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INDUSTRY
- February 2001 by Dr. Arlie Hall It
All Adds Up Managers must utilize various methods to predict future results, given a course of actions. Management scientist have focused on this need over the years by developing various mathematical models the help practitioners predict, with a high degree of reliability, outcomes of various alternative decision variables. Again, the exact outcome is sometime in the future, but the manager must make present predictions about that future state. These models help predict, with a high degree of accuracy, what the future outcome is likely to be. Among the useful models often utilized are Linear Programming, Network Analysis, Probability Theory and Queuing Theory Linear
programming Simply stated, this tool helps managers make decisions about the allocations of limited resources among competing activities. Let us suppose, for example, that ABC Company is a producer of high quality windows and glass doors for the residential construction market. ABC has three plants. Aluminum frames and hardware are made in Plant 1, wood frames are made in Plant 2, and Plant 3 is utilized to manufacture glass and assemble the final products. ABC currently is experiencing a decline in sales of several unprofitable products. This decline has freed up excess capacity in each of its three plants. Plant 1 has five percent excess capacity available, Plant 2 has 15 percent capacity available, and Plant 3 has 20 percent capacity available. ABCs management team has the option of utilizing this excess capacity to manufacture two new products recently developed by the research and development department. However, because both products would be competing for the excess capacity in Plant 3, it is not exactly clear to management which product or combination of products should be manufactured in order to maximize profits. The marketing department has stated that it could sell as many of either of the products that it could produce. It is estimated that Product X will contribute $5 per unit to profit and Product Y would contribute $7 per unit to profits. The management team decides that this is a problem that should be given to their Operations Research Department. The O. R. Department recognizes this problem as one of linear programming. The Department decides the key to the choices is to first express the problem as an objective function:
This means that there would be some combination of the two products that would maximize profits. It is beyond the scope of this article to further develop this problem. However, it does illustrate the usefulness of LP mathematical models in helping managers allocate limited resources among competing activities. Network
analysis A manufacturing machine shop may have its grinding machines in one department, its lathes in another department, and its broaching machines in another department. Manufacturing engineers develop routings that specify what paths various products will take through the machine shop. This, in effect, is an attempt to develop the optimum route or flow of materials through the machine shop. Knowledge of network analysis can help manufacturing engineers determine the shortest routes. Probability
theory Suppose, for example, the demand for a product is projected, say over a six months period, to be 10,000 units. One could take samples from the buying population to predict the validity of this projection. A manufacturing example might be the reliability of the assembly process that is utilized to manufacture these 10,000 units. Again, it would be appropriate to take a series of samples to measure the accuracy of the various manufacturing operations as a means of predicting the overall manufacturing process reliability. Queuing
theory Queuing theory involves the mathematical characteristics of queues, or what we generally know to be waiting lines. Queues happen because the demand for a service is exceeded by the capacity to provide the service. Decisions must be made regarding the amount of service one wants to provide. We find a queue of inventory at almost every operation in a manufacturing process. This inventory serves as a buffer stock to prevent running out or shutting down the assembly process. A
game plan would be to develop a method, utilizing queuing
theory, to assure with a high degree of reliability that
we do not run out of stock. Yet we would like the ideal
state where only one item of stock is actually waiting in
a queue.
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