Rate-constrained Energy Services: Allocation Policies and Market Decisions
Ashutosh Nayyar, Matias Negrete-Pincetic, Kameshwar Poolla, Pravin, Varaiya

TL;DR
This paper analyzes how suppliers can optimally allocate and market rate-constrained energy services amidst renewable uncertainty, proposing strategies to maximize profits through portfolio and market decision policies.
Contribution
It introduces a comprehensive framework for the supplier's decision-making process in trading and allocating rate-constrained energy services under renewable variability.
Findings
Optimal policies for energy purchase and allocation are derived.
Market strategies improve supplier profits under renewable uncertainty.
Framework supports flexible demand management in renewable-rich grids.
Abstract
The integration of renewable generation poses operational and economic challenges for the electricity grid. For the core problem of power balance, the legacy paradigm of tailoring supply to follow random demand may be inappropriate under deep penetration of uncertain and intermittent renewable generation. In this situation, there is an emerging consensus that the alternative approach of controlling demand to follow random supply offers compelling economic benefits in terms of reduced regulation costs. This approach exploits the flexibility of demand side resources and requires sensing, actuation, and communication infrastructure; distributed control algorithms; and viable schemes to compensate participating loads. This paper considers rate-constrained energy services which are a specific paradigm for flexible demand. These services are characterized by a specified delivery window, the…
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Taxonomy
TopicsSmart Grid Energy Management · Microgrid Control and Optimization · Smart Grid Security and Resilience
