkage and selection operator.
arXiv Detail & Related papers (2023-03-15T23:11:30Z) - Classification of Methods to Reduce Clinical Alarm Signals for Remote
Patient Monitoring: A Critical Review [16.140794437173014]
Remote Patient Monitoring (RPM) is an emerging technology paradigm that helps reduce clinician workload by automated monitoring and raising intelligent alarm signals.
High sensitivity and intelligent data-processing algorithms used in RPM devices result in frequent false-positive alarms, resulting in alarm fatigue.
This study aims to critically review the existing literature to identify the causes of these false-positive alarms and categorize the various interventions used in the literature to eliminate these causes.
arXiv Detail & Related papers (2023-02-08T05:21:02Z) - Time-to-Green predictions for fully-actuated signal control systems with
supervised learning [56.66331540599836]
This paper proposes a time series prediction framework using aggregated traffic signal and loop detector data.
We utilize state-of-the-art machine learning models to predict future signal phases' duration.
Results based on an empirical data set from a fully-actuated signal control system in Zurich, Switzerland, show that machine learning models outperform conventional prediction methods.
arXiv Detail & Related papers (2022-08-24T07:50:43Z) - Alarm-Based Root Cause Analysis in Industrial Processes Using Deep
Learning [0.0]
This research aims to model the relations between industrial alarms using historical alarm data in the database.
As a case study, the proposed model is implemented in the well-known Tennessee Eastman process.
arXiv Detail & Related papers (2022-03-21T20:10:48Z) - Detection of Correlated Alarms Using Graph Embedding [0.0]
This paper tries to present a novel method for detecting correlated alarms based on artificial intelligence methods.
The proposed method is based on graph embedding and alarm clustering, resulting in the detection of correlated alarms.
arXiv Detail & Related papers (2022-01-17T05:50:45Z) - Sample-Efficient Safety Assurances using Conformal Prediction [57.92013073974406]
Early warning systems can provide alerts when an unsafe situation is imminent.
To reliably improve safety, these warning systems should have a provable false negative rate.
We present a framework that combines a statistical inference technique known as conformal prediction with a simulator of robot/environment dynamics.
arXiv Detail & Related papers (2021-09-28T23:00:30Z) - No Need to Know Physics: Resilience of Process-based Model-free Anomaly
Detection for Industrial Control Systems [95.54151664013011]
We present a novel framework to generate adversarial spoofing signals that violate physical properties of the system.
We analyze four anomaly detectors published at top security conferences.
arXiv Detail & Related papers (2020-12-07T11:02:44Z)
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.