Project Management in the Oil and Gas Industry
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2.Project management in the oil and gas industry 2016
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- 2.3 Economic Risk Assessment 2.3.1 Probability Theory
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tiv e net cash flow Figure 2.4 Payout method. 50 Project Management in the Oil and Gas Industry value of the initial investment. But, in general, given a general idea of the itinerary of the project economically and, as mentioned in some invest- ments, may be a time period of recovery of funds that was paid for the cost of the project and is the most important factor affecting the decision- making regardless of the final profit. In spite of the many advantages of the payout method, alone it is not a complete measure of the value of money for the following reasons: • It does not indicate profit following payout. • It does not measure total profit. • Time value of money is not formally included. • It varies depending on different types and magnitudes of investment. 2.3 Economic Risk Assessment 2.3.1 Probability Theory To enter into the theory of probability, there is some statistical informa- tion that is important and necessary to understand the probability theory and the probability distribution. To illustrate the statistical concepts, we will clarify them through a numerical analysis for test results for crushing samples of cylinder concrete to measure its strength. The main statistical parameters will be the following: • Arithmetic average • Standard deviation • Coefficient of variation Arithmetic average is the average value of a set of results and is repre- sented in the following equation: X X X X n n 1 2 , (2.9) where n is the number of results and X is read of each test result. As a practical example of the statistical parameter, assume that we have two groups of concrete mixture from different ready mix suppliers. The first group has a concrete compressive strength after 28 days for three samples which are 310 kg/cm 2 , 300 kg/cm 2 , and 290 kg/cm 2 . When we cal- culate the arithmetic average using Equation 2.9, the arithmetic mean of these readings is 300 kg/cm 2 . Project Economic Analysis 51 The second group has a test result for cube compressive strength after 28 days under the same conditions for the first group. The test results are 400 kg/cm 2 , 300 kg/cm 2 , and 200 kg/cm 2 . When calculating the arithmetic mean, we find that it is equal to 300 kg/cm 2 . Because the two groups have the same value of the arithmetic mean, does that mean that the same mixing has the same quality? Will you accept the two mixing? We find that this is unacceptable by engineering standards, but when we consider that the mean of the two groups are the same, one should choose another criteria by which to compare the results as we cannot accept the second group based on our judgment, which will not support us in court. Standard deviation is a statistical factor that reflects near or far the reading results. From the arithmetic mean end, it is represented in the following equation: S X X X X X X n n ( ) ( ) ( ) . 1 2 1 2 2 (2.10) The standard deviation for the first group sample is S ( ) ( ) ( ) . 310 300 300 300 290 300 3 2 2 2 Mixing one, S = 8.16 kg/cm 2 . The standard deviation for the seconding group sample is S ( ) ( ) ( ) 400 300 300 300 200 300 3 2 2 2 . Mixing two, S = 81.6 kg/cm 2 One can find that the standard deviation in the second group has a higher value than the first group. So the distribution of test data results is far away from the arithmetic mean rather than group one. From Equation 2.10, one can find that the ideal case is when S equals 0. We note that the standard deviation has units, as seen in the previous example. Therefore, standard deviation can be used to compare between the two groups of data as in the previous example where the two groups give the value of 300 kg/cm 2 after 28 days. On the other hand, in the case of the comparison between the two different mixes of concrete, for instance, there is a resistance of 300 kg/cm 2 in one concrete and 500 kg/cm 2 in the second. In that case, the standard deviation is of no value. Therefore, we resort to the coefficient of variation. 52 Project Management in the Oil and Gas Industry The coefficient of variation is the true measure of quality control, as it determines the proportion after the readings for the average arithmetic profile. This factor has no units and is, therefore, used to determine the degree of product quality. Download 1.92 Mb. Do'stlaringiz bilan baham: |
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