Smart Grids: Security and Privacy Issues pp 19-29 | Cite as

# Reliability in Smart Grids

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First Online:

## Abstract

This chapter introduces a reliable method of power distribution in a smart power network with high penetration of Distributed Renewable Resources (DRRs). From many reliability concerns regarding the smart grids, this chapter is devoted to the following couple of major issues: *power adequacy improvement* and *electric congestion prevention* in large-scale presence of green energy.

## Keywords

Smart Grid Mixed Integer Linear Programming Power Network Unit Commitment Economic Dispatch
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