Bayesian Error-in-Variables Models for the Identification of Power
Networks
- URL: http://arxiv.org/abs/2107.04480v1
- Date: Fri, 9 Jul 2021 15:10:47 GMT
- Title: Bayesian Error-in-Variables Models for the Identification of Power
Networks
- Authors: Jean-S\'ebastien Brouillon, Emanuele Fabbiani, Pulkit Nahata, Florian
D\"orfler, Giancarlo Ferrari-Trecate
- Abstract summary: A reliable estimate of the admittance matrix may either be missing or quicklybecome obsolete for temporally varying grids.
We propose a data-driven identificationmethod utilising voltage and current measurements collected from micro-PMUs.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The increasing integration of intermittent renewable generation, especially
at the distribution level,necessitates advanced planning and optimisation
methodologies contingent on the knowledge of thegrid, specifically the
admittance matrix capturing the topology and line parameters of an
electricnetwork. However, a reliable estimate of the admittance matrix may
either be missing or quicklybecome obsolete for temporally varying grids. In
this work, we propose a data-driven identificationmethod utilising voltage and
current measurements collected from micro-PMUs. More precisely,we first present
a maximum likelihood approach and then move towards a Bayesian
framework,leveraging the principles of maximum a posteriori estimation. In
contrast with most existing con-tributions, our approach not only factors in
measurement noise on both voltage and current data,but is also capable of
exploiting available a priori information such as sparsity patterns and
knownline parameters. Simulations conducted on benchmark cases demonstrate
that, compared to otheralgorithms, our method can achieve significantly greater
accuracy.
Related papers
- Unrolled denoising networks provably learn optimal Bayesian inference [54.79172096306631]
We prove the first rigorous learning guarantees for neural networks based on unrolling approximate message passing (AMP)
For compressed sensing, we prove that when trained on data drawn from a product prior, the layers of the network converge to the same denoisers used in Bayes AMP.
arXiv Detail & Related papers (2024-09-19T17:56:16Z) - Distribution Grid Line Outage Identification with Unknown Pattern and
Performance Guarantee [6.72184534513047]
Line outage identification in distribution grids is essential for sustainable grid operation.
We propose a practical yet robust detection approach that utilizes only readily available voltage magnitudes.
arXiv Detail & Related papers (2023-09-10T21:11:36Z) - 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) - Sparse high-dimensional linear regression with a partitioned empirical
Bayes ECM algorithm [62.997667081978825]
We propose a computationally efficient and powerful Bayesian approach for sparse high-dimensional linear regression.
Minimal prior assumptions on the parameters are used through the use of plug-in empirical Bayes estimates.
The proposed approach is implemented in the R package probe.
arXiv Detail & Related papers (2022-09-16T19:15:50Z) - Large-Scale Sequential Learning for Recommender and Engineering Systems [91.3755431537592]
In this thesis, we focus on the design of an automatic algorithms that provide personalized ranking by adapting to the current conditions.
For the former, we propose novel algorithm called SAROS that take into account both kinds of feedback for learning over the sequence of interactions.
The proposed idea of taking into account the neighbour lines shows statistically significant results in comparison with the initial approach for faults detection in power grid.
arXiv Detail & Related papers (2022-05-13T21:09:41Z) - Scalable Marginal Likelihood Estimation for Model Selection in Deep
Learning [78.83598532168256]
Marginal-likelihood based model-selection is rarely used in deep learning due to estimation difficulties.
Our work shows that marginal likelihoods can improve generalization and be useful when validation data is unavailable.
arXiv Detail & Related papers (2021-04-11T09:50:24Z) - Bayesian Imaging With Data-Driven Priors Encoded by Neural Networks:
Theory, Methods, and Algorithms [2.266704469122763]
This paper proposes a new methodology for performing Bayesian inference in imaging inverse problems where the prior knowledge is available in the form of training data.
We establish the existence and well-posedness of the associated posterior moments under easily verifiable conditions.
A model accuracy analysis suggests that the Bayesian probability probabilities reported by the data-driven models are also remarkably accurate under a frequentist definition.
arXiv Detail & Related papers (2021-03-18T11:34:08Z) - Amortized Conditional Normalized Maximum Likelihood: Reliable Out of
Distribution Uncertainty Estimation [99.92568326314667]
We propose the amortized conditional normalized maximum likelihood (ACNML) method as a scalable general-purpose approach for uncertainty estimation.
Our algorithm builds on the conditional normalized maximum likelihood (CNML) coding scheme, which has minimax optimal properties according to the minimum description length principle.
We demonstrate that ACNML compares favorably to a number of prior techniques for uncertainty estimation in terms of calibration on out-of-distribution inputs.
arXiv Detail & Related papers (2020-11-05T08:04:34Z) - Identification of AC Networks via Online Learning [0.0]
This paper proposes an online learning procedure to estimate the network admittance matrix capturing topological information and line parameters.
Our approach improves on existing techniques, and its effectiveness is substantiated by numerical studies on realistic testbeds.
arXiv Detail & Related papers (2020-03-13T11:40:53Z) - Bayesian System ID: Optimal management of parameter, model, and
measurement uncertainty [0.0]
We evaluate the robustness of a probabilistic formulation of system identification (ID) to sparse, noisy, and indirect data.
We show that the log posterior has improved geometric properties compared with the objective function surfaces of traditional methods.
arXiv Detail & Related papers (2020-03-04T22:48:30Z)
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.