| Exponential Regression Model Example(when doing an exponential regression, the y-values must 
			be greater than 0)
 
 
				
					|   |  
					| Data: 
					 The 
					data at the right shows the cooling temperatures of a freshly brewed cup of coffee 
					after it is poured from the brewing pot into a serving cup.  
					The brewing pot temperature is approximately 180º F. 
  
 | 
						
							
								| Time (mins) | Temp ( º F) |  
							  | 0 |  179.5 |  
								| 5 |  168.7 |  
								| 8 |  158.1 |  
								| 11 |  149.2 |  
								| 15 |  141.7 |  
								| 18 |  134.6 |  
								| 22 |  125.4 |  
								| 25 |  123.5 |  
								| 30 |  116.3 |  
								| 34 |  113.2 |  
								| 38 |  109.1 |  
								| 42 |  105.7 |  
								| 45 |  102.2 |  
								| 50 |  100.5 |  |  
					| 
						
							| Task: | a.) | Determine an exponential 
							regression model equation to represent this data. |  
							|  | b.) | Graph the new equation. |  
							|  | c.) | Decide whether the new equation 
							is a "good fit" to represent this data. |  
							|  | d.) | Based upon the new equation, what 
							was the initial temperature of the coffee? |  
							|  | e.) | Interpolate data:  When is the coffee at 
					a temperature of 106 degrees? |  
							|  | f.) | Extrapolate data:  What is the predicted 
					temperature of the coffee after 1 hour? |  
							|  | g.) | In 1992, a 
							woman sued McDonald's for serving coffee at a 
							temperature of 180º  that caused her to be 
							severely burned when the coffee spilled.  An 
							expert witness at the trial testified that liquids 
							at 180º will cause a full thickness burn to human							skin in two to seven seconds.  It was stated 
							that had the coffee been served  at 155º, the 
							liquid would have cooled and avoided the serious 
							burns.  The  woman was awarded over 2.7 
							million dollars.  As a result of this famous case, many  
							restaurants now serve coffee at a temperature around 
							155º.   How long should restaurants 
							wait (after pouring the coffee from the pot) before 
							serving coffee, to ensure that the coffee is not 
							hotter than 155º ? |  
							|  | h.) | If the temperature in the room is 
							76° F, what will happen to the temperature of the 
							coffee, after being poured from the pot, over an extended period 
							of time? |  |  
				
	  
						| Step 1.  
						  Enter the data into the lists. For basic entry of data, see Basic 
						Commands.
 | 
 |  
						| Step 2. 
						 Create a scatter plot of the data. Go to STATPLOT (2nd Y=) and choose the first plot.  Turn the plot
						ON, set the icon to Scatter 
						Plot (the first one), set Xlist to L1 and Ylist to
						L2 (assuming that is where 
						you stored the data), and select a Mark of your choice.
 
    | 
 |  
						| Step 3.  
						Choose Exponential Regression Model. Press STAT, arrow right to
						CALC, and arrow down to 0: ExpReg.  Hit
						ENTER.  When
						ExpReg appears on the home 
						screen, type the parameters L1, 
						L2, Y1.  The Y1 will put the equation into Y= for you.
 (Y1   comes from VARS → YVARS, #Function, Y1)
 
 
    
 |  The exponential regression equation is
 
  (answer to part a)
 |  
						| Step 4.  
						  Graph the Exponential Regression Equation from
						Y1. ZOOM #9 ZoomStat to see 
						the graph.
 |  (answer to part b)
 |  
						| Step 5.  
						Is this model a "good fit"? The correlation coefficient, r, is
 -.9849556976 which places the correlation into the 
				"strong" category.  (0.8 or greater is a "strong" 
				correlation)
 The coefficient of determination, r 
						2, is
 .9701377262 which means 
						that 97% of the total variation in y can be 
						explained by the relationship between x and y.
 Yes, it is a very "good fit".
 (answer 
						to part c)
 | 
						 |  
						| Step 6. Based upon the new equation, what was the 
						initial temperature of the coffee?
 
 The exponential regression equation is
 
  where x stands for time.  The initial 
						temperature would occur when the time equals zero.  
						Substituting zero for x gives an initial temperature of 
						171.462º.
 (answer to part 
						d)
 | Step 7.  
						Interpolate: (within the data) When 
						is the coffee at a temperature of 106 degrees?
 
 Go to TBLSET (above
						WINDOW) and set the 
						TblStart to 42 (since 42 minutes gives a temperature 
						close to 106º).  
						Set the delta Tbl to a decimal setting of your choice.  Go to
						TABLE (above
						GRAPH) and arrow up or down 
						to find your desired temp of 106º, in the Y1 column.
 
  
  (answer to part e: after approx. 40.7 minutes)
 |  
						| Step 8. Extrapolate 
						data: (beyond the data) What is the 
						predicted temperature of the coffee after 1 hour?
 
 Change 1 hour to 60 minutes.  With your 
								exponential equation in Y1, 
								go to the home screen and type
								Y1(60).  
					  Press ENTER.
  (answer to part f:   84.4º F)
 | Step 9. 
						  How long should the 
						restaurants wait (after pouring the coffee from the 
						pot) before serving coffee, to ensure that the coffee is 
						not hotter than 155º ? Repeat procedure from Step 7:
 
						 (answer to part g:  approx. 8.5  
					  minutes)
 |  
						| Step 
						10.  If the temperature in the room is 
						76° F, what will happen to the temperature of the coffee, 
						after being poured from the pot, over an extended period 
						of time?  The calculator's 
						exponential equation shows that the coffee will reach 
						room temperature after 68.8 minutes.  This 
						exponential graph is asymptotic to the x-axis, implying that the y-values (degrees) approach zero.  This can be seen by 
						observing successively larger values substituted into 
						the calculator's exponential equation (see 
						home screen substitutions below).  
						Even though the graph approaches zero asymptotically, 
						we know that the temperature of the coffee will stop cooling once it 
						reaches room temperature of 76º, and will not continue 
						following the 
						curve of the graph.                            
						   |  
					  | NOTE: The temperature of the coffee stops cooling when it reaches the room temperature of 76°. The existence of the room temperature will actually affect the final exponential equation. Instead of the graph being asymptotic to the x-axis, the graph is actually asymptotic to the room temperature. If you visualize the room temperature as y = 76º, you will notice that there will be  changes in the graph and consequently changes in the resulting equation.  You can see how room temperature affects the graph and the equation for this problem at Newton's Law of Cooling. |  |