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An adaptive model with joint chance constraints for a hybrid wind-conventional generator system

An adaptive model with joint chance constraints for a hybrid wind-conventional generator system
An adaptive model with joint chance constraints for a hybrid wind-conventional generator system
We analyze scheduling a hybrid wind-conventional generator system to make it dispatchable, with the aim of profit maximization. Our models ensure that with high probability we satisfy the day-ahead power promised by the model, using combined output of the conventional and wind generators. We consider two scenarios, which differ in whether the conventional generator must commit to its schedule prior to observing the wind-power realizations or has the flexibility to adapt in near real-time to these realizations. We investigate the synergy between the conventional generator and wind farm in these two scenarios. Computationally, the non-adaptive model is relatively tractable, benefiting from a strong extended-variable formulation as an integer program. The adaptive model is a two-stage stochastic integer program with joint chance constraints. Such models have seen limited attention in the literature because of the computational challenges they pose. However, we develop an iterative regularization scheme in which we solve a sequence of sample average approximations under a growing sample size. This reduces computational effort dramatically, and our empirical results suggest that it heuristically achieves high-quality solutions. Using data from a wind farm in Texas, we demonstrate that the adaptive model significantly outperforms the non-adaptive model in terms of synergy between the conventional generator and the wind farm, with expected profit more than doubled.
1619-6988
563-582
Singh, Bismark
9d3fc6cb-f55e-4562-9d5f-42f9a3ddd9a1
Morton, David P.
3e053a27-b1bb-4764-b807-c6ab0a133bbe
Santoso, Surya
b0193ec6-1acf-4ef4-9179-b880f57d52fd
Singh, Bismark
9d3fc6cb-f55e-4562-9d5f-42f9a3ddd9a1
Morton, David P.
3e053a27-b1bb-4764-b807-c6ab0a133bbe
Santoso, Surya
b0193ec6-1acf-4ef4-9179-b880f57d52fd

Singh, Bismark, Morton, David P. and Santoso, Surya (2018) An adaptive model with joint chance constraints for a hybrid wind-conventional generator system. Computational Management Science, 15 (3-4), 563-582. (doi:10.1007/s10287-018-0309-x).

Record type: Article

Abstract

We analyze scheduling a hybrid wind-conventional generator system to make it dispatchable, with the aim of profit maximization. Our models ensure that with high probability we satisfy the day-ahead power promised by the model, using combined output of the conventional and wind generators. We consider two scenarios, which differ in whether the conventional generator must commit to its schedule prior to observing the wind-power realizations or has the flexibility to adapt in near real-time to these realizations. We investigate the synergy between the conventional generator and wind farm in these two scenarios. Computationally, the non-adaptive model is relatively tractable, benefiting from a strong extended-variable formulation as an integer program. The adaptive model is a two-stage stochastic integer program with joint chance constraints. Such models have seen limited attention in the literature because of the computational challenges they pose. However, we develop an iterative regularization scheme in which we solve a sequence of sample average approximations under a growing sample size. This reduces computational effort dramatically, and our empirical results suggest that it heuristically achieves high-quality solutions. Using data from a wind farm in Texas, we demonstrate that the adaptive model significantly outperforms the non-adaptive model in terms of synergy between the conventional generator and the wind farm, with expected profit more than doubled.

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More information

Accepted/In Press date: 19 April 2018
Published date: 26 April 2018

Identifiers

Local EPrints ID: 471301
URI: http://eprints.soton.ac.uk/id/eprint/471301
ISSN: 1619-6988
PURE UUID: 0765a115-d8e9-49ea-9679-2107ea7b8cf7
ORCID for Bismark Singh: ORCID iD orcid.org/0000-0002-6943-657X

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Date deposited: 02 Nov 2022 17:41
Last modified: 17 Mar 2024 04:16

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Contributors

Author: Bismark Singh ORCID iD
Author: David P. Morton
Author: Surya Santoso

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