Reactive Power Optimization of a Distribution System Based on Scene Matching and Deep Belief Network

With a large number of distributed generators (DGs) and electrical vehicles (EVs) integrated into the power distribution system, the complexity of distribution system operation is increased, which arises to higher requirements for online reactive power optimization. This paper proposes two methods f...

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Main Authors: Junyong Wu, Chen Shi, Meiyang Shao, Ran An, Xiaowen Zhu, Xing Huang, Rong Cai
Format: Article
Language:English
Published: MDPI AG 2019-08-01
Series:Energies
Subjects:
Online Access:https://www.mdpi.com/1996-1073/12/17/3246
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spelling doaj-d69820c65efb48b4b161c2fb60a64c972020-11-24T21:48:59ZengMDPI AGEnergies1996-10732019-08-011217324610.3390/en12173246en12173246Reactive Power Optimization of a Distribution System Based on Scene Matching and Deep Belief NetworkJunyong Wu0Chen Shi1Meiyang Shao2Ran An3Xiaowen Zhu4Xing Huang5Rong Cai6School of Electrical Engineering, Beijing Jiaotong University, Beijing 100044, ChinaSchool of Electrical Engineering, Beijing Jiaotong University, Beijing 100044, ChinaSchool of Electrical Engineering, Beijing Jiaotong University, Beijing 100044, ChinaSchool of Electrical Engineering, Beijing Jiaotong University, Beijing 100044, ChinaSchool of Electrical Engineering, Beijing Jiaotong University, Beijing 100044, ChinaABB China Ltd., Beijing 100015, ChinaABB China Ltd., Beijing 100015, ChinaWith a large number of distributed generators (DGs) and electrical vehicles (EVs) integrated into the power distribution system, the complexity of distribution system operation is increased, which arises to higher requirements for online reactive power optimization. This paper proposes two methods for online reactive power optimization, a scene-matching method based on Random Matrix (RM) features and a deep learning method based on Deep Belief Network (DBN). Firstly, utilizing the operation and ambient Big Data (BD) of the distribution system, we construct the high-dimension Random Matrices and extract 57 state features for the subsequent scene-matching and DBN training. Secondly, the feature-based scene-matching method is proposed. Furtherly, to effectively deal with the uncertainty of DGs and to avoid the performance deterioration of the scene-matching method under a new unknown scene, the DBN-based model is constructed and trained, with the former features as the inputs and the conventional reactive power control solutions as the outputs. This DBN model can learn the nonlinear complicated relationship between the system features and the reactive power control solutions. Finally, the comprehensive case studies have been conducted on the modified IEEE-37 nodes active distribution system, and the performances of the proposed two methods are compared with the conventional method. The results show that the DBN-based method possesses the better performance than the others, and it can reduce the network losses and node voltage deviations obviously, even under the new unknown and unmatched scenes. It does not depend on the distribution system model and parameters anymore and can provide online decision-making more quickly. The discussions of the two methods under different DG penetrations and the historical data volume were given, verifying the adaptability, robustness and generalization ability of the DBN-based method.https://www.mdpi.com/1996-1073/12/17/3246Deep Belief Network (DBN)scene matchingRandom Matrix (RM)active distribution networkreactive power optimizationdata-drivendeep learning
collection DOAJ
language English
format Article
sources DOAJ
author Junyong Wu
Chen Shi
Meiyang Shao
Ran An
Xiaowen Zhu
Xing Huang
Rong Cai
spellingShingle Junyong Wu
Chen Shi
Meiyang Shao
Ran An
Xiaowen Zhu
Xing Huang
Rong Cai
Reactive Power Optimization of a Distribution System Based on Scene Matching and Deep Belief Network
Energies
Deep Belief Network (DBN)
scene matching
Random Matrix (RM)
active distribution network
reactive power optimization
data-driven
deep learning
author_facet Junyong Wu
Chen Shi
Meiyang Shao
Ran An
Xiaowen Zhu
Xing Huang
Rong Cai
author_sort Junyong Wu
title Reactive Power Optimization of a Distribution System Based on Scene Matching and Deep Belief Network
title_short Reactive Power Optimization of a Distribution System Based on Scene Matching and Deep Belief Network
title_full Reactive Power Optimization of a Distribution System Based on Scene Matching and Deep Belief Network
title_fullStr Reactive Power Optimization of a Distribution System Based on Scene Matching and Deep Belief Network
title_full_unstemmed Reactive Power Optimization of a Distribution System Based on Scene Matching and Deep Belief Network
title_sort reactive power optimization of a distribution system based on scene matching and deep belief network
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2019-08-01
description With a large number of distributed generators (DGs) and electrical vehicles (EVs) integrated into the power distribution system, the complexity of distribution system operation is increased, which arises to higher requirements for online reactive power optimization. This paper proposes two methods for online reactive power optimization, a scene-matching method based on Random Matrix (RM) features and a deep learning method based on Deep Belief Network (DBN). Firstly, utilizing the operation and ambient Big Data (BD) of the distribution system, we construct the high-dimension Random Matrices and extract 57 state features for the subsequent scene-matching and DBN training. Secondly, the feature-based scene-matching method is proposed. Furtherly, to effectively deal with the uncertainty of DGs and to avoid the performance deterioration of the scene-matching method under a new unknown scene, the DBN-based model is constructed and trained, with the former features as the inputs and the conventional reactive power control solutions as the outputs. This DBN model can learn the nonlinear complicated relationship between the system features and the reactive power control solutions. Finally, the comprehensive case studies have been conducted on the modified IEEE-37 nodes active distribution system, and the performances of the proposed two methods are compared with the conventional method. The results show that the DBN-based method possesses the better performance than the others, and it can reduce the network losses and node voltage deviations obviously, even under the new unknown and unmatched scenes. It does not depend on the distribution system model and parameters anymore and can provide online decision-making more quickly. The discussions of the two methods under different DG penetrations and the historical data volume were given, verifying the adaptability, robustness and generalization ability of the DBN-based method.
topic Deep Belief Network (DBN)
scene matching
Random Matrix (RM)
active distribution network
reactive power optimization
data-driven
deep learning
url https://www.mdpi.com/1996-1073/12/17/3246
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AT ranan reactivepoweroptimizationofadistributionsystembasedonscenematchinganddeepbeliefnetwork
AT xiaowenzhu reactivepoweroptimizationofadistributionsystembasedonscenematchinganddeepbeliefnetwork
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