Inferring the behavior of distributed energy resources from incomplete measurements (project outputs)
Ledva, Gregory S.; Zhe, Du; Peterson, Sarah; Balzano, Laura; Mathieu, Johanna L.
2019-06-19
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2018_UVM.pdf
Talk - Coordinating Distributed Energy Resources Without Breaking the Bank, or the Grid
(10.6MB
PDF)Talk - Coordinating Distributed Energy Resources Without Breaking the Bank, or the Grid
2018_UIUC.pdf
Talk - Real-Time Energy Disaggregation of a Distribution Feeder’s Demand Using Online Learning
(67.6MB
PDF)Talk - Real-Time Energy Disaggregation of a Distribution Feeder’s Demand Using Online Learning
2018_PESGM.pdf
Talk - Benchmarking of Aggregate Residential Load Models Used for Demand Response
(387.1KB
PDF)Talk - Benchmarking of Aggregate Residential Load Models Used for Demand Response
2018_Defense.pdf
Talk - Learning and Control Applied to Demand Response and Electricity Distribution Networks
(1.9MB
PDF)Talk - Learning and Control Applied to Demand Response and Electricity Distribution Networks
2018_CCTA.pdf
Talk - Exploring Connections Between a Multiple Model Kalman Filter and Dynamic Fixed Share with Applications to Demand Response
(936KB
PDF)Talk - Exploring Connections Between a Multiple Model Kalman Filter and Dynamic Fixed Share with Applications to Demand Response
2017_nextGenerationOfResearchersInPowerSystems.pdf
Talk - 9th Seminar for the Next Generation of Researchers in Power Systems
(1.2MB
PDF)Talk - 9th Seminar for the Next Generation of Researchers in Power Systems
2017_ACC.pdf
Talk - A Linear Approach to Manage Input Delays While Supplying Frequency Regulation Using Residential Loads
(1.1MB
PDF)Talk - A Linear Approach to Manage Input Delays While Supplying Frequency Regulation Using Residential Loads
2016_UCSD.pdf
Talk - Inference and control of electric loads given sparse measurements and communications delays
(17.2MB
PDF)Talk - Inference and control of electric loads given sparse measurements and communications delays
2016_MIT.pdf
Talk - Inference and control of electric loads given sparse measurements and communications delays
(17.3MB
PDF)Talk - Inference and control of electric loads given sparse measurements and communications delays
2016_SmartGridComm.pdf
Talk - Engaging Distributed Flexible Electric Loads in Power System Opera<on
(19.6MB
PDF)Talk - Engaging Distributed Flexible Electric Loads in Power System Opera<on
2015_Toronto.pdf
Talk - Inference and control of distributed energy resources with sparse measurements and communications delays
(17.1MB
PDF)Talk - Inference and control of distributed energy resources with sparse measurements and communications delays
2015_Allerton.pdf
Talk - Inferring the Behavior of Distributed Energy Resources with Online Learning
(932KB
PDF)Talk - Inferring the Behavior of Distributed Energy Resources with Online Learning
2015_Allerton_InferringTheBehavior.pdf
Paper - Inferring the Behavior of Distributed Energy Resources with Online Learning
(487.3KB
PDF)Paper - Inferring the Behavior of Distributed Energy Resources with Online Learning
2016_ACC_LinearApproach.pdf
Paper - A Linear Approach to Manage Input Delays While Supplying Frequency Regulation Using Residential Loads
(396.5KB
PDF)Paper - A Linear Approach to Manage Input Delays While Supplying Frequency Regulation Using Residential Loads
2018_CCTA_ExploringConnections.pdf
Paper - Exploring Connections Between a Multiple Model Kalman Filter and Dynamic Fixed Share with Applications to Demand Response
(378.5KB
PDF)Paper - Exploring Connections Between a Multiple Model Kalman Filter and Dynamic Fixed Share with Applications to Demand Response
2018_EMaRG_DisaggregatingLoad.pdf
Paper - Disaggregating Load by Type from Distribution System Measurements in Real-Time
(530KB
PDF)Paper - Disaggregating Load by Type from Distribution System Measurements in Real-Time
2018_PESGM_BenchmarkingAggregate.pdf
Paper - Benchmarking of Aggregate Residential Load Models Used for Demand Response
(316.9KB
PDF)Paper - Benchmarking of Aggregate Residential Load Models Used for Demand Response
2018_TPWRS_ManagingCommunication.pdf
Paper - Managing Communication Delays and Model Error in Demand Response for Frequency Regulation
(980.8KB
PDF)Paper - Managing Communication Delays and Model Error in Demand Response for Frequency Regulation
2018_TPWRS_RealTimeEnergy.pdf
Paper - Real-Time Energy Disaggregation of a Distribution Feeder’s Demand Using Online Learning
(813.2KB
PDF)Paper - Real-Time Energy Disaggregation of a Distribution Feeder’s Demand Using Online Learning
2018_PESGM_poster.pdf
Poster - Benchmarking of Aggregate Residential Load Models Used for Demand Response
(459.8KB
PDF)Poster - Benchmarking of Aggregate Residential Load Models Used for Demand Response
Subjects
online learning energy disaggregation residential demand response networked control Kalman filter frequency regulation
Description
The contents of this deposit include the papers, posters, and talks that resulted from NSF grant ECCS-1508943, "Inferring the behavior of distributed energy resources from incomplete measurements." The project focused on developing control, estimation, and modeling methods for residential demand response and electric distribution networks.
Research Overview:
The aim of this project was to incorporate online learning with dynamics into inference algorithms within an electric power system, e.g., for residential demand response or real-time inference in distribution networks.
The research was conducted at the University of Michigan in Ann Arbor, MI, USA under NSF grant ECCS-1508943, "Inferring the behavior of distributed energy resources from incomplete measurements", between August 1, 2015 and December 31, 2018. Related code is at the DOI in the dc.relation field of the full item record or https://doi.org/10.7302/xtsr-jx10
Types
Project
Metadata
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