Abstract:
Rainfall-runoff-sediment yield modelling being highly complex, dynamic, and
non-linear, exhibits temporal and spatial variability and comprises several physical
processes. Varying in complexity from lumped empirical to physically based space and
time-distributed, several models are available in literature to model runoff and subsequent
soil erosion/sediment yield. Although physically based models have proven very useful as
a research tool but are o f limited use in field, especially in developing countries like India
as they require large amount o f data. However, search is still continuing for developing
new and simple model. In the present research work, an attempt is therefore made to
explore new/modified or improved techniques to model major components o f the rainfallrunoff-
sediment yield process in a more sound theoretical and mathematical environment.
However, in the mean time, sim plicity o f model structure, practical u tility in terms o f data
requirement as well as easiness in use, and parsimony in data, time, and funds are central
to the present study. The present research investigates a few an important components o f
process o f the hydrological cycle, specifically the process o f rainfall-runoff-sediment
yield including evapotranspiration, runoff, soil erosion, and sediment yield.
Evapotranspiration (ET), a major component o f the hydrologic cycle, is important
for planning, design, and operation o f irrigation systems. Most o f the hydrologic, watermanagement,
and crop-growth models also require an accurate estimate o f potential
evapotranspiration (PET) for its reliable application (Parmele 1972; Skaggs 1982). A
common procedure for estimating ET is to first estimate potential evapotranspiration
(PET). Further, crop coefficients, which depend on the crop characteristics and local
conditions, are used to convert PET to ET. Secondly, runoff is an important component of
hydrologic cycle and quantitatively second major component, after evapotranspiration, o f
the cycle; The runoff is o f prime importance for the hydrologist at both field and at large
scales. A t the field scale, the runoff is used in planning and design o f soil conservation
practices, irrigation water management, wetland restoration, and water table management.
However, at large scale, it is o f major concern in flood forecasting, floodplain
management, design o f hydro-power projects, and water supply studies. Furthermore, soil
erosion, normally resulting from rainfall and consequent runoff is a serious problem
affecting the soil, land, and water which are essential resources for any civilization. Soil
erosion either as on-site erosion or off-site erosion is equally important for the society.
On-site erosion (sediment source) is important for the rural population especially the
farmer community in terms o f removal o f fertile top soil layer which ultim ately hampers
the agricultural production. However, the off-site erosion (sediment sink areas) is o f
interest to the society at large i.e. in multi-purpose reservoir preservation, flood
protection, and water quality.control (Garen et al., 1999).
CN-PET Relationship Derivation
Evapotranspiration is a major component o f the catchment water balance and
potential evapotranspiration (PET) data therefore forms a key to rainfall-runoff models.
As far as concerned to surface water, PET is required for water availability, estimation o f
daily, weekly, and monthly flows for multipurpose reservoir operation, design
(frequency) flows, scheduling o f irrigation project, and flood forecasting. Long-term
changes in PET can affect the hydrologic processes as w ell as the performance o f
agricultural crops. Several PET estimation methods based on temperature, radiation, and
their combination have been developed over the last 50 years in different parts o f the
world but none can be recommended as the best one for any area or any season in terms
o f its accuracy and profitability. Furthermore, different researchers (Buransh, 1995;
Fowler, 2002 Andreassian et al. 2004; Morton, 1994) have criticized the performance o f
complex PET methods, and raised the question “ Is the temporal PET, derived from
complex PET methods, suitable in rainfall-runoff modelling?”
In the present research work, nine commonly used PET methods (one based on
temperature, two based on radiation, and six combination based) were employed for
estimation o f duration-dependent long-term mean PET on a large set o f hydrometeorological
data from three catchments o f Narmada river basin, located in Central
India. Significant variations (up to 42%) among the estimated PET values by different
methods were observed. Therefore, care should be taken in selection o f an appropriate
PET estimation method. Furthermore, the performance o f different commonly used PET
methods was compared w ith Penman-Monteith method, a standard method recommended
by FAO-56. Following the usual statistical criteria, temperature based Hargreeves method
was found most suitable (Root Mean Square Error — 0.2) for PET estimation o f Narmada
river basin. The performance o f radiation-based Priestley-Taylor (RMSE=4.71), and Turc
methods (RMSE=3.90) was also found to be satisfactory.
The Soil Conservation Service Curve Number (SCS-CN) method, though
empirical, has increasingly gained wide recognition as a practical tool for solving wide
range o f hydrologic problems involving the rainfall-runoff process because o f its
overwhelming sim plicity. In the present study, interrelationship o f CN and PET was also
investigated. This interrelationship was derived from the coupling o f SCS-CN concept
and M intz and Walker (1993) equations (for the root-zone soil moisture (W) and
evapotranspiration (ET)). The water balance equation and proportionality hypothesis o f
SCS-CN method invoked SCS-CN parameter S to be expressible in terms o f the
maximum possible evaporable depth or PET, described in power form as: PET = aSf or
more generalized as ET = aSp. Consequently, long term mean PET values o f duration
ranges from 1-day to 30-day for seven watersheds o f India were correlated with the runoff
curve numbers derived for the respective durations from observed rainfall-runoff data,
following the Mishra et al. (2008) procedure. The correlation exhibited a strong power
relationship with coefficient o f determination (R ) values in the range (0.96, 0.99). Such a
relationship invokes determination o f PET from the available CN values, and therefore,
may be quite useful in field applications.
Probability Distribution-Based SUH derivation
The use o f probability distribution functions (pdf) for derivation o f synthetic unit
hydrograph (SUH) is gaining acceptance among the hydrologists due to sim ilarity in
typical shape and unit area enveloped by a pdf curve. The present study explores, first
time in hydrology, the potential o f two-Parameter Inverse Gamma Distribution (2PIGD)
for SUH derivation using geomorphological parmeters i.e., Horton’s ratio. The
performance o f 2PIGD was compared with the most popular flexible and accurate two-
Parameter W eibull Distribution (2PWD) and conventional two-Parameter Nash Gamma
Model (2PNGM) (Rosso, 1984). When applied to the data from two Himalayan
watersheds from India, the performance o f 2PIGD found superior to the 2PWD and
2PNGM based on statistical as well as visual criteria. Using 2PIGD and
geomorphological parameters o f Ramganga watershed, a simple regression model for
peak flow rate (Qp = 17.149 v + 0.1361, R2=0.99), and time to peak flow (Tp = 29.535 v '1,
R2 =1) for known value o f dynamic flow velocity (v) were developed. Such a simple
linear relationship can be o f importance for the field engineers as well as hydraulic
engineers for design o f hydraulic structures and development o f flood prediction and
warning systems.
Lag Time Based GIUH Derivation
Linking o f hydrological response o f a catchment w ith the geomorphologic
characteristics has been o f paramount research interest for last three decades. The
Instantaneous U nit Hydrograph (IU H ) theory, popularly known as geomorphologic IU H
(or G IUH) o f Rodriguez-Iturbe et al. (1979) and further refinement by Gupta et al (1980),
became more promising for ungauged catchments or data deficient catchments.
Consequently, Rosso (1984) derived Nash parameters ‘n’ and ‘k ’ in terms o f Horton’s
ratio and a dynamic velocity parameter using power regression and derived the complete
shape o f the unit hydrograph. However, estimation o f dynamic velocity itse lf is an
ambiguous task and involves great subjectivity in routine applications. In the present
study, using the basic G IUH governing equations (Rodriguez-Iturbe et al., 1979 and
Rosso, 1984), a revised G IUH model based on watershed lag time concept has been
proposed. The proposed approach is more pragmatic than the older one due to
replacement o f dynamic velocity by lag time o f the watershed. The resulting high value o f
coefficient o f efficiency and low values o f relative error in peak estimation o f direct
runoff hydrograph for eight single-peaked isolated storms o f two h illy watersheds
indicated the suitability o f the proposed lag time-based G IUH approach. The model
outcome was better than the result o f kinematic-wave based G IUH approach (Kumar &
Kumar, 2008). For estimation o f Horton’ s ratio the realistic drainage network was
extracted using the M elton concept in GIS environment. Moreover, the proposed
approach can be extended for an ungauged watershed, and UHs derived from variable lag
time may be helpful to quantify the effect o f urbanization and land use changes on water
resources, for the lag time is the finger print o f the watershed.
Development of RBFANN-Based Runoff Model
A rtific ia l Neural Network (ANN ) is a technique which comprises o f both linear
and non-linear concepts in model building and is capable o f handling the problem which
is dynamic and even not clearly defined. Radial Basis Function A rtific ia l Neural Network
(RBFANN) is a specific type o f AN N recently used by a number o f researchers in
hydrological modelling. The RBFANN network model is motivated by the locally tuned
response. Owing to this ability, the networks are easily trained by using a sufficiently
large data set. In the present research, an RBFANN model was developed based on kmeans
clustering algorithm to model the daily rainfall-runoff process. The training o f
RBFANN network can be split into an unsupervised part and a supervised part.
Unsupervised training techniques are relatively fast. Clustering algorithm k-means is used
for unsupervised learning in function layer. Gradient descent algorithm is used for
supervised learning part in output layer.
Different network parameters such as learning rate in function layer (ALR),
learning rate in output layer (ALRG), and number o f iterations are optimized using the
data o f calibration period for three Himalayan watersheds, Naula, Chaukhutia, and
Ramganga. The model network weights are calibrated using five years seasonal (June-
September) rainfall-runoff data. Then model performance was evaluated by two unknown
data sets, cross-validation and verification. The Nash efficiency o f proposed RBFANN
was satisfactory and it was 86.28%, 84.91%, and 86.81% in calibration, cross-validation,
and verification, respectively. As such, the efficiency was consistent during all three
periods in case o f Naula watershed. However, the model efficiency was good and
consistent in cross-validation and verification with efficiencies o f 84.76%, and 84.59%,
respectively, and satisfactory in calibration (efficiency = 77.48%) for Chaukhutia
watershed. In case o f Ramganga watershed, the model performed well in calibration
(76%) and cross-validation (77.68%), and it was however reasonable (68.25%) in ,
verification. Overall, the model efficiency was excellent in error convergence due to .
adopting k-means cluster algorithm, and there was no need to go beyond 1 0 0 0 iterations.
However, the higher network achieves the desired performance w ithin 500 iterations. The
model is very sensitive to learning rate in function layer (ALR), but not to learning rate in
output layer (ALRG).
Development of a Spatially Distributed Sediment Yield Model
It is well known that onsite erosion reduces the soil quality due to removal o f
nutrient rich top soil layer and also reduced the water holding capacity o f many soils.
Therefore, in developing countries like India, where rural population is more than 65%
and land is the identity o f the people, assessment o f erosion focuses mainly on the on-site
effects o f erosion. To this end, a spatially distributed sediment yield model was developed
in GIS environment (ERDAS 8.5 and ArcGIS 9.3) which is capable to identify the
sediment source and sink areas w ithin the catchment. Transport capacity and gross soil
erosion maps were generated by overlaying different thematic maps according to their
equations. In the transport capacity map, the ridges and the flatter areas near the channel,
generally cultivated (viz., south-west direction o f Chaukhutia gauging site) are the areas
possessing low transport capacity. However, transport capacity is high in channels and
v
steep head water areas especially where the slope plane curvature is convex in nature.
Employing transport capacity maps alongwith gross soil erosion (GSE), a programme was
developed in Interactive Data Language (ID L ) to route the sediment form ridge pixel to
the outlet o f the watershed by follow ing the hydrological drainage path. The programme
compares the gross soil erosion (total soil ready to move out o f particular pixel) and
transport capacity o f the flo w in that pixel, i f transport capacity is equal or greater than
gross soil erosion then entire eroded soil w ill be transported to the next pixel. However, I f
the transport capacity o f any pixel is less than total soil ready to move out o f a particular
pixel, the tools w ill assign the difference between transport capacity and the total soil
ready to move out, as amount o f sediment deposited in that pixel. Such maps exhibit
sediment rate at a particular cell in spatial domain, and the value at the outlet cell indicate
the sediment outflow from the entire watershed. Lumped as w ell as spatial accuracy o f
the model was checked by comparing the model output w ith the observed sediment data
at the outlet and three upstream gauging sites and theses are found to be w ithin lim it.
Further, the spatial distribution ability o f the model was improved by incorporating the
variable rainfall erosivity map. By overlaying the gross soil erosion and deposition maps,
net erosion/deposition maps were generated. Theses are o f importance in soil erosion
inventory and site selection for a multipurpose reservoir.
Keywords: AN N, ArcGIS, GIUH, Horton’s ratio, Inverse gamma distribution, Lag time,
Penman-Monteith, Potential evapotranspiration, Probability density function, RBFANN,
SCS curve number, Soil erosion, SRTM, SUH, Spatially distributed sediment yield
model, Transport capacity, USLE, W eibull distribution.