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Water quality is closely linked to water use and directly or indirectly to the state of
economic development of a country. The many ways in which water promotes the general
welfare of the society are known as beneficial uses. Unregulated wastewater disposal from
varied sources conflicts with beneficial use of water; hence control of quality is required to
ensure that watercourses are not exploited beyond their power of self purification while
maintaining the intended water use. Controlling and protecting water quality, and modifying
it for a particular purpose are the major issues in water quality management.
Management of water quality is governed by a legislative framework comprising of a set
of rules and regulations. Water quality management in India is promulgated under the Water
(Prevention and Control of Pollution) Act, 1974 so as to maintain and restore the
wholesomeness of national aquatic resources. The Central and State level Pollution Control
Boards have been constituted under its provision so as to coordinate the efforts of water
pollution control at a national level. The Central Pollution Control Board (CPCB) has
initiated (a) use based classification for river reaches and hence designated them into classes
of water ranging from Class A to Class E, and (b) evolving industry specific Minimum
National Standards (MINAS) indicating a level upto which an industrial discharger has to
treat or control its effluent before discharging into any receiving environment under all
circumstances.
In the present study, the implementation of water quality management has been attempted
within the existing legislative framework employing the technologically emerging field of
Decision Support Systems (DSS). A derivative of Management Information Systems, a
decision support system is a set of few to many interactive systems that use data and models
to help decision makers analyze the problems that are unstructured or semi structured in
nature. Massive data requirements, dependence on models, and the need of human element
in finalizing a decision are some of the reasons that have endorsed several DSSs in the field
of water quality management. As an application study, the present work centers on building
a DSS for pollution impaired Hindon river system in the Uttar Pradesh state of Northern
India. The Hindon river system comprises of three main rivers viz., Hindon, Kali (west) and
Krishni draining a total study area of 4361.76 sq. km. The area is predominantly an
agricultural area with a number of agro based industries; mainly sugar mill and paper and
paperboard industries, located in the vicinity of the natural drainage.
It is understood that the growing pollution status of Hindon river system has resulted in its
placement in Class E of CPCB category of river reach conditions in India; which
pathetically has fallen from Class D in the recent years. Considering "Holistic Field
Assessment of river water quality as the basic step governing the requirement of its
management, a monitoring programme was planned and sampling strategies decided to
collect water quality samples for the purpose of analyzing the trend of water quality status
spanning different seasons in a period of one year. A total number of 126 samples (54
regular samples, 18 biological samples and 54 Dissolve Oxygen samples) for each sampling
event spreading over five months, were analyzed as per the procedures outlined in Standard
Methods (APHA, 1998) for pH, temperature, Dissolved Oxygen (DO), Total Dissolved
Solids (TDS), Biochemical Oxygen Demand (BOD), Chemical Oxygen Demand (COD),
Organic-Nitrogen (Organic-N), Ammonia-Nitrogen (Ammonia-N), Nitrates, Total
Phosphorous, Orthophosphates and Total Coliforms. The water quality analysis depicted
high organic loading into the river(s), very low to nil DO content, high ammonia
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concentrations and very high microbial population of Total Coliforms even during the
seasons of low temperature at and downstream of discharge of point sources.
An event-based sampling was also conducted during August and September months of the
monsoon season. Two hourly and at times, hourly samples were collected from the gauge
station at the outlet of the watershed and the samples analyzed for Nitrogen, Phosphorous
and Total Organic Carbon (TOC). However, in the absence of discharge data availability
corresponding to the observed stage, no meaningful deductions could be made from this
analysis.
The development of DSS with its essential components serves as a platform for providing
the simulation and predictive capabilities and therefore, facilitates the user in generation of
scenarios for evaluating the management strategies towards water pollution control in the
study area. The user was visualized as a regulatory authority that is responsible for
maintaining the water quality of the river bodies for intended purpose.
A steady state receiving water quality model, QUAL2E was calibrated and validated with
two different field data sets for the selected river lengths of 105 Km and 86 Km of Hindon
and Kali river respectively. The model fulfilled the requirements of predicting the behavior
of waste load discharge and resulting water quality. Good to average performance of the
model as highlighted by the quantitative evaluation parameters recommended the model for
inclusion as a descriptive model in the Model Management Component of DSS. A mixed
integer linear programming optimization model was developed and included as a decision
model. In view of the pollution concern in the study area, simple BOD-DO relationship has
been utilized in formulating the optimization model based on the concept of transfer matrix.
The formulated model was expected to provide the user with a choice of treatment options
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that were subjected to optimality criteria, and constrained with effluent standards and user
defined water quality criteria.
TheData Management Component of the perceived DSS was developed as a repository of
data sets for two purposes, (a) to serve as general water quality information database
including field monitored data and historic data for sampling stations if any, and (b) to
temporarily store the data of one model while supplying the data to another. Microsoft SQL
Server 2000 was the Relational Database Management System used to create and manage
the database for the above two purposes. The total size of the database was 84MB, with total
number of tables as 91 including 12 static tables and 79 dynamic tables, and overall current
rows equaling to 131099.
The access to the above two components for the user defined criteria of management, was
made possible by coding an interface with graphical metaphors and easy to communicate
controls in Visual Basic Environment (Microsoft Visual Studio 6). The Graphical User
Interface (GUT) as one of the three essential components of the DSS was designed keeping
in view the user requirements and the need to run the application on the PC-Windows
environment. Two distinct types of interfaces: water quality data and water quality
management were developed so as to present an overall integrated environment. A
Microsoft Open Database Connectivity (ODBC) helped interfacing the database with the
Visual Basic while Visual Basic commands for file input/output access were expressed in
code of statements for model interface.
The developed DSS could be successfully applied for updation and modification of
existing water quality data; running the system for user defined CBOD concentration for
different effluents; allowing "user defined' water quality criteria of management of each of
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the two rivers: river Hindon and river Kali (west); displaying the most feasible treatment
alternatives that a user can choose from; viewing the impact of decisions on the water
quality profile in the form of tables and graphs; generating summary of the user activity in
the form of reports highlighting the treatment option for the effluents that best described the
user defined water quality criteria.
The application of the developed DSS has the future possibility of incorporation of other
pollution control measures such as flow augmentation and in stream treatment options for
Hindon river especially. |
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