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International Journal of Engineering Science Invention
ISSN (Online): 2319 – 6734, ISSN (Print): 2319 – 6726
www.ijesi.org ||Volume 5 Issue 12|| December 2016 || PP. 30-33
www.ijesi.org 30 | Page
DEA Model: A Key Technology for the Future
Seema Shokeen1
, Pooja Singh1
and Harish Singh1
1
Faculty, Maharaja Surajmal Institute, Affiliated to Guru Gobind Singh Indraprastha University, New Delhi
Abstract: Transportation is defined as the movement of passengers and freight from one place to another.
Passenger is an important part of the overall development problem of the nation and it affects mostly all the
aspects of mobility. The Transportation problem is one of the sub classes of LPP in which the objective is to
transport various amount of a single homogeneous commodity, that are initially stored at various origins, to
different destinations in such a way that the total transportation cost is minimum. Although the name of the
problem is derived from transport to which it was first applied, the problem can also be used for machine
allocation, plant location, product mix problem, and many others, so that the problem is not confined to
transportation or distribution only. Data Envelopment Analysis (DEA) is a very powerful service management
and benchmarking technique originally developed by Charnes et al (1) to evaluate nonprofit and public sector
organizations. Linear programming problem (LPP) is the underlying methodology that makes DEA particularly
powerful compared with alternative productivity management tools. A Transportation Problem can be solved
very easily by different methods (NWC RULE, LCM & VAM) by recognizing and formulating into LPP. The
IBFS obtained in Transportation Algorithm can be tested also by MODIFIED DISTRIBUTION METHOD.
After studying this paper, we will be able to achieve the following objectives of Transportation System - a major
problem of the metropolitan cities.
1- Recognize and formulate the transportation problem as a linear programming problem.
2- Build a transportation table and describe its components.
3- Find an initial basic feasible solution of the transportation problem by using various methods.
4- Know in detail all the steps involved in solving a transportation problem by MODI problem.
5- Solve the unbalanced transportation problems by MODI method.
6- Identify the special situation in transportation problems; such as degeneracy and alternative optimal
solution.
7- Resolve the special cases in transportation problems, where the objective may be of maximization or some
transportation route may be prohibited.
Keywords: Linear programming problem, Data Environment Analysis, Transportation Problem, Modi
distribution method, Initial Basic Feasible solution.
I. Introduction
Linear programming is the underlying methodology that makes DEA [1] particularly powerful as
compared with the other alternative productivity management tools. The most common methods among
comparison or performance evaluation were regression analysis and stochastic frontier analysis. But, these
measures are at times inadequate due to various reasons such as multiple inputs and outputs related to different
resources, activities and various environmental related factors. DEA[2] enables to calculate the efficiency of an
organization relatively to the identified group’s best practice. The two major issues of Transportation problem
are discussed with the help of a relevant example as follows:
a. Cost Maximization Problem
A dairy farm has three plants located throughout a state. Daily milk production at each plant is as follows:
Plant A……..5 million litres
Plant B……..2 million litres
Plant C……..8 million litres
Each day the firm must fulfill the needs of its four distribution centres. Minimum requirement at each centre is
as follows:
Distribution Centre 1……6 million litres
Distribution Centre 2……4 million litres
Distribution Centre 3……2 million litres
Distribution Centre 4……3 million litres
DEA Model: A Key Technology for the Future
www.ijesi.org 31 | Page
Cost of shipping one million litres of milk from each plant to each distribution centre is given in the following
table in hundreds of rupees:
Plants Distribution Centres
1 2 3 4
A 2 3 9 5
B 0 1 5 2
C 5 7 12 7
The dairy farm wishes to decide as to how much should be the shipment from which plant to which distribution
centre so that the cost of shipment may be minimum.
b. Profit Maximization Problem
A company manufacturing TV sets at two plants located at Hyderabad and Salem with a capacity of
300 units and 100 units respectively. The company supplies its TV sets to its four showrooms situated at
Ernakulam, Delhi, Bangalore and Chennai which have a maximum demand of 85, 150, 150 and 55 units
respectively. Due to the differences in the raw material cost and transportation cost the profit per unit in rupees
differs which is shown below in the table.
City Ernakulam Delhi Bangalore Chennai
Hyderabad 80 60 190 175
Salem 70 85 50 65
Plan the production programme so as to maximize the profit. The company may have its production
capacity at both the plants partly or wholly unused.
The places where the goods originate from (the plants or factories or godowns) are called the sources
or the origins; and the places where they are to be supplied are known as the destinations.
In this terminology the problem of the manufacturer or distributer is to decide as to how many units to
be transported from the different origins to different destinations so that the total transportation cost is minimum
(or profit is maximum).
II. DEA and Basic Feasible Solution of A Transportation Problem
The number of constraints in a general transportation problem (no of cells in the transportation tableau)
are (m+n) i.e. the number of rows + number of columns. The number of variables required for forming a basis is
1 less i.e. (m+n-1). This is so because there are only (m+n-1) independent variables in the solution basis. In
other words with values of any (m+n-1) independent variables being given, the remaining would automatically
be determined on the basis of those values. Also considering the conditions of feasibility and no negativity the
number of basic variables representing transportation routes that are utilized equals (m+n-1) and all other
variables be non basic or zero representing the unutilized routes. It means that a basic feasible solution of a
transportation problem has exactly (m+n-1) positive components.
When a problem is solved some of the xij’s would assume positive values indicating utilized routes.
The cells containing such values are called occupied cells and each of them represents the presence of the basic
variable. For the remaining cells called the unoccupied cells xij’s would be zero. These are the routes that are not
utilized by the transportation schedule and their corresponding variables xij’s are termed as non basic variables.
How to solve a Transportation Problem?
As a transportation problem, it can be put in a linear programming format. It can be solved by simplex
method but the solution is going to be very lengthy because of the involvement of a large number of decisions as
well as artificial variables. Hence, we modified the procedure of simplex method popularly known as Modified
Simplex Method [3]. This method yields results faster and with least computational efforts. A significant point
of difference between this method and simplex method is regarding the determination of the initial basic feasible
solution. It involves the following major steps:
1. Formulate the given problem as the linear programming problem.
2. Setup the given LPP in the tabular form known as transportation problem.
3. Examine whether total supply equals total demand, if not introduce a dummy row/column having all the
cost elements as zero and supply/demand as the positive difference of supply and demand.
4. Find an initial Basic Feasible Solution that must satisfy all the supply and demand conditions.
5. Examine the obtained solution for optimality, i.e. examine whether an improved transportation schedule
with a lower cost is possible or not.
6. If the obtained solution is not found to be optimum, modify the shipping schedule by including that
unoccupied cell whose inclusion may result in an improved solution.
DEA Model: A Key Technology for the Future
www.ijesi.org 32 | Page
7. Repeat the 4th
step until no further improvement is possible.
We shall now discuss various methods available for finding an initial basic feasible solution and then
attaining an optimum solution. There are several methods available to obtain an initial basic feasible solution of
a transportation problem. These methods are mentioned below
a. North – West Corner Method (NWC Rule)
b. Least Cost Method
c. Vogel’s Approximation Method
III. Linear Programming Problem Analysis
Data envelopment analysis is a linear programming problem that provides a means of calculating apparent
efficiency levels within a group of organizations. The efficiency of an organization is calculated relative to the
group’s observed best practice.
IV. Optimality Test
The determination of an initial basic feasible solution to a transportation problem is followed by the next very
critical step of how to arrive at the optimum solution. The basic technique is the same as in the simplex method
namely:
1. Determining the net evaluations for non basic variables.
2. Choosing that opportunity cost which may improve the current basic feasible solution.
3. Determining the current occupied cells which leaves (i.e. becomes unoccupied) and repeating the steps 1
through 3 until an optimum solution is attained.
V. Mathematical Formulation and Solution of the Transportation Model
Let us consider a practical problem and then try to analyze and find a mathematical solution to the identified
problem.
A company has three factories Fi (i=1, 2, 3) from which it transports the product to four warehouses Wj (j=1, 2,
3, 4). The unit costs of production at the three factories are Rs.4, Rs. 3, and Rs. 5 respectively. Given the
following information on unit costs of transportation capacities at the three factories and of the requirement at
the four warehouses, find the optimum allocation.
Factory Unit cost of Production
(Rs./unit)
Transportation cost (Rs./unit) Capacity
W1 W2 W3 W4
F1 4 5 7 3 8 300
F2 3 4 6 9 5 500
F3 5 2 6 4 5 200
Requirements 200 300 400 100 1000
Solution: Using Vogel’s Approximation Method, an initial basic feasible solution is displayed in the following
transportation table:
The number of occupied cells are 3+4-1 i.e. 6. This indicates that the basic feasible solution obtained above is
non – degenerate. Using MODI method, an optimum solution is obtained as follows:
Initial Iteration: Compute the numbers ui (i=1, 2, 3) and vj (j=1, 2, 3, 4) for the occupied cells and then compute
the opportunity costs dij for the non occupied cells. These are shown in the table given below wherein we have
set u2 =0.
DEA Model: A Key Technology for the Future
www.ijesi.org 33 | Page
Since all the opportunity costs dij are negative, an optimum solution is obtained.
The optimum solution is:
x13 = 300, x21 = 100, x22 = 300, x24 = 100, x31 = 100 and x33 = 100.
The total minimum cost of production as well as transportation is:
Rs. 4 *300 *3 + Rs.3 * (100 *4 + 300 * 6 + 100 * 5) + Rs.5 * (100 *2 + 100 * 4)
i.e. Rs. 3600 + Rs.8100 + Rs.3000 = Rs. 14700.
Unbalanced Degeneracy Alternative
VI. Merits and Demerits
The major advantage of using DEA is that it includes multiple input and output to evaluate the
technical efficiency. The competitive organizations that are not efficient enough are identified and for such
organizations it plays very potential role models, which can be further adopted by these organizations.
DEA [4] is quite a similar to any of the empirical techniques that is majorly based on a number of
simplifying assumptions which has to be acknowledged while interpreting the results of DEA.
The major limitation of DEA is that it is a much more deterministic technique rather than statistical. It
generally generates the results which are more sensitive to the measurement errors.
Since it is capable of only measuring the efficiency relative to a particular sample, it is not able to
handle the comparative scores between 2 different studies. DEA technique is very sensitive to the input and
output specifications and the sample size. Despite of these limitations it is a very useful tool to examine the
efficiency of various government service providers.
VII. Conclusion
This paper has introduced the concept of efficiency measurement of decision making units and the
DEA technology for the measurement. In India, Operations Research came into existence in 1949 with the
opening of an O.R. unit at the Regional Research Laboratory at Hyderabad. At the same time, another group
was set up in the Defence Science Laboratory which devoted itself to the problems of stores, purchase and
planning. In 1953, an O.R. unit was established in the Indian Statistical Institute, Calcutta for the application of
O.R methods in national planning and survey. O.R. society of India was formed in 1957. It became a member of
the International Federation of O.R. Societies in 1959. Towards the applications of O.R. in India, Prof.
Mahalonobis made the first important application. He formulated the second Five – Year Plan with the help of
O.R. techniques to forecast the trends of demand, availability of resources and for scheduling the complex
schemes necessary for developing our country’s economy. The Transportation Problem is one of the sub –
classes of LPP in which the objective is to transport the various amounts of a single homogeneous commodity,
that are initially stored at various origins, to different destinations in such a way that the total transportation cost
is minimum. Although the name of the problem is derived from transport to which it was first applied, the
problem can also be used for machine allocation, plant location, product mix problem, and many others, so that
the problem is not confined to transportation or distribution only.
References
[1] Dahiya, V., Singh, H., (2014). Data Envelopment Analysis: A linear Programming Based Solution for
Problems of Traffic and Transportation Sector in Delhi. Proceedings of international conference Innovative Enterprenureship to
minimize carbon Footprints, 22 – 25.
[2] R. Banker, A. Charnes, W.W. Cooper, J. Swarts and D.A. Thomas, An introduction to data envelopment
analysis with some of its models and their uses, Research in Governmental and Nonprofit Accounting 5 (1989) 165-185.
[3] Gupta, S.P., Gupta, P.K., Quantitative Techniques and Operations Research. Published by Sultan Chand
and Sons.
[4] Cooper WW, Seiford LM, Tone K (2007) “Data envelopment analysis: a comprehensive text with models,
applications, references and DEA-solver software”, 2nd edn. Springer, Berlin.
DEA Model: A Key Technology for the Future
www.ijesi.org 34 | Page

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DEA Model: A Key Technology for the Future

  • 1. International Journal of Engineering Science Invention ISSN (Online): 2319 – 6734, ISSN (Print): 2319 – 6726 www.ijesi.org ||Volume 5 Issue 12|| December 2016 || PP. 30-33 www.ijesi.org 30 | Page DEA Model: A Key Technology for the Future Seema Shokeen1 , Pooja Singh1 and Harish Singh1 1 Faculty, Maharaja Surajmal Institute, Affiliated to Guru Gobind Singh Indraprastha University, New Delhi Abstract: Transportation is defined as the movement of passengers and freight from one place to another. Passenger is an important part of the overall development problem of the nation and it affects mostly all the aspects of mobility. The Transportation problem is one of the sub classes of LPP in which the objective is to transport various amount of a single homogeneous commodity, that are initially stored at various origins, to different destinations in such a way that the total transportation cost is minimum. Although the name of the problem is derived from transport to which it was first applied, the problem can also be used for machine allocation, plant location, product mix problem, and many others, so that the problem is not confined to transportation or distribution only. Data Envelopment Analysis (DEA) is a very powerful service management and benchmarking technique originally developed by Charnes et al (1) to evaluate nonprofit and public sector organizations. Linear programming problem (LPP) is the underlying methodology that makes DEA particularly powerful compared with alternative productivity management tools. A Transportation Problem can be solved very easily by different methods (NWC RULE, LCM & VAM) by recognizing and formulating into LPP. The IBFS obtained in Transportation Algorithm can be tested also by MODIFIED DISTRIBUTION METHOD. After studying this paper, we will be able to achieve the following objectives of Transportation System - a major problem of the metropolitan cities. 1- Recognize and formulate the transportation problem as a linear programming problem. 2- Build a transportation table and describe its components. 3- Find an initial basic feasible solution of the transportation problem by using various methods. 4- Know in detail all the steps involved in solving a transportation problem by MODI problem. 5- Solve the unbalanced transportation problems by MODI method. 6- Identify the special situation in transportation problems; such as degeneracy and alternative optimal solution. 7- Resolve the special cases in transportation problems, where the objective may be of maximization or some transportation route may be prohibited. Keywords: Linear programming problem, Data Environment Analysis, Transportation Problem, Modi distribution method, Initial Basic Feasible solution. I. Introduction Linear programming is the underlying methodology that makes DEA [1] particularly powerful as compared with the other alternative productivity management tools. The most common methods among comparison or performance evaluation were regression analysis and stochastic frontier analysis. But, these measures are at times inadequate due to various reasons such as multiple inputs and outputs related to different resources, activities and various environmental related factors. DEA[2] enables to calculate the efficiency of an organization relatively to the identified group’s best practice. The two major issues of Transportation problem are discussed with the help of a relevant example as follows: a. Cost Maximization Problem A dairy farm has three plants located throughout a state. Daily milk production at each plant is as follows: Plant A……..5 million litres Plant B……..2 million litres Plant C……..8 million litres Each day the firm must fulfill the needs of its four distribution centres. Minimum requirement at each centre is as follows: Distribution Centre 1……6 million litres Distribution Centre 2……4 million litres Distribution Centre 3……2 million litres Distribution Centre 4……3 million litres
  • 2. DEA Model: A Key Technology for the Future www.ijesi.org 31 | Page Cost of shipping one million litres of milk from each plant to each distribution centre is given in the following table in hundreds of rupees: Plants Distribution Centres 1 2 3 4 A 2 3 9 5 B 0 1 5 2 C 5 7 12 7 The dairy farm wishes to decide as to how much should be the shipment from which plant to which distribution centre so that the cost of shipment may be minimum. b. Profit Maximization Problem A company manufacturing TV sets at two plants located at Hyderabad and Salem with a capacity of 300 units and 100 units respectively. The company supplies its TV sets to its four showrooms situated at Ernakulam, Delhi, Bangalore and Chennai which have a maximum demand of 85, 150, 150 and 55 units respectively. Due to the differences in the raw material cost and transportation cost the profit per unit in rupees differs which is shown below in the table. City Ernakulam Delhi Bangalore Chennai Hyderabad 80 60 190 175 Salem 70 85 50 65 Plan the production programme so as to maximize the profit. The company may have its production capacity at both the plants partly or wholly unused. The places where the goods originate from (the plants or factories or godowns) are called the sources or the origins; and the places where they are to be supplied are known as the destinations. In this terminology the problem of the manufacturer or distributer is to decide as to how many units to be transported from the different origins to different destinations so that the total transportation cost is minimum (or profit is maximum). II. DEA and Basic Feasible Solution of A Transportation Problem The number of constraints in a general transportation problem (no of cells in the transportation tableau) are (m+n) i.e. the number of rows + number of columns. The number of variables required for forming a basis is 1 less i.e. (m+n-1). This is so because there are only (m+n-1) independent variables in the solution basis. In other words with values of any (m+n-1) independent variables being given, the remaining would automatically be determined on the basis of those values. Also considering the conditions of feasibility and no negativity the number of basic variables representing transportation routes that are utilized equals (m+n-1) and all other variables be non basic or zero representing the unutilized routes. It means that a basic feasible solution of a transportation problem has exactly (m+n-1) positive components. When a problem is solved some of the xij’s would assume positive values indicating utilized routes. The cells containing such values are called occupied cells and each of them represents the presence of the basic variable. For the remaining cells called the unoccupied cells xij’s would be zero. These are the routes that are not utilized by the transportation schedule and their corresponding variables xij’s are termed as non basic variables. How to solve a Transportation Problem? As a transportation problem, it can be put in a linear programming format. It can be solved by simplex method but the solution is going to be very lengthy because of the involvement of a large number of decisions as well as artificial variables. Hence, we modified the procedure of simplex method popularly known as Modified Simplex Method [3]. This method yields results faster and with least computational efforts. A significant point of difference between this method and simplex method is regarding the determination of the initial basic feasible solution. It involves the following major steps: 1. Formulate the given problem as the linear programming problem. 2. Setup the given LPP in the tabular form known as transportation problem. 3. Examine whether total supply equals total demand, if not introduce a dummy row/column having all the cost elements as zero and supply/demand as the positive difference of supply and demand. 4. Find an initial Basic Feasible Solution that must satisfy all the supply and demand conditions. 5. Examine the obtained solution for optimality, i.e. examine whether an improved transportation schedule with a lower cost is possible or not. 6. If the obtained solution is not found to be optimum, modify the shipping schedule by including that unoccupied cell whose inclusion may result in an improved solution.
  • 3. DEA Model: A Key Technology for the Future www.ijesi.org 32 | Page 7. Repeat the 4th step until no further improvement is possible. We shall now discuss various methods available for finding an initial basic feasible solution and then attaining an optimum solution. There are several methods available to obtain an initial basic feasible solution of a transportation problem. These methods are mentioned below a. North – West Corner Method (NWC Rule) b. Least Cost Method c. Vogel’s Approximation Method III. Linear Programming Problem Analysis Data envelopment analysis is a linear programming problem that provides a means of calculating apparent efficiency levels within a group of organizations. The efficiency of an organization is calculated relative to the group’s observed best practice. IV. Optimality Test The determination of an initial basic feasible solution to a transportation problem is followed by the next very critical step of how to arrive at the optimum solution. The basic technique is the same as in the simplex method namely: 1. Determining the net evaluations for non basic variables. 2. Choosing that opportunity cost which may improve the current basic feasible solution. 3. Determining the current occupied cells which leaves (i.e. becomes unoccupied) and repeating the steps 1 through 3 until an optimum solution is attained. V. Mathematical Formulation and Solution of the Transportation Model Let us consider a practical problem and then try to analyze and find a mathematical solution to the identified problem. A company has three factories Fi (i=1, 2, 3) from which it transports the product to four warehouses Wj (j=1, 2, 3, 4). The unit costs of production at the three factories are Rs.4, Rs. 3, and Rs. 5 respectively. Given the following information on unit costs of transportation capacities at the three factories and of the requirement at the four warehouses, find the optimum allocation. Factory Unit cost of Production (Rs./unit) Transportation cost (Rs./unit) Capacity W1 W2 W3 W4 F1 4 5 7 3 8 300 F2 3 4 6 9 5 500 F3 5 2 6 4 5 200 Requirements 200 300 400 100 1000 Solution: Using Vogel’s Approximation Method, an initial basic feasible solution is displayed in the following transportation table: The number of occupied cells are 3+4-1 i.e. 6. This indicates that the basic feasible solution obtained above is non – degenerate. Using MODI method, an optimum solution is obtained as follows: Initial Iteration: Compute the numbers ui (i=1, 2, 3) and vj (j=1, 2, 3, 4) for the occupied cells and then compute the opportunity costs dij for the non occupied cells. These are shown in the table given below wherein we have set u2 =0.
  • 4. DEA Model: A Key Technology for the Future www.ijesi.org 33 | Page Since all the opportunity costs dij are negative, an optimum solution is obtained. The optimum solution is: x13 = 300, x21 = 100, x22 = 300, x24 = 100, x31 = 100 and x33 = 100. The total minimum cost of production as well as transportation is: Rs. 4 *300 *3 + Rs.3 * (100 *4 + 300 * 6 + 100 * 5) + Rs.5 * (100 *2 + 100 * 4) i.e. Rs. 3600 + Rs.8100 + Rs.3000 = Rs. 14700. Unbalanced Degeneracy Alternative VI. Merits and Demerits The major advantage of using DEA is that it includes multiple input and output to evaluate the technical efficiency. The competitive organizations that are not efficient enough are identified and for such organizations it plays very potential role models, which can be further adopted by these organizations. DEA [4] is quite a similar to any of the empirical techniques that is majorly based on a number of simplifying assumptions which has to be acknowledged while interpreting the results of DEA. The major limitation of DEA is that it is a much more deterministic technique rather than statistical. It generally generates the results which are more sensitive to the measurement errors. Since it is capable of only measuring the efficiency relative to a particular sample, it is not able to handle the comparative scores between 2 different studies. DEA technique is very sensitive to the input and output specifications and the sample size. Despite of these limitations it is a very useful tool to examine the efficiency of various government service providers. VII. Conclusion This paper has introduced the concept of efficiency measurement of decision making units and the DEA technology for the measurement. In India, Operations Research came into existence in 1949 with the opening of an O.R. unit at the Regional Research Laboratory at Hyderabad. At the same time, another group was set up in the Defence Science Laboratory which devoted itself to the problems of stores, purchase and planning. In 1953, an O.R. unit was established in the Indian Statistical Institute, Calcutta for the application of O.R methods in national planning and survey. O.R. society of India was formed in 1957. It became a member of the International Federation of O.R. Societies in 1959. Towards the applications of O.R. in India, Prof. Mahalonobis made the first important application. He formulated the second Five – Year Plan with the help of O.R. techniques to forecast the trends of demand, availability of resources and for scheduling the complex schemes necessary for developing our country’s economy. The Transportation Problem is one of the sub – classes of LPP in which the objective is to transport the various amounts of a single homogeneous commodity, that are initially stored at various origins, to different destinations in such a way that the total transportation cost is minimum. Although the name of the problem is derived from transport to which it was first applied, the problem can also be used for machine allocation, plant location, product mix problem, and many others, so that the problem is not confined to transportation or distribution only. References [1] Dahiya, V., Singh, H., (2014). Data Envelopment Analysis: A linear Programming Based Solution for Problems of Traffic and Transportation Sector in Delhi. Proceedings of international conference Innovative Enterprenureship to minimize carbon Footprints, 22 – 25. [2] R. Banker, A. Charnes, W.W. Cooper, J. Swarts and D.A. Thomas, An introduction to data envelopment analysis with some of its models and their uses, Research in Governmental and Nonprofit Accounting 5 (1989) 165-185. [3] Gupta, S.P., Gupta, P.K., Quantitative Techniques and Operations Research. Published by Sultan Chand and Sons. [4] Cooper WW, Seiford LM, Tone K (2007) “Data envelopment analysis: a comprehensive text with models, applications, references and DEA-solver software”, 2nd edn. Springer, Berlin.
  • 5. DEA Model: A Key Technology for the Future www.ijesi.org 34 | Page