SlideShare une entreprise Scribd logo
1  sur  29
Dealing with Numbers A guide to Numerical & Graphical Methods
1.0 The Importance of Experiments ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
1.1 Experimental Results –  The Data OK you’ve done an experiment and collected some results. What are the important features of the data you have collected ? Measurements made or taken during an experiment generate “raw” data. This data must be recorded then presented and analysed. All data will have some uncertainty attached. It doesn’t matter how good the experimenter, how well designed the experiment or how sophisticated the measuring device, ALL collected data has some uncertainty. (27.5  ±  0.5) 0 C This statement of temperature indicates both its measured value and the uncertainty. The temperature could be anywhere between 27.5 – 0.5 = 27.0 0  and 27.5 + 0.5 = 28.0 0
1.2 Uncertainty  The uncertainty of the measurement is determined by the scale of the measuring device. The uncertainty quantifies (gives a number to) the amount of variation that has been found in a measured value. An alternative term to that of uncertainty is to use the term EXPERIMENTAL ERROR. This does NOT imply a mistake in your results, but simply the natural spread in the values of a repeatedly measured quantity. Uncertainty generally comes in three forms: Resolution Uncertainty – how fine is the scale on the measuring  device ? Calibration Uncertainty – how well does the measuring device conform  to the standard ? Reading Uncertainty  - how  well did the operator use the device ?
1.3 Systematic and Random   Uncertainty ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Elimination of these “experimental errors” is the “holy grail” of experimental scientists and engineers. Systematic uncertainties can be reduced or eliminated from the measuring device by “calibrating” (comparing to a known standard) known to a high degree of both accuracy and precision. Random uncertainties can be controlled (but not eliminated) by taking multiple readings and using statistical analysis on the collected results.
1.4 Precision Precision is a measure of how closely a group of measurements agree  with one another. Close agreement translates to a small uncertainty. However, precision DOES NOT mean that the measurements are close to the “true value”.  An example here should explain: The “true value” on a dart board is the bullseye. This player is precise - all darts fall within a small area (small uncertainty) – but he is certainly not accurate A player throws 5 darts
1.5 Accuracy Accuracy is how closely the measurements agree with the true value. Again using the darts analogy:  This player is BOTH accurate AND precise. What can you say about the following measurements ? Each dot represents one person’s attempt to measure the length of a piece of string Inaccurate Imprecise Precise Imprecise Precise Inaccurate Accurate Accurate True Value
1.6 Significant Figures Significant Figures can be regarded as another method of indicating the uncertainty in a measured quantity. Significant Figures – THE RULES: 1. All NON ZERO integers are significant. 2. Zeros (a) Captive Zeros –  they fall between two non zero numbers        they always count as significant figures. (b) Decimal Point Zeros – Zeros used to place a decimal        point are NOT significant. (c) Trailing Zeros –  any zeros following a decimal point are      significant. Number 12.5 0.003002 49,000 0.000234 123.00 Significant Figures 3 4 2 3 5
1.7 Significant Figure Manipulation ,[object Object],[object Object],46.379 Rounding to the least number of decimal places of those numbers added (21.1 with 1 decimal place).  ,[object Object],[object Object],= 152.729383 With 56.4 having 3 sig figs, the answer should have 3 sig figs Answer = 153 Answer = 46.4 16.54 8.269 0.47 +21.1 65.64 (32.787 + 98.443) 56.4
1.8 Scientific Notation It is not always clear how many figures in a number are significant.  By changing the unit in which a number is expressed it can appear that  the amount of significant numbers changes. For example a time measurement could be 125 sec.  Writing this time in milliseconds would give 125,000 ms. Both numbers have 3 significant figures. However, say somebody asks for the time measurement in ms and assumes (incorrectly) that our measuring device is accurate to within  ±1 ms, then the time would be seen as a 6 significant number.  To get around this problem, Scientific Notation can be used.  This has all numbers expressed as a “number between 1 and 10, multiplied by a power of 10”  The time 125,000 ms becomes 1.25 x 10 5  sec and now only the numbers to the left of the multiply (x) sign are significant.
1.9 Orders of Magnitude When performing experiments, such as measuring the distance to the stars, determining the strength of gravity or measuring the speed of cars passing the college, you expect to gets answers within a certain range. If your measurements and subsequent calculations gave answers for g of 99 Nkg -1  or speeds of 400 kmh -1  hopefully you would suspect your calculations or measurements. The ability to make an estimate of an expected answer at least to within a factor of 10 can often save an embarrassing and career threatening mistake. This ability is called knowing an answer to within an “order of magnitude”. For gravity you would expect to get an answer in the range 9.7 to 9.9 Nkg -1 For the speeds of the cars maybe a range between 40 to 80 kmh -1 .
Chapter 2 Mathematical Processes
2.0 Rounding When the result of a calculation has too many figures, which normally happens when using a calculator, you may need to reduce the number of figures that appear in the answer, so that it is becomes both meaningful and acceptable. For example, you are asked to measure the length of a thigh bone (femur) from a skeleton and put that measurement into a formula to calculate the height of the person before death. Since the original measurement had 2 significant figures, the answer you quote should be no more that 2 sig figs. Thus the height of the person was 2.1 m.  The process of reducing the number of significant figures is called ROUNDING the number. When a calculation has a number of steps don’t round until you get to your final answer, as rounding during the calculation could lead to large errors in the final answer. You do this and the calculator gives you an answer of 2.064655089.  Your original measurement for the femur was 0.33 m
2.1 The Mean A team of students collected the following data in an experiment aimed at finding the Speed of Sound.  To determine the average or MEAN (usually labelled as x) of these values: add them and divide by the number of measurements:  How many Significant Figures should the Mean be quoted to ? The data has 4, so the mean should also have 4, right ?  So, in this case the Mean or Average speed for sound on this day was 341.8 ms -1 Is there an uncertainty in the Mean ? If so, how is it calculated ? Speed of Sound (ms -1 ) 341.5 342.4 342.2 345.5 341.1 338.5 340.3 342.7 x =  2734.2 8 = 341.775 ms -1
2.2 Uncertainty in the Mean What is the uncertainty associated with the calculated speed of sound of  342.8 ms -1  ? To calculate the uncertainty in the mean: ,[object Object],[object Object],Thus uncertainty =  345.5 – 338.5 8   = 0.875 ms -1 Since uncertainties are about determining the probable range of a measured or calculated quantity, there is little use in quoting them to any more than 1 Significant Figure.  So the uncertainty here becomes  ± 0.9 ms -1   (NOTE: if the first number of the uncertainty is a 1, then quote to two sig figs., so an uncertainty of  ± 1.425 becomes  ±  1.4) Thus, the speed of sound, and its associated uncertainty, as determined  by the students is (342.8  ± 0.9) ms -1
2.3 Fractional and Percentage Uncertainty The function of uncertainties is to quantify the  probable  range of the values of the measured quantity. Thus it is usual to quote uncertainty to, at the most, 2 significant figures and often only 1 significant figure. For the speed of sound -   (342.8  ± 0.9) ms -1 FRACTIONAL UNCERTAINTY  =  Uncertainty in Quantity   Value of Quantity     =  0.9   342.8   =  0.0026 NOTE: Fractional Uncertainty has NO units PERCENTAGE UNCERTAINTY = Fractional Uncertainty  x 100   =  0.0026 x 100    =  0.26%
2.4 Combining Uncertainties In  experiments often you will collect two or more sets of data which need to be used in an equation to calculate a final result.  The uncertainties in each of the pieces of data will affect the final result in a process called  error propagation. Uncertainties in measured or calculated quantities are quoted in a number of ways: If the quantity measured is a Volume (V), its uncertainty could be quoted as  ∂V or ∆V or  σ V ,[object Object],[object Object],[object Object],[object Object],[object Object],In words, the uncertainty in V is the sum of the uncertainties of a and b  Mathematical Operations: Products and Quotients   If  V = a x b or V = a / b In words, the fractional uncertainty in V equals the sum of the fractional uncertainties in a and b then  ∂V  =  ∂a  +  ∂b V  a  b
2.5 Data Selection A vital question for all experimental scientists and engineers is: Are ALL my data equal ? For many investigators ALL data is valid and NONE can ever be rejected. While others can simply look at a set of data and label it as spurious and reject the lot. And there are yet others who can look at individual data points and reject them whilst keeping the rest.   Confidence in the “correctness” of experimental data really comes when you are satisfied that the experiment is repeatable.  If you do have a suspect data point the best thing to do is to repeat the experiment. Of course this is not always possible, especially when testing to destruction, as in breaking a wire or bursting a balloon. Statistical tests which help eliminate “spurious” data do exist, but their rigid and unquestioning application to all data may mask a trend that you should know about. There are situations where a data point may be neglected or rejected. For example, during a series of events being hand timed, the operator lost concentration during one of the events.
Chapter 3 Graphical Methods
3.0 Why Graphs ? A picture is worth a thousand words. Humans generally find it easier to understand information when presented as a picture rather than as a table of figures. ,[object Object],[object Object],(d) The existence of “outlying data”  (c) The existence or otherwise of trends (b) The uncertainty in each measurement Temperature 0 C Time (sec) 0 80 60 40 20 0 20 40 60 80 100 120 Data point showing error bars for both Temperature (vertical) and Time (horizontal) outlying data point
3.1 Graphs – The Basics The most used graph in science is the Cartesian Coordinate Graph, better known as the x – y graph. The y axis is known as the ordinate and the x axis as the abscissa. The quantity that is controlled or deliberately varied throughout the experiment is the INDEPENDENT Variable and is plotted on the x axis The quantity that varies in response to changes in the independent variable is called the DEPENDENT Variable and is plotted on the y axis Temperature versus Time ALL graphs require a TITLE,  and AXIS labels and UNITS  X axis Abscissa Y axis Ordinate Independent Variable Dependent Variable Temp ( 0 C) Time (Sec)
3.2 Graphs – Origins, Scales & Symbols On most graphs the numbering of both the axes begins at zero, so the bottom left hand corner of the graph is the point (0,0) and is called the ORIGIN. The scale should be chosen so as to allow the graph to fill the whole page, while leaving enough space for labels units and a title However there is no law that states that an origin must be included in a graph. Sometimes including an origin will produce too coarse a scale which may hide important information. Data points (with or without error bars) should be too big rather than too small so as they cannot be mistaken for a smudge on the page Temperature 0 C Time (sec) 0 80 60 40 20 0 20 40 60 80 100 120 ORIGIN Good data points . Bad data point
3.3 Error Bars & Line Drawing Uncertainties in the quantities being graphed are indicated by attaching “error bars” to each of the data points. They can be vertical, horizontal or both.  ,[object Object],[object Object],[object Object],Where error bars are very small, due to the scales used, it is advisable to omit them from the graph. Their length indicates the size of the uncertainty associated with that data point.  When connecting data points it is difficult to draw freehand “smooth curve”  A rubberised flexible ruler called a “flexi - curve” is probably the best way to draw curves through data. As long as the curve fits within the error bars, the data has been joined  together in a valid way. Temperature 0 C Time (sec) 0 80 60 40 20 0 20 40 60 80 100 120
3.4 Linear Graphs It is hard to determine exact mathematical relationships from curved graphs.  Converting the graph to a linear or “straight line” graph allows quantitative relationships to be determined. ,[object Object],[object Object],[object Object],[object Object],[object Object],Recognising that the temperature – time graph shown previously indicates an inverse relationship (Temp  α  1/Time) and manipulating the data will give: Temperature 0 C 1/Time  x 10 -2  (sec) 0 80 60 40 20 0 5.0 2.5
3.5 Line of Best Fit Is the red line the only line that can be drawn to join the data points ? Obviously not, other lines can be drawn. Is the red line the “best” line to join the data ? Yes, because it meets the criteria for a “line of best fit”. It passes through all the error bars. It has as many data points above the line as below and the distances above and below total about the same. Rules for drawing a Line of Best Fit: 1. Place a clear plastic ruler over the data points. 2. Move the ruler until the data points are equally placed above and below the straight edge. 3. Generally the origin is not a special point, don’t force the line through it. 4. Use a pencil to draw a fine line along the straight edge. Temperature 0 C 1/Time  x 10 -2  (sec) 0 80 60 40 20 0 5.0 2.5
3.6 Determining Relationships Linearising the relationship between variables allows you to use the general equation for a straight line (y = mx + c) to determine the mathematical law which relates the variables. In this case: y = Temperature ( o C) m = Slope of Graph x = 1/Time (sec) c = Temperature axis intercept Slope = Rise/Run = (75 – 5)/(5 x 10 -2  - 0)  = 1400  = 1.4 x 10 3 Thus: Temp = 1.4 x 10 3  (1/Time) + 5 Temperature 0 C 1/Time  x 10 -2  (sec) 0 80 60 40 20 0 5.0 2.5 Run Rise c = +5
3.7 Interpolation & Extrapolation When the “y” or “x” value falls within the range of known data points INTERPOLATION is occurring. Determining a value of a variable (y and/or x) outside the range of those already known, EXTRAPOLATION is occurring. Once a line of best fit has been drawn for the available data,  it becomes quite easy to determine a “y” value from a given “x” value or visa versa. Of the two processes, interpolation is inherently more reliable than extrapolation.  Interpolation Region Extrapolation Regions Temperature 0 C 1/Time  x 10 -2  (sec) 0 80 60 40 20 0 5.0 2.5
4.0 In Summary It is very easy to enter data incorrectly into a calculator or computer which will ultimately lead to ridiculous values for gradients and intercepts.  This can go unnoticed unless you have an approximate value obtained from a hand drawn graph for comparison. Computers and calculators are excellent for fast and repetitive calculations.  But they cannot match the eye/brain combination when it comes to spotting patterns or anomalies.
Information Sources: 1. Experimental Methods – An Introduction to the Analysis and Presentation of Data Les Kirkup – Jacaranda Wiley Ltd. ISBN 0 471 33579 7 2. Dr. Fred Omega Garces - Chemistry 100 – Powerpoint -  Miramar College

Contenu connexe

Tendances

Measurement & uncertainty pp presentation
Measurement & uncertainty pp presentationMeasurement & uncertainty pp presentation
Measurement & uncertainty pp presentationsimonandisa
 
Standard deviation
Standard deviationStandard deviation
Standard deviationM K
 
Errors and uncertainties
Errors and uncertaintiesErrors and uncertainties
Errors and uncertaintiesdrmukherjee
 
Accuracy precision - resolution
Accuracy   precision - resolutionAccuracy   precision - resolution
Accuracy precision - resolutionMai An
 
15 ch ken black solution
15 ch ken black solution15 ch ken black solution
15 ch ken black solutionKrunal Shah
 
Standard deviation
Standard deviationStandard deviation
Standard deviationKen Plummer
 
Variance & standard deviation
Variance & standard deviationVariance & standard deviation
Variance & standard deviationFaisal Hussain
 
Measurement And Error
Measurement And ErrorMeasurement And Error
Measurement And Errorwilsone
 
Accuracy precision and significant figures
Accuracy precision and significant figuresAccuracy precision and significant figures
Accuracy precision and significant figuresnehla313
 
Errors and uncertainties
Errors and uncertaintiesErrors and uncertainties
Errors and uncertaintiesbornalive
 
Surveying 3 precision
Surveying 3 precisionSurveying 3 precision
Surveying 3 precisionAMAHORO123
 
Machine learning session6(decision trees random forrest)
Machine learning   session6(decision trees random forrest)Machine learning   session6(decision trees random forrest)
Machine learning session6(decision trees random forrest)Abhimanyu Dwivedi
 
Standard deviation
Standard deviationStandard deviation
Standard deviationMai Ngoc Duc
 
Accuracy & uncertainty
Accuracy & uncertaintyAccuracy & uncertainty
Accuracy & uncertaintyJose Guerreiro
 
Calculating Uncertainties
Calculating UncertaintiesCalculating Uncertainties
Calculating Uncertaintiesmrjdfield
 
Accuracy precision errors
Accuracy precision errorsAccuracy precision errors
Accuracy precision errorsDrSampuranSuahg
 
Machine learning session8(svm nlp)
Machine learning   session8(svm nlp)Machine learning   session8(svm nlp)
Machine learning session8(svm nlp)Abhimanyu Dwivedi
 
lesson 4 measures of central tendency copy
lesson 4 measures of central tendency   copylesson 4 measures of central tendency   copy
lesson 4 measures of central tendency copyNerz Baldres
 

Tendances (20)

Measurement & uncertainty pp presentation
Measurement & uncertainty pp presentationMeasurement & uncertainty pp presentation
Measurement & uncertainty pp presentation
 
Standard deviation
Standard deviationStandard deviation
Standard deviation
 
Errors and uncertainties
Errors and uncertaintiesErrors and uncertainties
Errors and uncertainties
 
Accuracy precision - resolution
Accuracy   precision - resolutionAccuracy   precision - resolution
Accuracy precision - resolution
 
Errors and uncertainties in physics
Errors and uncertainties in physicsErrors and uncertainties in physics
Errors and uncertainties in physics
 
15 ch ken black solution
15 ch ken black solution15 ch ken black solution
15 ch ken black solution
 
Standard deviation
Standard deviationStandard deviation
Standard deviation
 
Variance & standard deviation
Variance & standard deviationVariance & standard deviation
Variance & standard deviation
 
Measurement And Error
Measurement And ErrorMeasurement And Error
Measurement And Error
 
Accuracy precision and significant figures
Accuracy precision and significant figuresAccuracy precision and significant figures
Accuracy precision and significant figures
 
Standard deviation
Standard deviationStandard deviation
Standard deviation
 
Errors and uncertainties
Errors and uncertaintiesErrors and uncertainties
Errors and uncertainties
 
Surveying 3 precision
Surveying 3 precisionSurveying 3 precision
Surveying 3 precision
 
Machine learning session6(decision trees random forrest)
Machine learning   session6(decision trees random forrest)Machine learning   session6(decision trees random forrest)
Machine learning session6(decision trees random forrest)
 
Standard deviation
Standard deviationStandard deviation
Standard deviation
 
Accuracy & uncertainty
Accuracy & uncertaintyAccuracy & uncertainty
Accuracy & uncertainty
 
Calculating Uncertainties
Calculating UncertaintiesCalculating Uncertainties
Calculating Uncertainties
 
Accuracy precision errors
Accuracy precision errorsAccuracy precision errors
Accuracy precision errors
 
Machine learning session8(svm nlp)
Machine learning   session8(svm nlp)Machine learning   session8(svm nlp)
Machine learning session8(svm nlp)
 
lesson 4 measures of central tendency copy
lesson 4 measures of central tendency   copylesson 4 measures of central tendency   copy
lesson 4 measures of central tendency copy
 

Similaire à VCE Physics: Dealing with numerical measurments

Statistical analysis in analytical chemistry
Statistical analysis in analytical chemistryStatistical analysis in analytical chemistry
Statistical analysis in analytical chemistryJethro Masangkay
 
Chapter 3.pptx
Chapter 3.pptxChapter 3.pptx
Chapter 3.pptxmahamoh6
 
Errors-Analysis-MNN-RN.pptx
Errors-Analysis-MNN-RN.pptxErrors-Analysis-MNN-RN.pptx
Errors-Analysis-MNN-RN.pptxRishabhNath3
 
Measurements And Calculations
Measurements And  CalculationsMeasurements And  Calculations
Measurements And CalculationsMichael Benton
 
Physics 1.2b Errors and Uncertainties
Physics 1.2b Errors and UncertaintiesPhysics 1.2b Errors and Uncertainties
Physics 1.2b Errors and UncertaintiesJohnPaul Kennedy
 
Measurements and error in experiments
Measurements and error in experimentsMeasurements and error in experiments
Measurements and error in experimentsAwad Albalwi
 
Lecture Ch 01
Lecture Ch 01Lecture Ch 01
Lecture Ch 01rtrujill
 
SAMPLING MEAN DEFINITION The term sampling mean .docx
SAMPLING MEAN DEFINITION The term sampling mean .docxSAMPLING MEAN DEFINITION The term sampling mean .docx
SAMPLING MEAN DEFINITION The term sampling mean .docxanhlodge
 
Ch4_Uncertainty Analysis_1(3).pdf
Ch4_Uncertainty Analysis_1(3).pdfCh4_Uncertainty Analysis_1(3).pdf
Ch4_Uncertainty Analysis_1(3).pdfVamshi962726
 
SAMPLING MEAN DEFINITION The term sampling mean is.docx
SAMPLING MEAN  DEFINITION  The term sampling mean is.docxSAMPLING MEAN  DEFINITION  The term sampling mean is.docx
SAMPLING MEAN DEFINITION The term sampling mean is.docxagnesdcarey33086
 
Lecture 1 - System of Measurements, SI Units
Lecture 1 - System of Measurements, SI UnitsLecture 1 - System of Measurements, SI Units
Lecture 1 - System of Measurements, SI UnitsMarjorieJeanAnog
 
GenPhy1W1L1 Physical Quantities.pptx
GenPhy1W1L1 Physical Quantities.pptxGenPhy1W1L1 Physical Quantities.pptx
GenPhy1W1L1 Physical Quantities.pptxJeffrey Alemania
 
SAMPLING MEANDEFINITIONThe term sampling mean is a stati.docx
SAMPLING MEANDEFINITIONThe term sampling mean is a stati.docxSAMPLING MEANDEFINITIONThe term sampling mean is a stati.docx
SAMPLING MEANDEFINITIONThe term sampling mean is a stati.docxanhlodge
 
SAMPLING MEANDEFINITIONThe term sampling mean is a stati.docx
SAMPLING MEANDEFINITIONThe term sampling mean is a stati.docxSAMPLING MEANDEFINITIONThe term sampling mean is a stati.docx
SAMPLING MEANDEFINITIONThe term sampling mean is a stati.docxagnesdcarey33086
 
Numerical approximation and solution of equations
Numerical approximation and solution of equationsNumerical approximation and solution of equations
Numerical approximation and solution of equationsRobinson
 

Similaire à VCE Physics: Dealing with numerical measurments (20)

Statistical analysis in analytical chemistry
Statistical analysis in analytical chemistryStatistical analysis in analytical chemistry
Statistical analysis in analytical chemistry
 
Chapter 3.pptx
Chapter 3.pptxChapter 3.pptx
Chapter 3.pptx
 
Chapter 1(5)Measurement and Error
Chapter 1(5)Measurement andErrorChapter 1(5)Measurement andError
Chapter 1(5)Measurement and Error
 
Errors-Analysis-MNN-RN.pptx
Errors-Analysis-MNN-RN.pptxErrors-Analysis-MNN-RN.pptx
Errors-Analysis-MNN-RN.pptx
 
Measurements And Calculations
Measurements And  CalculationsMeasurements And  Calculations
Measurements And Calculations
 
Physics 1.2b Errors and Uncertainties
Physics 1.2b Errors and UncertaintiesPhysics 1.2b Errors and Uncertainties
Physics 1.2b Errors and Uncertainties
 
Measurements and error in experiments
Measurements and error in experimentsMeasurements and error in experiments
Measurements and error in experiments
 
Lecture Ch 01
Lecture Ch 01Lecture Ch 01
Lecture Ch 01
 
SAMPLING MEAN DEFINITION The term sampling mean .docx
SAMPLING MEAN DEFINITION The term sampling mean .docxSAMPLING MEAN DEFINITION The term sampling mean .docx
SAMPLING MEAN DEFINITION The term sampling mean .docx
 
Ch4_Uncertainty Analysis_1(3).pdf
Ch4_Uncertainty Analysis_1(3).pdfCh4_Uncertainty Analysis_1(3).pdf
Ch4_Uncertainty Analysis_1(3).pdf
 
SAMPLING MEAN DEFINITION The term sampling mean is.docx
SAMPLING MEAN  DEFINITION  The term sampling mean is.docxSAMPLING MEAN  DEFINITION  The term sampling mean is.docx
SAMPLING MEAN DEFINITION The term sampling mean is.docx
 
Errors2
Errors2Errors2
Errors2
 
Error analysis
Error analysisError analysis
Error analysis
 
Lecture 1 - System of Measurements, SI Units
Lecture 1 - System of Measurements, SI UnitsLecture 1 - System of Measurements, SI Units
Lecture 1 - System of Measurements, SI Units
 
GenPhy1W1L1 Physical Quantities.pptx
GenPhy1W1L1 Physical Quantities.pptxGenPhy1W1L1 Physical Quantities.pptx
GenPhy1W1L1 Physical Quantities.pptx
 
1.2 - Uncertainties and errors.pptx
1.2 - Uncertainties and errors.pptx1.2 - Uncertainties and errors.pptx
1.2 - Uncertainties and errors.pptx
 
Uncertainties.pptx
Uncertainties.pptxUncertainties.pptx
Uncertainties.pptx
 
SAMPLING MEANDEFINITIONThe term sampling mean is a stati.docx
SAMPLING MEANDEFINITIONThe term sampling mean is a stati.docxSAMPLING MEANDEFINITIONThe term sampling mean is a stati.docx
SAMPLING MEANDEFINITIONThe term sampling mean is a stati.docx
 
SAMPLING MEANDEFINITIONThe term sampling mean is a stati.docx
SAMPLING MEANDEFINITIONThe term sampling mean is a stati.docxSAMPLING MEANDEFINITIONThe term sampling mean is a stati.docx
SAMPLING MEANDEFINITIONThe term sampling mean is a stati.docx
 
Numerical approximation and solution of equations
Numerical approximation and solution of equationsNumerical approximation and solution of equations
Numerical approximation and solution of equations
 

Plus de Andrew Grichting

Plus de Andrew Grichting (13)

Vu4 light&matter2009
Vu4 light&matter2009Vu4 light&matter2009
Vu4 light&matter2009
 
VCE Physics Unit 3: Electronics & Photonics Base notes
VCE Physics Unit 3: Electronics & Photonics Base notesVCE Physics Unit 3: Electronics & Photonics Base notes
VCE Physics Unit 3: Electronics & Photonics Base notes
 
Empirical Research Activity (ERA) Guide
Empirical Research Activity (ERA) GuideEmpirical Research Activity (ERA) Guide
Empirical Research Activity (ERA) Guide
 
Vu4 light&matter2009
Vu4 light&matter2009Vu4 light&matter2009
Vu4 light&matter2009
 
Introduction to evolution
Introduction to evolutionIntroduction to evolution
Introduction to evolution
 
Hypothesis formation
Hypothesis formationHypothesis formation
Hypothesis formation
 
Survival of the sneakiest
Survival of the sneakiestSurvival of the sneakiest
Survival of the sneakiest
 
VCE Physics: Analysis of experiments
VCE Physics: Analysis of experimentsVCE Physics: Analysis of experiments
VCE Physics: Analysis of experiments
 
Fukushima daiichiareva
Fukushima daiichiarevaFukushima daiichiareva
Fukushima daiichiareva
 
Matrices 2
Matrices 2Matrices 2
Matrices 2
 
Matrices 1
Matrices 1Matrices 1
Matrices 1
 
Power Laws
Power LawsPower Laws
Power Laws
 
Pedigree Charts Powerpoint
Pedigree Charts PowerpointPedigree Charts Powerpoint
Pedigree Charts Powerpoint
 

Dernier

POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptxPOINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptxSayali Powar
 
Sanyam Choudhary Chemistry practical.pdf
Sanyam Choudhary Chemistry practical.pdfSanyam Choudhary Chemistry practical.pdf
Sanyam Choudhary Chemistry practical.pdfsanyamsingh5019
 
Interactive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communicationInteractive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communicationnomboosow
 
Introduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptxIntroduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptxpboyjonauth
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfciinovamais
 
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdfssuser54595a
 
Arihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfArihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfchloefrazer622
 
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions  for the students and aspirants of Chemistry12th.pptxOrganic Name Reactions  for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions for the students and aspirants of Chemistry12th.pptxVS Mahajan Coaching Centre
 
Measures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeMeasures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeThiyagu K
 
Student login on Anyboli platform.helpin
Student login on Anyboli platform.helpinStudent login on Anyboli platform.helpin
Student login on Anyboli platform.helpinRaunakKeshri1
 
Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3JemimahLaneBuaron
 
Grant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingGrant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingTechSoup
 
Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104misteraugie
 
Web & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdfWeb & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdfJayanti Pande
 
The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13Steve Thomason
 
Z Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphZ Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphThiyagu K
 
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptxContemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptxRoyAbrique
 

Dernier (20)

Código Creativo y Arte de Software | Unidad 1
Código Creativo y Arte de Software | Unidad 1Código Creativo y Arte de Software | Unidad 1
Código Creativo y Arte de Software | Unidad 1
 
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptxPOINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
 
Sanyam Choudhary Chemistry practical.pdf
Sanyam Choudhary Chemistry practical.pdfSanyam Choudhary Chemistry practical.pdf
Sanyam Choudhary Chemistry practical.pdf
 
Interactive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communicationInteractive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communication
 
Introduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptxIntroduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptx
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdf
 
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
 
Arihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfArihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdf
 
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions  for the students and aspirants of Chemistry12th.pptxOrganic Name Reactions  for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
 
Measures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeMeasures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and Mode
 
Student login on Anyboli platform.helpin
Student login on Anyboli platform.helpinStudent login on Anyboli platform.helpin
Student login on Anyboli platform.helpin
 
Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3
 
Grant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingGrant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy Consulting
 
Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104
 
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptxINDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
 
Web & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdfWeb & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdf
 
The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13
 
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
 
Z Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphZ Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot Graph
 
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptxContemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
 

VCE Physics: Dealing with numerical measurments

  • 1. Dealing with Numbers A guide to Numerical & Graphical Methods
  • 2.
  • 3. 1.1 Experimental Results – The Data OK you’ve done an experiment and collected some results. What are the important features of the data you have collected ? Measurements made or taken during an experiment generate “raw” data. This data must be recorded then presented and analysed. All data will have some uncertainty attached. It doesn’t matter how good the experimenter, how well designed the experiment or how sophisticated the measuring device, ALL collected data has some uncertainty. (27.5 ± 0.5) 0 C This statement of temperature indicates both its measured value and the uncertainty. The temperature could be anywhere between 27.5 – 0.5 = 27.0 0 and 27.5 + 0.5 = 28.0 0
  • 4. 1.2 Uncertainty The uncertainty of the measurement is determined by the scale of the measuring device. The uncertainty quantifies (gives a number to) the amount of variation that has been found in a measured value. An alternative term to that of uncertainty is to use the term EXPERIMENTAL ERROR. This does NOT imply a mistake in your results, but simply the natural spread in the values of a repeatedly measured quantity. Uncertainty generally comes in three forms: Resolution Uncertainty – how fine is the scale on the measuring device ? Calibration Uncertainty – how well does the measuring device conform to the standard ? Reading Uncertainty - how well did the operator use the device ?
  • 5.
  • 6. 1.4 Precision Precision is a measure of how closely a group of measurements agree with one another. Close agreement translates to a small uncertainty. However, precision DOES NOT mean that the measurements are close to the “true value”. An example here should explain: The “true value” on a dart board is the bullseye. This player is precise - all darts fall within a small area (small uncertainty) – but he is certainly not accurate A player throws 5 darts
  • 7. 1.5 Accuracy Accuracy is how closely the measurements agree with the true value. Again using the darts analogy: This player is BOTH accurate AND precise. What can you say about the following measurements ? Each dot represents one person’s attempt to measure the length of a piece of string Inaccurate Imprecise Precise Imprecise Precise Inaccurate Accurate Accurate True Value
  • 8. 1.6 Significant Figures Significant Figures can be regarded as another method of indicating the uncertainty in a measured quantity. Significant Figures – THE RULES: 1. All NON ZERO integers are significant. 2. Zeros (a) Captive Zeros – they fall between two non zero numbers they always count as significant figures. (b) Decimal Point Zeros – Zeros used to place a decimal point are NOT significant. (c) Trailing Zeros – any zeros following a decimal point are significant. Number 12.5 0.003002 49,000 0.000234 123.00 Significant Figures 3 4 2 3 5
  • 9.
  • 10. 1.8 Scientific Notation It is not always clear how many figures in a number are significant. By changing the unit in which a number is expressed it can appear that the amount of significant numbers changes. For example a time measurement could be 125 sec. Writing this time in milliseconds would give 125,000 ms. Both numbers have 3 significant figures. However, say somebody asks for the time measurement in ms and assumes (incorrectly) that our measuring device is accurate to within ±1 ms, then the time would be seen as a 6 significant number. To get around this problem, Scientific Notation can be used. This has all numbers expressed as a “number between 1 and 10, multiplied by a power of 10” The time 125,000 ms becomes 1.25 x 10 5 sec and now only the numbers to the left of the multiply (x) sign are significant.
  • 11. 1.9 Orders of Magnitude When performing experiments, such as measuring the distance to the stars, determining the strength of gravity or measuring the speed of cars passing the college, you expect to gets answers within a certain range. If your measurements and subsequent calculations gave answers for g of 99 Nkg -1 or speeds of 400 kmh -1 hopefully you would suspect your calculations or measurements. The ability to make an estimate of an expected answer at least to within a factor of 10 can often save an embarrassing and career threatening mistake. This ability is called knowing an answer to within an “order of magnitude”. For gravity you would expect to get an answer in the range 9.7 to 9.9 Nkg -1 For the speeds of the cars maybe a range between 40 to 80 kmh -1 .
  • 13. 2.0 Rounding When the result of a calculation has too many figures, which normally happens when using a calculator, you may need to reduce the number of figures that appear in the answer, so that it is becomes both meaningful and acceptable. For example, you are asked to measure the length of a thigh bone (femur) from a skeleton and put that measurement into a formula to calculate the height of the person before death. Since the original measurement had 2 significant figures, the answer you quote should be no more that 2 sig figs. Thus the height of the person was 2.1 m. The process of reducing the number of significant figures is called ROUNDING the number. When a calculation has a number of steps don’t round until you get to your final answer, as rounding during the calculation could lead to large errors in the final answer. You do this and the calculator gives you an answer of 2.064655089. Your original measurement for the femur was 0.33 m
  • 14. 2.1 The Mean A team of students collected the following data in an experiment aimed at finding the Speed of Sound. To determine the average or MEAN (usually labelled as x) of these values: add them and divide by the number of measurements: How many Significant Figures should the Mean be quoted to ? The data has 4, so the mean should also have 4, right ? So, in this case the Mean or Average speed for sound on this day was 341.8 ms -1 Is there an uncertainty in the Mean ? If so, how is it calculated ? Speed of Sound (ms -1 ) 341.5 342.4 342.2 345.5 341.1 338.5 340.3 342.7 x = 2734.2 8 = 341.775 ms -1
  • 15.
  • 16. 2.3 Fractional and Percentage Uncertainty The function of uncertainties is to quantify the probable range of the values of the measured quantity. Thus it is usual to quote uncertainty to, at the most, 2 significant figures and often only 1 significant figure. For the speed of sound - (342.8 ± 0.9) ms -1 FRACTIONAL UNCERTAINTY = Uncertainty in Quantity Value of Quantity = 0.9 342.8 = 0.0026 NOTE: Fractional Uncertainty has NO units PERCENTAGE UNCERTAINTY = Fractional Uncertainty x 100 = 0.0026 x 100 = 0.26%
  • 17.
  • 18. 2.5 Data Selection A vital question for all experimental scientists and engineers is: Are ALL my data equal ? For many investigators ALL data is valid and NONE can ever be rejected. While others can simply look at a set of data and label it as spurious and reject the lot. And there are yet others who can look at individual data points and reject them whilst keeping the rest. Confidence in the “correctness” of experimental data really comes when you are satisfied that the experiment is repeatable. If you do have a suspect data point the best thing to do is to repeat the experiment. Of course this is not always possible, especially when testing to destruction, as in breaking a wire or bursting a balloon. Statistical tests which help eliminate “spurious” data do exist, but their rigid and unquestioning application to all data may mask a trend that you should know about. There are situations where a data point may be neglected or rejected. For example, during a series of events being hand timed, the operator lost concentration during one of the events.
  • 20.
  • 21. 3.1 Graphs – The Basics The most used graph in science is the Cartesian Coordinate Graph, better known as the x – y graph. The y axis is known as the ordinate and the x axis as the abscissa. The quantity that is controlled or deliberately varied throughout the experiment is the INDEPENDENT Variable and is plotted on the x axis The quantity that varies in response to changes in the independent variable is called the DEPENDENT Variable and is plotted on the y axis Temperature versus Time ALL graphs require a TITLE, and AXIS labels and UNITS X axis Abscissa Y axis Ordinate Independent Variable Dependent Variable Temp ( 0 C) Time (Sec)
  • 22. 3.2 Graphs – Origins, Scales & Symbols On most graphs the numbering of both the axes begins at zero, so the bottom left hand corner of the graph is the point (0,0) and is called the ORIGIN. The scale should be chosen so as to allow the graph to fill the whole page, while leaving enough space for labels units and a title However there is no law that states that an origin must be included in a graph. Sometimes including an origin will produce too coarse a scale which may hide important information. Data points (with or without error bars) should be too big rather than too small so as they cannot be mistaken for a smudge on the page Temperature 0 C Time (sec) 0 80 60 40 20 0 20 40 60 80 100 120 ORIGIN Good data points . Bad data point
  • 23.
  • 24.
  • 25. 3.5 Line of Best Fit Is the red line the only line that can be drawn to join the data points ? Obviously not, other lines can be drawn. Is the red line the “best” line to join the data ? Yes, because it meets the criteria for a “line of best fit”. It passes through all the error bars. It has as many data points above the line as below and the distances above and below total about the same. Rules for drawing a Line of Best Fit: 1. Place a clear plastic ruler over the data points. 2. Move the ruler until the data points are equally placed above and below the straight edge. 3. Generally the origin is not a special point, don’t force the line through it. 4. Use a pencil to draw a fine line along the straight edge. Temperature 0 C 1/Time x 10 -2 (sec) 0 80 60 40 20 0 5.0 2.5
  • 26. 3.6 Determining Relationships Linearising the relationship between variables allows you to use the general equation for a straight line (y = mx + c) to determine the mathematical law which relates the variables. In this case: y = Temperature ( o C) m = Slope of Graph x = 1/Time (sec) c = Temperature axis intercept Slope = Rise/Run = (75 – 5)/(5 x 10 -2 - 0) = 1400 = 1.4 x 10 3 Thus: Temp = 1.4 x 10 3 (1/Time) + 5 Temperature 0 C 1/Time x 10 -2 (sec) 0 80 60 40 20 0 5.0 2.5 Run Rise c = +5
  • 27. 3.7 Interpolation & Extrapolation When the “y” or “x” value falls within the range of known data points INTERPOLATION is occurring. Determining a value of a variable (y and/or x) outside the range of those already known, EXTRAPOLATION is occurring. Once a line of best fit has been drawn for the available data, it becomes quite easy to determine a “y” value from a given “x” value or visa versa. Of the two processes, interpolation is inherently more reliable than extrapolation. Interpolation Region Extrapolation Regions Temperature 0 C 1/Time x 10 -2 (sec) 0 80 60 40 20 0 5.0 2.5
  • 28. 4.0 In Summary It is very easy to enter data incorrectly into a calculator or computer which will ultimately lead to ridiculous values for gradients and intercepts. This can go unnoticed unless you have an approximate value obtained from a hand drawn graph for comparison. Computers and calculators are excellent for fast and repetitive calculations. But they cannot match the eye/brain combination when it comes to spotting patterns or anomalies.
  • 29. Information Sources: 1. Experimental Methods – An Introduction to the Analysis and Presentation of Data Les Kirkup – Jacaranda Wiley Ltd. ISBN 0 471 33579 7 2. Dr. Fred Omega Garces - Chemistry 100 – Powerpoint - Miramar College