A

MSc Project - Real-Time Partial Discharge Detection on Edge Devices

icon building Company : Alliander
icon briefcase Job Type : Internship

Number of Applicants

 : 

000+

Click to reveal the number of candidates who applied for this job.
icon loader
Apply Now
icon loader Apply Now

Let AI Supercharge Your Job Hunt!

JobCopilot scans 500,000+ company career sites daily to find jobs for you

Never miss an opportunity Save hours by auto-filling applications forms Land more interviews with tailored applications
happy man
thunder iconActivate JobCopilot

Job Description - MSc Project - Real-Time Partial Discharge Detection on Edge Devices

Currently, PD detection relies on offline analysis of collected data. Since PD signals are typically high frequency and short-lived, continuous transmission of raw waveforms is impractical and expensive. Moving detection capability to edge devices would enable immediate alerting while significantly reducing the volume of data that must be transmitted and stored.

Alliander is currently developing Vulcan, a multi-functional edge sensor for the medium voltage grid. Vulcan is designed to measure and analyze grid signals on-device. A key ambition is to perform PD detection directly on the sensor.

Running PD detection algorithms on edge hardware introduces significant constraints. Edge devices have limited computational resources, memory, and power budgets. The algorithms must therefore be lightweight enough to execute in real time while maintaining sufficient accuracy to reliably distinguish PD events from noise and other transients.

Promising solutions come from TinyML, the field concerned with deploying machine learning models on low-power microcontrollers. Techniques such as model quantization, pruning, and knowledge distillation can reduce the computational footprint of neural networks by orders of magnitude. Classical signal processing methods, such as matched filtering, wavelet transforms, and spectral analysis, also remain relevant due to their computational efficiency and interpretability.

This project will evaluate candidate algorithms for edge-based PD detection, implement the most promising approaches, and validate their performance on representative data.

Objectives

  • 1. Establish a benchmark dataset and performance metrics: Curate a labeled dataset from real cable measurements containing confirmed PD events and normal operating conditions. Define performance metrics (e.g., detection rate, false positive rate, latency, computational cost) that reflect both detection quality and edge deployment feasibility.

  • 2. Conduct a literature review and algorithm survey: Identify candidate algorithms suitable for real-time PD detection on edge devices. Approaches to investigate include matched filtering, quantized neural networks and other TinyML methods, reduced-order basis methods, wavelet transform-based detection, and spectral analysis techniques. Evaluate candidates based on accuracy, computational efficiency, memory footprint, and compatibility with target hardware.

  • 3. Implement and optimize selected algorithms: Develop implementations of the most promising algorithms. Iterate on the design to improve detection performance, reduce resource requirements, and ensure robustness. Validate performance against the benchmark dataset and defined metrics.

  • 4. Prepare field deployment: Ensure that mature algorithm implementations are ready for deployment on the Vulcan sensor. Document the code and provide guidance for integration and field testing.

What we would like to see Do not take these as a strict requirement, a sufficiently motivated student that does not match the points below should most definitely still apply:

  • Background in physics, electrical engineering, computer science, or math

  • A strong interest in machine learning

  • Experience with Python, should preferably be able to write code without assistance

Stagebureau Alliander

[email protected]

Original job MSc Project - Real-Time Partial Discharge Detection on Edge Devices posted on GrabJobs ©. To flag any issues with this job please use the Report Job button on GrabJobs.
Apply Now
Share Job
Share Job

Auto-Apply to MSc Project - Real-Time Partial Discharge Detection on Edge Devices Jobs with your AI JobCopilot

thunder icon Auto-Apply with AI

Similar MSc Project - Real-Time Partial Discharge Detection on Edge Devices Jobs in Netherlands

GrabJobs is the no1 job portal in Netherlands, connecting you to thousands of jobs fast! Find the best jobs in Netherlands, apply in 1 click and get a job today!

Mobile Apps

Copyright © 2026 Grabjobs Pte.Ltd. All Rights Reserved.