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Standar 11 Writing Exponential form to Logarithmic form First we must learn how to read logarithmic form: The expression log b y is read as “log of base b of y” Examples: log 5 125 log of base 5 of 125 log 6 36 log of base 6 of 36 1 log 3 5 log of base 3 of 1/5 Standard 11 Rewriting Logarithmic Equations Exponential Form 2 1 1 2 Logarithmic Form log 2 1 1 2 2 4 16 log 2 16 4 5 x 125 log 5 125 x 6 y 36 log 6 36 y 1 x 3 9 1 log 3 x 9 Standard 11 Simplifying Logarithmic Equations Logarithmic Form Exponential Form Solution log 4 16 4 x 16 x2 log 3 1 3y 1 y0 1 log 2 8 1 2 8 z z 3 log 4 2 4a 2 1 a 4 log 27 3 27 3 b b 1 6 EXAMPLE 1 Evaluate logarithms Evaluate (solve) the logarithm. a. log 4 64 SOLUTION To help you find the value of log b y, ask yourself what power of b gives you y. a. 4 to what power gives 64? 43 = 64, so log 4 64 = 3. b. log 5 0.2 b. 5 to what power gives 0.2? 5–1 = 0.2, so log 5 0.2 = –1. EXAMPLE 2 Evaluate logarithms Evaluate (solve) the logarithm. c. log 1/5 125 SOLUTION To help you find the value of log b y, ask yourself what power of b gives you y. –3 c. 1 to what power gives 125? 1 125, so log 125 –3. = 1/5 5 = 5 d. log 36 6 d. 36 to what power gives 6? 361/2 = 6, so log 36 6 = 1 . 2 EXAMPLE 3 Evaluate common and natural logarithms Expression Keystrokes Display Check a. log 8 8 0.903089987 100.903 b. ln 0.3 .3 –1.203972804 e –1.204 8 0.3 EXAMPLE 4 Evaluate a logarithmic model Tornadoes The wind speed s (in miles per hour) near the center of a tornado can be modeled by s = 93 log d + 65 where d is the distance (in miles) that the tornado travels. In 1925, a tornado traveled 220 miles through three states. Estimate the wind speed near the tornado’s center. EXAMPLE 4 Evaluate a logarithmic model SOLUTION s = 93 log d + 65 = 93 log 220 + 65 93(2.342) + 65 = 282.806 Write function. Substitute 220 for d. Use a calculator. Simplify. ANSWER The wind speed near the tornado’s center was about 283 miles per hour. GUIDED PRACTICE for Examples 2, 3 and 4 Evaluate (solve) the logarithm. Use a calculator if necessary. 5. log 2 32 SOLUTION 7. log 12 5 6. log 27 3 SOLUTION SOLUTION 1.079 8. ln 0.75 1 3 SOLUTION –0.288 GUIDED PRACTICE 9. for Examples 2, 3 and 4 WHAT IF? Use the function in Example 4 to estimate the wind speed near a tornado’s center if its path is 150 miles long. ANSWER The wind speed near the tornado’s center is about 267 miles per hour. Standard 11 Laws of Logarithms Definition of b b p q p q q ( b) b p q p Examples : 16 25 3 4 3 (4 16 ) 3 2 3 8 2 25 3 1 1 3 3 125 5 ( 25 ) 1 1 2 Standard 11 Laws of Logarithms LAWS OF LOGARITHMS 1. log b MN log b M log b N M 2. log b log b M log b N N 3. log b M k k log b M LOGARITHMI C THEOREM a loga x x , for any positive number x and log a a x x , for any number x. Standard 11 Examples using Laws of Logarithms Simplify Answers log 6 6 2 2 log x x y y log 2 16 4 log 10 100 2 1 9 1 9 3 log3 Standard 11 Examples using Laws of Logarithms Express each log in terms of log M and log N Answers log 6 M 2 N 3 2 log 6 M 3 log 6 N M2 log 3 ( 3 ) N 2 log 3 M 3 log 3 N log 4 ( 1 N 3 M ) 1 3 log 4 N log 4 M 2 Standard 11 Examples using Laws of Logarithms Express as a single logarithm Answers log a 3 log a 4 log a 12 4 log a 2 log a 16 1 log a 36 2 log a 6 log b 3 log b 5 log b 2 log b 30 1 1 log a r log a s 2 2 log a (rs ) 1 2 or log a rs Standard 11 Examples using Laws of Logarithms Let c = log3 10 and d = log3 5 Answers log 3 50 cd log 3 500 d 2c 2c d log 3 250 log 3 2 2d c c 2d cd Chapter 2 Preliminary calculus 2.1.1 Differentiation from first principles f ' ( x) df ( x ) f ( x x ) f ( x ) lim x 0 dx x the limit does exist at a point x=a f (a x ) f (a ) f (a x ) f (a ) lim lim ax function at x 0 x 0 xis continuous differentiable at x=a x=a P: differentiable A: undifferentia ble Chapter 2 Preliminary calculus high order derivative: ( n 1 ) ( n 1 ) ' ' f ( x x ) f ( x) n f ( x x ) f ( x ) '' f ( x ) lim f ( x ) lim x 0 x x 0 x useful formulas: d x (sin 1 ) dx a 1 a2 x x d x (cos 1 ) dx a 1 a2 x x d x a (tan 1 ) 2 dx a a x2 Hin t: sin 1 x x dx sin cos d a a a d 1 1 1 2 2 dx a cos a 1 sin 2 a 1 x a 1 a2 x2 Chapter 2 Preliminary calculus 2.1.2 Differentiation of product products f ( x ) u( x )v( x ) df d dv( x ) du( x ) [u( x )v( x )] u( x ) v( x ) dx dx dx dx 2.1.3 The chain rule f ( x ) g( u( x )) df df du dx du dx 2.1.4 Differentiation of quotients u( x ) 1 ' u'v uv ' ' ' 1 f ( x) f u( ) u ( ) v( x ) v v v2 2.1.5 Implicit differentiation Ex : x 3 3 xy y 3 2 dx 3 d dy 3 d ( 3 xy ) 2 dx dx dx dx dy dy y x2 2 2 dy 3 x (3 x 3 y) 3 y 0 dx dx dx y 2 x Chapter 2 Preliminary calculus 2.1.6 Logarithmic differentiation Ex : y a x ln y ln( a x ) x ln a 1 dy dy ln a y ln a a x ln a y dx dx 2.1.7 Leibnitz theorem f uv f ' uv ' u'v f '' uv '' 2u'v ' u''v f ''' uv ''' 3u'v '' 3u''v ' u'''v f ( 4 ) uv ( 4 ) 4u'v ''' 6u''v '' 4u'''v ' u( 4 ) v n f (n) n n! ( r ) ( n r ) u v C rn u( r ) v ( n r ) r 0 r ! ( n r )! r 0 Chapter 2 Preliminary calculus 3 f ( x ) x sin x the Ex: Find the third derivative of 3 function ( 3) u( x ) x 3 , v( x ) sin x f C 3 u ( r ) v ( 3 r ) ,and r 0 r set f ''' uv ''' 3u'v '' 3u''v ' u'''v x 3 cos x 3( 3 x 2 )( sin x ) 3(6 x ) cos x 6 sin x 3( 2 3 x 2 ) sin x x (18 x 2 ) cos x 2.1.8 Special points of a function Q stationary points: df 0 dx (1) local maximum: Q (2) local minimum: B (3) stationary S B Chapter 2 Preliminary calculus d2 f 0 2 dx d2 f 0 2 dx (1) for a local minimum (2) for a local maximum d2 f (3) for a stationary point of dx 2 0 d2 f inflection an changes sign through the dx 2 d3 f 0 dx 3 d point, so 3 2 f ( x ) 2 x 3 x 36 x 2 Ex: df 6 x 2 6 x 36 0 x 2 x 6 0 dx d2 f 12 x 6 ( x 3)( x 2) 0 x 3, x 2 dx 2 (1) (2) 2 d f forx 3, 2 30 0 x 3 is a dx d2 f minimum 30 0 x 2 x 2 , for is a maximum dx 2 Chapter 2 Preliminary calculus general points of inflection: df d2 f (1) dx ( )0, dx 2 0 f ( x) G at G d2 f dx 2 changes sign from the left (concave upwards) to the right (concave note: a stationary point of downwards). inflection with is a special case ( 2) x df 0 dx Chapter 2 Preliminary calculus 2.1.9 Curvature of a function (1) at point P (2) 0 tan df dx CP CQ s ds 0 d lim : the radius of curvature f ( x ) 1 : the curvature at P of 0 : the curve is locally concave 0 : upwards the curve is locally concave downwards Chapter 2 Preliminary calculus the radius of curvature in terms of x and f(x): ds 1 2 1/ 2 d s d x θ sec (1 tan ) dx cos df tan sec2 d f '' ( x )dx dx dx sec2 1 [ f ' ( x )]2 '' d f ( x) f '' ( x ) [1 ( df 2 1 / 2 ) ] dx ' 2 ds ds dx [1 ( f ' )2 ]3 / 2 ' 2 1/ 2 1 ( f ) (1 ( f ) ) d dx d f '' f '' for a stationary point of inflection and the curvature is zero df 2 0 2 dx Chapter 2 Preliminary calculus Ex: Show that the radius of curvature at the point (x,y) x 2 ellipse y2 (a 4 y 2 b 4 x 2 ) 3 / 2 on the 2 1 has and the 2 a 4b4 a b opposite magnitude sign to y. Check the special case b=a, for which the ellipse becomes a circle. So differentiating the 2 y dy dy b 2 x l: 2 x equation 0 a2 b 2 dx dx a2 y d 2 y b2 d x b 2 y xy ' b4 2 ( ) 2 ( ) 2 3 2 2 dx a dx y a y a y y 3 ( or y ) determines the sign [1 b 4 x 2of /( a 4 y 2 )]3 / 2 [a 4 y 2 b 4 x 2 ]3 / 2 4 2 3 b /( a y ) a 4b4 for b=a a 2 ( x 2 y 2 ) 3 / 2 a 2 a 3 a the function is a circle. Chapter 2 Preliminary calculus 2.1.9 Theorem of differentation Rolle’s a xc theorem: (1) f(x) is a x c , and f (a ) f (c ) continuous (2) f(x) is for ' x b , where a b c , f (b) 0 at least one for differentiable Proopoint f(x) f ( x ) f ( a ), x [ a , c ], f ( x ) f:(1) f ' ( x) 0 if is a x (a , c ) ( constant 2)if f ( x ) f (a ) f ( x )maximum f ( x ) f (a ) f ( x )minimum f ' ( x) 0 a c b f ' (b) 0 x Chapter 2 Mean value (1) f(x) is theorem continuous (2) f(x) is for Preliminary calculus an f (a ) a xd c , f ' (b) 0 a x c, differentiable at least onefor value b ( a < b < c) such that Pro the equation of the line g( x ) f (a ) ( x a )[ f (c ) f (a )] /( c a ) of: AC is h( x ) f ( x ) g ( x ) f ( x ) ( x a )[ f (c ) f (a )] /( c a ) f ' (b) f (c ) f (a ) ca f(x) C f(c) f( h(a ) h(c ) 0 by Rolle’s theorem, at a) ' x b ( a , c ) h (b) 0 poi least one nt h' ( x ) f ' ( x ) f (c ) f (a ) for ca f (c ) f (a ) h' (b ) 0 f ' (b ) ca f (c ) A g(x) x a b c Chapter 2 Preliminary calculus Ex: What semi-quantitative results can be deduced by Rolle’s theorem to 2the following function,3 with2 a and 2 ( i ) sin x ( ii ) cos x ( iii) x 3 x 2 ( iv) x 7 x 3 (v )2 x 9 x 24 x k c are chosen so that f(a)=f(c)=0? So (i)sin x 0 x n , n 0,1,2,3........ d sin x l: cos x n x ( n 1 / 2) ( n 1) cos x 0 dx (i cos x 0 x (n 1 / 2) ,n 0,1,2,3... d cos x i) dx sin x (n 1 / 2) x (n 1) (n 3 / 2) sin x 0 2 (ii f ( x ) x 3 x 2 0 ( x 2)( x 1) 0 i) df / dx 23x 3 2 0 x 3 / 2 ' 1 x 23 / 2 2 (v)f ( x ) 2 x 9 x 24 x k f ( x ) 6 x 18 x 24 0 x 2 3 x 4 0 x 1, x 4 f ( x) 0 1 , 2 are two different 1 2 1 1 2 o 1 4 2 roots if f ( x ) 0, 1 , 2 , 3 are three different 1 2 3 1 1 2 r4 3 roots if Chapter 2 Preliminary calculus 2.2 Integration I f ( x )dx b f(x) a integration from a x b a 0 1 2 ..... n b principles: n S f ( xi )( i i 1 ) i 1 xi i i 1 integration x as the inverse of F ( x ) f ( u)du a is differentiation: a x x x x x F ( x x ) f ( u)duarbitrary f ( u)du a a F ( x) x x x x a b f ( u)du f ( u)du F ( x x ) f ( x ) 1 x x f ( u)du x x x dF 1 let x 0, LHS , RHS f ( x )x f ( x ) dx x x Chapter 2 Preliminary calculus definite b b f ( x ) dx integral: a x 0 b a f ( x )dx a x0 f ( x )dx F (b) F (a ) dF ( x ) dx F (b) F (a ) dx integration by a ln cos bx I a tan bxdx c (1) inspection: b sin bx a 1 dx [ d (cos bx )] cos bx cos bx b a ln cos bx c b a sinn1 bx n (2)I a cos bx sin bxdx b(n 1) c Sol:I a ( 3) I Hi a dx tan 1 ( x / a ) c 2 2 a x set x / a tan 1 tan 2 sec2 Chapter 2 Preliminary calculus a cos n1 bx I a sin bx cos bxdx c b( n 1) ( 4) (5) I (6) I n 1 x dx cos 1 ( ) c a a2 x2 1 x dx sin 1 ( ) c a a2 x2 Hin x / a sin dx a cosd t: integration of sinusoidal 2 5 4 2 I sin xdx sin x sin xdx ( 1 cos x ) d (cos x ) (1) function: (1 2 cos 2 x cos 4 x )d (cos x ) cos x 2 cos 3 x / 3 cos 5 x / 5 c 4 2 2 2 I cos xdx (cos x ) dx [( 1 cos 2 x ) / 2 ] dx (2) (1 / 4) (1 2 cos 2 x cos 2 2 x )dx 3 x / 8 sin 2 x / 4 sin 4 x / 32 c Chapter 2 Preliminary calculus logarithmic f ' ( x) integration: dx ln f ( x ) c f ( x) 6 x 2 2 cos x 3 x 2 cos x dx 2 3 dx 2 ln( x 3 sin x ) c Ex:I 3 x sin x x sin x integration using partial 1 1 1 1 fractions: E I x 2 x dx x( x 1)dx ( x x 1 )dx x: ln x ln( x 1) c ln( x /( x 1)) c integration by 1 substitution: Ex:I a b cos x dx Hint: set 2 t tan( x / 2) a2 b x tan [ tan ] c ab 2 a 2 b2 2 1 1 b a 2 2 ln[ for a b a b b 2 a 2 tan( x / 2) a b b a tan( x / 2) 2 2 ] for a b Chapter 2 Preliminary calculus 2 dx 1 3 cos x 2 2 t tan( x / 2 ) dt ( 1 / 2 ) sec ( x / 2 ) dx [( 1 t ) / 2]dx set Ex: I 2 2 ( 1 3[(1 t 2 )(1 t 2 )1 ] 1 t 2 )dt 2 2 1 1 dt dt ( ( 2 t )( 2 t ) 2 t2 2 2t I 1 2t 1 2 tan( x / 2) ln( ) ln[ ] 2 2t 2 2 tan( x / 2) Ex:I set I 1 )dt 2t 1 dx x2 4x 7 1 ( x 2)2 3dx y x 2 dx dy 1 1 y 1 1 1 x 2 dy tan ( ) c tan ( ) c 2 y 3 3 3 3 3 Chapter 2 Preliminary calculus integration by d dv du parts: ( uv ) u v dx dx dx d dv du ( uv ) dx u dx dx dx dx vdx dv du dv du uv u dx vdx u dx uv vdx dx dx dx dx Ex:I ln xdx dv du u ln x 1 set dx dx I x ln x 1 xdx x ln x x c x Ex: I x sin xdx dv set u x 2 dx xe x I 1 vx x 1 2 x2 x e 2 du 1 x2 2x v e dx 2 2 1 1 2 x2 1 x2 2 xe x dx x e e c 2 2 2 2 Chapter 2 Ex: I e set u e ax ax Preliminary calculus cos bxdx dv du 1 cos bx ae ax v sin bx dx dx b 1 a I e ax sin bx e ax sin bxdx b b dv du 1 I 1 e ax sin bxdx set u e ax sin bx ae ax v cos bx dx dx b 1 ax a 1 ax a e cos bx e ax cos bxdx e cos bx I b b b b 1 a 1 ax a I e ax sin bx ( e cos bx I ) b b b b a a2 ax 1 e ( sin bx 2 cos bx ) 2 I c b b b e ax I 2 (b sin bx a cos bx ) c a b2 Chapter 2 Preliminary calculus reduction 1 1 3 n I 2 (1 x 3 )2 dx ? formula Ex: I n 0 (1 x ) dx to 0 1 I n (1 x 3 )(1 x 3 ) n1dx evaluate 0 [(1 x ) 1 0 3 n 1 3 n 1 x (1 x ) 3 ]dx I n1 x 3 (1 x 3 )n1 dx 1 0 dv du 1 x 2 (1 x 3 ) n 1 1 v (1 x 3 ) n dx dx 3n x 1 1 1 3 n 1 3 n I n I n 1 (1 x ) |0 ( 1 x ) I In n 1 3n 3n 0 3n 3n In I n 1 3n 1 1 3 3 I 0 dx 1 I 1 I 0 0 4 4 3 2 6 3 9 I2 I1 3 2 1 7 4 14 set u x Chapter 2 Preliminary calculus infinite b I f ( x )dx lim f ( x )dx limF (b) F (a ) integrals: a b a b Ex:I 0 b x x dx lim dx b 0 ( x 2 a 2 ) 2 ( x 2 a 2 )2 lim[ b 1 2 1 1 1 1 ( x a 2 ) 1 c ]b0 lim [ 2 ] b 2 2 b a2 a2 2a 2 improper x c [a , b ] integrals: b a f ( x) f ( x )dx lim c 0 a f ( x )dx lim b 0 c f ( x )dx I ( 2 x )1 / 4dx 2 Ex: 0 f ( x ) ( 2 x ) 1 / 4 f ( 2 ) 2 4 I lim ( 2 x ) 1 / 4 dx lim ( 2 x ) 3 / 4 |02 0 0 0 3 4 3/ 4 4 lim [ 23 / 4 ] 23 / 4 0 3 3 Chapter 2 Preliminary calculus integration in plane polar 1 2 1 2 dA d A coordinates: 2 d 2 2 1 A 2 y 1 2 a d a 2 2 the area of a 0 circle is: Ex:Find the area2 of an ellipse with 2 1 cos sin anequation 2 2 a 2 2 t tan dt sec d d cos dt se dt t 2a 2b 2 0 2 dt 2 2 2b 2 0 A b a t (b / a ) 2 t 2 2b 2 [1 /( b / a ) tan 1 ( t /( b / a ))]0 ab d ( d ) dA ( ) b 1 2 2 1 2 a 2b 2 A d d 2 0 2 0 b 2 cos 2 a 2 sin 2 2 1 d 2 2 2a b ( ) 0 b 2 a 2 tan 2 cos 2 C 0 B x 1 1 1 x dx tan ( ) c a2 x2 a a Chapter 2 Preliminary calculus finding the length of a curve: s x 2 y 2 x 0 ds ds dy 1 ( )2 S dx dx b a 1 ( dx 2 dy 2 dy 2 ) dx dx in plane polar coordinate: s x y=f(x) y x x r cos dx dr cos r sin d y r sin dy dr sin r cos d dx 2 dy 2 (dr ) 2 ( rd ) 2 ds (dr ) ( rd ) S 2 f( x) 2 r2 r1 1 r2( d 2 ) dr dr Chapter 2 Preliminary calculus surface b area: S 2yds (ds )2 (dx )2 (dy )2 a S 2y 1 ( b a dy 2 ) dx dx E Find the surface area of a x: cone formed by rotating abouth the x-axis the line y=2x h 2 S 2 2 x and 1 2 x=h. dx 4 5 xdx S between x=0 0 0 ol: 2 5x 2 |0h 2 5h2 if the surface is formed by rotating a line about the y-axisdx 2 b S a 2x 1 ( dy ) dy Chapter 2 Preliminary calculus volumes of b dV y 2dx V y 2dx revolution: a Ex: Find the volume of a cone enclosed by the surface formed by rotating about the x-axis the line y=2x between x=0 So and x=h. l: V ( 2 x ) dx 4x 2dx h 0 2 h 0 4 3 h 3 The General Analytical Problem Select sample Extract analyte(s) from matrix Separate analytes Detect, identify and quantify analytes Determine reliability and significance of results Errors in Chemical Analysis Impossible to eliminate errors. How reliable are our data? Data of unknown quality are useless! •Carry out replicate measurements •Analyse accurately known standards •Perform statistical tests on data Mean N xi Defined as follows: x = i=1 N Where xi = individual values of x and N = number of replicate measurements Median The middle result when data are arranged in order of size (for even numbers the mean of middle two). Median can be preferred when there is an “outlier” - one reading very different from rest. Median less affected by outlier than is mean. Illustration of “Mean” and “Median” Results of 6 determinations of the Fe(III) content of a solution, kn contain 20 ppm: Note: The mean value is 19.78 ppm (i.e. 19.8ppm) - the median value Precision Relates to reproducibility of results.. How similar are values obtained in exactly the same way? Useful for measuring this: Deviation from the mean: di xi x Accuracy Measurement of agreement between experimental mean and true value (which may not be known!). Measures of accuracy: Absolute error: E = xi - xt (where xt = true or accepted value) Relative error: x x t 100% E i r x t (latter is more useful in practice) Illustrating the difference between “accuracy” and “precision” Low accuracy, low precision Low accuracy, high precision High accuracy, low precision High accuracy, high precision Some analytical data illustrating “accuracy” and “precision” HN H S NH3+ClH Benzyl isothiourea hydrochloride O OH N Analyst 4: imprecise, inaccurate Analyst 3: precise, inaccurate Analyst 2: imprecise, accurate Analyst 1: precise, accurate Nicotinic acid Types of Error in Experimental Data Three types: (1) Random (indeterminate) Error Data scattered approx. symmetrically about a mean value. Affects precision - dealt with statistically (see later). (2) Systematic (determinate) Error Several possible sources - later. Readings all too high or too low. Affects accuracy. (3) Gross Errors Usually obvious - give “outlier” readings. Detectable by carrying out sufficient replicate measurements. Sources of Systematic Error 1. Instrument Error Need frequent calibration - both for apparatus such as volumetric flasks, burettes etc., but also for electronic devices such as spectrometers. 2. Method Error Due to inadequacies in physical or chemical behaviour of reagents or reactions (e.g. slow or incomplete reactions) Example from earlier overhead - nicotinic acid does not react completely under normal Kjeldahl conditions for nitrogen determination. 3. Personal Error e.g. insensitivity to colour changes; tendency to estimate scale readings to improve precision; preconceived idea of “true” value. Systematic errors can be constant (e.g. error in burette reading less important for larger values of reading) or proportional (e.g. presence of given proportion of interfering impurity in sample; equally significant for all values of measurement) Minimise instrument errors by careful recalibration and good maintenance of equipment. Minimise personal errors by care and self-discipline Method errors - most difficult. “True” value may not be known. Three approaches to minimise: •analysis of certified standards •use 2 or more independent methods •analysis of blanks Statistical Treatment of Random Errors There are always a large number of small, random errors in making any measurement. These can be small changes in temperature or pressure; random responses of electronic detectors (“noise”) etc. Suppose there are 4 small random errors possible. Assume all are equally likely, and that each causes an error of U in the reading. Possible combinations of errors are shown on the next slide: Combination of Random Errors Total Error No. Relative Frequency +U+U+U+U +4U 1 1/16 = 0.0625 -U+U+U+U +U-U+U+U +U+U-U+U +U+U+U-U +2U 4 4/16 = 0.250 -U-U+U+U -U+U-U+U -U+U+U-U +U-U-U+U +U-U+U-U +U+U-U-U 0 6 6/16 = 0.375 +U-U-U-U -U+U-U-U -U-U+U-U -U-U-U+U -2U 4 4/16 = 0.250 -U-U-U-U -4U 1 1/16 = 0.01625 The next overhead shows this in graphical form Frequency Distribution for Measurements Containing Random Errors 4 random uncertainties A very large number of random uncertainties 10 random uncertainties This is a Gaussian or normal error curve. Symmetrical about the mean. Replicate Data on the Calibration of a 10ml Pipette No. Vol, ml. 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 9.988 9.973 9.986 9.980 9.975 9.982 9.986 9.982 9.981 9.990 9.980 9.989 9.978 9.971 9.982 9.983 9.988 Mean volume 9.982 ml Spread 0.025 ml No. 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 9.975 9.980 9.994 9.992 9.984 9.981 9.987 9.978 9.983 9.982 9.991 9.981 9.969 9.985 9.977 9.976 9.983 Vol, ml. 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 No. 9.976 9.990 9.988 9.971 9.986 9.978 9.986 9.982 9.977 9.977 9.986 9.978 9.983 9.980 9.983 9.979 Median volume Standard deviation 9.982 m 0.0056 Calibration data in graphical form A = histogram of experimental results B = Gaussian curve with the same mean value, the same precision and the same area under the curve as for the histogram. SAMPLE = finite number of observations POPULATION = total (infinite) number of observations Properties of Gaussian curve defined in terms of population. Then see where modifications needed for small samples of data Main properties of Gaussian curve: Population mean (m) : defined as earlier (N ). In absence of syst m is the true value (maximum on Gaussian curv x ) defined Remember, sample mean ( for small values of N. (Sample mean population mean when N 20) Population Standard Deviation (s) - defined on next overhead s : measure of precision of a population of data, given by: N s 2 ( x m ) i i 1 N Where m = population mean; N is very large. The equation for a Gaussian curve is defined in terms of m and y e ( x m ) 2 / 2s 2 s 2 Two Gaussian curves with two different standard deviations, sA and sB (=2sA) General Gaussian curve plotted units of z, where z = (x - m)/s i.e. deviation from the mean of datum in units of standard deviation. Plot can be used for data with given value of mean, Area under a Gaussian Curve From equation above, and illustrated by the previous curves, 68.3% of the data lie within s of the mean (m), i.e. 68.3% of the area under the curve lies between s of m. Similarly, 95.5% of the area lies between s, and 99.7% between s. There are 68.3 chances in 100 that for a single datum the random error in the measurement will not exceed s. The chances are 95.5 in 100 that the error will not exceed s. Sample Standard Deviation, s The equation for s must be modified for small samples of data, i. N s 2 ( x x ) i i 1 N 1 Two differences cf. to equation for s: 1. Use sample mean instead of population mean. 2. Use degrees of freedom, N - 1, instead of N. Reason is that in working out the mean, the sum of the differences from the mean must be zero. If N - 1 valu known, the last value is defined. Thus only N - 1 degr of freedom. For large values of N, used in calculating Alternative Expression for s (suitable for calculators) N s N ( xi ) 2 i 1 N ( xi 2 ) i 1 N 1 Note: NEVER round off figures before the end of the calcul Reproducibility of a method for determ the % of selenium in foods. 9 measurem were made on a single batch of brown Sample Selenium content (mg/g) (xI) xi2 1 0.07 0.0049 2 0.07 0.0049 3 0.08 0.0064 4 0.07 0.0049 5 0.07 0.0049 6 0.08 0.0064 7 0.08 0.0064 8 0.09 0.0081 9 0.08 0.0064 2 Mean = Sxi/N= 0.077mg/g (Sxi) /N = 0.4761/9 = 0.0529 Standard Deviation of a Sample 0.0533 0.0529 Sx = 0.69 s i Standard deviation: 9 1 Sxi = 0.0533 0.00707106 0.007 2 Coefficient of variance = 9.2% Concentration = 0.077 ± 0.007 mg/ Standard Error of a Mean The standard deviation relates to the probable error in a single measu If we take a series of N measurements, the probable error of the mean the probable error of any one measurement. The standard error of the mean, is defined as follows: sm s N Pooled Data To achieve a value of s which is a good approximation to s, i.e. N it is sometimes necessary to pool data from a number of sets of mea (all taken in the same way). Suppose that there are t small sets of data, comprising N1, N2,….Nt The equation for the resultant sample standard deviation is: s pooled N1 N2 N3 i 1 i 1 i 1 2 2 2 ( x x ) ( x x ) ( x x ) i 1 i 2 i 3 .... N 1 N 2 N 3 ......t (Note: one degree of freedom is lost for each set of data) Pooled Standard Deviation Analysis of 6 bottles of wine for residual sugar. Bottle Sugar % (w/v) No. of obs. Deviations from mean 1 0.94 3 0.05, 0.10, 0.08 2 1.08 4 0.06, 0.05, 0.09, 0.06 3 1.20 5 0.05, 0.12, 0.07, 0.00, 0.08 4 0.67 4 0.05, 0.10, 0.06, 0.09 5 0.83 3 0.07, 0.09, 0.10 6 0.76 4 0.06, 0.12, 0.04, 0.03 (0.05) 2 (010 . ) 2 (0.08) 2 0.0189 s1 0.0972 0.097 2 2 and similarly for all sn . Set n ( x x ) 1 0.0189 2 0.0178 3 0.0282 4 0.0242 5 0.0230 6 0.0205 Total 0.1326 2 i sn 0.097 0.077 0.084 0.090 0.107 0.083 spooled 01326 . 0.088% 23 6 Two alternative methods for measuring the precision of a set of results VARIANCE: This is the square of the standard deviation: N s2 2 2 ( x x ) i i 1 N 1 COEFFICIENT OF VARIANCE (CV) (or RELATIVE STANDARD DEVIATION): Divide the standard deviation by the mean value and express as a per s CV ( ) 100% x x ) tovalue the true How can we relate the observed mean ( mean (m)? The latter can never be known exactly. The range of uncertainty depends how closely s corresponds to s x thataround m must lie, We can calculate the limits (above and below) with a given degree of probability. Define some terms: CONFIDENCE LIMITS interval around the mean that probably contains m. CONFIDENCE INTERVAL the magnitude of the confidence limits CONFIDENCE LEVEL fixes the level of probability that the mean is within the confid Examples later. First assume that the known s is a good approximation to s. Percentages of area under Gaussian curves between certain limits of z 50% of area lies between 0.67s 80% “ 1.29s 90% “ 1.64s 95% “ 1.96s 99% 2.58s What this means, for example,“is that 80 times out of 100 the true me between 1.29s of any measurement we make. Thus, at a confidence level of 80%, the confidence limits are 1.29s For a single measurement: CL for m = x zs (values of z on next o x ), the equivalent For the sample mean of N measurements ( expression is: CL for m x zs N Values of z for determining Confidence Limits Confidence level, % z 50 0.67 68 1.0 80 1.29 90 1.64 95 1.96 96 2.00 99 2.58 3.00 Note: 99.7 these figures assume that an excellent approximation 99.9 to the real standard deviation is3.29 known. Confidence Limits when s is known Atomic absorption analysis for copper concentration in aircraft engine oil gave a value of 8.53 mg Cu/ml. Pooled results of many analyses showed s s = 0.32 mg Cu/ml. Calculate 90% and 99% confidence limits if the above result (a)(a) 1, (b) 4, (c) 16 measurements. (b) were based on (164 . )(0.32) 8.53 0.52 mg / ml 1 i.e. 8.5 0.5mg / ml (164 . )(0.32) 8.53 0.26mg / ml 4 i.e. 8.5 0.3mg / ml 90% CL 8.53 (2.58)(0.32) 99% CL 8.53 8.53 0.83mg / ml 1 i.e. 8.5 0.8mg / ml 90% CL 8.53 (2.58)(0.32) 8.53 0.41mg / ml 4 i.e. 8.5 0.4 mg / ml 99% CL 8.53 90% CL 8.53 (c) (164 . )(0.32) 16 8.53 013 . mg / ml i.e. 8.5 01 . mg / ml (2.58)(0.32) 8.53 0.21mg / ml 16 i.e. 8.5 0.2 mg / ml 99% CL 8.53 If we have no information on s, and only have a value for s the confidence interval is larger, i.e. there is a greater uncertainty. Instead of z, it is necessary to use the parameter t, defined as follo t = (x - m)/s i.e. just like z, but using s instead of s. By analogy we have: CL for m x ts N (where x = sample mean for N measurements) The calculated values of t are given on the next overhead Values of t for various levels of probability Degrees of freedom 80% 90% 95% 99% (N-1) 1 3.08 6.31 12.7 63.7 2 1.89 2.92 4.30 9.92 3 1.64 2.35 3.18 5.84 4 1.53 2.13 2.78 4.60 5 1.48 2.02 2.57 4.03 6 1.44 1.94 2.45 3.71 7 1.42 1.90 2.36 3.50 8 1.40 1.86 2.31 3.36 9 1.38 1.83 2.26 3.25 Note: (1) 19 As (N-1) 1.33 , so t1.73 z 2.10 2.88 1.30 1.67< ,2.00 2.66greater uncerta (2) 59 For all values of (N-1) t > z, I.e. 1.29 1.64 1.96 2.58 Confidence Limits where s is not known Analysis of an insecticide gave the following values for % of the chem 7.47, 6.98, 7.27. Calculate the CL for the mean value at the 90% confi xi% 7.47 6.98 7.27 Sxi = 21.72 xi2 55.8009 48.7204 52.8529 Sxi2 = 157.3742 ( xi ) 2 (2172 . )2 x N 157.3742 3 s N 1 2 0.246 0.25% 2 i x x 2172 . 7.24 N 3 i (2.92)(0.25) 7.24 N 3 7.24 0.42% 90% CL x ts 90% CL x zs If repeated analyses showed that s s = 0.28%: 7.24 N 7.24 0.27% (164 . )(0.28) 3