Title: Nicolas Lebelle
1Energy consumed in freight transport first
results from the shipper and operator survey
- Nicolas Lebelle
- Philippe Marchal
- Christophe Rizet
2Structure of this presentation
- Part One an overview of SOS
- Objectives, structure and sample of the survey
- Geocoding aspects
- Illustration of general results generation
- Part Two energy consumption
- Computing energy consumption
- Energy efficiency of road freight transport
3Part one an overview of INRETS Shipper
Operator Survey (SOS) - tracing the shipments
in Europe
41 Objectives of the survey
- We have good statistical data for each single
mode, derived from the transport sector but - no relations between the modes (no information on
multimodal transport) and - no link with economic activity
- SOS makes this information, by tracking the
shipment along the chain - A first Shipper surveys in France in 1988 and two
limited surveys in 1999 (NPDC, Mystic) - 2004 SOS includes several improvements and a new
objective quantifying energy consumption
5The 4 levels of the survey
6Tracing the shipment along the chain
7Geographical aspects pre-geocoding
- Before the field survey
-
- A list of pre-geocoded places in the CAPI limits
the localization errors and the burden a draft
list based on NIMA database (worldwide coverage
of the survey) - Problem presence of multiple values in the
names - (Ex 3 Frankfurt in Germany)
- An automated process was developed using another
database of main cities with population data - Ex
- Frankfurt /45km/ Nurnberg
- Frankfurt /82km/ Berlin
- Frankfurt /0km/ Frankfurt
8Geographical aspects additional geocoding
- After the field survey
- Why an additional geocoding ?
- missing or erroneus coordinates
- mis-spellt names, inconsistency with the initial
CAPI database - How ?
- Spell checking functions similarity tests
between names
9Geographical aspects transport chains
validation and distances estimation
- a) Detection of "suspect" shipments, by checking
- Consistency between shipments and legs (final
destination for shipment destination for last
leg) - Legs chaining (destination for step i origin
for step i1) - b) Additional checking based on distances
- Shipments distance classes and countries
- Legs distance classes and modes
- c) Road distances estimation
- A standalone tool for visualization and
processing
10Geographical aspects computational tool
11OPTIMIZING THE SAMPLE
- 2 Objectives
- Sufficient number of shipments for non-road
modes ( for the north region) - Improve the accuracy of the results
- Sampling method the 2 steps
- Sampling the firms from an exhaustive list
oversample the firms using non-road modes and in
the North (Activity localization) Strates
based on the number of employees to improve the
accuracy - Sampling the shipments in the CAPI, 3
shipments are randomly chosen among the last 20
shipments The probability of being selected is
weighted in order to adapt the sample to our
objectives.
12Computing energy consumption
- 1) At the leg level
- Energy per vehicle leg
- Evl (distance empty) f(vehicle type, total
weight) - Energy per shipment leg
- Esl Evl (shipment weight / total vehicle
load) - 2) At the shipment level
- Energy per shipment Es SumEsl
- 3) At the company level
- Energy per Cy Ec Sum Es
13Part 2 Overview of first results
- The sample
- 2 962 establ. over 10 (or 6) employees
- 10 462 shipments traced of which 9 742 complete
transport chains - 27 069 operators (intervenants) ??
- 20 074 legs
- The population
- 69 256 establ shippers
- 738 millions of shipments
14Traffic generation / activity Yearly tonage
(1000 t.) / estab.
15Traffic generation / size of establ. Yearly
tonage (1000 t.) / establ.
16Traffic generation / employee Yearly tones /
employee
17Energy consumption first results
18Computing energy consumption
- 1) At the leg level
- Energy per vehicle leg
- Evl (distance empty) f(vehicle type, total
weight) - Energy per shipment leg
- Esl Evl (shipment weight / total vehicle
load) - 2) At the shipment level
- Energy per shipment Es SumEsl
- 3) At the company level
- Energy per Cy Ec Sum Es
19Average energy efficiency for road goe/tkm
20Energy efficiency per shipment goe/tkm is
very scattered (2002 results)
21Next steps on SOS and energy
- A very powerful tool for research, linking
information on the shipper, the shipments, the
operators, the transport logistic services - Modeling the influence of logistical choices on
energy consumption and energy efficiency - 4 steps model energy consumption
- Clusters of establ. in which a direct estimate of
energy would be possible -