Optimal control of microgrids - Algorithms and field implementation

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Date

2014

Authors

Emrah Biyik
Ramu Sharat Chandra

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Volume Title

Publisher

Institute of Electrical and Electronics Engineers Inc.

Open Access Color

Green Open Access

Yes

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Top 10%
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Abstract

A microgrid is a collection of distributed generation assets storage devices and electrical and/or thermal loads connected to each other. In this paper a generic model-predictive control algorithm for microgrids is presented. The algorithm has been implemented at Bella Coola a remote community in British Columbia Canada. The approach comprises two parts: unit commitment to decide the optimal set of distributed generators that must be switched on to meet predicted load requirements and convex optimal control to minimize operational costs once the commitment is known. The unit commitment problem is recast as a 0-1 Knapsack problem and is solved via dynamic programming while the optimal dispatch problem is posed as a sparse linear programming problem and solved via off-the-shelf software. Worst-case complexity and scalability considerations and not optimality often drive algorithm choice in industrial control settings, therefore the solution proposed in this paper is efficient and can be rigorously bounded in terms of memory and run-time. Simulation results using real field data practical considerations and details of the implementation at Bella Coola are provided. © 2014 American Automatic Control Council. © 2014 Elsevier B.V. All rights reserved.

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Keywords

Control Applications, Optimal Control, Optimization Algorithms, Combinatorial Optimization, Distributed Power Generation, Dynamic Programming, Linear Programming, Model Predictive Control, Optimization, Virtual Storage, British Columbia Canada, Control Applications, Convex Optimal Control, Distributed Generators, Linear Programming Problem, Optimal Controls, Optimization Algorithms, Unit Commitment Problem, Algorithms, Combinatorial optimization, Distributed power generation, Dynamic programming, Linear programming, Model predictive control, Optimization, Virtual storage, British Columbia Canada, Control applications, Convex optimal control, Distributed generators, Linear programming problem, Optimal controls, Optimization algorithms, Unit commitment problem, Algorithms, Optimal Control, Optimization Algorithms, Control Applications

Fields of Science

0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology

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OpenCitations Citation Count
7

Source

2014 American Control Conference ACC 2014

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Issue

Start Page

5003

End Page

5009
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CrossRef : 4

Scopus : 8

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Mendeley Readers : 19

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8

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Web of Science™ Citations

4

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