Closing the Loop: A Framework for Trustworthy Machine Learning in Power Systems

03/14/2022
by   Jochen Stiasny, et al.
0

Deep decarbonization of the energy sector will require massive penetration of stochastic renewable energy resources and an enormous amount of grid asset coordination; this represents a challenging paradigm for the power system operators who are tasked with maintaining grid stability and security in the face of such changes. With its ability to learn from complex datasets and provide predictive solutions on fast timescales, machine learning (ML) is well-posed to help overcome these challenges as power systems transform in the coming decades. In this work, we outline five key challenges (dataset generation, data pre-processing, model training, model assessment, and model embedding) associated with building trustworthy ML models which learn from physics-based simulation data. We then demonstrate how linking together individual modules, each of which overcomes a respective challenge, at sequential stages in the machine learning pipeline can help enhance the overall performance of the training process. In particular, we implement methods that connect different elements of the learning pipeline through feedback, thus "closing the loop" between model training, performance assessments, and re-training. We demonstrate the effectiveness of this framework, its constituent modules, and its feedback connections by learning the N-1 small-signal stability margin associated with a detailed model of a proposed North Sea Wind Power Hub system.

READ FULL TEXT

page 1

page 2

page 12

page 15

research
03/21/2023

Physics Informed Neural Networks for Phase Locked Loop Transient Stability Assessment

A significant increase in renewable energy production is necessary to ac...
research
11/05/2018

Security for Machine Learning-based Systems: Attacks and Challenges during Training and Inference

The exponential increase in dependencies between the cyber and physical ...
research
04/16/2018

Accelerating Human-in-the-loop Machine Learning: Challenges and Opportunities

Development of machine learning (ML) workflows is a tedious process of i...
research
12/02/2022

Modeling Wind Turbine Performance and Wake Interactions with Machine Learning

Different machine learning (ML) models are trained on SCADA and meteorol...
research
10/16/2020

Smart Grid: A Survey of Architectural Elements, Machine Learning and Deep Learning Applications and Future Directions

The Smart grid (SG), generally known as the next-generation power grid e...
research
03/07/2022

Automated Few-Shot Time Series Forecasting based on Bi-level Programming

New micro-grid design with renewable energy sources and battery storage ...
research
01/04/2022

FROTE: Feedback Rule-Driven Oversampling for Editing Models

Machine learning models may involve decision boundaries that change over...

Please sign up or login with your details

Forgot password? Click here to reset