Abstract:
Rainfall-runoff-sediment yield modeling is integral to water resources planning,
development and management, flood control, environmental impact assessment, erosion and
sediment control, water quality modeling and watershed management. A multitude of models
are available in hydrologic literature to address the issues related with the runoff and
sediment yield modeling. The Soil Conservation Service Curve Number (SCS-CN) method is
one of the popular event-based models widely used for estimation of direct runoff for a given
storm rainfall event from small watersheds. The method has witnessed myriad applications
including those which were not originally intended. Similarly, the synthetic unit hydrograph
(SUH) methods are widely used for estimating design flood for ungauged catchments, and
for partial data availability conditions. The SUH methods are of paramount importance for
developing countries, for majority of the small basins are ungauged. The sediment graph
models are particularly used for estimation of time distributed sediment yield and play a
significant role in water quality modeling and effectiveness of watershed management
programmes. The increased awareness of environmental quality and an efficient control of
non-point source pollution have further increased the need for sediment graph models. The
present study is undertaken to explore the new/modified or improved versions of SCS-CN
method, SUH methods, and sediment graph models on a more sound hydrological perception
and a stronger mathematical foundation to perform their prescribed tasks successfully and
efficiently.
Revised Soil Moisture Accounting Procedure in SCS-CN Methodology
Recent past has witnessed various improvements/modifications to the existing SCSCN
methodology. Based on certain issues, however, a need of further improvement has been
felt for better results. The soil moisture accounting (SMA) procedure that lies behind the
SCS-CN methodology is one of them. Introduced by Williams and LaSeur (1976), SMA
procedure was employed by Mishra et al. (2004a) to address the variability due to antecedent
rainfall and associated soil moisture amount in terms of antecedent moisture condition
(AMC). Based on SMA procedure, Michel et al. (2005) proposed a renewed SCS-CN
methodology to overcome the inconsistencies associated with the existing SCS-CN method,
including the incorrect parameterization. However, the proposed methodology contains some
structural inconsistencies from SMA view point. Specifically, it relies on the existing SCSCN
method, which lacks SMA accountability in the basic proportionality concept or C =Sr
concept (Mishra and Singh, 2003a), where C is the runoff coefficent, Sr is the degree of
saturation. Secondly, the methodology does not have any expression for estimation of initial
soil moisture Vo and threshold soil moisture or intrinsic parameter Sa. Hence, the present
study revisits the existing SCS-CN method for its underlying SMA procedure and provides
simple expressions for Vo and Sa. This revision led to the development of revised version of
the Michel et al. model, named as SMA inspired event-based SCS-CN model. Based on the
revised SMA procedure, the present study also proposes SMA inspired continuous SCS-CN
model parallel to continuous model of Michel et al.
The performance of SMA inspired event-based SCS-CN model, event model of
Michel et al., and the existing SCS-CN method has been evaluated by applying them to event
rainfall-runoff data of 35 small watersheds of United States. In these applications, the
proposed SMA inspired event-based model performs the best, and the existing SCS-CN
method performs poorest of all. Further, the performance of SMA inspired continuous SCSCN
model and continuous model of Michel et al. is evaluated by applying both to daily
rainfall-runoff data of Hemavati watershed (India). Based on Nash and Sutcliffe (NS) (1970)
efficiency criterion, both the models perform equally well for continuous hydrologic
simulation; the proposed model however performs marginally better than the Michel et al.
model.
Extended Hybrid Model for Synthetic Unit Hydrograph (SUH) Derivation
The unavailablity or partial availability of the required rainfall-runoff data in quality
and quantity largely initiated the development of SUH methods. However, the efforts still
continue for development of new/improved models for synthetic unit hydrograph (SUH)
derivation. For example, Bhunya et al. (2005) proposed a hybrid model (HM) for SUH
derivation. Though the proposed HM model can be taken as an improvement over the widely
used Nash (1957) model, it also has few concerns, which require to be attended for a credible
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application. First it ignores the concept of translation, which is essential for describing a
dynamic system, and secondly it lacks in its generality. The present study proposes a
conceptually sound and theoretically improved extended hybrid model (EHM) by introducing
the concept of translation. The proposed EHM model explicitly considers the cascaded
approach of Nash (1957) and the hybrid approach of Bhunya et al. (2005) for SUH derivation.
The study also proposes a general expression for EHM model. Both EHM and HM models
are applied to the short-term data of five catchments (small to medium) ranging from 21 km2
to 452.25 km2. It is found that the quantitative performance of EHM model in terms of
standard error (STDER) and relative error (RE) enhances upon the HM model for the larger
catchments. The Nash model performs poorer than both EHM and HM models. Further, a
structural diagnosis of the general expression of EHM shows that HM and Nash models are
the only specific cases of the earlier one.
Chi-square and Frechet Distributions for SUH derivation
The probability distribution functions (pdfs) as synthetic unit hydrograph (SUH) is a
well accepted technique among the hydrologists. Probably, the similarity between pdf of a
distribution with area under the pdf curve to be unity and a conventional unit hydrograph are
the two important features of a pdf useful for SUH derivation. The present study explores the
potential of one-parameter Chi-square and two-parameter Frechet distributions for SUH
derivation using Horton order ratios (Rodriguez-Iturbe and Valdes, 1979) in comparison to
widely used two-parameter Gamma distribution (2PGD) model (Rosso, 1984). Analytical
methods are proposed for parameter estimation of the two distributions. Using random
generation scheme, the suitability of proposed analytical methods is checked, and it is found
that the proposed analytical methods can be used successfully for their intended task. Further,
an attempt has been made to search for the possible similarity among the three pdfs, viz., one
parameter Chi-square distribution (CSD), two-parameter Frechet distribution (2PFD), and
two-parameter Gamma distribution (2PGD). The three pdfs are applied to two Indian
catchments for limited data availability conditions. The results show that SUHs obtained by
one parameter CSD and 2PFD are well comparable with those obtained by 2PGD model.
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SCS-CN Method Based Sediment Graph Models
The conceptual sediment graph models are popular for estimation of time distribution
of sediment yield (sediment graph computation) as well as the total sediment yield due to a
particular storm event from a catchment. The present study attempts to develop new
conceptual sediment graph models based on three popular and extensively used
models/methods (here termed as sub-models), viz., Nash-based IUSG (Nash, 1957), SCS-CN
method, and Power law (Novotny and Olem, 1994). Four sediment graph models (SGM1 -
SGM4), corresponding to four different cases are proposed. For SGM1, both the initial soil
moisture Vo and initial abstraction Ia are assumed to be zero, i.e. Vo = 0 and la= 0. For SGM2,
Vo = 0, but Ia 0; For SGM3, Vo t 0 and Ia=0; and for SGM4, Vo t 0 and Ia # 0. The proposed
sediment graph models take due consideration to the major runoff and, in turn, the sediment
yield producing watershed characteristics such as soil type, land use, hydrologic condition,
antecedent moisture, and rainfall characteristics. On the basis of number of parameters,
SGM1 is the simplest one, and SGM4 the most complex sediment graph model. The proposed
sediment models are applied to the observed short-term sediment yield data of Nagwan
watershed. Goodness-of-fit (G0F) results show that the proposed sediment graph models
matched closely with the observed sediment graphs and the total sediment yield computed by
them is in close agreement with the observed sediment yield for the three storm events. The
results indicate that both components of hydrologic cycle affect both the sediment graph
derivation and sediment yield computation, and the proposed models are most sensitive to the
exponent of the Power law, f3, than the other parameters. The workability of simplest SGM1
model is further evaluated using the short-term sediment yield data of Ramganga catchment.
The resulting higher values of model efficiencies and lower values of RE of peak sediment
flow rate (4, and total sediment yield Q, further supports the suitability of the proposed
sediment graph model for computation of time distributed sediment yield and total sediment
yield as well.
Keywords: SCS-CN method, Soil moisture accounting, Synthetic unit hydrograph,
Probability distribution function, Sediment graph, Rainfall-runoff-sediment yield.
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