Layout optimization for offshore wind farms in India using the genetic algorithm technique
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Published:2020-10-17
Issue:
Volume:54
Page:79-87
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ISSN:1680-7359
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Container-title:Advances in Geosciences
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language:en
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Short-container-title:Adv. Geosci.
Author:
Reddy Narender Kangari, Baidya Roy SomnathORCID
Abstract
Abstract. Wind Farm Layout Optimization Problem (WFLOP) is a critical issue
when installing a large wind farm. Many studies have focused on the WFLOP
but only for a limited number of turbines and idealized wind speed
distributions. In this study, we apply the Genetic Algorithm (GA) to solve
the WFLOP for large hypothetical offshore wind farms using real wind data.
GA mimics the natural selection process observed in nature, which is the
survival of the fittest. The study site is the Palk Strait, located between
India and Sri Lanka. This site is a potential hotspot of offshore wind in
India. A modified Jensen wake model is used to calculate the wake losses. GA is used to produce optimal layouts for four different wind farms at the
specified site. We use two different optimization approaches: one where the
number of turbines is kept the same as the thumb rule layout and another
where the number of turbines is allowed to vary. The results show that
layout optimization leads to large improvements in power generation (up to
28 %), efficiency (up to 34 %), and cost (up to 25 %) compared to the
thumb rule due to the reduction in wake losses. Optimized layouts where both the number and locations of turbines are allowed to vary produce better results in terms of efficiency and cost but also leads to lower installed capacity and power generation. Wind energy is growing at an unprecedented rate in India. Easily accessible terrestrial wind resources are almost saturated, and offshore wind is the new frontier. This study can play an important role while taking the first steps towards the expansion of offshore wind in India.
Publisher
Copernicus GmbH
Reference46 articles.
1. Atlas, R., Hoffman, R. N., Ardizzone, J., Leidner, S. M., Jusem, J. C., Smith, D. K., and Gombos, D.: A cross-calibrated, multiplatform ocean surface wind velocity product for meteorological and oceanographic applications, B. Am. Meteorol. Soc., 92, 157–74, https://doi.org/10.1175/2010BAMS2946.1, 2011. 2. Barthelmie, R. J., Pryor, S. C., Frandsen, S. T., Hansen, K. S., Schepers, J. G., Rados, K., Schlez, W., Neubert, A., Jensen, L. E., and Neckelmann, S.: Quantifying the impact of wind turbine wakes on power output at offshore wind farms, J. Atmos. Ocean. Tech., 27, 1302–1317, https://doi.org/10.1175/2010JTECHA1398.1, 2010. 3. CEA – Central Electricity Authority: Draft national electricity plan, Ministry of Power, Govt. of India, Vol. 1, 375 pp., available at:
http://www.cea.nic.in/reports/committee/nep/nep_dec.pdf (last access: 6 June 2020), 2016. 4. Charhouni, N., Sallaou, M., and Mansouri, K.: Realistic Wind Farm Design Layout Optimization with Different Wind Turbines Types, Int. J. Energ. Environ. Eng., 10, 307–318, https://doi.org/10.1007/s40095-019-0303-2, 2019. 5. Chen, K., Song, M. X., Zhang, X., and Wang, S. F.: Wind turbine layout
optimization with multiple hub height wind turbines using Greedy Algorithm,
Renew. Energ., 96, 676–686, https://doi.org/10.1016/j.renene.2016.05.018, 2016.
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