Offshore Wind Potential of West Central Taiwan: A Case Study
Abstract
:1. Introduction
2. Theories of Wind Energy Systems
2.1. Wind
- A.
- Wind EnergyWind power is the application of wind to provide mechanical power through wind turbines for generating electrical power. The kinetic energy in a parcel of air of mass m flowing at speed v in the x direction is given by Equation (1):
- B.
- Wind PowerWind power passing through an area Λ perpendicular to the wind is given by the following:This can be viewed as the power being supplied at the origin to cause the energy of the parcel to increase according to Equation (1). A wind turbine extracts power from side x, with Equation (2) representing the total power available at this surface for possible extraction. The wind industry needs to be able to describe variations in wind speed. Turbine designers need this information to optimize their designs, thus minimizing generating costs. Wind-farm developers also need wind distribution to predict the AEP and to select a turbine to maximize the power production. Wind variation for a typical site is usually described using the so-called Weibull distribution, as shown in Figure 1 and Figure 2. Figure 1 shows the curves of Scale Factor 1 with different shape factors. Figure 2 shows the curves of Shape Factor 3 with different scale factors.
- C.
- Weibull Distribution
- D.
- Mean Wind SpeedThis is a two-parameter distribution, where A and k denote the scale and shape parameters, respectively. Wind speed v is distributed as Weibull distribution f(v). Mean wind speed is derived as [16]:If the change in variable is as follows,Gamma function (y) is generally written in the following form:
- E.
- Wind-Speed VarianceEquations (6) and (7) have the same integral if y = 1 + 1/k. Mean wind speed and variance are thenScale parameter A and shape parameter k can then be derived from the average wind speed and variance on the basis of Weibull distribution. On the basis of this equation, the ratio of common wind speed rises with rising k. Acquired data at many widely spread locations can be naturally well-defined by Weibull density function over a long-enough time period.Scale parameter A can scale the curves to fit different wind-speed distributions, as shown by Equation (3). Since the properties of a probability density function entail that the area under the curve must be unity, then the curve has to horizontally expand as it is vertically compressed. Therefore, corresponding wind-speed distribution may be adopted for any value of A with the appropriate scale parameter.
- F.
- Measure–Correlate–Predict MethodIf no or a few measurements are available for estimating the wind-energy resource at a given potential windfarm site, then available measurements should be supplemented by measurements over a longer period from another site. This method is based on the assumption that the overall wind climate remains the same within a distance given by local mesoscale conditions [17].Renewable-energy researchers have applied measure–correlate–predict (MCP) algorithms for many years to construct wind-resource models with the long-term conditions at a specific site based on short-term wind-data collection. MCP algorithms are used to predict a wind resource by modeling wind data (speed and direction) measured at the special site over up to a year, together with coexisting data at a neighboring reference site. The model employs long-term data from the site to simulate and analyze the long-term wind distributions at the target site. In general, MCP characterizes wind-speed distributions as a function of wind direction at a target site to obtain the annual energy estimation of a wind farm located there. Local obstruction, atmosphere gradient, large-scale weather influence, and terrain effects induce stochastic variations of wind speed and direction for spread of distance and time. Therefore, corresponding models and coexisting wind data should be considered carefully to improve the consistency between simulation and actual results. Well over half a dozen variations on the MCP technique have been proposed over the last 15 years, in part to address some of the specific concerns mentioned above [18]. The variations include two-dimensional, vector, and nonlinear-regression techniques [19], matrix approaches [20], artificial neural networks [21,22,23], and joint probability distributions [24,25,26].MCP methods fundamentally differ in the relationships that they establish between wind data (speed and direction) recorded at the target site and simultaneously recorded wind data at one or various nearby weather stations that serve as reference stations and for which long-term data series are available.
2.2. Wind-Turbine Output
- A.
- Mechanical PowerConverted mechanical power is the difference between input and output wind power: extracted power is typically expressed in terms of undisturbed wind speed v and turbine area Λ. This method yields:Factor 16/27 = 0.593 is called the Betz coefficient and refers to the maximal fraction of power (59.3%) that an actual turbine can extract in an undisturbed tube of air within the same region. The extracted fraction of power could in practice be smaller due to mechanical imperfections. The highest wind power yield in optimal conditions is around 35–40%, although fractions as high as 50% have been claimed [7].The extracted fraction of power from wind power by a practical wind turbine is represented as Cp, which is the coefficient of performance. Using this notation and dropping the subscripts of Equation (10), the actual mechanical power output can be expressed asThe coefficient of performance is not a constant but varies with wind speed, tip speed ratio, the rotational speed of the turbine, and turbine-blade parameters such as angle of attack and pitch angle. The relationship between average power and wind speed based on wind data modeled by probability density function f(v) depends on multiple shape and scale parameters, as shown in Figure 1 and Figure 2.
- B.
- Annual Energy ProductionFull information about the wind’s characteristics is essential to evaluate the wind-energy potential of a field. This information should be measured by a wind mast installed at the specific site as the reference for the whole area, but the cost of installation and operation means that wind data are insufficient for evaluating wind-energy potential. Wind measurement is commonly performed by linear models such as the Wind Atlas Analysis and Application Program (WASP). Linear models employ linear equations to define the behavior of wind flow over a territory and are inadequate for evaluating wind characteristics in complex fields such as terrains with hills, depressions, and valleys [27]. Computational fluid dynamics (CFD) targets exactly this problem of quantitatively describing all physical phenomena involved in a real fluid and determining a prediction model [28]. The wind-energy sector is slowly but increasingly applying CFD rather than linear models for complex-terrain, forest, and wake models. A simulated model using CFD comprehensively evaluates wind flow and wind power in practical sites [29].Some CFD software (listed below) is available to analyze wind flow in different media and structures. A brief review of the wind-energy literature reveals many mathematical models for calculating wind flow over a certain region [30]. Recent CFD software already provides essential data to simulate wind flows over complex terrains [31]. The specific location, height, and time of wind can provide an estimation of wind power. A complex, hilly, and mountainous terrain increases the difficulty of estimation. Software applications such as WindSim and OpenFOAM are available for wind-flow analysis involving flatlands, hills, and mountains. Researchers compared the performance of the two CFD software above for simulating wind flow over practical terrains [32].Windographer is an advanced software application that quickly imports data from almost any format and automatically determines the data structure, removing the need to specify details such as time step or date format before analyzing the data [33]. This tool allows for the high-quality control and import of virtual data in each format and can also export to all common wind-flow models in the wind-power industry [34].The assessment of wind resources can be performed either experimentally or numerically. Long-term historical wind data would ideally be available for every possible wind-turbine location. This information is not available but can be constructed by a combination of experimental and numerical methods. Wind conditions are experimentally determined in a fixed point, and the data can be extrapolated in the surrounding region in a numerical model. This study assesses wind resources on the basis of long-term historical wind data and power output. Regarding flexible hub heights and applicable wind conditions, short-term measurements near the wind turbines are designed to be experimentally analyzed by the program for the potential sites.Annual energy production (AEP) quantifies the wind-energy potential of a given site. The estimated AEP, not accounting for uncertainties, is calculated by multiplying the total hours by the average wind-turbine power [35].Figure 3 shows the respective power output of varying wind speed for most wind turbines, where Vi is the cut-in wind speed, VR denotes the rated wind speed, V0 denotes the cut-out wind speed, and PR denotes the rated power [36].Therefore, the electrical output power may be expressed byAvailable power Pa = 1/2ρΛV3 of a wind turbine is defined as the “potential” power of the undisturbed stream of area Λ. Hence, PR is the rated power given by
- C.
- Power ModelsNormalized power Pn is expressed as
- D.
- Capacity FactorCapacity or rated output is the maximal electric output that a generator can produce under specific conditions. Each generating facility has a “nameplate capacity” indicating the maximal output that the generator can convert. Capacity factor (CF) is the ratio of what a generation unit is capable of generating at maximal output versus the unit’s actual generation output over a period of time, generally a year.CF is defined for a wind turbine using renewable energy. The CF definition clearly shows how much power is possible to extract from wind: a turbine with a higher CF value is more suitable for a specific site in terms of production [41]. CF is defined as the ratio of average output power to rated power, with the dimensionless index expressed byIf the mean annual wind speed at a site is known or can be estimated, then the following formula can be used for a rough initial estimate of the electricity production from a number of wind turbines.The AEP is generally defined byThe normalized AEP is calculated by annual mean wind energy, that is, WM = 0.5 ρΛ × time. Second capacity factor CFII is then calculated as
3. Proposed Estimation for Wind-Turbine Output
4. Case Studies
- Wind distributions obtained by the met-mast and MCP methods can efficiently represent offshore-site wind resources in Taiwanese sites.
- The MCP method based on an onshore turbine can quickly, accurately, and economically achieve useful wind-resource distribution for a specific site.
- The CFs of five offshore WTGs showed that the most suitable and efficient turbine from the achieved wind distribution and considering power loss on a turbine was the machine with the 6.0 MW rated output (GE 6.0-150).
- The correlation of wind speed between the MCP method and wind turbine was around 99%, which was significantly higher than that between the MCP method and offshore met mast (~90%), as shown in Figure 11b. On-site measurement within a local area is fundamental for wind-farm assessment to achieve appropriate estimations.
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
References
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Standard Deviation (m/s) | Wind-Speed Variation (m/s)2 | Mean Wind Speed (m/s) | Scale Factor (A) | Shape Factor (k) | |
---|---|---|---|---|---|
Met mast | 5.804 | 33.686 | 9.992 | 11.292 | 1.836 |
MCP method | 5.751 | 33.074 | 9.0352 | 10.161 | 1.671 |
Net Mean Power Output (kW) | |||||
---|---|---|---|---|---|
Month | Vestas V80-2.0 MW (67 m) | HTW 5.2-127 (90 m) | AREVA Wind M5000-116 (100 m) | GE 6.0-150 (100 m) | Vestas V164-9.5 MW (110 m) |
Jan | 1136.4 | 3059.9 | 3154.20 | 3814.5 | 5713.7 |
Feb | 975 | 2624.2 | 2736.2 | 3322.2 | 4943.0 |
Mar | 714 | 1936.4 | 2064.5 | 2537.5 | 3693.4 |
Apr | 483.1 | 1379.2 | 1509.6 | 1903.2 | 2643.8 |
May | 482.9 | 1358.0 | 1474.5 | 1838.1 | 2598.7 |
Jun | 258.4 | 798.6 | 905.5 | 1191.7 | 1564.0 |
Jul | 295 | 891.2 | 1013.6 | 1323.6 | 1737.8 |
Aug | 303.1 | 875.3 | 950.1 | 1216.7 | 1683.1 |
Sep | 821.2 | 2218.7 | 2297.9 | 2795.5 | 4166.9 |
Oct | 1063.1 | 2853.4 | 2929.8 | 3542.9 | 5333.3 |
Nov | 1208.1 | 3195.5 | 3237.3 | 3902.2 | 5932.1 |
Dec | 1080.8 | 2796.5 | 2885.5 | 3496.3 | 5208.2 |
Net Capacity Factor (%) | |||||
---|---|---|---|---|---|
Month | Vestas V80-2.0 MW (67 m) | HTW 5.2-127 (90 m) | AREVA Wind M5000-116 (100 m) | GE 6.0-150 (100 m) | Vestas V164-9.5 MW (110 m) |
January | 56.82 | 58.84 | 57.64 | 63.58 | 59.99 |
February | 48.75 | 50.47 | 49.56 | 55.37 | 51.89 |
March | 35.70 | 37.24 | 36.11 | 42.29 | 38.78 |
April | 24.15 | 26.52 | 24.85 | 31.72 | 27.76 |
May | 24.15 | 26.11 | 24.96 | 30.63 | 27.28 |
June | 12.92 | 15.36 | 13.89 | 19.86 | 16.42 |
July | 14.75 | 17.14 | 15.38 | 22.06 | 18.24 |
August | 15.15 | 16.83 | 15.96 | 20.28 | 17.67 |
September | 41.06 | 42.67 | 42.00 | 46.59 | 43.75 |
October | 53.15 | 54.87 | 54.00 | 59.05 | 55.99 |
November | 60.41 | 61.45 | 60.51 | 65.04 | 62.28 |
Decemebr | 54.04 | 53.78 | 52.48 | 58.27 | 54.68 |
Overall | 38.42 | 40.19 | 39.04 | 44.73 | 41.36 |
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Hsu, W.-K.; Yeh, C.-K. Offshore Wind Potential of West Central Taiwan: A Case Study. Energies 2021, 14, 3702. https://doi.org/10.3390/en14123702
Hsu W-K, Yeh C-K. Offshore Wind Potential of West Central Taiwan: A Case Study. Energies. 2021; 14(12):3702. https://doi.org/10.3390/en14123702
Chicago/Turabian StyleHsu, Wen-Ko, and Chung-Kee Yeh. 2021. "Offshore Wind Potential of West Central Taiwan: A Case Study" Energies 14, no. 12: 3702. https://doi.org/10.3390/en14123702
APA StyleHsu, W. -K., & Yeh, C. -K. (2021). Offshore Wind Potential of West Central Taiwan: A Case Study. Energies, 14(12), 3702. https://doi.org/10.3390/en14123702