Trend projection, often represented by a trend line, involves fitting a line to

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Trend projection, often represented by a trend line, involves fitting a line to

Trend projection, often represented by a trend line, involves fitting a line to the observed data points to represent the underlying trend. This line can be estimated using various regression techniques, such as ordinary least squares regression. Once the trend line is established, it can be extended into the future to forecast future values based on the trend’s direction and slope.
Trend projection provides a straightforward representation of the trend but may not capture sudden changes or seasonal variations as effectively. Time series data exhibiting a trend requires forecasting techniques like trend projection to make accurate predictions that account for the underlying trend in the data.
You will often use software (e.g., QM for Windows) to find the trend equation. This equation is our tool for formulating forecasts by considering the trend. We follow this by applying a seasonal adjustment, multiplying the result by the respective seasonal index for each quarter. Review the instructions from Render et al. (2023, pp.165):
Excel QM: Select Alphabetical to see the techniques. Then select Forecasting and Regression / Trend Analysis. When the input window opens, enter the number of past observations, and the spreadsheet is initialized, allowing you to input the Y values and the X values. Once you have established the trend line in QM, you can input varying future dates to forecast when a given value will be reached.
QM for Windows: Select the Forecasting module, and then enter a new problem by selecting New – Time Series Analysis. When the next window opens, enter the number of observations and press OK. Enter the values (Y) for the past observations when the input window opens. It is not necessary to enter the values for X because QM for Windows will automatically use these numbers. Then click Solve. Use the output to derive the data to find the solutions through simple calculations. For example, solving for x and then converting to a projected year.
Instructions:
Read the Case Study on JVB Electric Company in Chapter 5. Use QM for Windows or Excel to answer the following questions:
Use regression to develop a trend line that could be used to forecast the number of changeovers per year for the next several years.Explain the scatter plot, including a description of the trend.
Use the intercept and slope from your regression to forecast the year in which the number of changeovers will incur a cost greater than $200,000 per year and thus make conjoining the three reservoirs a better option.Describe whether the slope trend is negative or positive and what this indicates for sales.
Are the sales increasing or decreasing over time?
How do seasonal factors impact the slope?
If the extra maintenance cost for the single conjoined air reservoir was an additional $400,000 per year instead of an additional $200,000 per year, in what year would the number of changeovers make going to one reservoir a better option?
Report your findings, answering each question and subquestion. Including screenshots of your work in QM for Windows/Excel.

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