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1 Topic 8 Significant Figures, Errors and Error Propagation Contents 8.1 Introduction . . . . . . . . . . . . . . . . . . . . . . . 8.2 Significant Figures and Rounding . . . . . . . . . . . 8.2.1 Significant Figure Examples . . . . . . . . . . 8.2.2 Significant Figure Rules . . . . . . . . . . . . 8.2.3 Significant Figure Summary . . . . . . . . . . 8.2.4 Rounding . . . . . . . . . . . . . . . . . . . . 8.3 Significant Arithmetic . . . . . . . . . . . . . . . . . . 8.3.1 Multiplication . . . . . . . . . . . . . . . . . . 8.3.2 Division . . . . . . . . . . . . . . . . . . . . . 8.3.3 Addition . . . . . . . . . . . . . . . . . . . . . 8.3.4 Subtraction . . . . . . . . . . . . . . . . . . . 8.4 Experimental Errors . . . . . . . . . . . . . . . . . . 8.5 Propagation of Experimental Error . . . . . . . . . . 8.5.1 Addition and Subtraction of Measurements . 8.5.2 Multiplication and Division of Measurements 8.6 Tutorial Topic 8 . . . . . . . . . . . . . . . . . . . . . 8.7 Bibliography . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Prerequisite knowledge • Familiarity with scientific notation. • Understanding of how to round numbers. • Ability to manipulate algebraic expressions. • Some background in experimental error assessment. Learning Objectives By the end of this topic, you should be able to: • Identify significant figures. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 2 3 3 4 4 5 7 7 8 9 9 10 12 12 14 17 18 2 TOPIC 8. SIGNIFICANT FIGURES, ERRORS AND ERROR PROPAGATION • Distinguish between precision and accuracy. • Apply rounding and work in scientific notation. • Apply significant figures to algebraic operations - addition and subtraction • Apply significant figures to algebraic operations - multiplication and division. • Assess errors in experimental results. • Identify and quantify how errors propagate. ©H ERIOT-WATT U NIVERSITY TOPIC 8. SIGNIFICANT FIGURES, ERRORS AND ERROR PROPAGATION 8.1 Introduction The first requirement is to distinguish between two terms that are used interchangeably in common language - however, for scientists and engineers these terms have very different meanings: • Accuracy • Precision Say the density of a liquid is repeatedly measured using a density bottle, together with the suppliers Standard Operating Procedure (SOP) - assume that experimental conditions are kept the same. Given a sufficient number of measurements the results may be plotted as a frequency distribution - such as the one shown below: Mean value True value Number of density measurements falling into a specific band - The true value is known because a standard is available. Accuracy - There will be a spread of results depending on the equipment, the operator and the procedure. Precision Density bands The precision is the spread of results obtained when all efforts are made to keep the experimental conditions the same. The precision can also be called the repeatability or the reproducibility - it is basically the consistency of the measurement. The accuracy is how close the mean value of the measured results is to the true value, as can be seen accuracy and precision are different. Standard chemical engineering textbooks usually offer little support in this area, however, [Felder and Rousseau, 2008] have a useful section on significant figures. ©H ERIOT-WATT U NIVERSITY 3 4 TOPIC 8. SIGNIFICANT FIGURES, ERRORS AND ERROR PROPAGATION 8.2 Significant Figures and Rounding The more significant figures there are associated with a measurement then the more precision there is in that measurement. However, it is important not to give the impression of a false precision. For instance when making up a reagent the weight may have been measured by a technician as 23.5 g - now, consider that this is written down as follows: • Case (1), Weight = 23.5 g; this has three significant figures and informs anyone who might pick up the result, that its value could actually lie anywhere in the range 23.45g - 23.55 g - the precision is 23.5 ± 0.05 g. • Case (2), Weight = 23.500 g; five significant figures are now being claimed. This means that the result could now lie anywhere in the range 23.4995 - 23.5005, notice that a false precision of 23.5 ± 0.0005 g is now being claimed. Therefore, writing down the number in the wrong way, in this case with too many decimal points (although same applies to numbers without decimal points), creates a false precision. At this point do not confuse precision with accuracy. A laboratory balance may be very precise, that is give highly reproducible answers, but at the same time, it may be out of calibration and therefore quite inaccurate. 8.2.1 Significant Figure Examples To establish the correct precision within a data set, and then maintain a consistent precision throughout a calculation using this data, requires a clear understanding of the rules governing significant figures. First consider a sequence of examples and then it should be possible to summarise a set of clear rules: 1. All non-zero numbers are significant - for instance the average molar mass of a mixture is 28.6 kg kmol-1 . The numbers "2, 8 and 6" are non-zero and "significant", therefore, the molar mass is known to three significant figures. 2. Zeros within a string of non-zero numbers also count as significant figures, for instance standard atmospheric pressure is taken as 101.325 kN m-2 . The numbers "1, 0, 1, 3, 2, 5" are all "significant" - there are six significant figures. 3. Leading zeros do not count as significant figures - for instance the triple point pressure of water is 0.006112 bar. The three leading zeros are insignificant, only "6, 1, 1, 2" are "significant", so that there are four significant figures. 4. If a number has a decimal point then trailing zeros are significant - for instance atmospheric pressure could be written as 0.611200 kN m-2 thus "6, 1, 1, 2, 0, 0" are all "significant" - there are now six significant figures. a) To maintain the same precision, but now working in N m-2 instead of kN m-2 , atmospheric pressure would have to be written as 611.200 N m-2 thus, there are still six significant figures. ©H ERIOT-WATT U NIVERSITY TOPIC 8. SIGNIFICANT FIGURES, ERRORS AND ERROR PROPAGATION b) The weight of a sample is 120.00 g - there are five significant figures, because whenever there is a decimal point trailing zeros count. 5. If a number has no decimal point then trailing zeros are ambiguous. The weight of a large van may be quoted as 3,500 kg - this is ambiguous: a) The weight may be exactly 3,500 kg. b) The weight may have been rounded to the nearest hundred kg. c) If it is exactly 3,500 kg, then the ambiguity may be resolved in two ways; first, write 3,500. kg (note the decimal point); second, write 3.500 tonnes; in both cases there are four significant figures. 8.2.2 Significant Figure Rules Having considered a number of examples, the rules about significant figures may be listed as follows: 1. All non-zero digits in a number are significant. 2. Zero digits within a string of non-zero digits count as significant. 3. Leading zero digits are not significant. 4. When a number has a decimal point trailing zero digits are significant. 5. When a number has no decimal point trailing zero digits are ambiguous, either insert a decimal point, or change the unit prefix or use scientific notation (there are other conventions but they are rarely used). 8.2.3 Significant Figure Summary All of the above rules can be summarised in a very condensed way as follows: "For any measured quantity the number of significant figures is the number of digits starting from the first non-zero digit on the left and ending either, if there is a decimal point, with last digit (whether zero or non-zero) or, if there is no decimal point, the last non-zero digit". Working in scientific notation can simplify the question of significance: Measurement Scientific Notation 9600 9600.0 96050 0.0096 0.00605 9.6 x 103 9.6000 x 103 9.605 x 104 9.6 x 10-3 6.05 x 10-3 ©H ERIOT-WATT U NIVERSITY Number of Significant Figures 2 5 4 2 3 5 6 TOPIC 8. SIGNIFICANT FIGURES, ERRORS AND ERROR PROPAGATION 8.2.4 Rounding When using a calculator numbers must be rounded - there are two ways of doing this: • Rounding to some arbitrary number of decimal places. In financial work rounding to two decimal places is usual. • Rounding to significant figures. When the number of significant figures is known the result is rounded to the known number of significant figures - this is the recommended approach. The first approach of rounding to a certain number specified decimal places is not recommended: too many decimal places lead to false precision; too few decimal places lead to loss of information. When rounding a calculated result the approach should be as follows: • The number of significant figures will be known from the values entered into the calculator and the operation (add, subtract, multiply, divide) - see next section on how to do this. • Take the calculated result and apply the number of significant figures to the value displayed on the calculator. • Retain all digits that are "significant" - the most significant to the left the least significant to the right and then inspect the digits immediately to the right of the least significant digit. • These digits are not significant and will be discarded. If they are over "5" then round the least significant figure up, if less than "5" then round it down. Now apply these rules to the number 16.72532: Significant Figures 5 4 3 2 1 Final Result 16.725 16.73 16.7 17 2 x 101 • Now take the same number 16.72532 and round it using same number of decimal places: Decimal Places 5 4 3 2 1 Final Result 16.72532 16.7253 16.725 16.73 16.7 ©H ERIOT-WATT U NIVERSITY TOPIC 8. SIGNIFICANT FIGURES, ERRORS AND ERROR PROPAGATION Take the case where two significant figures apply - the correct answer should be written as 17, meaning that the result could actually lie anywhere in the range 16.5 - 17.5, hence, the precision is ±0.5. However, using two decimal places provides a result 16.73 - clearly the result, using this incorrect approach, could be anywhere in the range 16.725 - 16.735 which implies a false precision of ±0.005. A problem arises when rounding 16.725 to four significant figures - applying the rules as before. Only four digits are significant and these are "1, 6, 7, 2" the rest are insignificant and the least significant digit is "2". In this case there is only one digit to the right of the least significant digit and this is "5", clearly it is difficult to know whether to round the least significant digit up or down. There are two different ways of doing this: 1. Expand the previous rule from "greater than five - move up" to "five or more - move up", the 16.725 would then appear as 16.73. 2. Apply the rule "round to nearest even number" - that is if the least significant figure is an even number then leave it, if the least significant number is odd then round to the nearest even; using this rule 16.725 becomes 16.72. It is a matter of choice which rule to apply - rule 1 has the effect of always rounding up, which can shift the result of many calculations in this direction. Rule 2 has the advantage of randomising the rounding process - it is a superior approach. ©H ERIOT-WATT U NIVERSITY 7 8 TOPIC 8. SIGNIFICANT FIGURES, ERRORS AND ERROR PROPAGATION 8.3 Significant Arithmetic In the previous section the number of significant figures was given; in fact the number of significant figures depends on the precision of the starting data and the operation that is being carried out (multiplication, division, addition or subtraction). This is known as significant arithmetic. 8.3.1 Multiplication When multiplying or dividing two values together the number of significant figures that should be applied to the result can be simply stated as follows: "The starting value with the least number of significant figures by itself determines the number of significant figure of the final result". In the case of significant multiplication, the precision of the final result cannot be more precise than the least precise starting value - now apply this rule given to the following examples (involving multiplication only): Starting Data Multiplication Number of Significant Figures Final Rounded Result 9 x 9 = 81 9 x 9.0 = 81 9.0 x 9.0 = 81 9.2 x 9.54 = 87.758 1501 x 271 = 406,771 3.146 x 16.0 = 50.3360 3.146 x 16 = 50.336 1 1 2 2 3 3 2 80 80 81 88 407,000 50.3 50 At this point some confusion may arise in the mind of a student; it is well-known that 9x9 =81, but the result is rounded to 80 which seems wrong - however, the confusion is easily clarified: • It is important to realise that the "9" in question is not an integer it is a measured value, say 9 cm. Thus the student could be working out the area of a square 9 cm×9 cm, which might appear to be 81 cm2 . • However, there is only 1 significant figure, which means that the "9 cm" can actually lie anywhere in the range 8.5 - 9.5 cm. With such a low measurement precision the calculated area must be stated as 80 cm2 . The above approach is strictly correct when a single multiplication is being carried out. Sometimes a sequence of calculations is needed and then it is wise to hold all intermediate answers to an extra significant figure and round at the end. This avoids "rounding errors" that gradually enter calculations if each intermediate result is rounded, as a general loss of information builds up over the calculation as a whole. Consider 1200x1.610 = 1932 - the factor "1.610" has four significant figures but there is ambiguity about how many significant figures apply to "1200": ©H ERIOT-WATT U NIVERSITY TOPIC 8. SIGNIFICANT FIGURES, ERRORS AND ERROR PROPAGATION • If there is no decimal place "1200" has only two significant figures and the answer is must be written as 1900. • If "1200" just happens to be exactly "1200" then there are four significant figures and the answer is 1932 - there are three ways getting round this ambiguity: 1. place a decimal point after the final "0" 2. modify the unit prefix - if it is 1200 g write this as 1.200 kg 3. use scientific notation, i.e. 1.200×103 g One final point, if there are 1200 samples each with average mass 1.61327 g calculate the mass of the entire batch = 1200×1.61327 g = 1935.924 g. In this case there are 6 significant figures and the answer must be rounded to 1935.92 g When a value has been arrived at by counting (not by measurement) there are an infinite number of significant figures - basically this number can in no way limit the overall number of significant figures of the final result. By taking an infinite number of significant figures what is being inferred is that the number is known precisely. 8.3.2 Division The same significant figure rule that applies to significant multiplication also applies to significant division. That is the final answer can have no more precision than the factor with the least precision - consider the following examples: Starting Data Division Number of Significant Figures Final Rounded Result 9 / 4 = 2.25 9.0 / 4 = 2.25 9.0 / 4.0 = 2.25 9.00 / 4.00 = 2.25 9.2 / 9.54 = 0.964361 1501 / 271 = 5.5387454 3.146 / 16.0 = 0.196625 3.1461 / 16.11 = 0.195289 1 1 2 3 2 3 3 4 2 2 2.3 2.25 0.96 5.54 0.197 0.1953 The above approach is strictly correct when a single division is being carried out. Sometimes a sequence of calculations is needed and again it is wise to hold all intermediate answers to an extra significant figure and then round at the end. Consider the following division 1200/1.610 = 745.34161 - the factor "1.610" has four significant figures but there is ambiguity about how many significant figures apply to "1200". The rules are the same as before, but just to recap: • If there is no decimal place, "1200" has only two significant figures and the answer is must be written as "750". • If "1200" just happens to be exactly "1200" then there are four significant figures ©H ERIOT-WATT U NIVERSITY 9 10 TOPIC 8. SIGNIFICANT FIGURES, ERRORS AND ERROR PROPAGATION and the answer is "745.3" - once again there are three ways getting round this: 1. place a decimal point after the final "0" 2. modify the unit prefix - if it is 1200 g write this as 1.200 kg 3. use scientific notation, i.e. 1.200×103 g If there are 1200 samples with a total mass 1935.924 g the average mass of each sample = 1935.924 g/1200 = 1.613270 g. There are seven significant figures. 8.3.3 Addition In the case of significant addition, the number of significant figures that should be applied to the result can be stated as follows: • When two or more values are added the position of the least significant digit in the starting values should be noted. • The position of the least significant figure in the final result should correspond to the furthest left of the least significant digit in the starting values. • Notice that it not the number of significant figures that matter, it is the position of the least significant figure that is important. Apply this rule given to the following addition examples: Starting Data Addition Position of Least Significant Final Rounded Result Figure From Left 4 + 5.1 = 9.1 One’s place 9 4.0 + 5.1 = 9.1 Tenth’s place 9.1 22.1 + 130 = 352.1 Tens place 350 22.1 + 130. = 352.1 One’s place 352 22.1 + 130.0 = 352.1 Tenth’s place 352.1 8.3.4 Subtraction For significant subtraction, the result is once again rounded to the position of the least significant figure in the more imprecise of the two starting values - for example: Starting Data Subtraction Position of Least Significant Final Rounded Result Figure From Left 15 - 7.9 = 7.1 One’s place 7 15.0 - 7.9 = 7.1 Tenth’s place 130 - 22.1 = 107.9 Tens place 7.1 110 130. - 22.1 = 107.9 One’s place 108 130.0 - 22.1 = 107.9 Tenth’s place 107.9 ©H ERIOT-WATT U NIVERSITY TOPIC 8. SIGNIFICANT FIGURES, ERRORS AND ERROR PROPAGATION 8.4 Experimental Errors There are two general categories of error in any measurement: • Random error is an unpredictable variation in, either the measured reading of an instrument from its true value, or a random variation of an observer’s interpretation of the measurement from its true value. • Systematic error is a predictable offset of the measured value from its true value, caused either by the instrument or the observer’s technique or environmental interference. Random errors are evident when the measured values vary randomly around the true value - all measurements contain random errors. Systematic errors are evident when the measured value varies randomly but is always offset, either on one side or the other, from the true value. Systematic errors are generally caused by the following - either singly or in combination: • Instrument calibration problems or zero errors - these may be corrected. • Problems with experimental technique - these may be eliminated. • Interference in the measurement caused by outside factors - these may be eliminated. Systematic errors should be eliminated but there will always be a random error associated with any measurement. As far as random errors are concerned: "The experimental error of a measurement is likely to be about half of the smallest division on that instrument". If x is the measured value and ∆x the estimated error then the result should be quoted as follows: x ± ∆x .................(8.1) For instance if an electronic timer is accurate to 0.5 s and the measured time is 35 s then the result should be quoted as follows 35 ± 0.5 s ©H ERIOT-WATT U NIVERSITY 11 12 TOPIC 8. SIGNIFICANT FIGURES, ERRORS AND ERROR PROPAGATION Sometimes two readings are required - for instance, when measuring length using a ruler a measurement is made first at one end and then at the other. • If the smallest division is 1 mm then the estimated error is 0.5 mm. • But, there are two measurements one at either end thus, the estimated error will be 1 mm. If the measurement is 46 mm it should be quoted as follows: 46 ± 1 mm It is important to distinguish between the absolute error and the relative error as follows: ε = |v − ve | .................(8.2) η= |v − ve | .................(8.3) v Where, v = True value of the quantity being measured. ve = Measured or estimate value of the quantity being measured. ε = Absolute error between the true and measured values. η = The relative error is absolute error divided by the true value. The relative error may also be expressed as a percentage - simply multiply the relative error, or fractional error, by one hundred; relative error is good where there are big differences in size between different experimental values. ©H ERIOT-WATT U NIVERSITY TOPIC 8. SIGNIFICANT FIGURES, ERRORS AND ERROR PROPAGATION 8.5 Propagation of Experimental Error The usual textbook used in this course [Cutnell and Johnson, 2012] has little or no information on any of the issues raised in this topic. However, [Preston and Dietz, 1999] covers this material well. 8.5.1 Addition and Subtraction of Measurements Suppose that it is necessary to calculate some value using the formula shown below, in this formula individual measurements are added or subtracted: W = Ax + By + Cz .................(8.4) Where, A = is a constant, likewise B and C. x = is a measured quantity, likewise y and z. W = is the calculated quantity. The key factor is how the errors in the individual measurements will propagate through to the final calculated value - a common way of finding this propagation error is given below: ∆W = q (A ∆x)2 + (B ∆y)2 + (C ∆z)2 .................(8.5) Where, ∆x = is the known error in quantity x, likewise ∆y and ∆z. ∆W = is estimated error in the calculated quantity. Equation (8.4) may be used to find the calculated value of W from measured values of x, y and z. Equation (8.5) is then used to estimate the likely error ∆W associated with the calculated value. ©H ERIOT-WATT U NIVERSITY 13 14 TOPIC 8. SIGNIFICANT FIGURES, ERRORS AND ERROR PROPAGATION Example : 8.5.1 Problem: Take the three measured lengths shown below L1 , L2 , L3 and L4 together with the formula shown below and then determine the following: a) Calculate the length L4 according to the formula - see below. b) Use equation (8.5) to calculate the estimated error ∆L4 associated with L4 . Solution: The individual measured lengths and the formula for finding the calculated length L4 are supplied below: L1 = 5.0 ± 0.1 cm L2 = 3.4 ± 0.2 cm L3 = 9.5 ± 0.1 cm L4 = L1 + 3L2 − 2L3 a) Students are asked to calculate L4 = _________________________ b) Students are asked to calculate ∆L4 = ________________________ c) Students are asked to quote the value of L4 = __________________ .......................................... ©H ERIOT-WATT U NIVERSITY TOPIC 8. SIGNIFICANT FIGURES, ERRORS AND ERROR PROPAGATION 8.5.2 Multiplication and Division of Measurements Suppose the starting point is now a function similar to the one shown below: W = k xa y b z c .................(8.6) Where, k = is a constant, likewise a, b and c. x = is a measured quantity, likewise y and z. W = is the calculated quantity. A different formula will now have to be used to estimate the likely propagation error in the calculated value as follows: ∆W = W s a∆x x 2 + b∆y y 2 + c∆z z 2 .................(8.7) Where, ∆x = is the known error in the measured quantity x, likewise ∆y and ∆z. ∆W = is the estimated error in the calculated quantity. Equation (8.6) may be used to find the calculated value of W from measured values of x, y and z. Equation (8.7) may then be used to estimate the likely error ∆W associated with the calculated value. The above formula is derived using the sum of partial derivatives found from differentiating equation (8.6), partially, with respect to each measured quantity. ©H ERIOT-WATT U NIVERSITY 15 16 TOPIC 8. SIGNIFICANT FIGURES, ERRORS AND ERROR PROPAGATION Example : 8.5.2 Problem: Take the four measured quantities shown below m1 , m2 , r and G, together with the formula shown (gravitational attraction formula) and then determine the following: a) Calculate the gravitational attraction F according to the formula supplied - see below. b) Use equation (8.7) to calculate the estimated error ∆F associated with F . The individual measured quantities and the formula for finding the calculated quantity F are supplied below: m1 = 19.7 ± 0.2 kg m2 = 9.4 ± 0.2 kg r = 0.641 ± 0.009 m G = 6.67 × 10−11 N m2 kg−2 F = G m1 m2 r2 Solution: a) The gravitational attraction between these two masses can be found from the formula supplied in the question F = G m1 m2 6.67 × 10−11 × 19.7 × 9.4 = r2 0.6412 ∴ F = 3 × 10−8 N b) To find the error in the calculated value use equation (8.7) - modified below to for the gravitational attraction expression ∆W = W s a∆x x 2 + b∆y y 2 + c∆z z 2 ©H ERIOT-WATT U NIVERSITY TOPIC 8. SIGNIFICANT FIGURES, ERRORS AND ERROR PROPAGATION ∆F = F s ∆m1 m1 ∆F = F s 0.2 19.7 ∴ 2 2 + + ∆m2 m2 2 + 2 + 0.2 9.4 −2∆r r 2 −2 × 0.009 0.641 2 ∆F = 0.0367 F The above is the relative error, now convert this to an absolute error ∆F = 0.0367 × F = 0.0367 × 3 × 10−8 N ∆F = 1.10 × 10−9 N The calculated force of attraction with its estimated error is given by F = (3 ± 0.1) × 10−8 N .......................................... ©H ERIOT-WATT U NIVERSITY 17 18 TOPIC 8. SIGNIFICANT FIGURES, ERRORS AND ERROR PROPAGATION 8.6 Tutorial Topic 8 1. Determine the number of significant figures assuming that the following quantities have been measured in the laboratory: a) The mass of a sample is 128.63 g. b) The absolute temperature of a gas is 307 K. c) The absolute pressure of a gas is 0.00712 bar. d) The absolute temperature of a gas is 307.00 K. e) The mass of a sample is 100 g. 2. A sample weight is stated as 1,200 g, however, if it weighs exactly 1,200 g resolve the ambiguity as to the number of significant figures as follows: a) Use the decimal point method and state number of significant figures. b) Change the unit prefix and state number of significant figures. c) Use scientific notation and state number of significant figures. 3. A sample weight is stated as 1,200 g, however, if it weighs 1,200 g to one hundredth of a gram then resolve the ambiguity as to the number of significant figures as follows: 1. Use the decimal point method and state number of significant figures. 2. Change the unit prefix and state number of significant figures. 3. Use scientific notation and state number of significant figures. 4. Consider the following measurements 1300 (precise to hundred units), 0.0013, 0.00105, 13040 (precise to ten units),1300.0 and determine the following: a) The number of significant figures in each case. b) Write the numbers in scientific notation. 5. Consider the following measured values and round them to four significant figures: a) 18.843 g. b) 18.845 g apply the rule "five or more round up". c) 1.845 g apply the rule "round to even". d) 1.855 g apply the rule "five or more round up". e) 1.855 g apply the rule "round to even". 6. The following measured values have to be multiplied and divided, see below, apply the rules of significant arithmetic to round the final result (the result that would appear on a calculator is also indicated below): a) 7×7 = 49 b) 7.0×7 = 49 c) 7.0×7.0 = 49. d) 1605×152 = 243,960 e) 10.0/4 = 3.25 ©H ERIOT-WATT U NIVERSITY TOPIC 8. SIGNIFICANT FIGURES, ERRORS AND ERROR PROPAGATION f) 10.0/4.0 = 3.25 g) 10.0/4.00 = 3.25 h) 5.782/3.200 = 1.806875 7. The following measured values have to be added and subtracted, see below, apply the rules of significant arithmetic to round the final result (the result that would appear on a calculator is also indicated below): a) 4 + 3.1 = 7.1 b) 4.0 + 3.1 = 7.1 c) 15.2 + 160 = 175.2 d) 15.2 + 160. = 175.2 e) 15.2 + 160.0 = 175.2 f) 17 - 5.1 = 11.9 g) 17.0 - 5.1 = 11.9 8. An A4 sheet of paper has a measured length (L = 29.7 ±0.1) cm and measured width (W = 21 ±0.1) cm, use the formula below to calculate the perimeter "P" (cm) of the A4 sheet. Calculate how the uncertainty of the individual measurements propagate through an uncertainty in the final calculated result and quote the final result to an appropriate number of significant figures. P = 2L + 2W 9. An A4 sheet of paper has a measured length (L = 29.7 ±0.1) cm and measured width (W = 21 ±0.1) cm, use the formula below to calculate the area "A" (cm2 ) of the A4 sheet. Calculate how the uncertainty of the individual measurements propagate through an uncertainty in the final calculated result and quote the final result to an appropriate number of significant figures. A = LW 8.7 Bibliography 1. Felder, Richard M. and Rousseau, Ronald W. 2008. Elementary Principles of Chemical Processes. 3rd ed. New Jersey: Wiley 2. Preston, Daryl W. and Dietz, Eric R. 1999. The Art of Experimental Physics. New Jersey: Wiley ©H ERIOT-WATT U NIVERSITY 19 20 GLOSSARY Glossary Accuracy When an experiment is repeated a sufficient number of times under identical conditions the results may be plotted as a distribution. The difference between the average of this distribution and the true value is the accuracy. Thus accuracy is different from precision; see "Precision" in this glossary. Precision When an experiment is repeated a sufficient number of times under identical conditions the results may be plotted as a distribution. The spread or scatter of the experimental values is the precision. It is also called the reproducibility or repeatability. Thus precision is different from accuracy; see "Accuracy" in this glossary. Propagation Error Propagation error arises because experimental measured values are entered into a function to find some result and, as a result of the nature of the function, errors propagate through to the final result. However, knowing the functional relationship between the starting values mathematics may be used to predict the propagation error in the final result. Random Error Random error is an unpredictable variation in either the measured instrument reading from its true value, or a random variation of an observer’s interpretation of the measurement from its true value. Random errors are evident when the measured values vary randomly around the true value; all measurements contain random errors. Rounded A calculator often produces an answer to many decimal places. Such a result should be rounded to retain only the number of significant digits in accordance with the rules of significant figures and the rules of significant arithmetic, see both "Significant Figures" and "Significant Arithmetic" in this glossary. It is good practice in a chain of calculations to hold intermediate answers to a higher precision and then round once the final result has been found. Significant Addition The rule of significant addition is that if two experimental quantities are added together, the result of the calculation should be rounded to the position of the least significant digit of the more imprecisely known of the two starting values. This is the same rule that applies to "Significant Subtraction", see this glossary. What is important is the position of the least significant figure not the number. Significant Arithmetic Significant arithmetic refers to the multiplication, division, addition and subtraction of experimentally determined values. There are rules to determine the number of significant figures that should be applied to the result. However, the basic requirement is that the result can be no more precise than the least precisely known of the starting value. ©H ERIOT-WATT U NIVERSITY GLOSSARY Significant Division The rule of significant division is that if two experimental quantities are divided one into the other, the result of the calculation should be rounded to the number of significant figures that applies to the least precisely known of the two starting values. This is the same rule that applies to "Significant Multiplication", see this glossary. What is important is the smaller number of significant figures of the two starting values. Significant Figures Significant figures and significant digits are used interchangeably. The number of significant figures is the number if digits in an experimental value that are significant in terms of the precision of the measurement. Significant Multiplication The rule of significant multiplication is that if two experimental quantities are multiplied together, the result of the calculation should be rounded to the number of significant figures that applies to the least precisely known of the two starting values. This is the same rule that applies to "Significant Division", see this glossary. What is important is the smaller number of significant figures of the two starting values. Significant Subtraction The rule of significant subtraction is that if two experimental quantities are subtracted one from the other, the result of the calculation should be rounded to the position of the least significant digit of the more imprecisely known of the two starting values. This is the same rule that applies to "Significant Addition", see this glossary. What is important is the position of the least significant figure not the number. Systematic Error A systematic error is identified as an offset of the measured value from its true value and is caused either by the instrument or the observer’s technique or environmental interference. Systematic errors are evident when the measured value varies randomly, but is always offset either on one side or the other from the true value. ©H ERIOT-WATT U NIVERSITY 21