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Cyber-Physical Systems Virtual Organization
Read-only archive of site from September 29, 2023.
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Projects
EAGER: Collaborative Research: Empowering Smart Energy Communities: Connecting Buildings, People, and Power Grids
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Submitted by Bing Dong on Thu, 01/11/2018 - 2:49pm
Project Details
Lead PI:
Bing Dong
Co-PI(s):
Ahmad Taha
Nikolaos Gatsis
Performance Period:
09/01/16
-
08/31/18
Institution(s):
University of Texas at San Antonio
Sponsor(s):
National Science Foundation
Award Number:
1637249
918 Reads. Placed 413 out of 804 NSF CPS Projects based on total reads on all related artifacts.
Abstract:
1637258 / 1637249 Yu, Nanpeng / Dong, Bing By 2050, 70% of the world's population is projected to live and work in cities, with buildings as major constituents. Buildings' energy consumption contributes to more than 70% of electricity use, with people spending more than 90% of their time in buildings. Future cities with innovative, optimized building designs and operations have the potential to play a pivotal role in reducing energy consumption, curbing greenhouse gas emissions, and maintaining stable electric-grid operations. Buildings are physically connected to the electric power grid, thus it would be beneficial to understand the coupling of decisions and operations of the two. However, at a community level, there is no holistic framework that buildings and power grids can simultaneously utilize to optimize their performance. The challenge related to establishing such a framework is that building control systems are neither connected to, nor integrated with the power grid, and consequently a unified, global optimal energy control strategy at a smart community level cannot be achieved. Hence, the fundamental knowledge gaps are (a) the lack of a holistic, multi-time scale mathematical framework that couples the decisions of buildings stakeholders and grid stakeholders, and (b) the lack of a computationally-tractable solution methodology amenable to implementation on a large number of connected power grid-nodes and buildings. In this project, a novel mathematical framework that fills the aforementioned knowledge gaps will be investigated, and the following hypothesis will be tested: Connected buildings, people, and grids will achieve significant energy savings and stable operation within a smart city. The envisioned smart city framework will furnish individual buildings and power grid devices with custom demand response signals. The hypothesis will be tested against classical demand response (DR) strategies where (i) the integration of building and power-grid dynamics is lacking and (ii) the DR schemes that buildings implement are independent and individual. By engaging in efficient, decentralized community-scale optimization, energy savings will be demonstrated for participating buildings and enhanced stable operation for the grid are projected, hence empowering smart energy communities. To ensure the potential for broad adoption of the proposed framework, this project will be regularly informed with inputs and feedback from Southern California Edison (SCE). In order to test the hypothesis, the following research products will be developed: (1) An innovative method to model a cluster of buildings--with people's behavior embedded in the cluster's dynamics--and their controls so that they can be integrated with grid operation and services; (2) a novel optimization framework to solve complex control problems for large-scale coupled systems; and (3) a methodology to assess the impacts of connected buildings in terms of (a) the grid's operational stability and safety and (b) buildings' optimized energy consumption. To test the proposed framework, a large-scale simulation of a distribution primary feeder with over 1000 buildings will be conducted within SCE?s Johanna and Santiago substations in Central Orange County.
Related Artifacts
Posters
EAGER: Collaborative Research: Empowering Smart Energy Communities- Connecting Buildings, People, and Power Grids
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Publications
Modeling, Simulation and Control of Smart and Connected Communities
Time-Varying Sensor and Actuator Selection for Uncertain Cyber-Physical Systems
Coupling Load-Following Stability with OPF
Unknown Input Observer Analysis and Design for Networked Control Systems
Decentralized Control Framework for Networked Control Systems
Unknown Inputs and Network Perturbation Effects on State Estimation for Networked Control Systems
Buildings-to-Grid Integration Framework
Dynamic State Estimation under Cyber Attacks: A Comparative Study of Kalman Filters and Observers
Time delay analysis for networked control systems with applications to power networks
Identification of Cyber Attacks on Water Distribution Systems by Unveiling Low-Dimensionality in the Sensory Data
Actuator Selection for Cyber-Physical Systems
Augmenting the optimal power flow for stability
Assessing power system state estimation accuracy with GPS-spoofed PMU Measurements
Comparing Kalman filters and observers for dynamic state estimation with model uncertainty and malicious cyber attacks
Planning energy-efficient bipedal locomotion on patterned terrain
Secure estimation, control and optimization of uncertain cyber-physical systems with applications to power networks
Risk Mitigation for Dynamic State Estimation Against Cyber Attacks and Unknown Inputs
Unknown input observer design and analysis for networked control systems
Stability analysis of networked control systems with unknown inputs
An optimal general purpose scheduler for networked control systems
Pure Time Delay Analysis for Decentralized Networked Control Systems
A Quasi-Feed-In-Tariff policy formulation in micro-grids: A bi-level multi-period approach
Networked unknown input observer analysis and design for time-delay systems
A hybrid scheduling protocol to improve quality of service in networked control systems
Decision-making in energy systems with multiple technologies and uncertain preferences
Observer-based decentralized control scheme for stability analysis of networked systems
Decentralized control framework and stability analysis for networked control systems
Efficient parameterization of cardiac action potential models using a genetic algorithm
Effects of model error on cardiac electrical wave state reconstruction using data assimilation
Distinguishing mechanisms for alternans in cardiac cells using constant-diastolic-interval pacing
Data assimilation for cardiac electrical dynamics
Alternans promotion in cardiac electrophysiology models by delay differential equations
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