OPEARATIONS MANAG.REV CUSTOM 2017
17th Edition
ISBN: 9781323590058
Author: Pearson
Publisher: PEARSON C
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Textbook Question
Chapter 4, Problem 30P
Lori Cook has developed the following
where
- a. Forecast demand for the Kool Air when the temperature is 70°F.
- b. What is demand when the temperature is 80°F?
- c. What is demand when the temperature is 90° F?
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Lori Cook has developed the following forecasting modaly = 36 + 4.3xwhere y = demand for Kool Air conditioners and X= the outside temperature (F)° a) Forecast demand for the Kool Air when the temperature is 70° F.b) What is demand when the temperature is 80° F?c) What is demand when the temperature is 90° F?
A distributor uses the following equation for forecasting demand of ski goggles: Y = 834 + 18*t, where t=0 in Spring of 2013. Each season is a period, so Summer 2013 would be t=1. His seasonal relatives are (Fall=1.2; Winter=1.4; Spring = 0.9; Summer= 0.8). What is his seasonalized forecast for Spring 2014?
Plz do fast asap
Lori Cook has developed the following forecasting model:
^y=45.0+4.20x,
where ^y=demand for Kool Air conditioners and
x=the outside temperature (degrees Fahrenheit)
a) When the temperature outside is 70°F, demand forecast=__ air conditioners ( enter your response as an integer).
Chapter 4 Solutions
OPEARATIONS MANAG.REV CUSTOM 2017
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