1 / 43

Tech 147: Unit 3

Tech 147: Unit 3. Planning Modern Green Manufacturing Systems: Forecasting. On Planning for Future. If a man take no thought about what is distant, he will find sorrow near at hand (Confucius). Forecasting is the:. The process of estimation in unknown situations The process of prediction

Télécharger la présentation

Tech 147: Unit 3

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Tech 147: Unit 3 Planning Modern Green Manufacturing Systems: Forecasting

  2. On Planning for Future If a man take no thought about what is distant, he will find sorrow near at hand (Confucius)

  3. Forecasting is the: • The process of estimation in unknown situations • The process of prediction • The practice of demand planning

  4. Definitions Exponential smoothing Trend (e.g. seasonal) Forecast Prediction Growth analysis Qualitative forecast Horizon Quantitative forecast MRP Time-series forecast Lead time Regression forecast Model-forecast Moving average Kanban JIT Planning period Gross/net requirements Inventory item Scheduled receipts

  5. Jacobs Et Al Chapter 2: Demand Management • Through demand management all potential demands on manufacturing capacity are collected and coordinated • This activity manages day-to-day interactions between customers and the company

  6. Demand Management in the MPC System

  7. Demand Management and the MPC Environment Forecasts of end items, spare parts, and other items in demand should be a part of the front-end modules of the MPC system

  8. Demand Management Techniques • Aggregating and disaggregating forecasts • Make to stock demand management • Assemble-to-order demand management • Make-to-order demand management (engineer-to-order)

  9. Managing Demand • Organizing for demand management • Monitoring the demand management system • Balancing supply and demand

  10. Jacobs et al: Chapter 3 Forecasting

  11. Forecasting Defined Forecasting is the process of making statements, estimation, or predictions about events or some variable of interest at some specified future date whose actual outcomes have not yet been observed.

  12. Providing appropriate Forecast Information • Forecasting for strategic business planning • Forecasting for sales and operation planning • Forecasting for master production scheduling and control

  13. Basic Forecasting Techniques • Causal/econometric methods • Time (trend) series • Judgmental methods • Other methods

  14. Causal/Econometric Methods • Regression analysis using linear regression or non-linear regression • Autoregressive moving average (ARMA) • Autoregressive integrated moving average (ARIMA) • Econometrics

  15. Regression analysis includes any techniques for modeling and analyzing several variables, when the focus is on the relationship between a dependent variable and one or more independent variables. • Regression analysis helps one understand how the typical value of the dependent variable changes when any one of the independent variables is varied, while the other independent variables are held fixed

  16. Regression Analysis

  17. Time series • Moving average • Basic exponential smoothing model • Trend enhancement of the basic exponential smoothing • Seasonal enhancement of the basic exponential smoothing • Extrapolation • Linear prediction • Trend estimation • Growth curve

  18. Time Series

  19. Forecasted Monthly Sales

  20. Judgmental methods • Composite forecasts • Surveys • Delphi method • Scenario building • Technology forecasting • Forecast by analogy

  21. Moving Average A moving average is a set of numbers, each of which is the average of the corresponding subset of a larger set of data points.

  22. Moving Average Forecasting Example • For sales during six periods: • Period 1 = $10000 • Period 2 = $12000 • Period 3 = $9000 • Period 4 = $11000 • Period 5 = $9600 • Period 6 = $12100

  23. Moving Average Example Sales for period 7 would be the average of the previous six periods: Or 10000+12000+9000+11000+9600+12100 = $10617

  24. Trend enhancement of the basic exponential smoothing • Forecasting technique that uses a weighted moving average of past data as the basis for a forecast. • The procedure gives heaviest weight to more recent information and smaller weight to observations in the more distant past. • The reason for this is that the future may be more dependent upon the recent past than on the distant past. • The method is effective when there is random demand and no seasonal fluctuations in the data.

  25. Trend enhancement of the basic exponential smoothing

  26. Trend enhancement of the basic exponential smoothing New Forecast = Old Forecast + α (Actual - Old Forecast)

  27. Trend enhancement of the basic exponential smoothing ESFt-1 + (actual demandt - ESFt-1)

  28. Trend enhancement of the basic exponential smoothing • TEFt = Base valuet-1 + Trendt-1 • Base value = (actual demandt) +(1 – ) (Base valuet-1 + Trendt-1) • Trendt = (base valuet – base valuet-1) + (1 – )(Trendt-1) •  = Base value smoothing constant •  = trend smoothing constant • t = current time

  29. Causal Forecasting Example A store manager determined that sale of electric generators increased by 10%, 30% and 50% respectively when there were categories 1, 2, and 3 storms in one state. Determine the following: • How many generators that would be sold when there was a category 3 storm if regular sale was 1500 generators. • Extra cash from the sale for the store if each generator costs $587.

  30. Time Series Forecasting Example Determine the following: • The quantity of bicycles a company makes if each of their 17 facilities makes 257 bikes per day plus 2 extra bikes on top of its previous day’s production. Production period is schedule for 21 days. • The quantity it made on the 10th day if 5 of those days allowed for only 40% production. • A time series plot of the period’s production.

  31. Other forecasting methods • Simulation • Prediction market • Probabilistic forecasting

  32. Probabilistic Forecasting The probability of event A is the number of ways event A can occur divided by the total number of possible outcomes. It is expressed as: Requires knowledge of theorems of probability

  33. Inventory Models • Economic order quantity (EOQ) • Computerized inventory control systems • Manual inventory system

  34. EOQ • An inventory-related equation that determines the optimum order quantity that a company should hold in its inventory given a set cost of production, demand rate and other variables. • This is done to minimize variable inventory costs.  • The full equation is as follows:   Where :  S = Setup costs D = Demand rate P = Production cost I = Interestrate  

  35. Obi, Chapter 3 Worker-Orienetd Values: Honesty, Self-Control, and Self-Respect

  36. Honesty Truthfulness Sincerity Upright conduct Upright disposition Publishers Clearing House example

  37. Ramifications of Workplace Honesty

  38. Areas of Workplace Dishonesty

  39. Self-Control • Self-control = Self-restraint • A worker’s ability to manage his or her own actions, desires, or motions. • Ability to hold back one’s self from some actions, desires or emotions that are most often experienced in the work place

  40. Common Areas of Self-Control

  41. Some Consequences of Lack of Self-Control in the Workplace

  42. Self-Respect • Having proper regard for one’s own person, character, or reputation. • Due respect for oneself.

  43. Some Areas of Self-Respect

More Related