Top Banner
Big data in freight transport Per Olof Arnäs Chalmers @Dr_PO [email protected] Slides on slideshare.net/poar Film by Foursquare. Google: checkins foursquare
37

Big data in freight transport

Nov 19, 2014

Download

Business

Per Olof Arnäs

A talk on possibilities and issues regarding Big data in freight transport.
Welcome message from author
This document is posted to help you gain knowledge. Please leave a comment to let me know what you think about it! Share it to your friends and learn new things together.
Transcript
Page 1: Big data in freight transport

Big data in freight transport

!

Per Olof Arnäs Chalmers

@Dr_PO [email protected]

!Slides on slideshare.net/poar

Film by Foursquare. Google: checkins foursquare

Page 2: Big data in freight transport

We are in the middle of a gigantic exponential development curve

beginning

Page 3: Big data in freight transport

Gartners Hype Cycle for Emerging Technologies

Source: Gartner August 2014

Page 4: Big data in freight transport

Gartners Hype Cycle for Emerging Technologies

Could affect freight transport

Page 5: Big data in freight transport

”Fast Up-and-Coming Movers Toward the Peak Are Fueled by Digital Business and Payments”

”…the market has settled into a reasonable set of approaches, and the new technologies and practices are additive to existing solutions” (regarding the decline of Big data on the curve)

Gartner, August 2014

Gartners Hype Cycle for Emerging Technologies

Page 6: Big data in freight transport

So…

What is Big data?

Page 7: Big data in freight transport

2011 2013 2015

”Big data is an all-encompassing term for any collection of data sets so large and complex that it becomes difficult to process using on-hand data management tools or traditional data processing applications.”

- Wikipedia

2015

Page 8: Big data in freight transport

Not statistics

Exhausted by Adrian Sampson on Flickr (CC-BY)

just

Page 9: Big data in freight transport

Not Business

Intelligence

Basingstoke Office Staff Desk "No computer" by John Sheldon on Flickr (CC-BY,NC,SA)

just

Page 10: Big data in freight transport

http://dashburst.com/infographic/big-data-volume-variety-velocity/

Page 11: Big data in freight transport

Google flights

https://www.google.se/flights/

Page 12: Big data in freight transport

Jawbone measures sleep interruption during earthquake

https://jawbone.com/blog/napa-earthquake-effect-on-sleep/

Page 13: Big data in freight transport

Strategic Tactical Operational Predictive

Time horizons Freight industry

Most (preferably all) decisions in the

transportation industry are made here. At the latest.

Uninformed, ad-hoc, and

probably non optimal,

decisions

Science fiction

Page 14: Big data in freight transport

Strategic Tactical Operational Predictive

But with technology, we are approaching

this boundary

…and we are starting to move past it!

Real-time!

Time horizons Freight industry

Page 15: Big data in freight transport

smile! by Judy van der Velden (CC-BY,NC,SA)

Speculative shipping

http://www.scdigest.com/ontarget/14-01-21-1.php?cid=7767

Page 16: Big data in freight transport

http://www.scdigest.com/ontarget/14-01-21-1.php?cid=7767

Speculative shipping Package item(s) as a package for

eventual shipment to a delivery address

Associate unique ID with package

Select destination geographic area for package

Ship package to selected distribution geographic area without completely

specifying delivery address

Orders satisfied by item(s)

received?

Package redirected?

Determine package location

Convey delivery address, package ID to delivery location

Assign delivery address to package

Deliver package to delivery address

Convey indication of new destination geographic area and package ID to

current location

Yes

Yes

No

No

smile! by Judy van der Velden (CC-BY,NC,SA)

Page 17: Big data in freight transport

Business processes

Infra- structure

Paper based Phone

Papers

Road signsAnalogue

tools

RDS

Monitor fuel

cosnumption

Digitization version 0 0.5 1.0 1.5 2.0

E-m

ail

Fax

TMS

-

systems

Excel

Route planning

GPS for n

avigatio

n

Electro

nically

genera

ted

freig

ht docum

ents

Barcodes

RFI

D-t

ags

Simple order handling

Advanced order handling

Open interface

Web

based UI

Platform based

systems

Hardw

are-

oriented

Data collection

systems

(prop

rietary)

Com

munication w

ith

vehicles

E-invoice

Web based

booking

Route optimisation

Th

e so

cia

l web

Open connectivity

Integrated

prognosis

Data collection

systems (open)

Tolling

systems

Webservices with

traffic data

Dyn

amic

ro

utin

g sy

stem

s

Pe

rform

an

ce

Ba

sed

ac

ce

ss

Pe

rfo

rma

nc

e

Ba

sed

ac

ce

ss

Mas

hups

Mul

tiple

dat

a so

urce

s

Pro

be

dat

a

Individual

routin

g

inform

ation

Platooning

PlatooningExceptions handling

Sm

art g

ood

s

Manual

Computers

Software

Functions

Dis

trib

uted

deci

sion

m

akin

g

Goods as bi-

directio

nal

hyperlink

Paper based

CC-BY Per Olof Arnäs, Chalmers

Goods VehicleBarcodes  

RFID  Sensors

ERP systems  TMS systems  

E-invoices  Cloudbased

services

Order handling  Driver support  Vehicle economics

RDS-TMC  Road taxes  Active traffic support

Predictive

maintenance

2014-08-26

Page 18: Big data in freight transport

En la cima! by Alejandro Juárez on Flickr (CC-BY)

3 mountaintops to climb…

Page 19: Big data in freight transport

En la cima! by Alejandro Juárez on Flickr (CC-BY)

3 data types

Mountaintop #1

Collection of data in real-time

Fixed Historical Snapshot

Page 20: Big data in freight transport

En la cima! by Alejandro Juárez on Flickr (CC-BY)

Mountaintop #1

Collection of data in real-time

5 data domainsVehicle CargoDriver Company

Infrastructure/facility

at leas

t…

Page 21: Big data in freight transport

Length Weight WidthHeight

Capacity + other PBS-criteria

EmissionsFuel consumption

Route

Position Speed

Direction

Weight Origin

Destination Accepted ETA

Temperature + other state variables

Temperature + other state variables

Education/training

Speed (ISA) Rest/break schedule

Traffic behaviour Belt usage

Alco lock history

Schedule status (time to next break etc.)

Contracts/ agreements Previous interactions Backoffice support

Fixed Historical Snapshot

Vehicle

Cargo

Driver

Company

Infrastructure/facility

Map + fixed data layers Traffic history

Current traffic Queue

Availability

DATA MATRIX

Page 22: Big data in freight transport

Mountaintop #2

Processing of data in real-time

En la cima! by Alejandro Juárez on Flickr (CC-BY)

Locals and Tourists #1 (GTWA #2): London by Eric Fischer on Flickr

Page 23: Big data in freight transport

Mountaintop #2

Processing of data in real-time

En la cima! by Alejandro Juárez on Flickr (CC-BY)

Page 24: Big data in freight transport

Mountaintop #3

Exploiting data in real-time

En la cima! by Alejandro Juárez on Flickr (CC-BY)

Connected. 362/365 by AndYaDontStop on Flickr (CC-BY)

Lisa for I/O Keynote by Max Braun on Flickr (CC-BY)

Fulham-Manchester United 24-02-2007 by vuhlser on Flickr (CC-

BY)

Page 25: Big data in freight transport

Mountaintop #3

Exploiting data in real-time

En la cima! by Alejandro Juárez on Flickr (CC-BY)

Boeing-KC-97 Stratotanker by x-ray delta one on Flickr (CC-BY)

Page 26: Big data in freight transport

CASES (MANY)

Page 27: Big data in freight transport

CASES (MANY MORE)

Page 28: Big data in freight transport

Human resources

Reduction in driver turnover, driver

assignment, using sentiment data

analysis

Real-time capacity availability

Inventory management

Examples of applications of Big data in freight (Waller and Fawcett, 2013)

Transportation management

Optimal routing, taking into account weather,

traffic congestion, and driver characteristics

Time of delivery, factoring in weather,

driver characteristics, time of day and date

Forecasting

Waller, M. A. and Fawcett, S. E. (2013), Data Science, Predictive Analytics, and Big Data: A Revolution That Will Transform Supply Chain Design and Management. JOURNAL OF BUSINESS LOGISTICS, 34: 77–84

Page 29: Big data in freight transport

7Big Data Best Practice Across Industries

Usage of data in order to:Increase Level of TransparencyOptimize ResourceConsumption Improve Process Qualityand Performance

Increase customersloyalty and retentionPerforming precisecustomer segmentationand targetingOptimize customerinteraction and service

Expanding revenuestreams from existingproductsCreating new revenuestreams from entirelynew (data) products

Exploit data for: Capitalize on data by:

New Business Models

Customer Experience

OperationalEfficiency

Use data to: • Increase level of

transparency• Optimize resource

consumption • Improve process quality

and performance

Exploit data to: • Increase customer

loyalty and retention• Perform precise customer

segmentation and targeting • Optimize customer interaction

and service

Capitalize on data by: • Expanding revenue streams

from existing products • Creating new revenue

streams from entirely new (data) products

New Business ModelsCustomer ExperienceOperational Efficiency

Figure 4: Value dimensions for Big Data use cases; Source: DPDHL / Detecon

2.1 Operational Efficiency

For metropolitan police departments, the task of tracking down criminals to preserve public safety can sometimes be tedious. With many siloed information repositories, casework often involves making manual connection of many data points. This takes times and dramatically slows case resolution. Moreover, road policing resources are deployed reactively, making it very difficult to catch criminals in the act. In most cases, it is not possible to resolve these challenges by increasing police staffing, as government budgets are limited.

One authority that is leveraging its various data sources is the New York Police Department (NYPD). By capturing and connecting pieces of crime-related information, it hopes to stay one step ahead of the perpetrators of crime.6 Long before the term Big Data was coined, the NYPD made an effort to break up the compartmentalization of its data ingests (e.g., data from 911 calls, investigation reports, and more). With a single view of all the informa-

tion related to one particular crime, officers achieve a more coherent, real-time picture of their cases. This shift has significantly sped up retrospective analysis and allows the NYPD to take action earlier in tracking down individual criminals.

The steadily decreasing rates of violent crime in New York7 have been attributed not only to this more effective streamlining of the many data items required to perform casework but also to a fundamental change in policing practice.8 By introducing statistical analysis and georaphical mapping of crime spots, the NYPD has been able to create a “bigger picture” to guide resource deployment and patrol practice.

Now the department can recognize crime patterns using computational analysis, and this delivers insights enabling each commanding officer to proactively identify hot spots of criminal activity.

6 “NYPD changes the crime control equation by the way it uses information”, IBM; cf. https://www-01.ibm.com/software/success/cssdb.nsf/CS/JSTS-6PFJAZ7 “Index Crimes By Region”, New York State Division of Criminal Justice Services, May 2013, cf. http://www.criminaljustice.ny.gov/crimnet/ojsa/stats.htm8 “Compstat and Organizational Change in the Lowell Police Department”, Willis et. al., Police Foundation, 2004; cf. http://www.policefoundation.org/

content/compstat-and-organizational-change-lowell-police-department

2.1.1 Utilizing data to predict crime hotspots

DHL 2013: ”Big Data in Logistics”

Page 30: Big data in freight transport

Manage complex systems

Image from: http://www.as-coa.org/watchlisten/ascoa-visits-rios-operations-center

Page 31: Big data in freight transport

Measure real-time

system behaviour

Emil Johansson - EJOH.SE

Page 32: Big data in freight transport

http://blog.digital.telefonica.com/?press-release=telefonica-dynamic-insights-launches-smart-steps-in-the-uk

Vizualisation

Page 33: Big data in freight transport

Predict future events

Page 34: Big data in freight transport

Avoid unpleasant surprises

Page 35: Big data in freight transport

Domain knowledge critical!

See for instance: Waller, M. A. and Fawcett, S. E. (2013), Data Science, Predictive Analytics, and Big Data: A Revolution

That Will Transform Supply Chain Design and Management. JOURNAL OF BUSINESS LOGISTICS, 34: 77–84

Data scientists - the new superstars

"Data Science Venn Diagram" by Drew Conway - Own work. Licensed under Creative Commons Attribution-Share Alike 3.0 via Wikimedia Commons - http://commons.wikimedia.org/wiki/File:Data_Science_Venn_Diagram.png#mediaviewer/File:Data_Science_Venn_Diagram.png

Page 36: Big data in freight transport

Challenges

The Challenger by Martín Vinacur on Flickr (CC-BY)

Cross-disciplinary

Cross-industries

Cross-borders

Page 37: Big data in freight transport

Big data in freight transport

!

Per Olof Arnäs Chalmers

@Dr_PO [email protected]

!Slides on slideshare.net/poar

Film by Foursquare. Google: checkins foursquare