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Due Date Planning for Complex Product Systems with Uncertain Processing Times By: Dongping Song Supervisor: Dr. C.Hicks and Dr. C.F.Earl Dept. of MMM Eng.

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Presentation on theme: "Due Date Planning for Complex Product Systems with Uncertain Processing Times By: Dongping Song Supervisor: Dr. C.Hicks and Dr. C.F.Earl Dept. of MMM Eng."— Presentation transcript:

1 Due Date Planning for Complex Product Systems with Uncertain Processing Times By: Dongping Song Supervisor: Dr. C.Hicks and Dr. C.F.Earl Dept. of MMM Eng. Univ. of Newcastle upon Tyne April, 1999

2 Overview 1. Introduction 2. Literature review 3. Leadtime distribution estimation 4. Due date planning 5. Industrial case study 6. Discussion and conclusion 7. Further work

3 Introduction

4 Uncertainty in processing disrupt the timing of material receipt result in deviation of completion time from due date

5 Uncertainty in processing Uncertainties in subassemblies reduce the probability of material simultaneously arrivals

6 Introduction Complex product system –Assembly and product structure –Uncertain processing times –Cumulative and interacting Problem : setting due date in complex product systems with uncertain processing times

7 Uncertainty in complex products

8 Literature Review Two principal research streams [Cheng(1989), Lawrence(1995)] Empirical method: based on job characteristics and shop status. Such as: TWK, SLK, NOP, JIQ, JIS Due date(DD) = k 1  TWK + k 2 Analytic method: queuing networks, mathematical programming etc. by minimising a cost function

9 Literature Review Limitation of above research Both focus on job shop situations Empirical - rely on simulation, time consuming in stochastic systems Analytic - limited to “small” problems

10 Appr. procedure for product DD

11 Appr. procedure for stage DD

12 Product structure Simple Two Stage System

13 Planned start time S 1, S 1i Holding cost at subsequent stage Resource capacity limitation Reduce variability

14 Minimum processing time M 1 Prob. density func.(PDF) Cumul. distr. func.(CDF) Big variance may result in negative operation times

15 Analytical Result CDF of leadtime W is: F W (t) = 0, t<M 1 +S 1 ; F W (t) = F 1 (M 1 ) F Z (t-M 1 ) + F 1  F Z, t  M 1 + S 1. where F 1  CDF of assembly processing time; F Z  CDF of actual assembly start time; F Z (t)=  1 n F 1i (t-S 1i )   convolution operator in [M 1, t - S 1 ]; F 1  F Z =   F 1 (x) F Z (x-t)dx

16 Leadtime Distribution Estimation Complex product structure  approximate method Assumptions  normally distributed processing times  approximate leadtime by truncated normal distribution (Soroush, 1999)

17 Leadtime Distribution Estimation Normal distribution approximation  Compute mean and variance of assembly start time Z and assembly process time Q :  Z,  Z 2 and  Q,  Q 2  Obtain mean and variance of leadtime W(=Z+Q):  W =  Q +  Z,  W 2 =  Q 2 +  Z 2  Approximate W by truncated normal distribution: N(  W,  W 2 ), t  M 1 + S 1. More moments are needed if using general distribution to approximate

18 Due Date Planning Achieve a specified probability  DD* by N(0, 1)

19 Due Date Planning Mean absolute lateness (MAL)  DD* = median Standard deviation lateness (SDL)  DD* = mean Asymmetric earliness and tardiness cost  DD* by root finding method

20 Industrial Case Study Product structure 17 components

21 System parameters setting normal processing times at stage 6:  =7 days for 32 components,  =3.5 days for the other two. at other stages :  =28 days standard deviation:  = 0.1  backward scheduling based on mean data planned start time: 0 for 32 components and 3.5 for other two.

22 Simulation verification

23 Simulation histogram & Appr. PDF

24

25 Product Due Date Simulation verification for product due date to achieve specified probability

26 Stage Due Dates Simulation verification for stage due dates to achieve 90% probability

27

28 Discussion Minimum processing time Production plan Stage due date

29 Conclusion Complex product systems with uncertainty A procedure to estimate leadtime distribution Approximate method to set due dates Used to design planned start times

30 Further Work Skewed processing times Using more general distribution to approximate, like -type distribution Resource constraint systems


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