Fault Detection in Electrical Distribution System using Autoencoders
- URL: http://arxiv.org/abs/2602.14939v1
- Date: Mon, 16 Feb 2026 17:21:35 GMT
- Title: Fault Detection in Electrical Distribution System using Autoencoders
- Authors: Sidharthenee Nayak, Victor Sam Moses Babu, Chandrashekhar Narayan Bhende, Pratyush Chakraborty, Mayukha Pal,
- Abstract summary: This paper proposes an anomaly-based approach for fault detection in electrical power systems.<n>We utilize Convolutional Autoencoders (CAE) for dimensionality reduction, which requires less training time compared to conventional autoencoders.<n>The proposed method demonstrates superior performance and accuracy compared to alternative detection approaches.
- Score: 0.49259062564301753
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: In recent times, there has been considerable interest in fault detection within electrical power systems, garnering attention from both academic researchers and industry professionals. Despite the development of numerous fault detection methods and their adaptations over the past decade, their practical application remains highly challenging. Given the probabilistic nature of fault occurrences and parameters, certain decision-making tasks could be approached from a probabilistic standpoint. Protective systems are tasked with the detection, classification, and localization of faulty voltage and current line magnitudes, culminating in the activation of circuit breakers to isolate the faulty line. An essential aspect of designing effective fault detection systems lies in obtaining reliable data for training and testing, which is often scarce. Leveraging deep learning techniques, particularly the powerful capabilities of pattern classifiers in learning, generalizing, and parallel processing, offers promising avenues for intelligent fault detection. To address this, our paper proposes an anomaly-based approach for fault detection in electrical power systems, employing deep autoencoders. Additionally, we utilize Convolutional Autoencoders (CAE) for dimensionality reduction, which, due to its fewer parameters, requires less training time compared to conventional autoencoders. The proposed method demonstrates superior performance and accuracy compared to alternative detection approaches by achieving an accuracy of 97.62% and 99.92% on simulated and publicly available datasets.
Related papers
- AI-Powered Machine Learning Approaches for Fault Diagnosis in Industrial Pumps [0.0]
This study presents a practical approach for early fault detection in industrial pump systems using real-world sensor data.<n>The framework is scalable, interpretable, and suitable for real-time industrial deployment.
arXiv Detail & Related papers (2025-08-21T13:33:09Z) - Fault detection and diagnosis for the engine electrical system of a space launcher based on a temporal convolutional autoencoder and calibrated classifiers [0.0]
This paper outlines a first step toward developing an onboard fault detection and diagnostic capability for the next generation of reusable space launchers.<n>Unlike existing approaches in the literature, our solution is designed to meet a broader range of key requirements.<n>The proposed solution is based on a temporal convolutional autoencoder to automatically extract low-dimensional features from raw sensor data.
arXiv Detail & Related papers (2025-07-17T11:50:29Z) - 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) - Analyzing Adversarial Inputs in Deep Reinforcement Learning [53.3760591018817]
We present a comprehensive analysis of the characterization of adversarial inputs, through the lens of formal verification.
We introduce a novel metric, the Adversarial Rate, to classify models based on their susceptibility to such perturbations.
Our analysis empirically demonstrates how adversarial inputs can affect the safety of a given DRL system with respect to such perturbations.
arXiv Detail & Related papers (2024-02-07T21:58:40Z) - A Robust and Explainable Data-Driven Anomaly Detection Approach For
Power Electronics [56.86150790999639]
We present two anomaly detection and classification approaches, namely the Matrix Profile algorithm and anomaly transformer.
The Matrix Profile algorithm is shown to be well suited as a generalizable approach for detecting real-time anomalies in streaming time-series data.
A series of custom filters is created and added to the detector to tune its sensitivity, recall, and detection accuracy.
arXiv Detail & Related papers (2022-09-23T06:09:35Z) - Ranking-Based Physics-Informed Line Failure Detection in Power Grids [66.0797334582536]
Real-time and accurate detecting of potential line failures is the first step to mitigating the extreme weather impact and activating emergency controls.
Power balance equations nonlinearity, increased uncertainty in generation during extreme events, and lack of grid observability compromise the efficiency of traditional data-driven failure detection methods.
This paper proposes a Physics-InformEd Line failure Detector (FIELD) that leverages grid topology information to reduce sample and time complexities and improve localization accuracy.
arXiv Detail & Related papers (2022-08-31T18:19:25Z) - Design Methodology for Deep Out-of-Distribution Detectors in Real-Time
Cyber-Physical Systems [5.233831361879669]
An out-of-distribution (OOD) detector can run in parallel with an ML model and flag inputs that could lead to undesirable outcomes.
This study proposes a design methodology to tune deep OOD detectors to meet the accuracy and response time requirements of embedded applications.
arXiv Detail & Related papers (2022-07-29T14:06:27Z) - Self-Supervised Training with Autoencoders for Visual Anomaly Detection [61.62861063776813]
We focus on a specific use case in anomaly detection where the distribution of normal samples is supported by a lower-dimensional manifold.
We adapt a self-supervised learning regime that exploits discriminative information during training but focuses on the submanifold of normal examples.
We achieve a new state-of-the-art result on the MVTec AD dataset -- a challenging benchmark for visual anomaly detection in the manufacturing domain.
arXiv Detail & Related papers (2022-06-23T14:16:30Z) - Transfer Learning for Fault Diagnosis of Transmission Lines [55.971052290285485]
A novel transfer learning framework based on a pre-trained LeNet-5 convolutional neural network is proposed.
It is able to diagnose faults for different transmission line lengths and impedances by transferring the knowledge from a source neural network to predict a dissimilar target dataset.
arXiv Detail & Related papers (2022-01-20T06:36:35Z) - Anomaly Detection Based on Selection and Weighting in Latent Space [73.01328671569759]
We propose a novel selection-and-weighting-based anomaly detection framework called SWAD.
Experiments on both benchmark and real-world datasets have shown the effectiveness and superiority of SWAD.
arXiv Detail & Related papers (2021-03-08T10:56:38Z)
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.