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Author Shaffery, Peter, author.

Title Bayesian structural time series for behind-the-meter photovoltaic disaggregation / Peter Shaffery, Rui Yang, and Yingchen Zhang.

Publication Info. [Golden, Colo.] : National Renewable Energy Laboratory, 2020.

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Description 1 online resource (1 page) : color illustrations.
text txt rdacontent
computer c rdamedia
online resource cr rdacarrier
Series NREL/PO ; 5D00-76108
NREL/PO ; 5D00-76108.
Note In scope of the U.S. Government Publishing Office Cataloging and Indexing Program (C&I) and Federal Depository Library Program (FDLP).
"2020 IEEE ISGT, Washington, D.C., February 17-20, 2020"--Page 1.
Bibliography Includes bibliographical references (page 1).
Funding DE-AC36-08GO28308
Note Description based on online resource; title from PDF caption (NREL, viewed March 7, 2023).
Summary Distributed photovoltaic (PV) generation often occurs ``behind the meter": a grid operator can only observe the net load, which is the sum of the gross load and distributed PV generation. This lack of observability poses a challenge to system operation at both bulk level and distribution level. The lack of real-time or near-future disaggregated estimates of gross load and PV generation will lead to over scheduling of energy production and regulation reserves, reliability constraints violations, wear and tear of controller devices, and potentially cascading failures of a system. In this paper we propose the use of a Bayesian Structural Time Series (BSTS) model with local solar irradiance measurements to disaggregate the summed PV generation and gross load signals at a downstream measurement site. BSTSs are a highly expressive model class that blends classic time series models with the powerful Bayesian state space estimation framework. Disaggregation is done probabilistically, which automatically quantifies the uncertainties of the estimated PV generation and gross load consumption. Depending on the data availability in real-time, it can be used to disaggragate PV and gross load at customer site, or can be used at the feeder level. In this paper, we focus on solving the problem at feeder level. We compare the performance of a BSTS model as well as a handful of state-of-the-art methods on a Pecan Street AMI dataset, using the National Solar Radiation Database (NSRDB) to estimate local irradiance.
Subject Photovoltaic power generation -- United States.
Renewable energy sources -- United States.
Conversion photovoltaïque -- États-Unis.
Énergies renouvelables -- États-Unis.
Photovoltaic power generation
Renewable energy sources
United States https://id.oclc.org/worldcat/entity/E39PBJtxgQXMWqmjMjjwXRHgrq
Indexed Term bayesian structural time series
behind-the-meter PV
disaggregation
Added Author Yang, Rui (Electrical and computer engineer), author.
Zhang, Y. C. (Yingchen), author.
National Renewable Energy Laboratory (U.S.), issuing body.
United States. Department of Energy, sponsoring body.
Standard No. 1669460 OSTI ID
0000-0002-5559-0971
Gpo Item No. 0430-P-17 (online)
Sudoc No. E 9.28:NREL/PO-5 D 00-76108

 
    
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