Affiliation:
1. Optimization and Control Group, Pacific Northwest National Laboratory, Richland, WA 99352
2. Data Science and Machine Intelligence Group, Pacific Northwest National Laboratory, Richland, WA 99352
Abstract
Abstract
Increasing deployment of advanced sensing, controls, and communication infrastructure enables buildings to provide services to the power grid, leading to the concept of grid-interactive efficient buildings. Since occupant activities and preferences primarily drive the availability and operational flexibility of building devices, there is a critical need to develop occupant-centric approaches that prioritize devices for providing grid services, while maintaining the desired end-use quality of service. In this paper, we present a decision-making framework that facilitates a building owner/operator to effectively prioritize loads for curtailment service under uncertainties, while minimizing any adverse impact on the occupants. The proposed framework uses a stochastic (Markov) model to represent the probabilistic behavior of device usage from power consumption data, and a load prioritization algorithm that dynamically ranks building loads using a stochastic multi-criteria decision-making algorithm. The proposed load prioritization framework is illustrated via numerical simulations in a residential building use-case, including plug-loads, air-conditioners, and plug-in electric vehicle chargers, in the context of load curtailment as a grid service. Suitable metrics are proposed to evaluate the closed-loop performance of the proposed prioritization algorithm under various scenarios and design choices. Scalability of the proposed algorithm is established via computational analysis, while time-series plots are used for intuitive explanation of the ranking choices.
Funder
Building Technologies Office
Reference29 articles.
1. Annual Energy Outlook 2018;U.S. Energy Information Administration,2018
2. Grid-Interactive Efficient Buildings—Overview;Office of Energy Efficiency and Renewable Energy,2019
3. A Survey on Demand Response in Smart Grids: Mathematical Models and Approaches;Deng;IEEE Trans. Ind. Inform.,2015
4. An Overview of Demand Response: Key-Elements and International Experience;Paterakis;Renew. Sustain. Energy Rev.,2017
5. Simulation Based Design and Testing of a Supervisory Controller for Reducing Peak Demand in Buildings;Nutaro,2016