SlideShare ist ein Scribd-Unternehmen logo
1 von 17
WAREHOUSE
ACTIVITY PROFILING
Master of Science in Logistics Management
Faculty of Business & Information Systems
GL 006_Warehouse Management
Mohammad Nazmuzzaman Hye
1001748700
Public Talk
1
Outline
• Concept of Warehouse Activity Profiling
• Master Data for Warehouse Activity Profile
• WAP Process and Example
2
Warehouse Activity Profiling (WAP)
References:
1. J.J. Bartholdi and S. T. Hackman. Warehouse & distribution science. Supply chain and logistics institute, Georgia institute of technology, 2009.
2. E. Frazelle. World-class warehousing and material handling. McGraw-Hill Professional, 2002.
3. D.E Mulcahy. Warehouse distribution and operations handbook. McGraw-Hill New York, 1994.
Warehouse
• A Warehouse is a complex and busy supply chain entity.
• Data Analytics on warehouse comes under activity profiling
Profile
• Profile: an outline/Snapshot of an aspect of any logistics
activity.
• Example: Customer Order Profile (Behavior of Customer
order/Ordering Pattern)
Profiling
• The systematic analysis of item or order activity to identify
root cause , opportunities for improvement and basis for
decision making.
Warehouse Activity
Profiling
• Analysis of Historical data for the purpose of Projecting
Warehouse Activity
• WAP determines Storage Mood , Physical Layout , workflow
process and labor and equipment requirements.
3
Warehouse Activity Profiling (WAP)
• What : improving warehouse by understanding natures & exploring patterns
• Idea : data mining with database program
References:
1. J.J. Bartholdi and S. T. Hackman. Warehouse & distribution science. Supply chain and logistics institute, Georgia institute of technology, 2009.
2. E. Frazelle. World-class warehousing and material handling. McGraw-Hill Professional, 2002.
3. D.E Mulcahy. Warehouse distribution and operations handbook. McGraw-Hill New York, 1994. 4
Investigation = WAP
Crime Investigation Warehouse Activity Profiling
 Gathering evidence & witness  Gathering Data
 Understanding Motives  Understanding Patterns
 Selecting Suspects  Selection Cause and Solutions
 Capturing Murder  Improving efficiency and productivity
Questions and Data Information Success of Profiling
References:
1. J.J. Bartholdi and S. T. Hackman. Warehouse & distribution science. Supply chain and logistics institute, Georgia institute of technology, 2009.
2. E. Frazelle. World-class warehousing and material handling. McGraw-Hill Professional, 2002.
3. D.E Mulcahy. Warehouse distribution and operations handbook. McGraw-Hill New York, 1994. 5
Benefits of Warehouse Activity Profiling
Understand Demands & Patterns
• Layout, Picking Policy, Labor Management
Calculate Key Performance Index (KPI)
• Snap Shot of Warehouse
Managing SKU
• Select Suitable Equipment, packages , slotting, default pick path
Gather Data for Design
References:
1. J.J. Bartholdi and S. T. Hackman. Warehouse & distribution science. Supply chain and logistics institute, Georgia institute of technology, 2009.
2. E. Frazelle. World-class warehousing and material handling. McGraw-Hill Professional, 2002.
3. D.E Mulcahy. Warehouse distribution and operations handbook. McGraw-Hill New York, 1994. 6
Master Data
 Master Data = Source Data (Profiling Database)
ITEM
MASTER
LOCATION
MASTER
ORDER
MASTER
Database Related to SKUs Database of inventory at
all storage location
Database of sale in-out to
warehouse
References:
1. J.J. Bartholdi and S. T. Hackman. Warehouse & distribution science. Supply chain and logistics institute, Georgia institute of technology, 2009.
2. E. Frazelle. World-class warehousing and material handling. McGraw-Hill Professional, 2002.
3. D.E Mulcahy. Warehouse distribution and operations handbook. McGraw-Hill New York, 1994. 7
Profiling Data: Item Master
 General : SKU ID, Description, Vendor ID
 Bulk Break : Break SKU , Box Per Pallet
 Physical: Volume, width (length X height X weight)
 Time: received date , expired date
 Ordering : min-max , response person
 Others: Packing note , shipping note, lot # , equipment
Source: Warehousing Science http://www2.isye.gatech.edu/j̃jb/wh/book/profile/activities/profilingexercise.html
8
Profiling Data: Location Master
 Header : date-time that data are received
 Address : Zone , aisle, section, position
 Unit: quantity, case pallet
Source: Warehousing Science http://www2.isye.gatech.edu/j̃jb/wh/book/profile/activities/profilingexercise.html
9
Typical Warehouse Address
10
Profiling Data: Order Master
 Header : Order ID , Customer ID
 Detail : SKU ID , Date , Time , Quantity (Qty), Unit
 Note: Largest Database
Source: Warehousing Science http://www2.isye.gatech.edu/j̃jb/wh/book/profile/activities/profilingexercise.html
11
Process in WAP
Define
Question
What do we
plan to improve
(Pros. Vs. Cons.)
Gather Data
Meaning of
Data and
finding related
Data:
Static : SKU
related,
Layout-zone ,
Std. time ,
cut-off Time
Dynamic :
Picker
Related, Plan
, OT ,
Schedule
Import Data
Connect With
Database –
basic Statistic
Analysis
Check Data
Inconsistency ,
Outlier 
Clean-Up-Data
Analysis Data
Create and
explain
Distribution
Implementation
Gap Analysis ,
Saving Analysis
12
Some basic summary statistics
Order Related Facility Related
 Average number of SKU’s involved  work and
storage complexity
 Area of the warehouse
 Average number of orders shipped per day 
volume of activity
 Average number of shipments received per day
the “backend ”activity
 Average number of lines (SKU’s) per order
Picking Complexity
 Average rate of introduction of new SKU’s 
Operational Stability
 Average Number of Units Per line  Average number of SKU’s in the warehouse 
Volume and scope of operation
 Seasonality (Seasonal indices- what percentage of a
cycle corresponds to a period in the cycle-
Temporal Distribution of the work)
• Distribution of the personnel to the various
activities labor-related costs and opportunity.
13
Graphing the result of Activity Analysis
 Discrete distributions
 Pareto curves, i.e., cumulative distributions where the items on the horizontal axis are arranged in a
decreasing order w.r.t. the corresponding value of the distribution.
 Other plots (e.g., bird’s eye view for characterizing location activity)
A Bird’s Eye View of a Warehouse with each
section of self colored in proportion to the
frequency of request for the SKU stored there
in.
14
Pareto Effect and ABC Analysis
Classifying items, events, or activities according to their relative importance
 Pareto Effect: A small percentage of the considered entities account for the largest
fraction of the activity (20/80 rule)
 ABC analysis: Exploit the Pareto effects in order to classify the considered entities into
(typically three: A, B and C) categories, such that
- the entities in the first category are the ones responsible for most of the activity, and
therefore, more closely managed;
- the entities in the second category account for most of the remaining part, and
therefore, are moderately important;
- the entities in the third category are the largest bulk responsible for only a small part of
the activity, and therefore, insignificant.
References: J.J. Bartholdi and S. T. Hackman. Warehouse & distribution science. Supply chain and logistics institute, Georgia institute of technology, 2009.
15
Example of WAP
Work Patterns and their Implications
• Distribution of lines per order: What percentage of orders have a single
line, two lines, etc. (Reveals possibilities for batching and/or zoning)
• Distribution of picks by order-size: What fraction of picks comes from
single-line orders, two-line orders, etc. (reveals whether most work is
generated by small or large orders, shipping activity)
• Distribution of families/zones per order: What fraction of orders involves a
single family/zone, two families/zones, etc. (identifies coupling which can
be exploited by the picking process)
• Family pairs analysis / “order-crossings” (for zones): identify pairs of
families/zones with correlated demand (this correlation should be
exploited by putting items in each pair close to each other)
16
Conclusion
17
An activity profile is essential to really understand what matter in a
warehouse. The Activity Profile will enable us to understand, Mange
and improve use of labor ,space and equipment.
WAP is a special case of data-mining, which is simply the rummaging
through database to look for patterns that might be exploited to
improve operations.

Weitere ähnliche Inhalte

Was ist angesagt?

Ware housing in Logistics management
Ware housing in Logistics managementWare housing in Logistics management
Ware housing in Logistics managementJeyalakshmiAJeyalaks
 
Warehouse operations.layout & design by Omar Youssef
Warehouse operations.layout & design by Omar YoussefWarehouse operations.layout & design by Omar Youssef
Warehouse operations.layout & design by Omar YoussefOmar Youssef
 
Warehousing operations
Warehousing operationsWarehousing operations
Warehousing operationsSuhail Vighio
 
Supply chain concepts and planning.pptx
Supply chain concepts and planning.pptxSupply chain concepts and planning.pptx
Supply chain concepts and planning.pptxRanjithJay
 
Warehouse Operations and WMS
Warehouse Operations and WMSWarehouse Operations and WMS
Warehouse Operations and WMSMaeverickMatibag
 
Inventory management
 Inventory management Inventory management
Inventory managementN M
 
A Quick Guide to Stores Management - for beginners
A Quick Guide to Stores Management - for beginnersA Quick Guide to Stores Management - for beginners
A Quick Guide to Stores Management - for beginnersAnanth Palaniappan
 
Fundamentals of Logistics.pptx
Fundamentals of Logistics.pptxFundamentals of Logistics.pptx
Fundamentals of Logistics.pptxssuserba946c
 
warehouse location considerations.ppt
warehouse location considerations.pptwarehouse location considerations.ppt
warehouse location considerations.pptBlessingMapoka
 
Warehouse inventory mgmt slides v4-0
Warehouse inventory mgmt slides v4-0Warehouse inventory mgmt slides v4-0
Warehouse inventory mgmt slides v4-0Joe Jackson
 
Warehousing management final copy (1)
Warehousing management final copy (1)Warehousing management final copy (1)
Warehousing management final copy (1)Agus Witono
 
Logistics & Logistics Management
Logistics & Logistics ManagementLogistics & Logistics Management
Logistics & Logistics ManagementFahad Ali
 
Warehouse management and operations. How to increase eirther the performances...
Warehouse management and operations. How to increase eirther the performances...Warehouse management and operations. How to increase eirther the performances...
Warehouse management and operations. How to increase eirther the performances...Andrea Payaro
 
RFID on Warehouse Management System
RFID on Warehouse Management SystemRFID on Warehouse Management System
RFID on Warehouse Management SystemCheri Amour Calicdan
 
Supply Chain Management module 2
Supply Chain Management module 2Supply Chain Management module 2
Supply Chain Management module 2Ravishankar ulle
 

Was ist angesagt? (20)

Ware housing in Logistics management
Ware housing in Logistics managementWare housing in Logistics management
Ware housing in Logistics management
 
Warehouse operations.layout & design by Omar Youssef
Warehouse operations.layout & design by Omar YoussefWarehouse operations.layout & design by Omar Youssef
Warehouse operations.layout & design by Omar Youssef
 
Design of supply chain networks
Design of supply chain networksDesign of supply chain networks
Design of supply chain networks
 
Warehousing operations
Warehousing operationsWarehousing operations
Warehousing operations
 
Supply chain concepts and planning.pptx
Supply chain concepts and planning.pptxSupply chain concepts and planning.pptx
Supply chain concepts and planning.pptx
 
Warehouse Operations and WMS
Warehouse Operations and WMSWarehouse Operations and WMS
Warehouse Operations and WMS
 
Inventory management
 Inventory management Inventory management
Inventory management
 
Reverse logistics
Reverse logisticsReverse logistics
Reverse logistics
 
A Quick Guide to Stores Management - for beginners
A Quick Guide to Stores Management - for beginnersA Quick Guide to Stores Management - for beginners
A Quick Guide to Stores Management - for beginners
 
Orderpicking
OrderpickingOrderpicking
Orderpicking
 
Logistics Management
Logistics ManagementLogistics Management
Logistics Management
 
Fundamentals of Logistics.pptx
Fundamentals of Logistics.pptxFundamentals of Logistics.pptx
Fundamentals of Logistics.pptx
 
warehouse location considerations.ppt
warehouse location considerations.pptwarehouse location considerations.ppt
warehouse location considerations.ppt
 
Warehouse inventory mgmt slides v4-0
Warehouse inventory mgmt slides v4-0Warehouse inventory mgmt slides v4-0
Warehouse inventory mgmt slides v4-0
 
Warehousing management final copy (1)
Warehousing management final copy (1)Warehousing management final copy (1)
Warehousing management final copy (1)
 
Logistics & Logistics Management
Logistics & Logistics ManagementLogistics & Logistics Management
Logistics & Logistics Management
 
Warehouse management and operations. How to increase eirther the performances...
Warehouse management and operations. How to increase eirther the performances...Warehouse management and operations. How to increase eirther the performances...
Warehouse management and operations. How to increase eirther the performances...
 
Warehouse management
Warehouse managementWarehouse management
Warehouse management
 
RFID on Warehouse Management System
RFID on Warehouse Management SystemRFID on Warehouse Management System
RFID on Warehouse Management System
 
Supply Chain Management module 2
Supply Chain Management module 2Supply Chain Management module 2
Supply Chain Management module 2
 

Ähnlich wie Warehouse Activity Profiling

On August 29, 2005, Hurricane Katrina devastated New Orleans and t.docx
On August 29, 2005, Hurricane Katrina devastated New Orleans and t.docxOn August 29, 2005, Hurricane Katrina devastated New Orleans and t.docx
On August 29, 2005, Hurricane Katrina devastated New Orleans and t.docxhopeaustin33688
 
An Efficient Approach for Asymmetric Data Classification
An Efficient Approach for Asymmetric Data ClassificationAn Efficient Approach for Asymmetric Data Classification
An Efficient Approach for Asymmetric Data ClassificationAM Publications
 
REVIEW: Frequent Pattern Mining Techniques
REVIEW: Frequent Pattern Mining TechniquesREVIEW: Frequent Pattern Mining Techniques
REVIEW: Frequent Pattern Mining TechniquesEditor IJMTER
 
Dwh lecture slides-week 13
Dwh lecture slides-week 13Dwh lecture slides-week 13
Dwh lecture slides-week 13Shani729
 
( (P A N G . N I N G T A NM i c h i g a n
 ( (P A N G . N  I  N G  T A NM i c h i g a n   ( (P A N G . N  I  N G  T A NM i c h i g a n
( (P A N G . N I N G T A NM i c h i g a n VannaJoy20
 
( (P A N G . N I N G T A NM i c h i g a n .docx
( (P A N G . N  I  N G  T A NM i c h i g a n  .docx( (P A N G . N  I  N G  T A NM i c h i g a n  .docx
( (P A N G . N I N G T A NM i c h i g a n .docxgertrudebellgrove
 
Organizing warehousemanagementN. FaberNetherlands Defe.docx
Organizing warehousemanagementN. FaberNetherlands Defe.docxOrganizing warehousemanagementN. FaberNetherlands Defe.docx
Organizing warehousemanagementN. FaberNetherlands Defe.docxgerardkortney
 
AN ONTOLOGY-BASED DATA WAREHOUSE FOR THE GRAIN TRADE DOMAIN
AN ONTOLOGY-BASED DATA WAREHOUSE FOR THE GRAIN TRADE DOMAINAN ONTOLOGY-BASED DATA WAREHOUSE FOR THE GRAIN TRADE DOMAIN
AN ONTOLOGY-BASED DATA WAREHOUSE FOR THE GRAIN TRADE DOMAINcscpconf
 
12209508.ppt
12209508.ppt12209508.ppt
12209508.pptRCTan1
 
Literature Survey of modern frequent item set mining methods
Literature Survey of modern frequent item set mining methodsLiterature Survey of modern frequent item set mining methods
Literature Survey of modern frequent item set mining methodsijsrd.com
 
warehousing-layout-design-and-processes-setup-110917071514-phpapp02
warehousing-layout-design-and-processes-setup-110917071514-phpapp02warehousing-layout-design-and-processes-setup-110917071514-phpapp02
warehousing-layout-design-and-processes-setup-110917071514-phpapp02welbert masbad
 
Ijsrdv1 i2039
Ijsrdv1 i2039Ijsrdv1 i2039
Ijsrdv1 i2039ijsrd.com
 
Thesis - Mechanizing optimization of warehouses by implementation of machine ...
Thesis - Mechanizing optimization of warehouses by implementation of machine ...Thesis - Mechanizing optimization of warehouses by implementation of machine ...
Thesis - Mechanizing optimization of warehouses by implementation of machine ...Shrikant Samarth
 

Ähnlich wie Warehouse Activity Profiling (20)

Dekoster2007
Dekoster2007Dekoster2007
Dekoster2007
 
On August 29, 2005, Hurricane Katrina devastated New Orleans and t.docx
On August 29, 2005, Hurricane Katrina devastated New Orleans and t.docxOn August 29, 2005, Hurricane Katrina devastated New Orleans and t.docx
On August 29, 2005, Hurricane Katrina devastated New Orleans and t.docx
 
An Efficient Approach for Asymmetric Data Classification
An Efficient Approach for Asymmetric Data ClassificationAn Efficient Approach for Asymmetric Data Classification
An Efficient Approach for Asymmetric Data Classification
 
REVIEW: Frequent Pattern Mining Techniques
REVIEW: Frequent Pattern Mining TechniquesREVIEW: Frequent Pattern Mining Techniques
REVIEW: Frequent Pattern Mining Techniques
 
Dwh lecture slides-week 13
Dwh lecture slides-week 13Dwh lecture slides-week 13
Dwh lecture slides-week 13
 
( (P A N G . N I N G T A NM i c h i g a n
 ( (P A N G . N  I  N G  T A NM i c h i g a n   ( (P A N G . N  I  N G  T A NM i c h i g a n
( (P A N G . N I N G T A NM i c h i g a n
 
( (P A N G . N I N G T A NM i c h i g a n .docx
( (P A N G . N  I  N G  T A NM i c h i g a n  .docx( (P A N G . N  I  N G  T A NM i c h i g a n  .docx
( (P A N G . N I N G T A NM i c h i g a n .docx
 
Organizing warehousemanagementN. FaberNetherlands Defe.docx
Organizing warehousemanagementN. FaberNetherlands Defe.docxOrganizing warehousemanagementN. FaberNetherlands Defe.docx
Organizing warehousemanagementN. FaberNetherlands Defe.docx
 
AN ONTOLOGY-BASED DATA WAREHOUSE FOR THE GRAIN TRADE DOMAIN
AN ONTOLOGY-BASED DATA WAREHOUSE FOR THE GRAIN TRADE DOMAINAN ONTOLOGY-BASED DATA WAREHOUSE FOR THE GRAIN TRADE DOMAIN
AN ONTOLOGY-BASED DATA WAREHOUSE FOR THE GRAIN TRADE DOMAIN
 
Jhu Week 3
Jhu Week 3Jhu Week 3
Jhu Week 3
 
unit 1.pptx
unit 1.pptxunit 1.pptx
unit 1.pptx
 
D-5436
D-5436D-5436
D-5436
 
12209508.ppt
12209508.ppt12209508.ppt
12209508.ppt
 
Literature Survey of modern frequent item set mining methods
Literature Survey of modern frequent item set mining methodsLiterature Survey of modern frequent item set mining methods
Literature Survey of modern frequent item set mining methods
 
G045033841
G045033841G045033841
G045033841
 
warehousing-layout-design-and-processes-setup-110917071514-phpapp02
warehousing-layout-design-and-processes-setup-110917071514-phpapp02warehousing-layout-design-and-processes-setup-110917071514-phpapp02
warehousing-layout-design-and-processes-setup-110917071514-phpapp02
 
Dma unit 1
Dma unit   1Dma unit   1
Dma unit 1
 
Ijsrdv1 i2039
Ijsrdv1 i2039Ijsrdv1 i2039
Ijsrdv1 i2039
 
Thesis - Mechanizing optimization of warehouses by implementation of machine ...
Thesis - Mechanizing optimization of warehouses by implementation of machine ...Thesis - Mechanizing optimization of warehouses by implementation of machine ...
Thesis - Mechanizing optimization of warehouses by implementation of machine ...
 
Lecture1
Lecture1Lecture1
Lecture1
 

Mehr von Mohammad Hye

Logistics Strategy_Case study solutions Abcoat Pvt. Ltd.
Logistics Strategy_Case study solutions Abcoat Pvt. Ltd.Logistics Strategy_Case study solutions Abcoat Pvt. Ltd.
Logistics Strategy_Case study solutions Abcoat Pvt. Ltd.Mohammad Hye
 
Logistics Strategy_Case study solutions Abcoat Pvt. Ltd.
Logistics Strategy_Case study solutions Abcoat Pvt. Ltd.Logistics Strategy_Case study solutions Abcoat Pvt. Ltd.
Logistics Strategy_Case study solutions Abcoat Pvt. Ltd.Mohammad Hye
 
SMART TROLLEY APPLICATION REDUCE PICKING ERROR IN WAREHOUSE, SUPERSTORES AND ...
SMART TROLLEY APPLICATION REDUCE PICKING ERROR IN WAREHOUSE, SUPERSTORES AND ...SMART TROLLEY APPLICATION REDUCE PICKING ERROR IN WAREHOUSE, SUPERSTORES AND ...
SMART TROLLEY APPLICATION REDUCE PICKING ERROR IN WAREHOUSE, SUPERSTORES AND ...Mohammad Hye
 
Regrouping Functions of Warehouse
Regrouping Functions of Warehouse Regrouping Functions of Warehouse
Regrouping Functions of Warehouse Mohammad Hye
 
Blue Ocean Strategy
Blue Ocean StrategyBlue Ocean Strategy
Blue Ocean StrategyMohammad Hye
 

Mehr von Mohammad Hye (6)

Logistics Strategy_Case study solutions Abcoat Pvt. Ltd.
Logistics Strategy_Case study solutions Abcoat Pvt. Ltd.Logistics Strategy_Case study solutions Abcoat Pvt. Ltd.
Logistics Strategy_Case study solutions Abcoat Pvt. Ltd.
 
Logistics Strategy_Case study solutions Abcoat Pvt. Ltd.
Logistics Strategy_Case study solutions Abcoat Pvt. Ltd.Logistics Strategy_Case study solutions Abcoat Pvt. Ltd.
Logistics Strategy_Case study solutions Abcoat Pvt. Ltd.
 
Roles of port
Roles of portRoles of port
Roles of port
 
SMART TROLLEY APPLICATION REDUCE PICKING ERROR IN WAREHOUSE, SUPERSTORES AND ...
SMART TROLLEY APPLICATION REDUCE PICKING ERROR IN WAREHOUSE, SUPERSTORES AND ...SMART TROLLEY APPLICATION REDUCE PICKING ERROR IN WAREHOUSE, SUPERSTORES AND ...
SMART TROLLEY APPLICATION REDUCE PICKING ERROR IN WAREHOUSE, SUPERSTORES AND ...
 
Regrouping Functions of Warehouse
Regrouping Functions of Warehouse Regrouping Functions of Warehouse
Regrouping Functions of Warehouse
 
Blue Ocean Strategy
Blue Ocean StrategyBlue Ocean Strategy
Blue Ocean Strategy
 

Kürzlich hochgeladen

Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3JemimahLaneBuaron
 
social pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajansocial pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajanpragatimahajan3
 
Student login on Anyboli platform.helpin
Student login on Anyboli platform.helpinStudent login on Anyboli platform.helpin
Student login on Anyboli platform.helpinRaunakKeshri1
 
BAG TECHNIQUE Bag technique-a tool making use of public health bag through wh...
BAG TECHNIQUE Bag technique-a tool making use of public health bag through wh...BAG TECHNIQUE Bag technique-a tool making use of public health bag through wh...
BAG TECHNIQUE Bag technique-a tool making use of public health bag through wh...Sapna Thakur
 
Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...
Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...
Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...fonyou31
 
Beyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global ImpactBeyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global ImpactPECB
 
Z Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphZ Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphThiyagu K
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdfQucHHunhnh
 
Class 11th Physics NEET formula sheet pdf
Class 11th Physics NEET formula sheet pdfClass 11th Physics NEET formula sheet pdf
Class 11th Physics NEET formula sheet pdfAyushMahapatra5
 
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...EduSkills OECD
 
1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdfQucHHunhnh
 
Unit-IV- Pharma. Marketing Channels.pptx
Unit-IV- Pharma. Marketing Channels.pptxUnit-IV- Pharma. Marketing Channels.pptx
Unit-IV- Pharma. Marketing Channels.pptxVishalSingh1417
 
microwave assisted reaction. General introduction
microwave assisted reaction. General introductionmicrowave assisted reaction. General introduction
microwave assisted reaction. General introductionMaksud Ahmed
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)eniolaolutunde
 
Grant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingGrant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingTechSoup
 
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...Krashi Coaching
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxheathfieldcps1
 
Measures of Dispersion and Variability: Range, QD, AD and SD
Measures of Dispersion and Variability: Range, QD, AD and SDMeasures of Dispersion and Variability: Range, QD, AD and SD
Measures of Dispersion and Variability: Range, QD, AD and SDThiyagu K
 

Kürzlich hochgeladen (20)

Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3
 
social pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajansocial pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajan
 
Student login on Anyboli platform.helpin
Student login on Anyboli platform.helpinStudent login on Anyboli platform.helpin
Student login on Anyboli platform.helpin
 
BAG TECHNIQUE Bag technique-a tool making use of public health bag through wh...
BAG TECHNIQUE Bag technique-a tool making use of public health bag through wh...BAG TECHNIQUE Bag technique-a tool making use of public health bag through wh...
BAG TECHNIQUE Bag technique-a tool making use of public health bag through wh...
 
Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...
Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...
Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...
 
Beyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global ImpactBeyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global Impact
 
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
 
Z Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphZ Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot Graph
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdf
 
Class 11th Physics NEET formula sheet pdf
Class 11th Physics NEET formula sheet pdfClass 11th Physics NEET formula sheet pdf
Class 11th Physics NEET formula sheet pdf
 
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
 
1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdf
 
Unit-IV- Pharma. Marketing Channels.pptx
Unit-IV- Pharma. Marketing Channels.pptxUnit-IV- Pharma. Marketing Channels.pptx
Unit-IV- Pharma. Marketing Channels.pptx
 
microwave assisted reaction. General introduction
microwave assisted reaction. General introductionmicrowave assisted reaction. General introduction
microwave assisted reaction. General introduction
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)
 
Grant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingGrant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy Consulting
 
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptx
 
Código Creativo y Arte de Software | Unidad 1
Código Creativo y Arte de Software | Unidad 1Código Creativo y Arte de Software | Unidad 1
Código Creativo y Arte de Software | Unidad 1
 
Measures of Dispersion and Variability: Range, QD, AD and SD
Measures of Dispersion and Variability: Range, QD, AD and SDMeasures of Dispersion and Variability: Range, QD, AD and SD
Measures of Dispersion and Variability: Range, QD, AD and SD
 

Warehouse Activity Profiling

  • 1. WAREHOUSE ACTIVITY PROFILING Master of Science in Logistics Management Faculty of Business & Information Systems GL 006_Warehouse Management Mohammad Nazmuzzaman Hye 1001748700 Public Talk 1
  • 2. Outline • Concept of Warehouse Activity Profiling • Master Data for Warehouse Activity Profile • WAP Process and Example 2
  • 3. Warehouse Activity Profiling (WAP) References: 1. J.J. Bartholdi and S. T. Hackman. Warehouse & distribution science. Supply chain and logistics institute, Georgia institute of technology, 2009. 2. E. Frazelle. World-class warehousing and material handling. McGraw-Hill Professional, 2002. 3. D.E Mulcahy. Warehouse distribution and operations handbook. McGraw-Hill New York, 1994. Warehouse • A Warehouse is a complex and busy supply chain entity. • Data Analytics on warehouse comes under activity profiling Profile • Profile: an outline/Snapshot of an aspect of any logistics activity. • Example: Customer Order Profile (Behavior of Customer order/Ordering Pattern) Profiling • The systematic analysis of item or order activity to identify root cause , opportunities for improvement and basis for decision making. Warehouse Activity Profiling • Analysis of Historical data for the purpose of Projecting Warehouse Activity • WAP determines Storage Mood , Physical Layout , workflow process and labor and equipment requirements. 3
  • 4. Warehouse Activity Profiling (WAP) • What : improving warehouse by understanding natures & exploring patterns • Idea : data mining with database program References: 1. J.J. Bartholdi and S. T. Hackman. Warehouse & distribution science. Supply chain and logistics institute, Georgia institute of technology, 2009. 2. E. Frazelle. World-class warehousing and material handling. McGraw-Hill Professional, 2002. 3. D.E Mulcahy. Warehouse distribution and operations handbook. McGraw-Hill New York, 1994. 4
  • 5. Investigation = WAP Crime Investigation Warehouse Activity Profiling  Gathering evidence & witness  Gathering Data  Understanding Motives  Understanding Patterns  Selecting Suspects  Selection Cause and Solutions  Capturing Murder  Improving efficiency and productivity Questions and Data Information Success of Profiling References: 1. J.J. Bartholdi and S. T. Hackman. Warehouse & distribution science. Supply chain and logistics institute, Georgia institute of technology, 2009. 2. E. Frazelle. World-class warehousing and material handling. McGraw-Hill Professional, 2002. 3. D.E Mulcahy. Warehouse distribution and operations handbook. McGraw-Hill New York, 1994. 5
  • 6. Benefits of Warehouse Activity Profiling Understand Demands & Patterns • Layout, Picking Policy, Labor Management Calculate Key Performance Index (KPI) • Snap Shot of Warehouse Managing SKU • Select Suitable Equipment, packages , slotting, default pick path Gather Data for Design References: 1. J.J. Bartholdi and S. T. Hackman. Warehouse & distribution science. Supply chain and logistics institute, Georgia institute of technology, 2009. 2. E. Frazelle. World-class warehousing and material handling. McGraw-Hill Professional, 2002. 3. D.E Mulcahy. Warehouse distribution and operations handbook. McGraw-Hill New York, 1994. 6
  • 7. Master Data  Master Data = Source Data (Profiling Database) ITEM MASTER LOCATION MASTER ORDER MASTER Database Related to SKUs Database of inventory at all storage location Database of sale in-out to warehouse References: 1. J.J. Bartholdi and S. T. Hackman. Warehouse & distribution science. Supply chain and logistics institute, Georgia institute of technology, 2009. 2. E. Frazelle. World-class warehousing and material handling. McGraw-Hill Professional, 2002. 3. D.E Mulcahy. Warehouse distribution and operations handbook. McGraw-Hill New York, 1994. 7
  • 8. Profiling Data: Item Master  General : SKU ID, Description, Vendor ID  Bulk Break : Break SKU , Box Per Pallet  Physical: Volume, width (length X height X weight)  Time: received date , expired date  Ordering : min-max , response person  Others: Packing note , shipping note, lot # , equipment Source: Warehousing Science http://www2.isye.gatech.edu/j̃jb/wh/book/profile/activities/profilingexercise.html 8
  • 9. Profiling Data: Location Master  Header : date-time that data are received  Address : Zone , aisle, section, position  Unit: quantity, case pallet Source: Warehousing Science http://www2.isye.gatech.edu/j̃jb/wh/book/profile/activities/profilingexercise.html 9
  • 11. Profiling Data: Order Master  Header : Order ID , Customer ID  Detail : SKU ID , Date , Time , Quantity (Qty), Unit  Note: Largest Database Source: Warehousing Science http://www2.isye.gatech.edu/j̃jb/wh/book/profile/activities/profilingexercise.html 11
  • 12. Process in WAP Define Question What do we plan to improve (Pros. Vs. Cons.) Gather Data Meaning of Data and finding related Data: Static : SKU related, Layout-zone , Std. time , cut-off Time Dynamic : Picker Related, Plan , OT , Schedule Import Data Connect With Database – basic Statistic Analysis Check Data Inconsistency , Outlier  Clean-Up-Data Analysis Data Create and explain Distribution Implementation Gap Analysis , Saving Analysis 12
  • 13. Some basic summary statistics Order Related Facility Related  Average number of SKU’s involved  work and storage complexity  Area of the warehouse  Average number of orders shipped per day  volume of activity  Average number of shipments received per day the “backend ”activity  Average number of lines (SKU’s) per order Picking Complexity  Average rate of introduction of new SKU’s  Operational Stability  Average Number of Units Per line  Average number of SKU’s in the warehouse  Volume and scope of operation  Seasonality (Seasonal indices- what percentage of a cycle corresponds to a period in the cycle- Temporal Distribution of the work) • Distribution of the personnel to the various activities labor-related costs and opportunity. 13
  • 14. Graphing the result of Activity Analysis  Discrete distributions  Pareto curves, i.e., cumulative distributions where the items on the horizontal axis are arranged in a decreasing order w.r.t. the corresponding value of the distribution.  Other plots (e.g., bird’s eye view for characterizing location activity) A Bird’s Eye View of a Warehouse with each section of self colored in proportion to the frequency of request for the SKU stored there in. 14
  • 15. Pareto Effect and ABC Analysis Classifying items, events, or activities according to their relative importance  Pareto Effect: A small percentage of the considered entities account for the largest fraction of the activity (20/80 rule)  ABC analysis: Exploit the Pareto effects in order to classify the considered entities into (typically three: A, B and C) categories, such that - the entities in the first category are the ones responsible for most of the activity, and therefore, more closely managed; - the entities in the second category account for most of the remaining part, and therefore, are moderately important; - the entities in the third category are the largest bulk responsible for only a small part of the activity, and therefore, insignificant. References: J.J. Bartholdi and S. T. Hackman. Warehouse & distribution science. Supply chain and logistics institute, Georgia institute of technology, 2009. 15
  • 16. Example of WAP Work Patterns and their Implications • Distribution of lines per order: What percentage of orders have a single line, two lines, etc. (Reveals possibilities for batching and/or zoning) • Distribution of picks by order-size: What fraction of picks comes from single-line orders, two-line orders, etc. (reveals whether most work is generated by small or large orders, shipping activity) • Distribution of families/zones per order: What fraction of orders involves a single family/zone, two families/zones, etc. (identifies coupling which can be exploited by the picking process) • Family pairs analysis / “order-crossings” (for zones): identify pairs of families/zones with correlated demand (this correlation should be exploited by putting items in each pair close to each other) 16
  • 17. Conclusion 17 An activity profile is essential to really understand what matter in a warehouse. The Activity Profile will enable us to understand, Mange and improve use of labor ,space and equipment. WAP is a special case of data-mining, which is simply the rummaging through database to look for patterns that might be exploited to improve operations.

Hinweis der Redaktion

  1. Warehouse is a complicated and busy place and it can be hard to get an accurate sense of what is happening. Understanding the customer order is the 1st step
  2. Darker Shading indicates more frequent visit of Order picker. How Picking is distributed over the SKU’s . / How Concentrated the picking is amongst the most popular SKU’s How Concentrate the Picking is amongst the most popular zone.