Optimal Scheduling of an Isolated Wind-Diesel-Energy Storage System Considering Fast Frequency Response and Forecast Error

Nowadays, the hybrid wind–diesel system is widely used on small islands. However, the operation of these systems faces a major challenge in frequency control due to their small inertia. Furthermore, it is also difficult to maintain the power balance when both wind power and load are uncert...

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Main Authors: Nhung Nguyen Hong, Yosuke Nakanishi
Format: Article
Language:English
Published: MDPI AG 2019-03-01
Series:Energies
Subjects:
Online Access:http://www.mdpi.com/1996-1073/12/5/843
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spelling doaj-05e03a95bb6b4061bccf0be4e53b7b3b2020-11-25T00:30:40ZengMDPI AGEnergies1996-10732019-03-0112584310.3390/en12050843en12050843Optimal Scheduling of an Isolated Wind-Diesel-Energy Storage System Considering Fast Frequency Response and Forecast ErrorNhung Nguyen Hong0Yosuke Nakanishi1Graduate School of Environment and Energy Engineering, Waseda University, Tokyo 169-8050, JapanGraduate School of Environment and Energy Engineering, Waseda University, Tokyo 169-8050, JapanNowadays, the hybrid wind–diesel system is widely used on small islands. However, the operation of these systems faces a major challenge in frequency control due to their small inertia. Furthermore, it is also difficult to maintain the power balance when both wind power and load are uncertain. To solve these problems, energy storage systems (ESS) are usually installed. This paper demonstrates the effectiveness of using ESS to provide Fast Frequency Response (FFR) to ensure that the frequency criteria are met after the sudden loss of a generator. An optimal day-ahead scheduling problem is implemented to simultaneously minimize the operating cost of the system, take full advantage of the available wind power, and ensure that the ESS has enough energy to provide FFR when the wind power and demand are uncertain. The optimization problem is formulated in terms of two-stage chance-constrained programming, and solved using a Modified Sample Average Approximation (MSAA) algorithm—a combination of the traditional Sample Average Approximation (SAA) algorithm and the k-means approach. The proposed method is tested with a realistic islanded power system, and the effects of the ESS size and its response time is analyzed. Results indicate that the proposed model should perform well under real-world conditions.http://www.mdpi.com/1996-1073/12/5/843chance-constrained programmingday-ahead schedulingenergy storage systemfast frequency responsewind power
collection DOAJ
language English
format Article
sources DOAJ
author Nhung Nguyen Hong
Yosuke Nakanishi
spellingShingle Nhung Nguyen Hong
Yosuke Nakanishi
Optimal Scheduling of an Isolated Wind-Diesel-Energy Storage System Considering Fast Frequency Response and Forecast Error
Energies
chance-constrained programming
day-ahead scheduling
energy storage system
fast frequency response
wind power
author_facet Nhung Nguyen Hong
Yosuke Nakanishi
author_sort Nhung Nguyen Hong
title Optimal Scheduling of an Isolated Wind-Diesel-Energy Storage System Considering Fast Frequency Response and Forecast Error
title_short Optimal Scheduling of an Isolated Wind-Diesel-Energy Storage System Considering Fast Frequency Response and Forecast Error
title_full Optimal Scheduling of an Isolated Wind-Diesel-Energy Storage System Considering Fast Frequency Response and Forecast Error
title_fullStr Optimal Scheduling of an Isolated Wind-Diesel-Energy Storage System Considering Fast Frequency Response and Forecast Error
title_full_unstemmed Optimal Scheduling of an Isolated Wind-Diesel-Energy Storage System Considering Fast Frequency Response and Forecast Error
title_sort optimal scheduling of an isolated wind-diesel-energy storage system considering fast frequency response and forecast error
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2019-03-01
description Nowadays, the hybrid wind–diesel system is widely used on small islands. However, the operation of these systems faces a major challenge in frequency control due to their small inertia. Furthermore, it is also difficult to maintain the power balance when both wind power and load are uncertain. To solve these problems, energy storage systems (ESS) are usually installed. This paper demonstrates the effectiveness of using ESS to provide Fast Frequency Response (FFR) to ensure that the frequency criteria are met after the sudden loss of a generator. An optimal day-ahead scheduling problem is implemented to simultaneously minimize the operating cost of the system, take full advantage of the available wind power, and ensure that the ESS has enough energy to provide FFR when the wind power and demand are uncertain. The optimization problem is formulated in terms of two-stage chance-constrained programming, and solved using a Modified Sample Average Approximation (MSAA) algorithm—a combination of the traditional Sample Average Approximation (SAA) algorithm and the k-means approach. The proposed method is tested with a realistic islanded power system, and the effects of the ESS size and its response time is analyzed. Results indicate that the proposed model should perform well under real-world conditions.
topic chance-constrained programming
day-ahead scheduling
energy storage system
fast frequency response
wind power
url http://www.mdpi.com/1996-1073/12/5/843
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