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Analytical Chemistry
CHEM 2310Prof. Monzir S. Abdel-Latif
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Areas of Chemical Analysis and Questions They Answer
Quantitation:How much of substance X is in the sample?
Detection:Does the sample contain substance X?
Identification:What is the identity of the substance in the sample?
Separation:How can the species of interest be separated from
the sample matrix for better quantitation and identification?
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Chapter 1: Introduction
This course is a quantitative course where you have seen some qualitative analysis in general Chemistry Lab and will also encounter the topic in other classes.
In addition, Analytical Chemistry can be classified as Instrumental or Classical (wet Chemistry).
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In this course, we will cover the classical methods of Chemical Analysis. However, it should not be implied that the term classical means something old, which is studied like history, but rather the term means understanding the basics of Chemical Analysis that were eventually laid down long time ago. Some of the classical methods still serve as the standard methods of analysis, till now.
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The analytical process involves a sequence of logical events including:
1. Defining the problem
This means that the analyst should know what information is required, the type and amount of sample, the sensitivity and accuracy of the results, the analytical method which can be used to achieve these results, etc...
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2. Obtaining a representative sample
It is very important to collect a representative sample for analysis. This could be appreciated if, for example, an ore is to be analyzed to decide whether the ore concentration in a mine or mountain can be economically produced. One should take several samples from different locations and depths, mix them well and then take a sample for analysis.
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3. Preparing the sample for analysis
Most analytical methods require a solution of the sample rather than the solid. Therefore, samples should be dissolved quantitatively and may be diluted to the concentration range of the method.
4. Chemical separations
The sample may contain solutes which interfere with the determination of the analyte. If this is the case, analytes should be separated from the sample matrix by an accepted procedure.
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5. Performing the measurement
This implies conducting the analytical procedure and collecting the required data.
6. Calculations
The final event in the analytical process is to perform the calculations and present the results in an acceptable manner.
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RANGE
The size of the sample can be used to describe the class of a method where:
A method can be described as meso if the sample size is above 100 mg or 100 microliters.
A semimicro method describes a sample size from 10 to 100 mg or 50 to 100 microliters.
When the sample size is in the 1 to 10 mg or less than 50 microliters, the method is said to be a micro method
A sample size less than 1 mg denotes an ultramicro method.
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An analyte in a sample can be classified as a major constituent if it constitutes more than 1%of the sample or a minor in the range from 0.1 to 1.0 %. It is classified as trace if it constitutes less than 0.1%.
Analyze versus Determine
These terms are sometimes misused. Always use the term ‘analyze’ with the sample while use the term ‘determine’ with specific analyte. Therefore, a sample is “analyzed”, while an analyte is “determined”.
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Chapter 2
Data Handling
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Accuracy and PrecisionAccuracy can be defined as the degree of
agreement between a measured value and the true or accepted value. As the two values become closer, the measured value is said to be more accurate.
Precision is defined as the degree of agreement between replicate measurements of the same quantity.
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Assuming the correct or accepted value is represented by the center of the circles below;
If all values occurred close together within, for example, the red or blue circles, results are precise but not accurate.
If all values occurred within the yellow circle, results are both accurate and precise.
If results were scattered randomly in one direction of the center, results are neither precise nor accurate.
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Example
The weight of a person was measured five times using a scale. The reported weights were 84, 83, 84, 85, and 84 kg. If the weight of the person is 76 kg weighed on a standard scale , then we know that the results obtained using the first scale is definitely not accurate.
However, the values of the weights for the five replicate measurements are very close and reproducible. Therefore measurements are precise. Therefore, the measurement is precise but definitely not accurate.
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Significant Figures
At the most basic level, Analytical Chemistry relies upon experimentation; experimentation in turn requires numerical measurements. And measurements are always taken from instruments made by other workers.
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Some information about measurements
1) Examples we will study include the metric ruler, the graduated cylinder, and the scale.
2) Because of the involvement of human beings, NO measurement is exact; some error is always involved. This means that every answer in science has some uncertainty associated with it. We might be fairly confident we have the correct answer, but we can never be 100% certain we have the EXACT correct answer.
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3) Measurements always have two parts - a numerical part (sometimes called a factor) and a dimension (a unit).
Significant figures are concerned with measurements not exact countings.
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Identifying significant digits
The following rules are helpful in identifying significant digits
1. Digits other than zero are significant.e.g., 42.1m has 3 sig figs.2. Zeroes are sometimes significant, and sometimes they are not.3. Zeroes at the beginning of a number (used just to position the decimal point) are not significant.e.g., 0.025m has 2 sig figs. In scientific notation, this can be written as 2.5*10-2m
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4. Zeroes between nonzero digits are significant.e.g., 40.1m has 3 sig figs
5. Zeroes at the end of a number that contains a decimal point are significant.e.g., 41.0m has 3 sig figs, while 441.20m has 5. In scientific notation, these can be written respectively as4.10*101 and 4.4120*102
6. Zeroes at the end of a number that does not contain a decimal point may or may not be significant. If we wish to indicate the number of significant figures in such numbers, it is common to use the scientific notation.
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e.g., The quantity 52800 km could be having 3, 4, or 5 sig figs—the information is insufficient for decision. If both of the zeroes are used just to position the decimal point (i.e., the number was measured with estimation ±100), the number is 5.28×104 km (3 sig figs) in scientific notation. If only one of the zeroes is used to position the decimal point (i.e., the number was measured ±10), the number is 5.280×104 km (4 sig figs). If the number is 52800±1 km , it implies 5.2800×104 km (5 sig figs).
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Exact NumbersExact numbers can be considered as having an unlimited
number of significant figures. This applies to defined quantities too. e.g.,
1. The rules of significant figures do not apply to (a) the count of 47 people in a hall, or (b) the equivalence: 1 inch = 2.54 centimeters.
2. In addition, the power of 10 used in scientific notationis an exact number, i.e. the number 103 is exact, but the number 1000 has 1 sig fig.It actually makes a lot of sense to write numbers derived from measurements in scientific notation, since the notation clearly indicates the number of significant digits in the number.
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Look at the following example
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The length is greater than 2.6 cm but less than 2.7 cm, and so the estimated value is 2.62 cm. The measurement can be written as 2.62±0.01 cm or 26.2±0.1 mm. The number 26.2mm contains three significant figures.
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How do you read it?
How do you read it?
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27272828
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29293030
Math With Significant FiguresAddition and SubtractionIn mathematical operations involving significant figures, the
answer is reported in such a way that it reflects the reliability of the least precise operation. Let's state that another way: a chain is no stronger than its weakest link. An answer is no more precise that the least precise number used to get the answer. Let's do it one more time: imagine a team race where you and your team must finish together. Who dictates the speed of the team? Of course, the slowest member of the team. Your answer cannot be MORE precise than the least precise measurement.
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For addition and subtraction, look at the decimal portion (i.e., to the right of the decimal point) of the numbers ONLY. Here is what to do:
1) Count the number of significant figures in the decimal portion of each number in the problem. (The digits to the left of the decimal place are not used to determine the number of decimal places in the final answer.)
2) Add or subtract in the normal fashion.3) Round the answer to the LEAST number of
places in the decimal portion of any number in the problem.
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Find the formula weight for Ag2MoO4 given the following atomic weights: Ag = 107.870, Mo = 95.94, O = 15.9994.
The number with the least number of digits after the decimal point is 95.94 which has two digits for expression of precision. Also, it is the number with the highest uncertainty. The atomic weights for Ag and O have 3 and 4 digits after the decimal point. Therefore if we calculate the formula weight we will get 375.6776. However, the answer should be reported as 375.68 ( i.e. to the same uncertainty of the least precise value.
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Multiplication and Division
The number having the least number of significant figures is called the KEY NUMBER. The LEAST number of significant figures in any number of the problem determines the number of significant figures in the answer.
In case where two or more numbers have the same number of significant figures, the key number is determined as the number of the lowest value regardless of decimal point.
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Note that: When the uncertainty of a number is not known, the uncertainty is assumed to be +1 of the
last digit to the right
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2.5 x 3.42 = ?The answer to this problem would be 8.6
(which was rounded from the calculator reading of 8.55). Why?
2.5 is the key number which has two significant figures while 3.42 has three. Two significant figures is less precise than three, so the answer has two significant figures.
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Uncertainty in key number = ( +1/25) = +0.04Now find the relative value of the answer to the
key number:(8.55/25) = 0.342Therefore, the uncertainty in the answer should be
known to one decimal point. The uncertainty in the answer is therefore +0.342. The answer can be written as 8.6 + 0.3. The uncertainty in answer can now be calculated:
S = (+0.342/8.6) = +0.04The uncertainty in answer is the same as that of
the key number, which should be the case.
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2.33 x 6.085 x 2.1= ? How many significant figures should be in the answer?
Answer - two.Which is the key number?Answer - the 2.1Why?It has the least number of significant figures in
the problem. It is, therefore, the least precise measurement.
Answer = 30.
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Uncertainty in key number = ( +1/21) = +0.048Now find the relative value of the answer to the key
number:(29.77/21) = 1.4Therefore, the uncertainty in the answer should be
known to integers. The uncertainty in the answer is therefore +1.4.
The answer can be written as 30. + 1. The uncertainty in answer can now be calculated:
S = (+1/30.) = +0.033The uncertainty in answer is close to that of the key
number, which should be the case.
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How many significant figures will the answer to 3.10 x 4.520 = (Calculator gives 14.012) have?
3.10 is the key number which has three significant figures.
Three is supposed to be the correct answer. 14.0 has three significant figures. Note that the zero in the tenth's place is considered significant. All trailing zeros in the decimal portion are considered significant.
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Another common error is for the student to think that 14 and 14.0 are the same thing. THEY ARE NOT. 14.0 is ten times more precise than 14. The two numbers have the same value, but they convey different meanings about how trustworthy they are.
However, the correct answer should be reported as 14.01. Note that an additional significant figure is included in the answer. This is because the answer is less than the key number.
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Uncertainty in key number = ( +1/310) = +3.2*10-3
Now find the relative value of the answer to the key number:
(14.012/310) = 0.0452Therefore, the uncertainty in the answer should be
known to one hundredth. The uncertainty in the answer is therefore +0.0452. The answer can be written as 14.01 + 0.05. The uncertainty in answer can now be calculated:
S = (+0.05/14.01) = +3.5*10-3
The uncertainty in answer is very close to that of the key number, which should be the case.
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Why do we add an additional significant figure in the answer when the answer is less than the key number?
The answer to this question simply is to reduce the uncertainty associated with the answer. When the answer is less than the key number, the uncertainty associated with the answer is unjustifiably large.
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(4.52 x 10-4) ÷ (3.980 x 10-6). How many significant figures in the answer?Answer - three.Which is the key number?Answer - the 4.52 x 10-4.Why?It has the least number of significant figures in the
problem. It is, therefore, the least precise measurement. Notice it is the 4.52 portion that plays the role of determining significant figures; the exponential portion plays no role. However, since the answer is less than the key number, an additional significant figure is used and written as a subscript.
Answer = 113.6
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Uncertainty in key number = ( +1/452) = +2.2*10-3
Now find the relative value of the answer to the key number:
(113.568/452) = 0.251Therefore, the uncertainty in the answer should be
known to one decimal point. The uncertainty in the answer is therefore +0.3. The answer can be written as 113.6 + 0.3. The uncertainty in answer can now be calculated:
S = (+0.3/113.6) = +2.6*10-3
The uncertainty in answer is very close to that of the key number, which should be the case.
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4.20x3.52 = Which is the key number?
Both have 3 significant figures. In this case, the number with smaller value, regardless of the decimal point, is the key number (3.52).The correct answer should be reported as 14.78
Once again, we have added an additional significant figure as a subscript since the answer is less than the key number
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Uncertainty in key number = ( +1/352) = +2.84*10-3
Now find the relative value of the answer to the key number:
(14.784/352) = 0.042Therefore, the uncertainty in the answer should be
known to one hundredth. The uncertainty in the answer is therefore +0.042. The answer can be written as 14.78 + 0.04. The uncertainty in answer can now be calculated:
S = (+0.042/14.78) = +2.84*10-3
The uncertainty in answer is the same as that of the key number, which should be the case.
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%5470578.881689.1
05300.0*5481.0*63.35 =
Look at the following multiplication problem:
The key number is 35.63 which has 4 significant figures. Therefore, the answer should be 88.55%
The answer is larger than the key number, therefore no additional figure is added.
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Why not keep additional significant figures as we did in the previous example?
Uncertainty in key number = ( +1/3563) = +2.8*10-4
Now find the relative value of the answer to the key number:(88.547/3563) = 0.025Therefore, the uncertainty in the answer should be known to
one hundredth. The uncertainty in the answer is therefore +0.02, the answer has the same number of significant figures as the key number. The answer can be written as 88.55 + 0.02. The uncertainty in answer can now be calculated:
S = (+0.025/88.55) = +2.8*10-4
The uncertainty in answer is the same as that of the key number, which should be the case.
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Find the answer to the following calculation:
It is clear that the key number is 891 and the answer should have 3 significant figures. However, in cases where the answer is less than the key number as is our case, the answer retains an extra digit as a subscript. The answer is 546.6 as we have seen before.
57.5460.5247*132.6
891*68.42=
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Uncertainty in key number = ( +1/891) = +1.1*10-3
Now find the relative value of the answer to the key number:
(546.57/891) = 0.6Therefore, the uncertainty in the answer should be
known to one decimal point. The uncertainty in the answer is therefore +0.6. The answer can be written as 546.6 + 0.6. The uncertainty in answer can now be calculated:
S = (+0.6/546.6) = +1.1*10-3
The uncertainty in answer is the same as that of the key number, which should be the case.
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( )
68704.3624.32
100.0 x 97.7 +
Find the answer to the following calculation:
When multiple operations are involved, do it in a step by step procedure. The parenthesis above has 97.7 as the key number.
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For the initial calculation : ( 97.7 x 100.0 )
32.42 Uncertainty in key number = ( +1/977) = +1.0*10-3
Now find the relative value of the answer to the key number:(301.36/977) = 0.308Therefore, the uncertainty in the answer should be known to one
decimal point. The uncertainty in the answer is therefore +0.31. The answer can be written as 301.36 + 0.3. The uncertainty in answer can now be calculated:
S = (+0.31/301.36) = +1.0*10-3
The uncertainty in answer is the same as that of the key number, which should be the case.
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168704.36.301 491.036 =+
The second process has 687 as the key number.
Finally as the answer is less than the key number an additional digit was added as a subscript.
It is noteworthy to observe that extra digits were retained temporarily in all steps and rounding off to the correct number of significant figures was done in the final answer. This is simply to reduce the error resulting from multiple rounding-off.
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The second part of the problem (337.4/687) = 0.4911Uncertainty in key number = ( +1/687) = +1.46*10-3
Now find the relative uncertainty of the value of the answer to the key number:
(0.4911/687) = 0.0007
Therefore, the uncertainty in the answer should be known to one in 10,000th. The uncertainty in the answer is therefore +0.0007. The answer can be written as 0.4911 + 0.0007. The uncertainty in answer can now be calculated:
S = (+0.0007/0.4911) = +1.46*10-3
The uncertainty in answer is the same as that of the key number, which should be the case.
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LogarithmsThe digits to the left of the decimal point in a
logarithmic value are not counted since they merely reflect the log 10x and they are not considered significant. The zeros to the right of the decimal point are all significant.
Examples
Log 2.0x103 = 3.30 (two significant figures in both terms). The blue digit in the answer is not significant as it comes from the 103 portion which has nothing to do with expressing the number of significant figures
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Log 1.18 = 0.072 (three significant figures in both terms, the blue zero in the answer is significant)
Antilog of 0.083 = 1.21 (three significant figures in both terms)
Log 12.1 = 1.083 (three significant figures in both terms, the blue digit in the answer is not significant)
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ErrorsErrors can be classified according to nature of the error into two types, determinate and indeterminate errors. A determinate error (sometimes called a systematic error) is an error which has a direction either positive or negative. An example of such an error is performing a weight measurement on an uncalibrated balance (for instance it always add a fixed amount to the weight).
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Another important example is measuring volume using a burette that has extra or less volume than indicated on its surface. When using the abovementioned balance or burette, our results will always be higher or lower depending on whether these tools have positive or negative bias.This means that determinate error is unidirectional. Sometimes a determinate error can be significant if the analyst is careless or inexperienced neglecting enough drying times in a gravimetric procedure, using a too high indicator concentration in a volumetric procedure, etc.
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An indeterminate error is a random errorand has no direction where sometimes higher or lower estimates than should be observed are obtained. In many cases, indeterminate errors are encountered by lack of analyst experience and attention. Indeterminate errors are always present but can be minimized to very low levels by good analysts and procedures.
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Absolute ErrorThe difference between the measured value and the true value is referred to as the absolute error. Assume that analysis of an iron ore by some method gave 11.1% while the true value was 12.1%, the absolute error is:
AE = 11.1% - 12.1% = -1.0%The negative sign indicates a negative error
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Relative ErrorThe relative error is the percentage of the absolute error to the true value.
For the argument above we can calculate the relative error as:Relative error = (absolute error/true value)x100%
RE = (-1.0/12.1)x100% = -8.3%6262
Relative AccuracyThe percentage of the quotient of observed result to the true value is called relative accuracy.
Relative accuracy = (observed value/true value)x100%For the abovementioned example:
Relative accuracy = (11.1/12.1)x100% = 91.7%
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Standard Deviation
The standard deviation for a set of data provides information on the spread of the values.
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What we mean by spread is clear from the graphs blue and red.
Values used to draw the red graph are not as close to each others as values in the blue graph. Therefore, values in the red graph have higher spread from the mean and have higher standard deviation.
On the contrary, values in the blue graph are closer together and have a lower spread from their mean, and thus have a lower standard deviation.
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For an infinite or large number of data points (more than 20) or when the true mean is known, the population standard deviation is defined as:
σ = ( Σ (xi - µ)2 / N )1/2
Where σ is the population standard deviation, µis the population mean, xi is the individual data point, and N is the number of data points
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However, in real chemical laboratories where a sample is analyzed, an experiment is repeated three to five times and thus a very limited number of data points (3-5) is collected. The sample standard deviation (s)is defined as:
s = ( Σ (xi - x)2 / (N-1) )1/2
x is the average (mean) of the data points. The sample standard deviation is also called estimated standard deviation since it is only an estimate of σ .
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Standard deviation of the mean (s(mean))
S(mean) = s / N1/2
Another important expression of deviation is the relative standard deviation (RSD) or sometimes called coefficient of variation (CV)where
RSD = ( s / x ) X100%
RSD (mean) = ( s(mean) / x ) X100%
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Example
The following replicate weights were obtained for a sample: 29.8, 30.2, 28.6, and 29.7 mg. Calculate s, s(mean), RSD, and RSD(mean)
Solution
First, we find x
X = (29.8+30.2+28.6+29.7)/4 = 29.6
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xi xi – x (xi – x)2
29.8 0.2 0.0430.2 0.6 0.3628.6 1.0 1.0029.7 0.1 0.01
Σ = 1.41s = ( Σ (xi - x)2 / (N-1) )1/2
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s = (1.41/3)1/2
s = 0.69 mg
S(mean) = s / N1/2
S(mean) = 0.69/(4)1/2
S(mean) = 0.34 mg
RSD or CV = (0.69/29.6)x100% = 2.3% RSD(mean) = (0.345/29.6)x100% = 1.1%
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It should be recognized that as the number of experiments is increased, the precision of the measurement is increased as well. This is because s α1/N1/2 which means that decrease in s as N increases is not linear which implies that, after some number of experiments, further increase in the number of experiments will result in very little decrease in s, which does not justify extra time and effort.
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Pooled Standard Deviation (sp)When replicate samples are done using two different
methods, the standard deviation can be pooled in order to determine the reliability of the analytical method (proposed or new).
Sp = {Σ (xi1 – x1)2 + Σ(xi2 – x2)2)/(N1 + N2 –2)}1/2
Sp is the pooled standard deviation, x1, x2 are average values for data sets 1 and 2, respectively, N1 and N2are the number of data points of data set 1 and 2, respectively.
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ExampleMercury in a sample was determined using a standard
method and a new suggested method. five replicate experiments were conducted using the two procedures giving the following results in ppm
New Method Standard method 10.5 10.19.9 10.310.4 10.211.2 10.310.5 10.4
Find the pooled standard deviation
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First find x1 and x2X1 = (10.5+9.9+10.4+11.2+10.5)/5 = 10.5X2 = (10.1+10.3+10.2+10.3+10.4)/5 = 10.3
Σ(Xi1-X1)2 = { (10.5-10.5)2 + (9.9-10.5)2 +(10.4-10.5)2 + (11.2-10.5)2 + (10.5-10.5)2}
Σ(Xi1-X1)2 = 0.86
Σ(Xi2-X2)2 = { (10.1-10.3)2 + (10.3-10.3)2 + (10.2-10.3)2 + (10.3-10.3)2 +(10.4-10.3)2}
Σ(Xi2-X2)2 = 0.06
Sp = {(Σ(Xi1-X1)2 + Σ(Xi2-X2)2)/ (N1 + N2 –2)}1/2
SP = {(0.86+0.06)/(5+5-2)}1/2 = 0.34
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Standard Deviation of the Difference
When multiple samples are analyzed by a proposed and standard methods, Sd is the calculated standard deviation for the difference.
Sd = (Σ ( Di – D )2 / (N-1))1/2
Sd is the standard deviation of the difference, Di is the difference between a result obtained by the standard method from that obtained by the proposed method for the same sample. D is the average of all differences.
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ExampleMercury in multiple samples was determined using a
standard method and a new suggested method. Six different samples were analyzed using the two procedures giving the following results in ppm
Sample New Method Standard method 1 10.2 10.52 12.7 11.93 8.6 8.74 17.5 16.95 11.2 10.96 11.5 11.1
Find the standard deviation of the difference.7878
It is wise to construct a table as below
New Method Standard method Di10.3 10.5 -0.212.7 11.9 +0.88.6 8.7 -0.117.5 16.9 +0.611.2 10.9 +0.311.5 11.1 +0.4_____________________________ ________
Σ Di = 1.8D = 1.8/6 = 0.30
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Σ(Di – D)2 = { (-0.2-0.3)2 + (+0.8-0.3)2 + (-0.1-0.3)2 + (+0.6-0.3)2 + (+0.3-0.3)2 + (+0.4-0.3)2 } = {0.25+0.25+0.16+0.09+0+0.01}
Σ(Di – D)2 = 0.76
Sd = ( Σ ( Di – D )2 / (N-1) )1/2
Sd = (0.76/5)1/2 = 0.39
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Propagation of Errors
As seen earlier, each measurement has some uncertainty associated with it.
During a process of calculations the uncertainty in the answer can be calculated from uncertainties in individual measurements.
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Calculation of error in the answer depends on whether the mathematical operation is a summation /subtraction or multiplication/division.
It should be clear that in a process of calculating a final answer, as the number of mathematical operations increase, error will propagate.
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Addition and subtractionThe absolute uncertainty in the answer Sa can
be evaluated from absolute uncertainties in individual numbers (b, c, d, .. ) as below:
Sa2 = Sb
2 + Sc2 + Sd
2 + …
Where, Sa, Sb, Sc, and Sd are absolute uncertainties in answer, b, c, and d (estimated standard deviation in answer, b, c, and d).
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ExampleThree samples were analyzed for iron
content. The average percentage of iron in the first sample was 65.06, the second sample contained 56.13, and the third contained 62.68%. The estimated standard deviation of each of the three samples were + 0.07, + 0.01, and + 0.02%, respectively. What is the average iron content of the samples depending on these results?
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% Iron = {(65.06 + 0.07%) + (56.13 + 0.01%) + (62.68 +0.02%)}/3 = (183.87/3) + Sa %
% iron = 61.29 + Sa %
Sa2 = (+ 0.07)2 + ( +0.01)2 + (+0.02)2 = + 5.4x10-3
Sa = 7.3x10-2
% Iron = 61.29 + 0.073%It is clear that we should retain two digits in the
uncertainty as the answer is known to the nearest one hundredth (to get accurate number of significant figures).
Therefore, the answer should be reported as:% Iron = 61.29 + 0.07%
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Multiplication and DivisionThe absolute uncertainty in calculations involving
multiplication and division can not be estimated directly. The first step in such operations is to find the relative uncertainty in the answer from relative uncertainties in individual measurements as follows
(Sa2)rel = (Sb
2)rel + (Sc2)rel+ (Sd
2)rel + …
Where, (Sb)rel = Estimated standard deviation in b (i.e. uncertainty in b)/ absolute value of b
Sa = Answer x (Sa)rel
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Find the result of the following calculation, using the correct number of significant figures:
(2.23 + 0.01)*(3.508 + 0.007) = 7.82 + saSince 2.23 is the key number(Sa)rel = {(+0.01/2.23)2 + (+0.007/3.507)2 }1/2
(sa)rel = 4.91*10-3
Sa = 7.823*4.91*10-3 = 0.0384Answer = 7.82 + 0.04
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Chloride in a 25 mL sample was determined by titration with a 0.1167 +0.0002 M AgNO3 solution. If the titration required an average AgNO3 volume of 36.78 mL and the standard deviation in the volume was 0.04 mL, find the uncertainty in the number of mmol of chloride contained in 250 mL chloride sample.
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You should remember that the standard deviation is the absolute error in volume of AgNO3
mmol chloride = mmol AgNO3 Since Ag+
reacts with Cl- in a 1:1 mole ratio
mmol AgNO3 = molarity AgNO3 * Volume (mL) AgNO3
mmol AgNO3 = (0.1167 + 0.0002) ( 36.78 + 0.04) = 4.292 + ?
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Since this is a multiplication process we use the equation for relative uncertainty
(Sa2)rel = ( +0.0002/0.1167)2 + ( + 0.04/36.78)2
(Sa)rel = +2.03x10-3
Sa = 4.292 x (+2.03x10-3 ) = 8.71x10-3 ( This is the uncertainty in 25 mL chloride)
Sa in 250 mL chloride = 10 x 8.71x10-3 = +0.0871 mmol
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If we are to report the number of mmol chloride in 250 mL sample, the answer would be
Answer = 42.92 + 0.0871 mmol
The final answer should be 42.92 + 0.09 mmol since only two digits after the decimal points are allowed here to express actual uncertainty depending on the number of significant figures.
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Significant Figures and Propagation of Errors
Unlike the argument above, we are now ready to indicate that the uncertainty (if properly calculated) defines the number of significant figures in an answer, regardless of the key number.
For example, consider the mathematical value of the following calculation
(73.1 + 0.2)(2.245+0.008) = 164.1 + Sa
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The key number is 73.1 which has 3 significant figures, the answer is supposed to have 3 sig figures as well. This means that the answer is supposed to be 164+Sa
However, calculation of the absolute uncertainty gives Sa = +0.7
Since the uncertainty is known to the tenth position, the answer should be reported to the tenth position too.
The correct answer is 164.1+0.7The number of significant figures is more than
the key number !!
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Let us look at the same calculation above but change the uncertainty of the first term to 0.7, we get the following answer:
(73.1 + 0.7)(2.245+0.008) = 164.1 + 1.677
It is clear that we have uncertainty associated with the integer itself, rather than the digits after the decimal point. If there is an uncertainty in an integer then the decimals are exceedingly uncertain that they can never be included. Therefore, the answer should be reported as:
(73.1 + 0.2)(2.245+0.008) = 164 + 2
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Find the result of the following calculation, using the correct number of significant figures:
(22.3 + 0.1)*(35.08 + 0.07) = 782.3 + sa
(Sa)rel = {(+0.1/22.3)2 + (+0.07/35.07)2 }1/2
(sa)rel = 4.91*10-3
Sa = 782.3*4.91*10-3 = 3.84Answer = 782 + 4
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Look carefully at this example(101.1 + 0.9)(1.562 + 0.008) = 157.9 + 1.62
Since there is an uncertainty in an integer then the decimals are exceedingly uncertain that they can never be included. Therefore, the answer should be reported as
Answer = 158 + 2
The number of significant figures is less than the key number !! Therefore, the uncertainty actually determines the number of significant figures
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The Confidence limit
The standard deviation of a set of measurements provides an indication of the precision inherent in these measurements. However, no indication of how close the obtained result is from the accurate result can be deduced from the standard deviation. The confidence interval presents the range within which the accurate value might occur. This range is called the confidence interval. The probability that the true value occurs within this range is called the confidence level.
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Confidence limit = x + ts/N1/2
Where; t is a statistical factor which depends on the confidence level and the number of degrees of freedom (number of experiments – 1).
Confidence interval (range) = (x + ts/N1/2) to (x - ts/N1/2)
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The standard deviation for the analysis of a carbonate sample was 0.075% for the results 93.50, 93.58, and 93.43% carbonate. Find the confidence limit and range at the 95% confidence level. t95% = 4.303 (from table)
Confidence limit = x + ts/N1/2
X = (93.50+93.58+93.43)/3 = 93.50
Confidence limit = 93.50 + 4.303x0.075/31/2
Confidence limit = 93.50 + 0.19%Range = (93.50 – 0.19%) – (93.50 +0.19%)Range = 93.31-93.69%
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Tests of SignificanceIn this section we deal with two tests used for
comparing two analytical methods, one is a new or proposed method and the other is a standard method. The two methods are compared in terms of whether they provide comparable precision ( the F test ), based on their standard deviations or variances. The other test ( t test ) tells whether there is a statistical difference between resultsobtained by the two methods.
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The F TestThe precision of two methods could be
compared based on their standard deviations using the F test which can be defined as the ratio between the variances ( the variance is the standard deviation squared ) of the two methods. The ratio should always be larger than unity. That is, the larger variance of either method is placed in the nominator.
F = S12/S2
2 > 1
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Where, S12 > S2
2
Values of F ( a statistical factor ) at different confidence levels which can be obtained from statistical F tables. When Fcalculated < Ftabulated this is an indication of no statistical difference between precision or variances of the two methods.
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ExampleIn the analysis of glucose using a new
developed procedure and a standard procedure, the variances of the two procedures were 4.8 and 8.3. If the tabulated F value at 95% confidence level at the number of degrees of freedom used was 4.95. Determine whether the variance of the new procedure differs significantly from that of the standard method
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F = S12/S2
2
F = 8.3/4.8 = 1.73 (the subscript is because the answer is less than the key number)
Since Fcalculated < Ftabulated , there is no significant statistical difference between the variances of the two methods (i.e. there is no significant statistical difference between the precision of the two methods).
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ν1
ν2
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The Student t TestTo check whether there is a significant
statistical difference between the results of a new or proposed procedure and a standard one, the t test is used. As we did above, we calculate t and compare it to the tabulated value at the required confidence level and at the used degrees of freedom. There is no significant statistical difference between the results of the two methods when tcalculated < ttabulated .
There are three situations where the t test is applied:
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a. When an Accepted Value is Known
The tcalc is calculated from the relation below and compared to ttab
µ = x + ts/N1/2 or more conveniently,
+ t = (x - µ) N1/2/s
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Example
A new procedure for determining copper was used for the determination of copper in a sample. The procedure was repeated 5 times giving an average of 10.8 ppm and a standard deviation of +0.7 ppm. If the true value for this analysis was 11.7 ppm, does the new procedure give a statistically correct value at the 95% confidence level? ttab = 2.776
•
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Substitution into equation below, we get:+ t = (x - µ) N1/2/s
+ t = (10.8-11.7) 51/2/0.7+ t = 2.9the tcalc is larger than the ttab. Therefore,
there is a significant statistical difference between the two resultswhich also means that it is NOT acceptable to use the new procedure for copper determination.
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b. Comparison between two means
When an accepted value is not known and the sample is analyzed using the new procedure and a standard procedure. Here, we have two sets of data, a standard deviation for each set of data and a number of data points or results in each set. Under these conditions, we use the pooled standard deviation for the two sets. The same equation in a is used but with some modifications. The t value is calculated from the relation
(N1 Ns)1/2
(N1+ Ns)1/2
( x1 – xs)
Sp
+ t = *
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Where, x1 and xs are means of measurements using the new and standard methods. N1 and Ns are number of replicates done using the new and standard methods, respectively. Sp is the pooled standard deviation.
In such calculations it is wise to apply the F test first, and if it passes the t test is then applied.
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ExampleNickel in a sample was determined using
a new procedure where six replicate samples resulted in a mean of 19.65% and a variance of 0.4524. Five replicate analyses where conducted using a standard procedure resulting in a mean of 19.24% and a variance of 0.105. If the pooled standard deviation was +0.546, is there a significant difference between the two methods?
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First, let us find whether there is a significant difference in precision between the two procedures, by applying the F test
F = 0.4524/0.105 = 4.31
The tabulated F value is 6.26. Since Fcalculated < Ftabulated , then there is no significant statistical difference between the precision of the two procedures. Therefore, we continue with calculation of t test.
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+ t = 1.23
The tabulated t value is 2.262. Since tcalculated < ttabulated for nine degrees of freedom at 95% confidence level, we conclude that there is no significant statistical difference between the results of the two methods.
(N1 Ns)1/2
(N1+ Ns)1/2
( x1 – xs)
Sp
+ t = *
(6*5)1/2
(6+ 5)1/2
( 19.65 – 19.24)
0.546+ t = *
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c. The t Test with Multiple Samples
Till now we have considered replicate measurements of the same sample. When multiple samples are present, an average difference is calculated and individual deviation from a mean difference is calculated and used to calculate a difference standard deviation, Sd which is used in a successive step to calculate t.
+ t = DN1/2/Sd
Sd = [Σ ( Di – D )2 / (N-1)]1/2
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Sd is the standard deviation of the difference, Di is the difference between a result obtained by the standard method subtracted from that obtained by the proposed method for the same sample. D is the average of all differences.
Example
Mercury in multiple samples was determined using a standard method and a new suggested method. Six different samples were analyzed using the two procedures giving the following results in ppm:
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Sample No. New Method Standard method 1. 10.3 10.52. 12.7 11.93. 8.6 8.74. 17.5 16.95. 11.2 10.96. 11.5 11.1
Find the standard deviation of the difference. If the two methods have comparable precisions, find whether there is any significant difference between the results of the two methods at the 95% confidence level. The tabulated t value for five degrees of freedom at 95% confidence level is 2.571.
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Sample No. New Method Standard method Di1. 10.3 10.5 -0.22. 12.7 11.9 +0.83. 8.6 8.7 -0.14. 17.5 16.9 +0.65. 11.2 10.9 +0.36. 11.5 11.1 +0.4_______________________________________________
ΣDi = 1.8 D = 1.8/6 = 0.30
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Σ ( Di – D )2 = { (-0.2-0.3)2 + (+0.8-0.3)2 + (-0.1-0.3)2 + (+0.6-0.3)2 + (+0.3-0.3)2 + (+0.4-0.3)2 } = {0.25+0.25+0.16+0.09+0+0.01}
Σ ( Di – D )2 = 0.76
Sd = ( Σ( Di – D )2 / (N-1) )1/2
Sd = (0.76/5)1/2 = 0.39
+ t = 0.30x61/2/0.39 =1.88
The calculated t value is less than the tabulated t value which means that there is no significant difference between the results of the two methods.
+ t = DN1/2/sd
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The Q TestIn several occasions, when replicate experiments are
done one of the data point may look odd or faulty. The analyst is confused whether to keep it or reject it. The Q test provides a means to judge if it should be retained or rejected. This can be done by applying the Q test equation:
Q = a/w
Where a is the difference between the suspected result and the result nearest to it in value, w is the difference between highest and lowest results.
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Once again, if the calculated Q value is less than the tabulated value, then the suspected data point should be retained. In contrast to F and t tests the statistical value of Q depends on the number of data points rather than the number of degrees of freedom.
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ExampleIn the replicate determination of gold you got
the following results: 96, 99, 97, 94, 100, 95, and 72%. Check whether any point should be excluded at the 95% confidence level. Tabulated Q95% = 0.568 for 7 observations
Arrange results: 72, 94, 95, 96, 97, 99, 100Q = a/wQcalc = (94-72)/(100 - 72) = 0.79Qcalc > Qtab
The point 72% should be rejected.126126
ExampleIn the replicate determination of gold you got the
following results: 96, 99, 97, 94, 100, 95, and 88%. Check whether any point should be excluded at the 95% confidence level. Tabulated Q95% = 0.568 for 7 observations.
Arrange results: 88, 94, 95, 96, 97, 99, 100Solution
Q = a/wQcalc = (94-88)/(100-88) = 0.50Qcalc < QtabThe point 88% should be retained.
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Linear Least SquaresFrequently, an analyst constructs a calibration
curve using several standards and draws a straight line among the data points in the graph. In many cases, the line does not cross all points and the analyst starts judging where the straight line should pass. Human judgment is not perfect and, unfortunately, may be biased. The method of linear least squares is a mathematical method that help us choose the best path of the straight line.
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It is well known that the equation of a straight line is mathematically represented by
y = mx + bWhere m is the line and b is the line intercept, x and y
are variables.
The slope, m, can be calculated from the relationship
m = {Σxiyi – [(ΣxiΣyi)/n]}/{ Σxi2 – [(Σxi)2/n]}
b = y – mxx, y are average values of xi and yi.
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The standard deviation of any of the yipoints (Sy) is given by the relation
Sy = {([Σyi2 – (( Σyi)2/n)] – m2 [Σxi
2 – (( Σxi)2/n)])/(n-2)}1/2
The uncertainty in slope can then be calculated from Sy as follows
Sm = {Sy2/ [Σxi
2 – (( Σxi)2/n)]}1/2
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Example
Using the following data and without plotting, if the fluorescence of a riboflavin sample was 15.4 find its concentration.
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(Σxi)2 = 2.250300.0= 5 /500.1)/n = ixΣ(= x
27.16= 5 /6.83)/n = iyΣ= (y
m = {Σxiyi – [(ΣxiΣyi)/n]}/{ Σxi2 – [(Σxi)2/n]}
Substitution in the equation above gives
m = {46.6 – [(1.500*83.6)/5]}/ {0.850 –[(2.250/5]}
m = 53.75
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This Excel plot gives the same results for slope and intercept as calculated in the example.
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To calculate b we use the equation b = y – mxb = 16.72 – 53.75*0.300 = 0.60
Now we are ready to calculate the sample concentration
y = mx + b
15.4 = 53.75*x + 0.60x = 0.275 ng/L
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Correlation Coefficient (r)When the points that are supposed to be on a
straight line are scattered around that line then one should estimate the correlation between the two variables. The correlation coefficient serves as a measure for the correlation of these two variables. This can be very important if correlation between results obtained by a new method and a standard method is required.
r = {nΣ xiyi – (ΣxiΣyi)}/ {[nΣxi2 – (Σxi)2][nΣyi
2 –(Σyi)2]}1/2
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Two graphs with the same straight line equation??
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ExampleCalculate the
correlation coefficient of the data :
SolutionFirst we find Σyi
2 and (Σyi)2 from the table in previous example
Σyi2 = 2554.66
(Σyi)2 = 6988.96
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Substituting in the correlation coefficient equation above:
r = {5*46.6-(1.500*83.6)} / {[5*0.850 –2.250][5*2554.66-6988.96]}1/2
r = 1.00The correlation coefficient occurs between + 1.
As the correlation coefficient approaches unity, correlation increases and exact correlation occurs when r = 1. An r value less than 0.90 is considered bad while that exceeding 0.99 is considered excellent.
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Currently, many scientists prefer to use the square of the correlation coefficient, r2 rather than r, to express correlation. Evidently, the use of r2 is a more strict criterion as a smaller value is always obtained when fractions are squared.
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Detection Limits
All instrumental methods have a degree of noise associated with the measurement that limits the amount of analyte that can be detected.
1. Detection Limit is the lowest concentration level that can be determined to be statistically different from an analyte blank.
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When a graphical display of results is obtained, the detection limit of the instrument can be defined as the concentration of analyte resulting in a signal that is twice as the peak to peak noise (the distance between the two dashed lines in the schematic below).
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Peak-to-peak noise level as a basis for detection limit.
A “detectable” analyte signal would be 12 divisions above a line drawn through the average of the baseline fluctuations
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2. Detection Limit is the concentration that gives a signal three times the standard deviation of the background signal.
To calculate the detection limit:a. Find the average of the blank signalb. Find the standard deviation of the
blankc. Find the net analyte signal
analyte conc. * 3*sanalyte signal
DL =144144
Example A blank solution in a colorimetric analysis
resulted in absorbance readings of 0.000, 0.008, 0.006, and 0.003. A 1 ppm standard solution of the analyte resulted in a reading of 0.051. Calculate the detection limit.
The standard deviation of the four data points of the blank can be calculated to be + 0.0032 and the mean of the blank is 0.004
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The net reading of the standard = 0.051 – 0.004 = 0.047
The detection limit is the concentration which results in three times the standard deviation (3 x 0.0032 = 0.0096).
Detection limits = 1 ppm x 0.0096/0.047 = 0.2 ppm
The absorbance reading of the least detectable concentration = 0.0096 + 0.004 = 0.014