Engineering and Regulatory Challenges Facing the Development of Commercially Viable Offshore Wind Projects

2008 ◽  
Vol 42 (2) ◽  
pp. 44-50 ◽  
Author(s):  
Mark Rodgers ◽  
Craig Olmsted

Cape Wind is a proposal to locate America's first offshore wind farm off the coast of Massachusetts to generate renewable energy. First proposed in 2001, Cape Wind has faced numerous engineering and regulatory challenges. Great care was taken in the site selection process to ensure a technically and economically viable project that would generate wind energy on a utility scale. The regulatory environment and permitting process for Cape Wind has always been extensive and comprehensive, comprised of federal, state and local agencies. As a result of the Energy Policy Act of 2005, the lead federal permitting agency changed from the U.S. Army Corps of Engineers (ACOE) to the Minerals Management Service (MMS), which resulted in a significant delay in the permitting schedule. Throughout the Environmental Impact Statement process with the ACOE and the MMS, numerous engineering and scientific studies have been performed on a wide host of environmental and economic issues. MMS issued a Draft Environmental Impact Statement in January, 2008. MMS officials have stated they expect to issue the Final Environmental Impact Statement in fall, 2008 and to issue a Record of Decision on Cape Wind thirty days later.

Author(s):  
Chun-Chih Lo ◽  
Yi-Ray Tseng ◽  
Chien-Chou Shih ◽  
Shu-Wei Guo ◽  
Chin-Shiuh Shieh ◽  
...  

Hydrobiologia ◽  
2015 ◽  
Vol 756 (1) ◽  
pp. 1-2
Author(s):  
Steven Degraer ◽  
Jennifer Dannheim ◽  
Andrew B. Gill ◽  
Han Lindeboom ◽  
Dan Wilhelmsson

2020 ◽  
Author(s):  
K Narender Reddy ◽  
S Baidya Roy

<p>Wind Farm Layout Optimization Problem (WFLOP) is an important issue to be addressed when installing a large wind farm. Many studies have focused on the WFLOP but only for a limited number of turbines (10 – 100 turbines) and idealized wind speed distributions. In this study, we apply the Genetic Algorithm (GA) to solve the WFLOP for large wind farms using real wind data.</p><p>The study site is the Palk Strait located between India and Sri Lanka. This site is considered to be one of the two potential hotspots of offshore wind in India. An interesting feature of the site is that the winds here are dominated by two major monsoons: southwesterly summer monsoon (June-September) and northeasterly winter monsoon (November to January). As a consequence, the wind directions do not drastically change, unlike other sites which can have winds distributed over 360<sup>o</sup>. This allowed us to design a wind farm with a 5D X 3D spacing, where 5D is in the dominant wind direction and 3D is in the transverse direction (D- rotor diameter of the turbine - 150 m in this study).</p><p>Jensen wake model is used to calculate the wake losses. The optimization of the layout using GA involves building a population of layouts at each generation. This population consists of, the best layouts of the previous generation, crossovers or offspring from the best layouts of the previous generation and few mutated layouts. The best layout at each generation is assessed using the fitness or objective functions that consist of annual power production by the layout, cost incurred by layout per unit power produced, and the efficiency of the layout. GA mimics the natural selection process observed in nature, which can be summarised as survival of the fittest. At each generation, the layouts performing the best would enter the next generation where a new population is created from the best performing layouts.</p><p>GA is used to produce 3 different optimal layouts as described below. Results show that:</p><p>A ~5GW layout – has 738 turbines, producing 2.37 GW of power at an efficiency of 0.79</p><p>Layout along the coast – has 1091 turbines, producing 3.665 GW of power at an efficiency of 0.82.</p><p>Layout for the total area – has 2612 turbines, producing 7.82 GW of power at an efficiency of 0.74.</p><p>Thus, placing the turbines along the coast is more efficient as it makes the maximum use of the available wind energy and it would be cost-effective as well by placing the turbines closer to the shores.</p><p>Wind energy is growing at an unprecedented rate in India. Easily accessible terrestrial resources are almost saturated and offshore is the new frontier. This study can play an important role in the offshore expansion of renewables in India.</p>


2021 ◽  
Vol 8 (1) ◽  
Author(s):  
Ting Zhang ◽  
Bo Tian ◽  
Dhritiraj Sengupta ◽  
Lei Zhang ◽  
Yali Si

AbstractOffshore wind farms are widely adopted by coastal countries to obtain clean and green energy; their environmental impact has gained an increasing amount of attention. Although offshore wind farm datasets are commercially available via energy industries, records of the exact spatial distribution of individual wind turbines and their construction trajectories are rather incomplete, especially at the global level. Here, we construct a global remote sensing-based offshore wind turbine (OWT) database derived from Sentinel-1 synthetic aperture radar (SAR) time-series images from 2015 to 2019. We developed a percentile-based yearly SAR image collection reduction and autoadaptive threshold algorithm in the Google Earth Engine platform to identify the spatiotemporal distribution of global OWTs. By 2019, 6,924 wind turbines were constructed in 14 coastal nations. An algorithm performance analysis and validation were performed, and the extraction accuracies exceeded 99% using an independent validation dataset. This dataset could further our understanding of the environmental impact of OWTs and support effective marine spatial planning for sustainable development.


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