Title: Outline
1Outline
- ideas of benchmarking
- DEA
- profiling
2Purpose of the Course
- warehouses and warehousing means, not ends
- ends for students
- satisfy the course requirement
- prepare for thesis
- how to collect information, present, write an
essay - self-improve and self-actualize
3Thesis
- a serious issue
- certainly not something from cutting and pasting
- not merely a collection of organized material
- a step on generating knowledge
- material read serving as the basis
- key your own thoughts
- hard, but worthwhile training
4Term Project
- the training for your thesis
- just try your best, and dont worry that much
5Benchmarking and Profiling
6Tasks for Senior Management of Warehouses
- continuous improvement
- setting objectives
- absolute standard, e.g., 95 orders in 2 days, on
average no more than 2.2 days - relative standard benchmarking
- profiling pre-requisite of benchmarking
- soul searching
7Steps for Benchmarking
- identify the process to benchmark for e.g., most
troublesome, most important - identify the key performance variables
efficiency (time, cost, productivity) and service
level - document current processes and flows physical
activities and information flows - including resources required
- identify competitors and best-in-class companies
- decide which practices to adopt
- see modifications
8Data Collected for Benchmarking Warehouses
- performance benchmarking
- inputs, e.g.,
- labor, investment, space, scale of storage,
degree of automation - outputs
- of lines picked, level of value added service,
of special processes, quality of service,
flexibility of service - broken case lines shipped, full case lines
shipped and pallet lines shipped - process benchmarking
- resources
- procedure
- results
9Difficulties of Benchmarking
- intangible factors
- how to measure factors such as degree of
automation, level of value added service, quality
of service, flexibility of service, etc. - incomparable factors
- e.g., the comparison of quality of service with
degree of automation
10Common Approaches for Intangible Factors
- qualitative description, e.g.,
- different levels of sophistication of receiving
Stage 1 measure Stage 3 Stage 4 Stage 5
Receiving unload, stage, in-check immediate putaway to reserve immediate putaway to primary cross-docking prereceiving
11Steps to World-Class Warehousing Practices
12Common Approaches for Intangible Factors
- numerical values assigned to qualitative factors
- quantitative measures for qualitative factors
- e.g., quality of service by of customers
satisfied in 5 minutes, level of value added
service by types of value added service provided
13Examples of Numerical Performance Indicators
Based on Table 3-4 Warehouse Key Performance
Indicators (Frazell (2002))
Financial Productivity Utilization Quality Cycle time
Receiving
Putaway
Storage
Order picking
Shipping
Total
14Examples of Numerical Performance Indicators
Based on Table 3-4 Warehouse Key Performance
Indicators (Frazell (2002))
Financial Productivity Utilization Quality Cycle time
Receiving Cost / line Receipts / man-hr Dock utilization of correct receipts processing time / receipt
Putaway Cost /line Putaway / man-hr Labor equipment utilization of perfect putaway Cycle time / putaway
Storage Cost / item Inv / area Space utilization of accurate record Inv. day
Order picking Cost / line Line picked / man-hr Labor equipment utilization of correct picked lines Pick cycle time
Shipping Cost / order Order shipped / man-hr Dock utilization of perfect shipments cycle time / order
Total Cost / order, line, item Lines shipped / man-hr --- of perfect W/H orders Cycle time / order
15PresentingIncomparable Factors
- skipping comparison, e.g., the web graph for gap
analysis - an example for 6 factors
- best practices identified for benchmarking
- the relative performance with respect to the best
praes
16ComparingIncomparable Factors
- various methods, e.g., Scoring, Analytic
Hierarchy Process, Balanced Scorecard, Data
Envelopment Analysis (DEA), etc.
17Data Envelopment Analysis (DEA)
18Comparing Incomparable Factors
- data envelopment analysis (DEA) a technique to
compare quantitative factors of different nature - providing a numerical value judging the distance
from the best practices - some assumptions
- numerical values of each factor, e.g., input1
5, input2 12, though input1 and input2 cannot
be compared - linearity of effect, i.e., if 3 units of input
give 7 units of outputs, 6 units of input give 14
units of output
19Idea of Data Envelopment Analysis (DEA)
- W/H A and W/H B consume the same amount of
resources - two types of incomparable outputs apple and
orange - which is better?
20Idea of Data Envelopment Analysis (DEA)
- W/H C consumes the same amount of resources as
W/Hs A and B do - Hows the performance of C relative to A and B?
21Idea of Data Envelopment Analysis (DEA)
- Given W/H A and B, for W/Hs that consumes the
same amount of resources, the inefficient region
is shown in RHS. - The efficiency of a warehouse that consumes the
same amount of resources as A and B can be
measured by the distance from the boundary of the
date envelope.
22Idea of Data Envelopment Analysis (DEA)
- efficient boundary from many warehouses that
consume the same amount of resources
inefficient region
23Idea of Data Envelopment Analysis (DEA)
- efficient boundary from many warehouses that give
the same amount of outputs and consume different
values of incomparable resources banana and
grapefruit
inefficient region
24Idea of Data Envelopment Analysis (DEA)
- problem situations for benchmarking often not
ideal - different resources consumption for W/H
- different outputs for W/H
- for multi-input, multi-output problems, with W/H
consuming different amount of resources and
giving different amount of outputs, DEA - draws the efficient boundary
- benchmarks a W/H with respect to these existing
ones
25Idea of Data Envelopment Analysis (DEA)
- multi-input, multi-output comparison
- I decision-making units (DMUs), J types of
inputs, K types of outputs - aij be the number of units of input j that entity
i takes to give aik units of output k, j 1, ,
J and k J1, , JK - example 2 DMUs 2 types of inputs (grapefruit,
banana) 2 types of outputs (apple, orange) - DMU 1 a11 1, a12 3, a13 5, and a14 2,
i.e., DMU 1 takes 1 grapefruit, 3 bananas to
produce 5 apples and 2 oranges - DMU 2 a21 2, a22 1, a23 3, and a24 4,
i.e., DMU 2 takes 2 grapefruits, 1 banana to
produce 3 apples and 4 oranges
26Idea of Data Envelopment Analysis (DEA)
- rk unit reward of type k output, cj unit cost
of type j input - performance of DMU 1 (5r32r4)/(c13c2)
- performance of DMU 2 (3r34r4)/(2c1c2)
- performance of DMU i defined similarly
- given (aij) of the I DMUs, how to benchmark a
tapped DMU with (aoj) for unknown rk and cj?
27Idea of Data Envelopment Analysis (DEA)
- in general DEA finds the distance from the
efficient boundary by a linear program purely
making use of (aij) and (aoj) without knowing rk,
nor cj - idea similar to the construction of efficient
boundaries in the simplified examples
28Studies Using DEA on Warehouses
- de Koster, M.B.M., and B.M. Balk (2008)
Benchmarking and Monitoring International
Warehouse Operations in Europe, Production and
Operations Management, 17(2), 175-183. - McGinnis, L.F., A. Johnson, and M. Villarreal
(2006) Benchmarking Warehouse Performance Study,
Technical Report, Georgia Institute of
Technology.
29de Koster and Balk (2008)
- inputs
- of direct FTEs
- size of the W/H
- degree of automation
- of SKUs
- outputs
- of order lines picked/day
- level of value-added logistics (VAL) activities
- of special optimized processes
- of error-free orders shipped out
- order flexibility
30de Koster and Balk (2008)
- 65 warehouses containing 140 EDCs
- EDC distribution centers in Europe responsible
for the distribution for at least five countries
there - composition
- results
31Warehouse Performance Study in GIT
- develop a single index to measure the performance
of a warehouse - use data envelope analysis
32Examples from the Index Warehouse Size
- What are your inferences?
33Examples from the Index Mechanization
- What are your inferences?
34Profiling?? Examples Only
35Profiling
- profile of the warehouse
- define processes
- status of processes
- reveal status of warehouse
- purposes
- get new ideas on design and planning
- get improvement
- get baseline for any justification
- remarks
- use distributions, not means
- express in pictures
36Various Profiles
- indicators on every aspect
- receiving, prepackaging, putaway, storage, order
picking, packaging, sorting, accumulation,
unitizing, and shipping
37Customer Order Profiling
Customer Order Profile
results from order profiling help design a
warehouse, including its layout, equipment,
picking methods, etc.
38Family Mix Distribution
- implication zoning by family
39Handling Unit Mix Distribution Full/Partial
Pallets
- implication good to have a separate picking area
for loose cartons
40Handling Unit Mix Distribution Full/Broken
Cases
- implication good to have a separate picking area
for broken cases
41Order Increment Distributions - Pallets
- implication good to have ¼ and ½ pallets
42Order Increment Distributions - Cases
- implication good to have ½-size cases
43Lines per order Distribution
- implication on the picking methods
44Lines and Cube per order Distribution
- implication on the picking methods
45Items Popularity Distribution
- implication on storage zones, golden, silver,
bronze
46Cube-Movement Distribution
- implication small items in drawers or bin
shelling large items in block stacking,
push-back rack
47Popularity-Cube-Movement Distribution
- implication on storage mode
48Item-Order Completion Distribution
- implication on mode of storage, e.g., warehouse
within a warehouse
49Demand Correlation Distribution
- implication on zoning of goods
50Demand Variability Distribution
- implication variance of demand to set safety
stock
51Item-Family Inventory Distribution
- implication area assigned to different types of
storage
52Handling Unit Inventory Distribution
- implication different storage modes according to
the number of pallets on hand
53Seasonality Distribution
- implication shifting human resources and
possibly space
54Daily Activity Distribution
- implication shifting human resources and
possibly space
55Activity Relationship