Radiation and energy balance dynamics over
young chir pine (Pinus roxburghii ) system
in Doon of western Himalayas
Nilendu Singh1,4,∗ , Bimal K Bhattacharya2, M K Nanda3 ,
Prafulla Soni1 and Jai Singh Parihar2
1
Forest Research Institute, Dehradun 248 006, India.
Space Applications Centre (ISRO), Ahmedabad 380 015, India.
3
Bidhan Chandra Krishi Viswavidyalaya, Nadia 741 252, India.
4
Present address: Centre for Glaciology, Wadia Institute of Himalayan Geology, 33 GMS Road,
Dehradun 248 011, India.
∗
Corresponding author. e-mail: nilendu singh@ yahoo.com
2
The regional impacts of future climate changes are principally driven by changes in energy fluxes. In
this study, measurements on micrometeorological and biophysical variables along with surface energy
exchange were made over a coniferous subtropical chir pine (Pinus roxburghii ) plantation ecosystem
at Forest Research Institute, Doon valley, India. The energy balance components were analyzed for
two years to understand the variability of surface energy fluxes, their drivers, and closure pattern. The
period covered two growth cycles of pine in the years 2010 and 2011 without and with understory
growth. Net short wave and long wave radiative fluxes substantially varied with cloud dynamics, season,
rainfall induced surface wetness, and green growth. The study clearly brought out the intimate link
of albedo dynamics in chir pine system with dynamics of leaf area index (LAI), soil moisture, and
changes in understory background. Rainfall was found to have tight linear coupling with latent heat
fluxes. Latent heat flux during monsoon period was found to be higher in higher rainfall year (2010)
than in lower rainfall year (2011). Higher or lower pre-monsoon sensible heat fluxes were succeeded by
noticeably higher or lower monsoon rainfall respectively. Proportion of latent heat flux to net radiation
typically followed the growth curve of green vegetation fraction, but with time lag. The analysis of energy
balance closure (EBC) showed that the residual energy varied largely within ±30% of net available energy
and the non-closure periods were marked by higher rainspells or forced clearance of understory growths.
1. Introduction
The regional impacts of future climate changes
are principally driven by changes in energy fluxes
and associated hydrological changes (Rach et al.
2014). The impact of any changes in the energy
fluxes and consequent hydrological changes will be
significant in energy-limited, mid altitudinal, subtropical western Himalayan forests. Mid-altitudinal
(500–3500 m) western Himalayan slopes are known
to influence the magnitude of the southwest monsoon by surface heat and moisture fluxes via ‘sensible heat driven air pump mechanism’ (Boos and
Kuang 2010; Wu et al. 2012).
The forests of the mid-altitudinal range are
deciduous type of chir pine (Pinus roxburghii )
(500–2000 m) and oak (Quercus leucotricophora)
(2000–3500 m) forests. These ecosystems have
synchronous, distinct leaf–emergence and leaf–fall
seasons (Singh and Singh 1992). Furthermore,
Keywords. Micrometeorology; young chir pine; surface heat fluxes; energy balance closure.
J. Earth Syst. Sci. 123, No. 7, October 2014, pp. 1451–1465
c Indian Academy of Sciences
1451
1452
Nilendu Singh et al.
there are reports of large-scale pine invasions into
oaks (Singh and Singh 1992; Singh et al. 2006).
This is largely driven by climatic as well anthropogenic factors (GBPIHED 2009). Chir pine being
stress tolerant can potentially colonize the disturbed and moisture deficient sites (Singh and
Singh 1992), as pines are known to use water efficiently by maintaining delicate water balance at
xylem-stomatal level (Ryan and Yoder 1997).
The Himalayan coniferous forest is one of the
major terrestrial eco-regions in the Indo-pacific
region spread over 3000 km at length occupying
76,200 km2 . The subtropical western Himalayan
coniferous chir pine (Pinus roxburghii ) forest is
spread over about 18,627 km2 and is the most dominant vegetation within the altitudinal range of
500–2000 m. This constitutes about 5.99% of total
forested area of India (FSI 2011). Pine ecosystem may enhance the regional spring time (March–
April) albedo, as they have the lowest leaf area
index (LAI) during this period with needles having a life span of one year (Singh and Singh
1992). Thus, these ecosystems having distinct leafemergence and leaf-fall seasons may exert greater
influence on the mean regional energy balance,
temperature, and climate as a whole. Furthermore,
anthropogenic activities and consequent invasion
by early succession shrubs such as Lantana camara
are changing the forest surface characteristics very
fast and irreversibly (Bhatt et al. 1994; Kimothi
et al. 2010; Dobhal et al. 2011). The changes in
vegetated land use lead to significant changes in
surface albedo, energy balance, as well as surface
roughness characteristics in a shorter (daily to seasonal) time scale. Consequently, the energy partitioning as well as water and carbon exchange is
likely to change with changing vegetation trends.
Thus, the changing surface characteristics are likely
to affect the interaction between vegetation and
atmosphere thereby influencing local as well as
regional climate (Betts 2001; Bonan 2008). The
recent summer heat waves, highly variable southwest monsoon (GBPIHED 2009–10) and declining trend in winter rainfall (Rawat 2012) may be
some of the consequences of large-scale changes in
surface characteristics in this region due to recent
urbanization.
The long-term data on energy and water balance
in conifers are scanty, particularly in India. Given
the climatic importance of the mid-altitudinal
Himalayan forest, the present scenario of vegetation shift and changing forest surface characteristics, there is a need to understand the dynamics
of surface energy exchange and regulation behavior in water conservative, deciduous coniferous
forests. Therefore, the present study focuses on the
dynamics of radiation and energy balance behavior
over a coniferous vegetative system such as pine, in
this region at different time scales through systematic ground measurements. The objectives of this
study are:
• to characterize the seasonal variation of radiative
and convective heat fluxes at different growth
phases of chir pine;
• to assess the degree of energy balance closure
in relation to environmental and anthropogenic
factors; and
• to find out possible relation between heat flux
in pine system and variability in southwest monsoon rainfall.
2. Study site description
2.1 Site characteristics
The experimental site consisted of a young, growing chir pine plantation (8.5 years old) patch
(400 m × 500 m) within the reserve forest at the
Forest Research Institute campus, Dehradun, India
(30◦ 20′ 4′′ N, 78◦ 00′ 01′′ E, elevation: 640 m). The
mean height of the young pines during the study
period was ∼6.5 m, which was increasing at the
rate of ∼1.0 m per year. Mean DBH (diameter at
breast height) was ∼13.83 cm; it was increasing at
the rate of about 1.0 cm per year. Average crown
height was 3.94 m, increasing at the rate of ∼0.33 m
per year. The average rooting depth of young pine
was about 3 m. The dominant understory species
was Lantana camara. The land management practices in this stand usually clear Lantana and other
minor species in the post-monsoon period during
October–November. The same land management
practice was followed in 2010. For understanding
and comparing the effects of understory on energy
balance and closure, the undergrowths were not
cleared in the year 2011.
2.2 Climate and soil
Climatically, the research site is a subtropical system. The mean monthly air temperature was found
to vary between 11.5◦ and 27◦ C with the lowest in January and the highest during June. The
mean monthly relative humidity ranged from 52%
to 85% with the lowest in April and the highest
in August. Minimum and maximum rainfall occurs
in the months of November (∼4 mm) and August
(∼570 mm), respectively. The bright sunshine
hours varied between 4.4 and 9.3 hd−1 with minimum during the months of July and August and
maximum during the month of May. The monthly
mean wind velocity varied between 1.5 and 4.0
km h−1 with a minimum during the months of
November–December and maximum during April–
June. The mean monthly open pan evaporation
Radiation and energy balance dynamics over young chir pine system
was found to vary from 1.17 to 7.22 mmd−1 with
the lowest during December and the highest during the month of May. The mean monthly vapour
pressure deficit was found to vary from 3.25 to
27.45 mbar with the lowest during the months of
August–September and the highest during April.
The number of rainy days was maximum (20) during the months of August and minimum (1) during
November–December.
The soil is deeply weathered Mollisols and is
3–8 m thick. The pH is acidic ranging from 4.5 to
6.0, nutrient rich, with a porosity range of 40–60%.
The soil texture of the site is sandy clay loam with
35% sand, 40% clay, and 25% silt. The bulk density of the soil is ∼1.03. The soil moisture content
of the site ranges from 10% in peak summer days
to above 28% during rainy season.
2.3 Experimental details: In situ measurements
2.3.1 Micrometeorological observations
An Indian National Satellite (INSAT) linked micrometeorological tower of 13 m height (Bhattacharya
et al. 2009) was installed within homogenously
distributed young pine plantation with a fetch of
about 500 m from all directions (fetch ratio: 1:100)
for continuous and automated measurements of
radiation components (short wave and long wave),
energy, and water balance. The sensors consist of
four component net radiometers (at 10 m) (NR Lite,
Kipp and Zonen, Delft, Netherlands), two-depth
(at 0.1 and 0.2 m) soil heat flux plates (HFP-01SC,
Radiation & Energy Balance System Inc., USA),
three-height (at 4.5, 7.5 and 12.5 m) air temperature–
relative humidity (AT–RH) probes with a shielded
and aspirated sensor (HMP-45C, Campbell Scientific,
Logan, USA), three-height (4.5, 7.5 and 12.5 m)
anemometer-vane for wind speed and direction
(KDS-131, KEPL, India) and three-depth (0.05,
0.2 and 0.45 m) soil thermometers (KDS-031,
KEPL, India). A rain gauge of tipping bucket type
1453
(KDS-071, KEPL, India) was placed in open to
record rainfall. A programmable 25-channel data
logger (DSAWSKM1-W, KEPL, India) automatically stored these data. The data were logged every
second and averaged for 30 minutes. In the present
study, half-hourly averaged micrometeorological
data were analyzed for the 2-year study period
from January 2010 to December 2011 covering two
growth cycles of the chir pine system.
2.3.2 Biophysical measurements
Sampling design: The experimental site was
divided into nine sampling quadrats (10 m × 10 m):
four in the east direction (named EQ1–EQ4), two
in the south direction (SQ1 and SQ2), one each
in west and north directions (WQ and NQ) and
central quadrat (CQ) taking consideration of the
direction and space available. CQ is the point
where the micrometeorological tower was placed.
The sampling design is shown below in figure 1.
Phenology: The phenology of the growing chir
pine was such that it exhibited distinct greening
and browning growth stages in a given growth
cycle. Digital field photographs taken from all
quadrats at weekly interval were analyzed to ascertain the transition dates from one growth stage
to another. The time-period from the end of May
to end of September exhibited the full green stage
characterized by fully green, mature, and elongated
needles. During this period, crown was fully green
with no traces of brown needles so that total photosynthetic area (computed by mechanical counting
of all needles in the crown) was equated with green
vegetation fraction (GVF) of one which is 100%. In
the first week of October, traces of brown needles
began to appear. By the end of October, about 8%
of the needles turned brown. Thus, GVF at the end
of October was 0.92. As the plants progressively
entered into physiologically dormant stage with the
Figure 1. Sampling design for measurements of biophysical properties of young chir pine patch at Forest Research Institute
(FRI), Dehradun, India.
1454
Nilendu Singh et al.
Table 1. Broad categories of phenological stages of growing pine.
Time period in a year
Phenological stages
March to May
June to September
October to December
January to February
Needle elongation and start of greening
Fully-green needles
Start of needle browning
Needle browning and drying
approach of winter, the rate of browning increased
rapidly. At the end of each month, remaining green
needles were counted mechanically and GVF was
computed accordingly. By the end of March, about
8–10% of the needles remained green. GVF at this
stage was about 0.17. The month of March was also
characterized by simultaneous emergence of new
needle buds (table 1).
Leaf Area Index (LAI): The LAI was measured
at 10-day interval. We used portable and easy to
handle plant canopy analyzer (LAI-2000; Li-Cor,
Inc., Lincoln, NE) for measuring LAI. For each
quadrat, mean LAI was obtained as average of
eight readings (two readings above the canopy and
six readings below the canopy in different directions). Every time mean LAI was computed by considering the LAIs of all the quadrats. The usual definition of LAI (one sided leaf area per unit ground
area) could not be applied directly to needle-leaved
conifers. Therefore, a modified procedure was followed for conifer LAI after Norman and Gower
(1990). The LAI for green needles is referred to
hereafter as green LAI (GLAI).
where,
RSnet = RS ↓ − RS ↑
RLnet = RL ↓ − RL ↑
where RS and RL are short wave and long wave
radiations respectively. The symbols ‘↓’ and ‘↑’ represent incoming and outgoing fluxes, respectively.
The RSnet and RLnet are net short wave and net
long wave radiation fluxes at surface. The net radiation (Rn) is partitioned as sensible heat flux (SH ),
latent heat flux (LE ), ground heat flux (G), and
metabolic and storage energy in the vegetation
canopy (∆H).
Rn = SH + LE + G + ∆H.
The storage heat of the canopy is being ignored
in seasonal cycle, with the assumption that the
amount of energy stored during the heating cycle
is released during the cooling cycle in the short
heighted, open canopied plantation (Leuning et al.
2012). The amount of metabolic heat is usually
negligible as compared to other components.
The net available energy (Q) was computed as:
Q = Rn − G.
3. Methodology
(3)
3.2 Sensible (SH) and latent heat (LE) fluxes
3.1 Radiation balance and net available energy
The batch processing of micrometeorological station data was carried out using ‘Fluxsoft’ software,
developed at Space Applications Centre (ISRO)
in Windows platform on Visual Studio using the
protocol developed by Bhattacharya et al. (2009).
An IDL (Interactive Data Language) routine was
written to convert all half-hourly fluxes into daily
averages. Radiation balance components and ground heat fluxes were averaged for 24-hour periods.
Ten-day (dekadal) and monthly averages of fluxes
were computed from daily averages. The dekadal
averages were made to remove unnecessary spikes
in the instantaneous and daily averages and to have
smooth temporal transition (Verma 1990; Leuning
et al. 2012).
The net radiation at the chir pine vegetation surface was computed from the four components of
radiation balance as given in equation (1)
Rn = RSnet + RLnet
(2)
(1)
The main tenet of Monin–Obukhov similarity
theory (MOST) allows turbulent fluxes of scalars
within the surface layer to be related to their
vertical gradients of mean concentrations by an
eddy diffusivity (Garrat 1992). The eddy diffusivity caused by turbulent mixing is related to the
size of the turbulent eddies and is therefore proportional to the distance from the underlying surface
or effective surface. The effective surface in case
of vegetation canopy of height ‘h’ is defined at a
height ‘d’ above the ground surface where, ‘d’ is
called zero plane displacement. Under neutral stability condition the wind profile equation above a
homogeneous vegetation canopy is thus, expressed
as follows (Thom 1975):
z
u∗
ln
(4)
u (Z) =
k
z0
du
u∗
=
dz
k (z − d)
(5)
Radiation and energy balance dynamics over young chir pine system
Here, Z is the height of wind measurement above
the zero plane displacement, Z0 is roughness
length, u∗ is friction velocity, and k is Von-Karman
constant (= 0.4). The parameters, d and Z0 depend
upon the aerodynamic roughness of the surface
over which measurements are made. The zero
plane displacement (d) and roughness length (Z0 )
were computed from plant height (h) using simple empirical relations: d = 0.65 × h and Z0 =
0.1 × h given by Campbell and Norman (1998).
The eddy viscosity was estimated from wind
speed and roughness parameters using the logarithmic wind profile equation. The solution of
the logarithmic equation is simple under neutral
stability condition. However, absolute neutral stability cannot be assumed always because very
often, there is a thermal gradient in either direction
in the vertical profile within the lower boundary
layer. The atmosphere normally becomes stable
during night time and unstable during daytime
because of substantial heating during daylight
hours. Under unstable or stable conditions, the
stability parameter, sensible heat flux, and eddy
viscosity become auto-correlated. In the present
study, stability corrected aerodynamic resistance
was determined through iterative method based on
MOST.
According to the MOST (Businger et al. 1971;
Xu and Qiu 1997; De Bruin et al. 2000), the vertical
profiles of wind, temperature, and specific humidity for turbulent flows above a vegetation surface
can be expressed as:
u∗
Z2
Z2
Z1
u2 − u1 =
− ΨM
ln
+ ΨM
sk
Z1
L
L
(6)
θ2 − θ1 =
θ∗
ln
k
Z2
Z1
− ΨH
Z2
L
+ ΨH
Z1
L
(7)
Z2
q∗
Z2
Z1
− ΨQ
q2 − q1 =
ln
+ ΨQ
k
Z1
L
L
(8)
In the above expressions, u = wind speed (ms−1 ),
θ = potential temperature (K), q = specific humidity (g kg−1 ), Z = height of measurement (m)
above the zero plane displacement [(7.5 m – d) and
(12.5 m – d) in the present study. The subscripts,
1 and 2, represent lower and upper heights for the
respective parameters in the profile measurement;
θ∗ = temperature scale, q∗ = humidity scale and
u∗ = frictional velocity (wind scale); Ψ = universal stability function for momentum (subscript M ),
heat (subscript H) and vapour (subscript Q); L =
1455
Monin–Obukhov similarity length is expressed as
follows:
T u2∗
L=
.
(9)
gkθ∗
The sensible and latent heat fluxes are expressed
as:
SH = −ρCp θ∗ u∗
(10)
LE = −ρλq∗ u∗
(11)
where ρ = air density, T = mean absolute temperature, Cp = specific heat of air, and g = acceleration
due to gravity, and λ = latent heat of vaporization
of water.
For computation of the stability functions (Ψ )
for momentum (M ), heat (H) and vapour (Q) in
this study, we adopted for unstable conditions the
version of the Businger–Dyer flux relationships proposed by Dyer (1974), which read in integrated
form as:
1+x
1 + x2
ΨM = 2 ln
+ ln
2
2
π
(12)
−2 tan−1 (x) +
2
1 + x2
ΨH = ΨQ = 2 ln
(13)
2
where,
x=
Z
1 − 16
L
41
.
For stable conditions, we used the equations proposed by Beljaars and Holstag (1991):
−ΨM
aZ
=
+b
L
Z
c
−
L d
dZ
exp −
L
+
3
Z
2 aZ 2
c
+b
−ΨH = 1 +
−
3 L
L d
bc
dZ
−1
+
× exp −
L
d
bc
. (14)
d
(15)
in which a = 1, b = 0.667, c = 5 and d = 0.35 are
constants taken as per Beljaars and Holstag (1991).
The computation steps are explained in figure 2.
The profile measurement of temperature, humidity, wind speed at the heights 7.5 and 12.5 m above
ground surface were used for the computation
process.
The vapour pressure, specific humidity and air
density required in MOST were computed from
the tower measurements of temperature, relative humidity and air pressure using standard
1456
Nilendu Singh et al.
Figure 2. Flowchart showing computational model framework for sensible and latent heat fluxes using MOST. The heights
of humidity, temperature and wind speed measurements were 7.5 (z1 ) and 12.5 (z2 ) m. The mean plant height was 6.5 m.
ρ is the air density (kg m−3 ), k is Von-Karman constant, Cp is specific heat of the air (J kg−1 K), g is the acceleration due
to gravity (9.8 m s−2 ), z0 and d = roughness length and zero plane displacement, respectively. ΨM (z/d) and ΨH (z/d) are
the integrated momentum stability parameter and integrated stability parameter for heat, respectively. θ∗ = temperature
scale, q∗ = humidity scale and u∗ = frictional velocity (wind scale). SH and LE are sensible and latent heat fluxes. L is
Monin–Obukov length.
psychrometric equations. The standard values for
specific heat of air (Cp = 1000 J kg−1 K), and
acceleration due to gravity (g = 9.81 m s−2 ), latent
heat of vaporization of water (λ = 2.45×106 J kg−1 )
were used. The mean plant height was 6.5 m. The
zero plane displacement was computed from plant
height using the empirical relation described earlier. The lower and upper heights of humidity, temperature, and wind speed measurements were 7.5
and 12.5 m, respectively. The iterative technique
was applied by initializing stability factor Ψ = 1
and L = 0 (neutral stability condition). The u∗ and
θ∗ were computed following the equations (6) and
(7), respectively. Then L was computed from equation (9). Based on the temperature gradient (positive or negative), the iteration was started with
stepwise increase or decrease of L following the stable or unstable loop, respectively. The iteration was
repeated till the assumed L became nearly equal to
the computed L (at 0.001 level of precision). The
final value of L was used for the computation of
SH and LE flux.
3.3 Residual energy
The residual energy for energy balance closure was
computed as the difference between net available
energy (Q) at surface and sum of sensible and
latent heat fluxes from surface.
Residual energy = Q − (SH + LE) .
(16)
4. Results and discussion
4.1 General seasonality of radiation
balance components
The dekadal (10-day) averages of incoming shortwave radiation (RS↓) were found to vary from 116
to 260 Wm−2 with annual mean of 178 Wm−2 .
The primary peak of RS↓ (260 Wm−2 ) occurred
in summer (May1d: first 10 day in May) followed
by its decrease during monsoon months and a secondary peak at 200 Wm−2 during post-monsoon
(Sep3d). Subsequently, the RS↓ decreased in winter months (November to January) which varied
between 116 and 180 Wm−2 . In summer months
(April to June), the dekadal RS ↓ varied between
173 and 260 Wm−2 with a mean of 229 Wm−2 . During monsoon (July, August, September), it varied
from 130 to 197 Wm−2 with a mean of 159 Wm−2 .
Seasonal variability of factors influencing the atmospheric radiative forcing altered the RS↓ levels and
thereby overall seasonal surface radiation budget.
The trend of dekadal average of outgoing shortwave radiation (RS ↑) from this young growing pine
followed a similar trend. The RS ↑ varied from
12 to 36 Wm−2 with a maximum during summer
(May1d). It was minimum during monsoon months
coincident to low RS ↓ and higher green vegetation
growth and surface wetness.
The dekadal average of outgoing long wave
radiation (RL↑) was found to vary from 400 to
500 Wm−2 during the study period. The incoming
Radiation and energy balance dynamics over young chir pine system
1457
when thermal inversion occurs. The comparison
of monthly short wave radiation ratio with that of
long wave radiation ratio showed that the former
has wider variability than the latter as evident
from higher coefficient of variation (table 3). The
long wave radiation ratio is assumed to be influenced by the temperature gradient as well as emissivity of surface and atmosphere. However, the
albedo is a basic surface characteristic with little
influence of spectral distribution and angle of incidence of the radiation. The higher long wave
radiation ratio (1.130) during April might be
due to wider thermal gradient between surface
and atmosphere when clear sky condition prevailed. On the other hand, lower long wave
radiation ratio (1.031) during August implied comparatively higher incoming long wave radiation
possibly from the cloud and water vapour. This signifies the atmospheric influence on the long wave
radiation ratio.
long wave radiation (RL↓) was lower than RL↑ and
was found to vary from 350 to 450 Wm−2 .
The monthly averages of ratio (albedo) of outgoing to incoming short wave radiative fluxes
(table 2) showed the lowest albedo (0.093) in
September coincident to maximum wetness and
greenness and highest albedo in the month of May
(0.135). After the low in September, it gradually
increased from October to May and then gradually decreased with the increase in greenness and
wetness. The monthly ratio of RL↑ and RL↓ was
found to be more than 1.1 during February to
June and in November. However, it became <1.1
during the cloudy and wet period in monsoon
months (July to October) as well as during the
period of thermal inversion leading to foggy conditions in December and January. The monthly
ratio of total incoming to total outgoing radiative
fluxes was found to be >1.1 during February to
November but <1.1 during December and January,
Table 2. Mean monthly ratios of various incoming and outgoing radiation components.
Months
January
February
March
April
May
June
July
August
September
October
November
December
Mean
SD (±)
C.V. (%)
Ratio of RS ↑
and RS ↓
Ratio of RL ↑
and RL ↓
Ratio of total incoming
and outgoing
radiative fluxes
0.117
0.115
0.116
0.129
0.135
0.125
0.106
0.102
0.093
0.109
0.119
0.120
1.071
1.105
1.103
1.130
1.116
1.101
1.056
1.031
1.046
1.097
1.101
1.054
1.081
1.148
1.218
1.289
1.313
1.275
1.255
1.266
1.296
1.242
1.171
1.076
0.116
0.012
10.141
1.084
0.031
2.889
1.219
0.082
6.713
Table 3. Mean monthly net radiative fluxes.
Months
January
February
March
April
May
June
July
August
September
October
November
December
RSnet (SD) in Wm−2
2010
2011
134
151
190
211
208
189
139
134
123
163
128
108
(7)
(28)
(12)
(12)
(15)
(21)
(23)
(31)
(53)
(10)
(16)
(13)
117
135
190
208
219
181
156
147
162
156
114
107
(13)
(16)
(27)
(25)
(7)
(39)
(19)
(5)
(10)
(7)
(8)
(4)
Values in parentheses indicate ± standard deviation.
RLnet (SD) in Wm−2
2010
2011
–70
–67
–51
–51
–47
–45
–25
–14
–19
–41
–41
–42
(13)
(7)
(0.66)
(2)
(2)
(0.51)
(16)
(3)
(11)
(4)
(4)
(6)
–42
–44
–60
–63
–54
–30
–18
–16
–24
–39
–48
–59
(7)
(6)
(9)
(9)
(7)
(13)
(3)
(2)
(5)
(7)
(3)
(10)
Rn (SD) in Wm−2
2010
2011
64 (6)
84 (30)
139 (12)
160 (10)
161 (13)
144 (20)
114 (16)
120 (28)
104 (42)
122 (14)
87 (14)
65 (7)
75 (7)
91 (11)
130 (19)
146 (22)
165 (10)
152 (27)
138 (17)
131 (4)
140 (5)
118 (10)
82 (6)
69 (3)
1458
Nilendu Singh et al.
4.2 Intra- and inter-seasonal variability
of net radiative fluxes
The dekadal averages of net short wave (RSnet )
and net long wave (RLnet ) radiation over the two
years (2010 and 2011) are plotted in figure 3 along
with the dekadal cumulative rainfall. Similar to
RS ↓, the RSnet increased during summer months
to a peak (230 Wm−2 ) after a low (120 Wm−2 )
in dry winter months (January–February). After
the summer peak, it gradually decreased with
increase in prevailing wetness and greenness and
showed a period of low RSnet in monsoon months
(July–September) followed by a secondary peak
in September 3rd dekad and decrease with the
onset of winter. The magnitude of decrease in
RS net during monsoon months was substantially
higher in the higher rainfall year (2010) than 2011
(figure 3a).
The dekadal average of net long wave radiation
(RLnet ) showed a low magnitude (figure 3b) of the
order of −45 to −75 Wm−2 during the drier period
in summer and winter months. It increased and
remained between −10 and −40 Wm−2 with the
prevalence of cloudy-sky and wet conditions especially in monsoon period. But, the increase was
higher in the higher rainfall year of 2010 (2710 mm)
than in 2011 (2244 mm).
Figure 3 clearly represents the dekadal (10 days)
variations of RSnet and RLnet as influenced by
wetness. Consequently, we found these to be strong
functions of sunshine hours. The correlation (r )
between RSnet and sunshine hours was 0.72 (R2 =
0.53, P < 0.001; n = 36), however, r between
RLnet and sunshine hours was at 0.61 (R2 = 0.37,
P < 0.001; n = 36). The monthly means of net
short wave and net long wave radiation for 2010
and 2011 are summarized in table 3.
Figure 3. (a) Dekadal variability of net short wave (RSnet ) with rainfall. (b) Dekadal variability of net long wave (RLnet )
with rainfall.
Radiation and energy balance dynamics over young chir pine system
4.3 Surface albedo as influenced by GLAI
and soil moisture
The present section describes how seasonal dynamics of two physical controls of energy and mass
fluxes namely, albedo (reflected short wave/incident
short wave) and surface soil moisture (average of
0–45 cm) are linked to each other in response to
seasonal variation of a biophysical control such as
green leaf area index (GLAI) in young pine patch.
Dekadal (10-day) albedo was found to vary from
0.09 to 0.15 (figure 4). It is reported that the range
of albedo in pine system was found to be high
from 0.1 to 0.34 in Loblolly plantations with age
varying between 4 and 25 years having lowering of
albedo with increase in age. However, the albedo
varied from 0.08 to 0.12 for jack pine, white pine,
and slash pine system with age varying between
10 and 65 years (Sun et al. 2010). In the present
study, albedo was found to decrease from a peak
during May second dekad (e.g., May2d) with the
increase in GLAI from 1.75 to 2.5 and soil moisture
(highest at 0.23 m3 m−3 ). Albedo started increasing
up to 0.12 from its lowest value in Sept2d to Dec1d
when GLAI decreased from 2.5 to 1.3 and soil moisture also decreased from 0.2 to 0.17 m3 m−3 . Subsequently, albedo again showed a decrease up to
Feb3d when soil moisture increased due to rainfall, though GLAI was low due to browning and
drying of majority of pine needles. Between Mar1d
and Apr3d, GLAI was found to increase but with
simultaneous increase in albedo. Generally, pine
phenology showed 50% greening during May and
reached maximum greening that resulted in higher
GLAI driven by higher availability of soil moisture. Simultaneously, understory growth of Lantana and other species took place during this
period. With higher pine GLAI, higher background
1459
soil wetness, understory green growth absorb more
incident solar radiation and cause lesser reflected
outgoing short wave radiation from surface leading to low albedo during May to Sep1d. Subsequently, higher proportion of reflected short wave
due to low pine GLAI and soil drying led to higher
albedo up to Dec3d. When soil exposure to incident
solar radiation was more due to low GLAI, albedo
showed a decrease due to increase in soil moisture
leading to lower proportion of reflected short wave
component. The falling of dried pine needles on
the ground forms a thin layer of natural mulch
on the soil, which increased the background reflectivity and as a result, Lantana and Ageratum
growth also subsided. The effect of higher background reflectivity could be seen with the increase
in albedo from Mar1d to Apr3d when GLAI started
increasing from its lowest value and was low
between 1.0 and 1.8. After that, the degradation
of natural mulch and growth of green herbaceous
understory along with the greening of pine caused
lowering of albedo. Therefore, the seasonal variation of albedo, one of the major controls of
surface radiation budget could be well explained
by the concomitant effect of greenness of pine
and its understory, background soil wetness, and
background reflectivity.
4.4 Surface heat fluxes
Daytime averages of sensible (SH ) and latent heat
(LE ) fluxes were computed over a 10-day period
(dekad) from half-hourly fluxes because negligible
evapotranspiration generally occurs during nighttime (Leuning et al. 2012). The dekadal daytime
SH was found to vary from 120 to 350 Wm−2 during 2010 and from 40 to 300 Wm−2 in 2011 with
Figure 4. Albedo as influenced by GLAI and soil moisture in chir pine forest.
1460
Nilendu Singh et al.
the lowest in the December third dekad and highest in May first dekad. A middle order magnitude
was noticed during monsoon months when it varied from 150 to 250 Wm−2 . There was an overall
decrease in dekadal SH in 2011 as compared to
2010 (figure 5).
The inter-annual variability of surface heat
fluxes (SH and LE ) is less than inter-seasonal variability. Both SH and LE (figure 5) dropped to
minimum levels during winter (Dec1d) when the
pine system went into physiologically dormant
state. However, sensible heat fluxes were substantially higher than latent heat fluxes during the drier
period of winter–summer months when understory
species were either cleared or dried to a large extent. The LE increased monotonically during the
southwest monsoon and the system reached the
stage dominated by evapotranspiration in July–
August. This pattern of energy partitioning was
noted for both the years. However, some anthropogenic ecosystem manipulations by removing
understory vegetations might have some consequent influence on energy partitioning behaviour
and thereby on normal ecosystem functioning.
The dekadal daytime latent heat fluxes were
found to vary from 40 to 400 Wm−2 in 2010 and 20
to 280 Wm−2 during 2011 with the highest occurring in the monsoon period (Aug1d) and the lowest in the third dekad of December. Smaller peaks
occurred during summer depending on temporal
distribution of rain splash. It is interesting to note
that both the heat fluxes were of higher magnitude
in the year 2010 when there was significantly higher
annual rainfall mainly from southwest monsoon as
compared to those in 2011. This could be due to
spatial and temporal variability of rainfall pattern
in this subtropical zone.
Dekadal mean latent heat fluxes were found
to produce a significant correlation (R2 = 0.73,
P < 0.05) with dekadal sum of convective rainfall having strong linear fit (Y = 1.348X − 58.27).
These heat fluxes are major components of surface energy balance. Rainfall in growing chir pine
system is the major component of water supply
in the so-called water balance. This relation firmly
established the strong coupling between energy
and water balance specially heat fluxes and rainfall through the response-feedback mechanism in
natural vegetative system (figure 6).
A further analysis showed that dekadal sensible heat fluxes gradually increased from 250 to
350 Wm−2 during pre-monsoon period in 2010
between March1d and June1d and from 220 to
300 Wm−2 in 2011. This showed the existence of
a possible link between the degree of variability
Figure 6. Relationship between dekadal average latent heat
fluxes and cumulative rainfall.
Figure 5. Seasonal variation of dekadal mean of daytime sensible (SH) and latent (LE) heat fluxes over chir pine in two
successive years (2010, 2011).
Radiation and energy balance dynamics over young chir pine system
in southwest monsoon rainfall and variability of
pre-monsoon sensible heat fluxes (Boos and Kuang
2010; Wu et al. 2012). The monsoon rainfall in
the Doon valley is majorly convective in nature
and partly influenced by orography. It is highly
possible that pre-monsoonal convective heat fluxes
(sensible heat flux) over the subtropical pine system in the western Himalaya can influence convective rain during southwest monsoon period thereby
modulating the magnitude of rainfall (Dey and
Bhanukumar 1983; Andre et al. 1989; Garrat 1992;
Turner and Annamalai 2012). However, this could
be substantiated only through long-term analysis
of sensible heat fluxes.
Coniferous trees such as pine, in general, have
a clear annual cycle of photosynthetic activity, the
rate of assimilation is low or zero in the winter,
increases during the spring, peaks in August–
September followed by a decline in the autumn
(Pelkonen and Hari 1980; Bergh and Linder 1999;
Makela et al. 2004; Kolari et al. 2007). In this study
also, the seasonal transition of fraction of latent
heat flux to net radiation (LE /Rn) follows the
growth curve (figure 7) of green vegetation fraction
(GVF). But, a time lag was found between the start
of greening and increase in latent heat flux. Moreover, the persistence in peak GVF and peak LE
fraction differed. The former has a longer latency
period than the latter. Further, conservative water
use in conifers is an inherent physiological property. Summer environmental stresses with high
VPD must have regulated stomatal and canopy
conductance of newly emerged needles thus affecting LE fluxes (Launiainen 2010). The differential
response of hormonal regulation immediately after
dormancy break and before dormancy might have
differentially influenced the occurrence of greenness
1461
and root water uptake as well as its rate of transpirational loss affecting LE flux (Arneth et al. 2006;
Sevanto et al. 2006). The LE fraction more than
1.0 (the energy balance closure issues are discussed
in next section) could be associated with wet canopy evaporation (Watanabe and Mizutani 1996)
along with local advections. Tchebakova et al.
(2002) showed that in boreal coniferous ecosystem,
in early spring, in the absence of physiological
activity, a large fraction (∼80%) of available
energy is partitioned into sensible heat and Bowen
ratio exceeded 8 in a Siberian Scots pine forest.
Within the following weeks, associated with recovery of photosynthetic capacity, the transpiration
rates rapidly increased and SH dropped. Similar
responses were also noted by Arneth et al. (2006)
in these coniferous systems.
4.5 Energy balance closure (EBC)
The energy balance closure (EBC) behaviour of
growing chir pine system encompassing different
seasons was evaluated through 1:1 plot (figure 8a)
between available energy and surface heat fluxes
(sum of sensible and latent heat fluxes from MOST
approach). The slope of the linear regression
between available energy and turbulent fluxes was
about 0.66 (r = 0.56). A plot of dekadal residual
energy for the years 2010 and 2011 is shown in
figure 8(b). The monthly energy balance residuals along with phenological stages of chir pine
and monthly total rainfall are shown in table 4.
There was marked seasonality in EBC with poor
closure during southwest monsoon and physiologically dormant winter months of 2010 coincident with forced clearance of understory species
compared to spring–summer and autumn, when
Figure 7. Seasonal transition of fraction of latent heat flux and green vegetation fraction.
1462
Nilendu Singh et al.
Figure 8. (a) Net available energy vs. total (sensible+latent) heat fluxes from aerodynamic approach. (b) Dekadal variability
of residual energy with rainfall.
rainfall was substantially less. During winter of
2011, when understory was present EBC was better
(figure 8b). Launiainen (2010) also observed a similar but somewhat better pattern in energy closure
in his inter-annual experiment in boreal coniferous
forest. Other authors working in different terrestrial ecosystems, forests in particular (Wilson et al.
2002; Grunwald and Bernhofer 2007; Foken 2008;
Moderow et al. 2009) found EBC in the range of
50%–95%.
Wilson et al. (2002) documented that a lack of
closure with 20% missing energy was not uncommon in the FLUXNET. In the present study, working with slow response sensors and with aerodynamic approach (MOST), sources of imbalances
in EBC and seasonal variability could be many.
Though percent residual of net available energy
varied to a large extent throughout the year, it
mostly lies within ±30%. Most of the time in the
annual cycle, EBC remains on the negative side
(figure 8b), indicative of energy-limited regime.
This might be due to high evapotranspiration
requirement of the young and actively growing chir
pine system where the latent heat requirement was
supplemented by the advective heat flow from the
nearby open field.
The surface energy balance is seldom closed by
the micrometeorological measurements. The mismatch may originate from various reasons including: measurement inaccuracies, missing data, lack
of air turbulence, heterogeneity of landscape, and
non-inclusion of storage terms (Restrepo and Arain
2005). However, in a recent review by Foken (2008),
these ‘classical’ explanations for residual of energy
balance were suggested to be of secondary importance as compared to larger-scale processes. Foken
(2008) brought up the importance of the contribution of large eddies on surface–atmosphere
exchange and hypothesized the energy balance to
be closed only at landscape scale (>1 km), not
at the micrometeorological scale (<1 km) through
flux towers. Although a detailed scrutiny of the
Radiation and energy balance dynamics over young chir pine system
1463
Table 4. Monthly mean of residual energy balance along with different phenological stages.
Months
January
February
March
April
May
June
July
August
September
October
November
December
Phenological stages of chir pine
Drying needles
Drying needles
Drying and new emerging needles
New emerging needles
Elongating needles
Emerged green needles
Green needles
Green needles
Green needles
Start of degreening of needles
Green and degreening needles
Degreening and drying needles
reasons of unclosed energy balance is beyond the
scope of this paper, a few findings merit discussion.
It has been found in the present study that residual energy during a major part of the observation
period was negative. During the rainy period, the
magnitude of negative residual energy is very high.
It is interesting to note that the change in radiative
energy gain (net radiation) during rainy period varied in the range of 123–162 Wm−2 (table 3) as compared to 190–219 Wm−2 during the dry months,
whereas the residual energy varied around – 200 to
– 500 Wm−2 during the rainy period. During the
rest of the period, it is either positive or near zero.
This implies the contribution of a secondary source
of energy flow to the net energy balance of the
chir pine system. Removal of understory species
in November 2009 and 2010 and time lag between
its reappearance could cause poorer energy closure
during winter of 2009 and 2010. Further, EBC was
on the positive side when undergrowths were not
removed during winter of 2011. During the rainy
period, the actively growing pine is being supplied
with ample moisture from deeper layers of soil
whereas the surrounding open land surface dried
quickly after each rain event. The adjacent open
land is the potential source of advective heat to
maintain the high latent heat flux from the chir
pine stand. This would lead to the negative residual
energy during rainy period. However, the conservative nature of evapotranspiration of needle-leaved
chir pine species during the dry period did not
favour such an ‘oasis effect’. Therefore, any quick
and repeated disturbances like rain splashing are
expected to disrupt equilibrium as well as energy
balance in the forest system. However, the magnitude of advective impact decreased more in 2011
than in 2010 as evident in the figure (8b), with progressive understory growth and rainfall variations.
Mean residual energy
as a per cent of net
available energy
2010
2011
Monthly sum of
rainfall (mm)
2010
2011
−60
−11
15
11
−8
−13
−108
−242
−161
10
−33
−31
10.3
60.5
1.7
0.5
25
90.6
661
315
857
8.3
15.4
34.9
−224
−92
−9
−1
−16
−21
−78
−50
8
37
35
74
17.5
33
15
21.1
80.5
341
716
630
374
12
0
2.7
A critical analysis of the result suggests that
wherever there is good energy closure, the period
can be characterized by low sensible fluxes,
dynamic (not consistent) cloudy conditions, some
pre-monsoon, scattered wet spells coupled with
dry spells and hence shallow ABL (Atmospheric
Boundary Layer) and significantly better EBC.
Also Lindroth et al. (2010) found that energy
balance residual increased in strongly unstable
conditions above a mixed coniferous forest in
Sweden. It can be noted in the present study
that in both the years, the monthly residual energy
balance (table 4) showed higher magnitude during
rainspells irrespective of phenological stages.
This supports the earlier findings of Makela
et al. (2004), Arneth et al. (2006), and Hari and
Kulmala (2008).
5. Conclusions
The present paper reports for the first time the
dynamics of radiation and heat flux behaviour in
a growing chir pine system in western Himalayas
and the role of understory species on energy
balance closure from two years of observations.
Seasonal variability of latent heat fluxes from
evapotranspiration is in tandem with rainfall variability. This showed a strong coupling of energy
balance with water budget in a natural vegetative
system. This study clearly brought out the intimate link of albedo dynamics in chir pine system
with dynamics of LAI, soil moisture, and changes
in understory background. Complete removal of
understory can disturb the surface energy balance. The study also brought out the existence
of a possible link between degree of variability in
1464
Nilendu Singh et al.
southwest monsoon rainfall and variability of premonsoon sensible heat fluxes. The monsoon rainfall in the Doon valley is majorly convective in
nature and partly influenced by orography. Thus,
it is highly possible that pre-monsoonal convective heat fluxes (sensible heat flux) over the subtropical pine system in the western Himalaya can
influence monsoonal circulation thereby modulating magnitude of rainfall. In future, long-term measurements and analysis can be carried out in other
Himalayan regions where large patches of similar coniferous vegetation exist for validation of
this possible link. Proper evapotranspiration estimates in coniferous forests would aid in addressing many issues in studying the role of such forest systems in regulating landscape hydrology and
bio-geochemistry.
Acknowledgements
This work has been carried out under the project
titled ‘Energy and Mass Exchange in Vegetative Systems (EME-VS)’ in ISRO Geosphere Biosphere Programme. The first and fourth authors
are grateful to Director, Forest Research Institute,
Dehradun, India for his encouragement to carry
out this work. The second and fifth authors are
thankful to Director, Space Applications Centre
(ISRO) for providing the necessary support. The
second author is indebted to Dr Sushma Panigrahy,
Group Director, ABHG/SAC (ISRO) for providing
time-to-time advice.
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MS received 6 November 2013; revised 15 May 2014; accepted 15 May 2014