Multiple Timescale Dispatch and Scheduling for Stochastic Reliability in Smart Grids with Wind Generation Integration
Miao He, Sugumar Murugesan, Junshan Zhang

TL;DR
This paper proposes a multi-timescale dispatch and scheduling framework for smart grids with wind energy, using real-time pricing to enhance reliability amidst renewable energy volatility and uncertainty.
Contribution
It introduces a novel multi-timescale approach combining day-ahead and real-time scheduling with pricing strategies, including closed-form solutions and Markov decision process modeling.
Findings
Closed-form solutions for non-persistent opportunistic users.
Markov decision process formulation for persistent users.
Effective management of wind variability and demand uncertainty.
Abstract
Integrating volatile renewable energy resources into the bulk power grid is challenging, due to the reliability requirement that at each instant the load and generation in the system remain balanced. In this study, we tackle this challenge for smart grid with integrated wind generation, by leveraging multi-timescale dispatch and scheduling. Specifically, we consider smart grids with two classes of energy users - traditional energy users and opportunistic energy users (e.g., smart meters or smart appliances), and investigate pricing and dispatch at two timescales, via day-ahead scheduling and realtime scheduling. In day-ahead scheduling, with the statistical information on wind generation and energy demands, we characterize the optimal procurement of the energy supply and the day-ahead retail price for the traditional energy users; in realtime scheduling, with the realization of wind…
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