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IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308
_________________________________________________________________________________________
Volume: 03 Issue: 03 | Mar-2014, Available @ http://www.ijret.org 135
EXPERIMENTAL INVESTIGATION, OPTIMIZATION AND
PERFORMANCE PREDICTION OF WIND TURBINE(S) FOR COMPLEX
TERRAIN
Aamir Naseer1
, Anurag Gour2
, Pankaj Jain3
, Mukesh Pandey4
1
Scholar, 2, 3
Assistant Professor, 4
Professor, Department of Energy Technology, Rajiv Gandhi Proudyogiki
Vishwavidyalaya, Bhopal (M.P)
Abstract
Man has been doing business with Winds since a very long period of time; the wind power has been used as long as humans have put
sails into the wind. For more than two millennia wind powered machines have ground grain and pumped water. This affiliation of
man and wind is inexhaustible which makes Wind Energy a very significant and rapidly developing renewable energy sources in all
over the world. But when it comes to electricity generation by harnessing the wind energy, indeed, it requires more technicality, since
it requires a great need for correct and reliable installations of new wind turbines in a more optimized way for smooth operations and
electricity productions, and for that, a precise knowledge of wind energy regime is a prerequisite for the efficient and optimized
extraction of power from the wind. The main purpose of this paper is to present, in brief, wind potential and to perform an
investigation on wind flow characteristics at RGPV Hill Top. In this work the recorded time series wind data for a period of five
months as from july-2013 to November-2013 at the heights of 20 meters and 40 meters was fetched and analyzed for studying the
observed wind climate, which was recorded by the NRG Symphonie Data logger wind mast installed at Energy Park, RGPV campus
with an fixed averaging interval of 10 minutes, the analyzed data which was worked upon comprises of wind speed data in meter per
second and its direction of flow in degrees. As a part of this work, the Wind Atlas Analysis and Application Program (WAsP) was
employed to predict average mean-wind speeds for all directions for some desired sites. The influences of roughness of the terrain, for
the area were also taken into consideration, followed by the vector map of the area. These data were analyzed using WAsP software
and regional wind climate of the area was determined, leading to a wind resource map of the whole site, providing crucial details
which helped in selecting the proposed turbine sites. Also, the AEP for the two already installed turbines was calculated.
Keywords: WAsP, AEP, Wind resource, Wind Rose
-----------------------------------------------------------------------***----------------------------------------------------------------------
1. INTRODUCTION
Limited reserves of fossil fuels and their negative impacts on
the environment lead institutions, organizations and
governments to find out more efficient technologies and new
and renewable energy resources to produce energy in the natural
environment. Recently, wind energy is the growing energy
source in the world and wind power is one of the most widely
used alternative sources of energy. The effective utilization of
the wind energy entails having a detailed knowledge of the wind
characteristics at the particular location. The distribution of
wind speeds is important for the design of wind farms, power
generators and agricultural applications such as the irrigation. It
is not an easy task to choose a site for a wind turbine because
many factors have to be taken into account [1].
By knowing the wind characteristics in any region will help
greatly in identifying windy sites which is crucial for the
successful installation and operation of wind turbines. The
suitable windy sites are necessary in order to assess the
maximum possible electricity that could be generated by a wind
turbine at that particular site at the minimum cost [2]. For the
commencement of any wind energy project, the first essential
step is the identification of suitable sites and prediction of the
economic viability of the wind project. So, the analysis of wind
characteristics and the prediction of the climate in any specified
region could greatly help in identifying areas with maximum
power density which further allows the best possible
installations and operations of wind turbines.
2. APPLICATION OF WASP ON RGPV HILL TOP
WAsP Wind software is a tool for evaluating the wind
conditions of a specific site, taking into consideration the local
influences, by applying the wind data of a suitable reference
point to this site [3]. Provided with the time series wind data
which was recorded by the wind mast installed inside the
campus at Energy Park, the data was analyzed and processed
accordingly to the standard file as required by the WAsP. And
by utilizing the SRTM data the vector map of the specified area
was developed to study the orography and roughness of the
terrain. To be able to predict the wind climate and eventually
the wind potential of the site, the ‘observed wind climate’ of the
area was developed using WAsP and by taking into account the
IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308
_________________________________________________________________________________________
Volume: 03 Issue: 03 | Mar-2014, Available @ http://www.ijret.org 136
influence of roughness of the terrain, obstacles nearby the site
and the topography, now also, this study allows further research
to calculate annual energy prediction at any specific desired
location. Therefore, eventually the AEP for two already
installed turbines was also calculated which are installed at the
RGPV hill site.
3. OBJECTIVES OF THE STUDY
1. Acquisition and analysis of time series data.
2. Preparation of vector map of the RGPV hill including the
nearby area.
3. Classification of terrain features and roughness description
along with a roughness map
4. Determining the observed wind climate at the mast site
5. Preparation of Generalized wind climate for the site
6. Estimation of AEP of installed turbines
7. Selection of feasible locations for turbine sitting.
4. DESCRIPTION OF THE SITE
The study site is located inside the Rajiv Gandhi Proudyogiki
Vishwavidyalaya campus, with a geographical coordinates at
23.307° Lat and 77.363° Lon, which is an isolated hill. The
institution is near Gandhi Nagar on the outskirts of the city,
3 km from the airport on the Gwalior bypass road. The campus
is spread over 241.14 acres (0.9759 km2). The campus has
instruction blocks, workshop, library block, nanotechnology
block, School of Energy and Environment block and
Administrative block [4].
5. DESCRIPTION OF THE MONITORING SITE
The wind data for the purpose of study was recorded by the
NRG Symphonie data logger which is installed inside the
Energy Park and the wind data was fetched for a period of five
months at two mast heights of 20 and 40 meters with a
geographical location of East 077’ 21.668 and North 23’ 18.720
and the elevation of mast base is 591 meters.
The mast is shown in figure 1, it is a 3 cup type anemometer
with measuring heights of 20 and 40 meters and two wind vanes
at the heights of 38 and 20 meters. It also provides the
measurements for Temperature, relative humidity, atmospheric
pressure and rain gauge.
A data logger was connected with all sensors on the mast to
collect data in time series. , and the data logger was Symphonie
data logger which has a fixed averaging interval of 10 minutes.
Each of the 12 channels’ averages, standard deviations,
minimum and maximum values are calculated from continuous
2 second data samples. Data intervals are calculated every 10
minutes, time stamped with the beginning time of each interval
and written to the Multimedia Card (MMC) at the top of each
hour.
Fig 1- Wind mast at Energy Park, RGPV
5.1 Topography of RGPV Hill and Nearby Area
Topography of any specified area is essential in describing the
elevation also known as orography and land cover also known
as surface roughness of the area surrounding the calculation
sites such as meteorological stations, reference sites, turbine
sites or the sites in a resource grid. For this purpose WAsP uses
vector maps to get information about the elevation (orography)
and land cover (roughness) characteristics of the landscape in
which the modelling is being done [5].
Fig 2 - Satellite image of the Area
Mortensen et. Al., have reported that it is possible to obtain
accurate assessment of stable wind speed which are close to the
measured values with maps of 8 x 8 sq. Km and the influence of
contour interval on the accuracy of wind speed prediction [7].
IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308
_________________________________________________________________________________________
Volume: 03 Issue: 03 | Mar-2014, Available @ http://www.ijret.org 137
This study includes the vector map of the site which covers an
area spread about 28 sq. Kms having width of 6.7 km and height
of 4.1 km. The map used in this study has 143 elevation contour
lines and the map was transformed to the Universal Transverse
Mercator (UTM) projection with the datum of WGS 1984. The
area falls in Zone 43 with the central meridian of +75° E, with
elevation ranging from a low of 450 m to a high of 546 m.
Fig. 3 -Vector map of RGPV hill showing elevation contours
5.2 Obstacles near the Measuring Site
Obstacle groups are used to describe objects in the vicinity of
one or more calculation sites (met. station, turbine site or
reference site) which might affect the behaviour of the wind at
the site. Examples of sheltering obstacles include buildings,
shelter belts and groups of trees. Each obstacle present near the
measuring site affect the wind data collected and it depends
upon porosity and roughness of the terrain [5].
In this study the obstacles were specified by their position
relative to the measuring mast site and the dimensions of each
obstacle was assigned along with the porosity of each obstacle.
Positions of all the obstacles were specified in a polar
coordinate system. Angles (bearings measured with a compass)
from the mast to the front side corners of each obstacles are
measured and specified in clockwise from north, radial lenghts
between the front side corners and the mast was measured and
specified.
The list and location of obstacles for the wind monitoring
station for incorporation as a WAsP obstacle file is shown in
TABLE 2 and the plot shown in FIG.4, TABLE shows the
reading for the two Angles from the mast location to the two
corners of the obstacle (A1 & A2), Radial lenghts between the
mast and the corners (R1 & R2), height, depth, and the porosity
of the obstacle.
Table 1: List of obstacles
ID
#
A1[] R1[m] A2[] R2[m]
Ht.
[m]
D Por.
1 2.8 106 3 87 10 37 0.50
2 21 126 25 104 10 72 0.50
3 50 159 55 150 10 36 0.50
4 63 188 79 171 10 55 0.50
5 70 130 77 125 10 40 0.50
6 39 69 52 55 10 70 0.50
7 111 39 143 20 10 20 0.50
8 94.2 117 96 45 10 19 0.50
9 94 134 102 126 10 35 0.50
Fig. 4 - Obstaceles group near the measuring site
6. OBSERVED WIND CLIMATE AT ENERGY
PARK
The analysis of time series data of meteorological data to obtain
the observed wind climate is done by Climate Analyst, and the
result of these analyses is the summaries which describes some
aspect of the climate. The observed wind climate file contains
the frequencies of occurrence of the wind in a number of sectors
(the wind rose) and wind speed bins. It further contains the
height of observation above ground level and the geographical
coordinates (latitude and longitude) of the wind mast [5].
The observed wind climate (OWC) represents as closely as
possible the long-term wind climate at anemometer height at the
position of the meteorological mast [5], [6]. The discrepancy
calculated in the measured and Weibull fitted values of mean
wind speed and mean power density for 20 m is shown in
Table-I.
IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308
_________________________________________________________________________________________
Volume: 03 Issue: 03 | Mar-2014, Available @ http://www.ijret.org 138
Table 2: Discrepancy in mean wind speed & mean power
density at 20 m
Mean wind speed Mean power
density
Measured 2.55 m/s 19 W/m2
Weibull fit 2.58 m/s 20 W/m2
Discrepancy 1.4 % 2.0 %
The values of weibull parameters (A, k), mean wind speed (U),
mean power density (P) and frequency of all 12 sectors (0° to
359°) are calculated from WAsP OWC Wizard and recorded in
Table-3 for 20 m height.
Table- 3: sector wise parameters at 20m
sectors A k U P f
0 2.9 1.78 2.56 22 4.9
30 2.4 2.08 2.09 10 8.6
60 1.9 1.81 1.72 7 13.1
90 2.0 1.83 1.77 7 10.3
120 2.0 2.12 1.76 6 4.5
150 1.6 2.61 1.42 3 1.9
180 2.4 2.10 2.15 11 1.9
210 3.1 2.40 2.72 20 6.5
240 3.3 2.40 2.91 25 11.4
270 3.8 3.00 3.36 33 19.7
300 3.7 3.42 3.33 30 11.9
330 3.3 1.96 2.89 29 5.3
7. WIND ROSE AND HISTOGRAM
Wind direction is one of the wind characteristics. Statistical data
of wind directions over a long period of time is very important
in the site selection of wind farm and the layout of wind
turbines in the wind farm [7].
The wind rose diagram is a useful tool of analyzing wind data
that are related to wind directions at a particular location over a
specific time period (year, season, month, week, etc.). This
circular diagram displays the relative frequency of wind
directions distributed among all the directions.
It is noticed that strong winds usually come from a particular
direction, hence to show the information about the distributions
of wind speeds, and the frequency of the varying wind
directions, the Wind Rose diagram has been prepared [8].
The wind rose diagram showing relative frequencies of wind
direction for each sector and the histogram graph of the
frequencies of wind speeds at 20m mast heights is shown in
figure 5.
Fig. 5 - Wind Rose and Weibull distribution for 20 m at RGPV
Energy Park mast
8. ESTIMATION OF POWER PRODUCTION OF
TURBINE
The total energy content or the potential in the wind to produce
power is calculated by WAsP. Furthermore, an estimate of the
actual, annual mean energy production of a wind turbine can be
obtained by providing WAsP with the power curve of the wind
turbine in question [5].
The equation used by WAsP for calculating the mean power
production of a wind turbine is shown below. With WAsP, the
total or Omni-directional power production is calculated as the
sum of the sector-wise power productions.
Once the power curve P (u) is measured for a wind turbine, the
mean power production can be estimated provided the
probability density function of the wind speed at hub height is
determined either by measurements or a siting procedure [5]:
P = Pr u P u d(u)
∞
0
For the estimation process, the power curve of the installed
wind turbine(s) was developed, namely 10 KW machinocraft
wind turbine generator. The power curve was developed by
Turbine Editor, which is a utility tool of WAsP. The power
curve shown below in the figure 6 is a graph between wind
speed in m/s and power in KW along with the thrust coefficient
of the wind turbine.
IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308
_________________________________________________________________________________________
Volume: 03 Issue: 03 | Mar-2014, Available @ http://www.ijret.org 139
Fig. 6 - Power curve of 10 KW machinocraft wind turbine
generator
The result generated by WAsP displayed as a Rose diagram
shows the distribution of power density at the turbine sites at a
hub height of 20 m.
Fig.7 - Power Density Rose at 20 m
Table 4: Turbine Site Results
Site
Turbine
site 01
Turbine site 02
Location in UTM
[m]
741580.3,
2579111.0
741742.3,
2579906.0
Turbine
Machinocraft 10 KW wind
turbine generator
Elevation [m a.s.l.] 523.3293 522.7935
Height [m a.g.l.] 20 20
Net AEP [MWh] 10.537 11.035
Wake loss[%] 0.24 0.01
9. CONCLUSIONS
The following points are concluded from this study-
1. Wind data was recorded at Energy park wind mast for
the duration of five months from July-2013 to
November 201, in order to study the prevailing wind
climate at the site.
2. Recorded wind data was further analyzed to extract the
values for mean wind speed and mean power density at
the recording site, and which was found out to be 2.55
m/s and 19 W/m2
respectively at the height of 20
meters.
3. In order to predict the wind climate at the desired site,
‘generalized wind climate’ was calculated for reference
height of 20 m on the basis of observed wind climate at
the recording site.
4. A wind rose diagram was prepared in order to
determine the relative frequencies of wind direction for
each sector at the wind recording site. And it was
observed that the prevailing direction for the wind flow
was sector 10 which corresponds roughly towards
West at both reference heights.
5. On the basis of observed wind climate report, it was
inferred that the minimum wind speed was 0.40 m/s
and 9.80 m/s was the maximum value of wind speed at
the height of 20 m.
6. Mean power density calculated for the mast location
was 19 W/m2
for the reference height of 20 m.
7. To study the effects of roughness on the wind flow the
roughness of the whole area surrounding the site was
put into consideration and the area was divided into
various roughness classes, and as a result it was
observed that roughness is a crucial factor in predicting
the wind flow and climate.
8. In order to calculate an estimate for the annual power
production by installed wind turbines, the power curve
for the 10 KW wind turbine was calculated using
Turbine Editor utility tool.
9. The net AEP calculated for the turbines at turbine site
01 and 02 was 10.537 MWh and 11.035 MWh
respectively.
ACKNOWLEDGEMENTS
I would like to express my deep gratitude towards Dr. V.K.
Sethi, Director, University Institute of Technology, Rajeev
Gandhi Proudyogiki Vishvavidyalaya, Bhopal and Head of the
Department of Energy Technology, and also to all my faculty
members and supporting staff of the department for their
valuable support and constructive suggestions throughout the
work.
IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308
_________________________________________________________________________________________
Volume: 03 Issue: 03 | Mar-2014, Available @ http://www.ijret.org 140
REFERENCES
[1]. Ackerman T, So¹der L. An overview of wind energy—
status 2002 Renewable and SustainableEnergy Reviews
2002;6:67–128.
[2]. Vilas Warudkar, Siraj Ahmed. Assessment of Wind Power
Potential by Wind Speed Probability Distribution at Complex
Terrain in Central Part of India Using Wasp Tool
[3]. Bowen, A.J. and N.G. Mortensen (1996). Exploring the
limits of WAsP: the Wind Atlas Analysis and Application
Program Proceedings of the 1996 European Union Wind Energy
Conference, Göteborg, Sweden, 584-587.
[4]. http://en_wikipedia.org/wiki/rajiv_gandhi_proudyog
iki_vishwavidyalaya
[5]. Mortensen, N.G., D.N. Heathfield, O. Rathmann and
Morten Nielsen (2013). Wind Atlas Analysis and Application
Program: WAsP 11 Help Facility. Department of Wind Energy,
Technical University of Denmark, Roskilde, Denmark 356
topics
[6]. Petersen, E. L., N.G. Mortensen, L. Landberg, J. Hojstrup,
H.P. Frank. 1997. Wind power meteorology. Riso National
Laboratory, Roskilde, Denmark, RisĂž-I-1206 (EN)
[7]. Mortensen N.G. and E.L. Peterson (1997). Influence of
Topographical Input Data on the accuracy of Wind Flow
Modeling in Complex Terrain, 1997, Dublin, Ireland, October
(1997).

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Experimental investigation, optimization and performance prediction of wind turbine(s) for complex terrain

  • 1. IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308 _________________________________________________________________________________________ Volume: 03 Issue: 03 | Mar-2014, Available @ http://www.ijret.org 135 EXPERIMENTAL INVESTIGATION, OPTIMIZATION AND PERFORMANCE PREDICTION OF WIND TURBINE(S) FOR COMPLEX TERRAIN Aamir Naseer1 , Anurag Gour2 , Pankaj Jain3 , Mukesh Pandey4 1 Scholar, 2, 3 Assistant Professor, 4 Professor, Department of Energy Technology, Rajiv Gandhi Proudyogiki Vishwavidyalaya, Bhopal (M.P) Abstract Man has been doing business with Winds since a very long period of time; the wind power has been used as long as humans have put sails into the wind. For more than two millennia wind powered machines have ground grain and pumped water. This affiliation of man and wind is inexhaustible which makes Wind Energy a very significant and rapidly developing renewable energy sources in all over the world. But when it comes to electricity generation by harnessing the wind energy, indeed, it requires more technicality, since it requires a great need for correct and reliable installations of new wind turbines in a more optimized way for smooth operations and electricity productions, and for that, a precise knowledge of wind energy regime is a prerequisite for the efficient and optimized extraction of power from the wind. The main purpose of this paper is to present, in brief, wind potential and to perform an investigation on wind flow characteristics at RGPV Hill Top. In this work the recorded time series wind data for a period of five months as from july-2013 to November-2013 at the heights of 20 meters and 40 meters was fetched and analyzed for studying the observed wind climate, which was recorded by the NRG Symphonie Data logger wind mast installed at Energy Park, RGPV campus with an fixed averaging interval of 10 minutes, the analyzed data which was worked upon comprises of wind speed data in meter per second and its direction of flow in degrees. As a part of this work, the Wind Atlas Analysis and Application Program (WAsP) was employed to predict average mean-wind speeds for all directions for some desired sites. The influences of roughness of the terrain, for the area were also taken into consideration, followed by the vector map of the area. These data were analyzed using WAsP software and regional wind climate of the area was determined, leading to a wind resource map of the whole site, providing crucial details which helped in selecting the proposed turbine sites. Also, the AEP for the two already installed turbines was calculated. Keywords: WAsP, AEP, Wind resource, Wind Rose -----------------------------------------------------------------------***---------------------------------------------------------------------- 1. INTRODUCTION Limited reserves of fossil fuels and their negative impacts on the environment lead institutions, organizations and governments to find out more efficient technologies and new and renewable energy resources to produce energy in the natural environment. Recently, wind energy is the growing energy source in the world and wind power is one of the most widely used alternative sources of energy. The effective utilization of the wind energy entails having a detailed knowledge of the wind characteristics at the particular location. The distribution of wind speeds is important for the design of wind farms, power generators and agricultural applications such as the irrigation. It is not an easy task to choose a site for a wind turbine because many factors have to be taken into account [1]. By knowing the wind characteristics in any region will help greatly in identifying windy sites which is crucial for the successful installation and operation of wind turbines. The suitable windy sites are necessary in order to assess the maximum possible electricity that could be generated by a wind turbine at that particular site at the minimum cost [2]. For the commencement of any wind energy project, the first essential step is the identification of suitable sites and prediction of the economic viability of the wind project. So, the analysis of wind characteristics and the prediction of the climate in any specified region could greatly help in identifying areas with maximum power density which further allows the best possible installations and operations of wind turbines. 2. APPLICATION OF WASP ON RGPV HILL TOP WAsP Wind software is a tool for evaluating the wind conditions of a specific site, taking into consideration the local influences, by applying the wind data of a suitable reference point to this site [3]. Provided with the time series wind data which was recorded by the wind mast installed inside the campus at Energy Park, the data was analyzed and processed accordingly to the standard file as required by the WAsP. And by utilizing the SRTM data the vector map of the specified area was developed to study the orography and roughness of the terrain. To be able to predict the wind climate and eventually the wind potential of the site, the ‘observed wind climate’ of the area was developed using WAsP and by taking into account the
  • 2. IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308 _________________________________________________________________________________________ Volume: 03 Issue: 03 | Mar-2014, Available @ http://www.ijret.org 136 influence of roughness of the terrain, obstacles nearby the site and the topography, now also, this study allows further research to calculate annual energy prediction at any specific desired location. Therefore, eventually the AEP for two already installed turbines was also calculated which are installed at the RGPV hill site. 3. OBJECTIVES OF THE STUDY 1. Acquisition and analysis of time series data. 2. Preparation of vector map of the RGPV hill including the nearby area. 3. Classification of terrain features and roughness description along with a roughness map 4. Determining the observed wind climate at the mast site 5. Preparation of Generalized wind climate for the site 6. Estimation of AEP of installed turbines 7. Selection of feasible locations for turbine sitting. 4. DESCRIPTION OF THE SITE The study site is located inside the Rajiv Gandhi Proudyogiki Vishwavidyalaya campus, with a geographical coordinates at 23.307° Lat and 77.363° Lon, which is an isolated hill. The institution is near Gandhi Nagar on the outskirts of the city, 3 km from the airport on the Gwalior bypass road. The campus is spread over 241.14 acres (0.9759 km2). The campus has instruction blocks, workshop, library block, nanotechnology block, School of Energy and Environment block and Administrative block [4]. 5. DESCRIPTION OF THE MONITORING SITE The wind data for the purpose of study was recorded by the NRG Symphonie data logger which is installed inside the Energy Park and the wind data was fetched for a period of five months at two mast heights of 20 and 40 meters with a geographical location of East 077’ 21.668 and North 23’ 18.720 and the elevation of mast base is 591 meters. The mast is shown in figure 1, it is a 3 cup type anemometer with measuring heights of 20 and 40 meters and two wind vanes at the heights of 38 and 20 meters. It also provides the measurements for Temperature, relative humidity, atmospheric pressure and rain gauge. A data logger was connected with all sensors on the mast to collect data in time series. , and the data logger was Symphonie data logger which has a fixed averaging interval of 10 minutes. Each of the 12 channels’ averages, standard deviations, minimum and maximum values are calculated from continuous 2 second data samples. Data intervals are calculated every 10 minutes, time stamped with the beginning time of each interval and written to the Multimedia Card (MMC) at the top of each hour. Fig 1- Wind mast at Energy Park, RGPV 5.1 Topography of RGPV Hill and Nearby Area Topography of any specified area is essential in describing the elevation also known as orography and land cover also known as surface roughness of the area surrounding the calculation sites such as meteorological stations, reference sites, turbine sites or the sites in a resource grid. For this purpose WAsP uses vector maps to get information about the elevation (orography) and land cover (roughness) characteristics of the landscape in which the modelling is being done [5]. Fig 2 - Satellite image of the Area Mortensen et. Al., have reported that it is possible to obtain accurate assessment of stable wind speed which are close to the measured values with maps of 8 x 8 sq. Km and the influence of contour interval on the accuracy of wind speed prediction [7].
  • 3. IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308 _________________________________________________________________________________________ Volume: 03 Issue: 03 | Mar-2014, Available @ http://www.ijret.org 137 This study includes the vector map of the site which covers an area spread about 28 sq. Kms having width of 6.7 km and height of 4.1 km. The map used in this study has 143 elevation contour lines and the map was transformed to the Universal Transverse Mercator (UTM) projection with the datum of WGS 1984. The area falls in Zone 43 with the central meridian of +75° E, with elevation ranging from a low of 450 m to a high of 546 m. Fig. 3 -Vector map of RGPV hill showing elevation contours 5.2 Obstacles near the Measuring Site Obstacle groups are used to describe objects in the vicinity of one or more calculation sites (met. station, turbine site or reference site) which might affect the behaviour of the wind at the site. Examples of sheltering obstacles include buildings, shelter belts and groups of trees. Each obstacle present near the measuring site affect the wind data collected and it depends upon porosity and roughness of the terrain [5]. In this study the obstacles were specified by their position relative to the measuring mast site and the dimensions of each obstacle was assigned along with the porosity of each obstacle. Positions of all the obstacles were specified in a polar coordinate system. Angles (bearings measured with a compass) from the mast to the front side corners of each obstacles are measured and specified in clockwise from north, radial lenghts between the front side corners and the mast was measured and specified. The list and location of obstacles for the wind monitoring station for incorporation as a WAsP obstacle file is shown in TABLE 2 and the plot shown in FIG.4, TABLE shows the reading for the two Angles from the mast location to the two corners of the obstacle (A1 & A2), Radial lenghts between the mast and the corners (R1 & R2), height, depth, and the porosity of the obstacle. Table 1: List of obstacles ID # A1[] R1[m] A2[] R2[m] Ht. [m] D Por. 1 2.8 106 3 87 10 37 0.50 2 21 126 25 104 10 72 0.50 3 50 159 55 150 10 36 0.50 4 63 188 79 171 10 55 0.50 5 70 130 77 125 10 40 0.50 6 39 69 52 55 10 70 0.50 7 111 39 143 20 10 20 0.50 8 94.2 117 96 45 10 19 0.50 9 94 134 102 126 10 35 0.50 Fig. 4 - Obstaceles group near the measuring site 6. OBSERVED WIND CLIMATE AT ENERGY PARK The analysis of time series data of meteorological data to obtain the observed wind climate is done by Climate Analyst, and the result of these analyses is the summaries which describes some aspect of the climate. The observed wind climate file contains the frequencies of occurrence of the wind in a number of sectors (the wind rose) and wind speed bins. It further contains the height of observation above ground level and the geographical coordinates (latitude and longitude) of the wind mast [5]. The observed wind climate (OWC) represents as closely as possible the long-term wind climate at anemometer height at the position of the meteorological mast [5], [6]. The discrepancy calculated in the measured and Weibull fitted values of mean wind speed and mean power density for 20 m is shown in Table-I.
  • 4. IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308 _________________________________________________________________________________________ Volume: 03 Issue: 03 | Mar-2014, Available @ http://www.ijret.org 138 Table 2: Discrepancy in mean wind speed & mean power density at 20 m Mean wind speed Mean power density Measured 2.55 m/s 19 W/m2 Weibull fit 2.58 m/s 20 W/m2 Discrepancy 1.4 % 2.0 % The values of weibull parameters (A, k), mean wind speed (U), mean power density (P) and frequency of all 12 sectors (0° to 359°) are calculated from WAsP OWC Wizard and recorded in Table-3 for 20 m height. Table- 3: sector wise parameters at 20m sectors A k U P f 0 2.9 1.78 2.56 22 4.9 30 2.4 2.08 2.09 10 8.6 60 1.9 1.81 1.72 7 13.1 90 2.0 1.83 1.77 7 10.3 120 2.0 2.12 1.76 6 4.5 150 1.6 2.61 1.42 3 1.9 180 2.4 2.10 2.15 11 1.9 210 3.1 2.40 2.72 20 6.5 240 3.3 2.40 2.91 25 11.4 270 3.8 3.00 3.36 33 19.7 300 3.7 3.42 3.33 30 11.9 330 3.3 1.96 2.89 29 5.3 7. WIND ROSE AND HISTOGRAM Wind direction is one of the wind characteristics. Statistical data of wind directions over a long period of time is very important in the site selection of wind farm and the layout of wind turbines in the wind farm [7]. The wind rose diagram is a useful tool of analyzing wind data that are related to wind directions at a particular location over a specific time period (year, season, month, week, etc.). This circular diagram displays the relative frequency of wind directions distributed among all the directions. It is noticed that strong winds usually come from a particular direction, hence to show the information about the distributions of wind speeds, and the frequency of the varying wind directions, the Wind Rose diagram has been prepared [8]. The wind rose diagram showing relative frequencies of wind direction for each sector and the histogram graph of the frequencies of wind speeds at 20m mast heights is shown in figure 5. Fig. 5 - Wind Rose and Weibull distribution for 20 m at RGPV Energy Park mast 8. ESTIMATION OF POWER PRODUCTION OF TURBINE The total energy content or the potential in the wind to produce power is calculated by WAsP. Furthermore, an estimate of the actual, annual mean energy production of a wind turbine can be obtained by providing WAsP with the power curve of the wind turbine in question [5]. The equation used by WAsP for calculating the mean power production of a wind turbine is shown below. With WAsP, the total or Omni-directional power production is calculated as the sum of the sector-wise power productions. Once the power curve P (u) is measured for a wind turbine, the mean power production can be estimated provided the probability density function of the wind speed at hub height is determined either by measurements or a siting procedure [5]: P = Pr u P u d(u) ∞ 0 For the estimation process, the power curve of the installed wind turbine(s) was developed, namely 10 KW machinocraft wind turbine generator. The power curve was developed by Turbine Editor, which is a utility tool of WAsP. The power curve shown below in the figure 6 is a graph between wind speed in m/s and power in KW along with the thrust coefficient of the wind turbine.
  • 5. IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308 _________________________________________________________________________________________ Volume: 03 Issue: 03 | Mar-2014, Available @ http://www.ijret.org 139 Fig. 6 - Power curve of 10 KW machinocraft wind turbine generator The result generated by WAsP displayed as a Rose diagram shows the distribution of power density at the turbine sites at a hub height of 20 m. Fig.7 - Power Density Rose at 20 m Table 4: Turbine Site Results Site Turbine site 01 Turbine site 02 Location in UTM [m] 741580.3, 2579111.0 741742.3, 2579906.0 Turbine Machinocraft 10 KW wind turbine generator Elevation [m a.s.l.] 523.3293 522.7935 Height [m a.g.l.] 20 20 Net AEP [MWh] 10.537 11.035 Wake loss[%] 0.24 0.01 9. CONCLUSIONS The following points are concluded from this study- 1. Wind data was recorded at Energy park wind mast for the duration of five months from July-2013 to November 201, in order to study the prevailing wind climate at the site. 2. Recorded wind data was further analyzed to extract the values for mean wind speed and mean power density at the recording site, and which was found out to be 2.55 m/s and 19 W/m2 respectively at the height of 20 meters. 3. In order to predict the wind climate at the desired site, ‘generalized wind climate’ was calculated for reference height of 20 m on the basis of observed wind climate at the recording site. 4. A wind rose diagram was prepared in order to determine the relative frequencies of wind direction for each sector at the wind recording site. And it was observed that the prevailing direction for the wind flow was sector 10 which corresponds roughly towards West at both reference heights. 5. On the basis of observed wind climate report, it was inferred that the minimum wind speed was 0.40 m/s and 9.80 m/s was the maximum value of wind speed at the height of 20 m. 6. Mean power density calculated for the mast location was 19 W/m2 for the reference height of 20 m. 7. To study the effects of roughness on the wind flow the roughness of the whole area surrounding the site was put into consideration and the area was divided into various roughness classes, and as a result it was observed that roughness is a crucial factor in predicting the wind flow and climate. 8. In order to calculate an estimate for the annual power production by installed wind turbines, the power curve for the 10 KW wind turbine was calculated using Turbine Editor utility tool. 9. The net AEP calculated for the turbines at turbine site 01 and 02 was 10.537 MWh and 11.035 MWh respectively. ACKNOWLEDGEMENTS I would like to express my deep gratitude towards Dr. V.K. Sethi, Director, University Institute of Technology, Rajeev Gandhi Proudyogiki Vishvavidyalaya, Bhopal and Head of the Department of Energy Technology, and also to all my faculty members and supporting staff of the department for their valuable support and constructive suggestions throughout the work.
  • 6. IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308 _________________________________________________________________________________________ Volume: 03 Issue: 03 | Mar-2014, Available @ http://www.ijret.org 140 REFERENCES [1]. Ackerman T, Sošder L. An overview of wind energy— status 2002 Renewable and SustainableEnergy Reviews 2002;6:67–128. [2]. Vilas Warudkar, Siraj Ahmed. Assessment of Wind Power Potential by Wind Speed Probability Distribution at Complex Terrain in Central Part of India Using Wasp Tool [3]. Bowen, A.J. and N.G. Mortensen (1996). Exploring the limits of WAsP: the Wind Atlas Analysis and Application Program Proceedings of the 1996 European Union Wind Energy Conference, Göteborg, Sweden, 584-587. [4]. http://en_wikipedia.org/wiki/rajiv_gandhi_proudyog iki_vishwavidyalaya [5]. Mortensen, N.G., D.N. Heathfield, O. Rathmann and Morten Nielsen (2013). Wind Atlas Analysis and Application Program: WAsP 11 Help Facility. Department of Wind Energy, Technical University of Denmark, Roskilde, Denmark 356 topics [6]. Petersen, E. L., N.G. Mortensen, L. Landberg, J. Hojstrup, H.P. Frank. 1997. Wind power meteorology. Riso National Laboratory, Roskilde, Denmark, RisĂž-I-1206 (EN) [7]. Mortensen N.G. and E.L. Peterson (1997). Influence of Topographical Input Data on the accuracy of Wind Flow Modeling in Complex Terrain, 1997, Dublin, Ireland, October (1997).