Slajd 1 - PowerPoint PPT Presentation

1 / 72
About This Presentation
Title:

Slajd 1

Description:

Slajd 1 – PowerPoint PPT presentation

Number of Views:20
Avg rating:3.0/5.0
Slides: 73
Provided by: pomhab
Category:
Tags: con1 | slajd

less

Transcript and Presenter's Notes

Title: Slajd 1


1
Methodology workshop focused on technology for
identifying marine habitats Trine
Bekkby Workshop at NIVA, Oslo, May 29-30 2007
2
PresentingNorwegian Institute for Water Research
3
District offices and daughter companies
Daughter companies
NIVA group 250 employees
District offices - Trondheim- Hamar - Bergen
- Grimstad
Trondheim
Min office
Solbergstrand Marine Research Station
4
Categories of work
5
Most important areas of research
  • Water resource management
  • Taxonomy and biodiversity
  • Physiology and ecotoxology
  • Physical processes and modelling
  • Geochemistry
  • Cleaning and transport of drinking and bilge
    water
  • Water chemistry and chemical analyses

6
Experience from more than 70 countries
7
PresentingOslo Centre for Interdisciplinary
Environmental and Social Research
8
Area 14 000 m2 Employees 500 Cost 270
mill. kr Started April 2005 Inhabited Oct.
2006
CIENS partners ? NIBR ? NINA ? NILU ?
NIVA ? TØI ? UiO ? met.no ? CICERO NVE
Tandbergbygget på Brekke
9
Heat from the ground covers 90 of the cooling
and 60 of the heating
The biggest solar panel in Norway
10
Presenting ICZMP in Norway
11
ICZMP in Norway - Background
  • Norway has complex terrain, with high mountains,
    deep fjords and a large archipelago. Hence, large
    marine areas are found within the baseline
  • We have many rivers and large freshwater runoffs
    to the ocean, hence a large interaction across
    the coast line
  • We have many water types, outer exposed coast,
    archipelago and inner sheltered areas.
  • Because of all this, the habitats are many and
    complex and biodiversity often high

12
ICZMP in Norway Management and planning
Norway is obliged to the Water Framework
directive WFD (because we are in the EEC), which
includes large marine areas (since we have such a
large archipelago) We are not obliged to the
Habitat Directive and Natura 2000 (because we are
not in the EU) We do not have any MPAs (marine
protected areas), only suggestions under
discussion We have Ramsar areas (for bird
protection), landscape protection areas, national
parks etc., but no true marine protection. We
have management plans for selected areas (e.g.
the Barents Sea), area defined as being of extra
value regarding biodiversity To fulfil the
requirement of the WFD, we have suggested areas
and stations for reference monitoring (i.e. they
are relatively pristine) and areas and stations
for trend monitoring (with pressures, not
pristine)
13
Legal borders of Norway
Coastal areas (1 nm outside the base
line) Territorial waters (12 nm outside the base
line) Exclusive economic zone (200 nm outside
the base line, with exceptions)
14
ICZMP in Norway Management and planning
Water types according to the WDF work
15
ICZMP in Norway Management and planning
Reference areas according to the WFD Trend
monitoring areas according to the WFD Areas of
particularly interest when it comes to
biodiversity Suggestions for MPA
16
ICZMP in Norway All collected data
17
Reference and trend monitoring stations (WFD)
suggested
18
Presenting different projects
19
Presentation of selected projects
MarModell - finding criteria for habitat
modelling CoastScenes - modelling effects of
scenarios Dynamod developing models for the
Skagerrak area Sugar kelp modelling in the
Skagerrak area NorGIS - modelling habitats at
the Nordic level MarNatur - The national
program for mapping and modelling of marine
habitats. Balance Others
20
Presentation of selected projects
MarModell - finding criteria for habitat
modelling CoastScenes - modelling effects of
scenarios Dynamod developing models for the
Skagerrak area Sugar kelp modelling in the
Skagerrak area NorGIS - modelling habitats at
the Nordic level MarNatur - The national
program for mapping and modelling of marine
habitats. Balance Others
21
The aim of MarModell
  • Study the relationship between environmentla
    factors and the distribution and abundance of
    marine coastal habitats
  • Develop methodology for habitat modelling
  • Study the effects of scale
  • The link geology-biology crucial

22
Predictors and responses
  • Bathymetry and terrain (depth, slope, curvature)
  • Wave exposure at different scales
  • Tidal current (together with UiO)
  • Light exposure
  • Light
  • Presence/absence
  • Coverage

23
Input models
Field work
Statistical model building, analyses, model
selection
Data
24
Presentation of selected projects
MarModell - finding criteria for habitat
modelling CoastScenes - modelling effects of
scenarios Dynamod developing models for the
Skagerrak area Sugar kelp modelling in the
Skagerrak area NorGIS - modelling habitats at
the Nordic level MarNatur - The national
program for mapping and modelling of marine
habitats. Balance Others
25
The aim of Coast-scenes
  • Study the relationship between environmentla
    factors and the distribution and abundance of
    marine coastal habitats develop model
  • Define the natural conditions of the area at the
    site of a fish farm, compare with the existing
    conditions
  • Analyse/model the effect of scenarios for human
    acticity development

26
Presentation of selected projects
MarModell - finding criteria for habitat
modelling CoastScenes - modelling effects of
scenarios Dynamod developing models for the
Skagerrak area Sugar kelp modelling in the
Skagerrak area NorGIS - modelling habitats at
the Nordic level MarNatur - The national
program for mapping and modelling of marine
habitats. Balance Others
27
The aim of Dynamod
  • Develop methodology for modelling of marine
    substrate and habitats, both rocky and soft
    seabed
  • Developing base models, i.e. light models
  • Comparing wave exposure models
  • Developing current models
  • Separating rocks from soft sediment
  • Separating different soft sediment classes
  • Modelling ecological status?
  • Modelling rocky shore macroalgaes

28
Presentation of selected projects
MarModell - finding criteria for habitat
modelling CoastScenes - modelling effects of
scenarios Dynamod developing models for the
Skagerrak area Sugar kelp modelling in the
Skagerrak area NorGIS - modelling habitats at
the Nordic level MarNatur - The national
program for mapping and modelling of marine
habitats. Balance Others
29
Presentation of selected projects
MarModell - finding criteria for habitat
modelling CoastScenes - modelling effects of
scenarios Dynamod developing models for the
Skagerrak area Sugar kelp modelling in the
Skagerrak area NorGIS - modelling habitats at
the Nordic level MarNatur - The national
program for mapping and modelling of marine
habitats. Balance Others
30
Presenting equipment and methods for sampling
31
Equipment and methods for sampling (sample
design, equipment, sampling)
Sample design Preliminary model as basis for
selecting stations We need to cover the range of
predictor (depth, slope, terrain, wave exposure,
currents etc.) Stations are randomly selected
within the study area
32
Equipment and methods for sampling (sample
design, equipment, sampling)
Equipment in the field ROV Pico-ROV (small
portable camera, may be operated by
hand) Singlebeam echosounder for recording of
depth in the field, used together with
pico-ROV Multibeam echosounder, used at selected
locations Sediment profile Image (SPI) camera
for sediment penetration depth and ecological
status Grab (sediment samples) FerryBox
(recording equipment on ferries) Divers
33
Equipment and methods for sampling (sample
design, equipment, sampling)
  • Recorded in the field
  • Usually we use small boats and record
  • Depth (from the echosounder)
  • Substrate (visually), presence/absence and
    coverage
  • Habitat presence and absence
  • Habitat coverage
  • If larger boats, then some of the following are
    recorded
  • Substrate classified based on multibeam on
    selected locations
  • Penetration depth (using SPI)
  • Redox depth (from SPI or other equipment)
  • Grain size (from grab)
  • Species composition (from grab of sediment or
    diving on rocky substrate)
  • Environmental state (from SPI pictures)

34
Field work
35
Similarities and differencesNorway - Poland
36
Similarities and differences compared with Polish
conditions
Poland is in the EU and is obliged to both the
Water Framework and the Habitat Directive. Norway
is not in the EU and is only obliged to the EFD
(because we are in the EEC) Norway and Poland
has different bathymetry and topography, the
terrain variability is less in Poland than in
Norway The exposure levels are higher and more
variable in Norway than in Poland The number of
habitats differ between the two countries The
pressures are different (?). In Norway, the
pressures are mainly fishing, fish farms, kelp
harvesting, waterfall regulations and, in some
areas, changing of habitats for recreational
purposes. In Poland ? More?
37
Presentingthe modelling approach in more detail
38
The basic idea
Terrain structures and environmental factors
determines the distribution of marine habitats
But what kind and how? And how to make good
predictions?
39
Modelling in more detail the Norwegian approach
(geophysical factors, substrate habitat
Geophysical base models Depth model (25 m
resolution for the whole of Norway, better in
selected areas), includes some land data to
ensure good models in the coastal zone Wave
exposure model (25 m resolution for the whole of
Norway, 10 m in selected areas) Terrain models
for selected areas (e.g. slope, curvature,
basins, tops) Current circulation models for
selected areas Light percentage models for
selected areas ( of surface light reaching the
seabed, depends on secchi depth) Light exposure
models (an index based on optimal slope and
aspect)
40
Modelled wave exposure
  • Isæus (2004)

41
Depth
42
Slope
43
Curvature
44
Modelled current
45
Light - of surface level
46
Light related to optimal slope and aspect
47
Modelling in more detail the Norwegian approach
(geophysical factors, substrate habitat
Substrate Binomial models separating rocks from
sediment based on slope and curvature Probability
model separating rocks from sediment Probability
model separating sand from softer sediment
(based on data on penetration depth)
48
Seabed substrate
49
Binomial seabed substrate modelling
50
Probability seabed substrate modelling
51
Probability soft seabed sediment modelling
52
Modelling in more detail the Norwegian approach
(geophysical factors, substrate habitat
Habitat Kelp forest - binomial models for
Norway Zostera meadows binomial models for
Norway EUNIS classes binomial models to level
2 for Norway Large shallow inlets and bays
(Natura 2000 habitat) binomial models for
selected areas Kelp probability models for
selected areas Zostera meadows - probability
models for selected areas
53
Modelling approach methodology, some examples
  • Binomial modelling pros and cons
  • Uses empirical data to find max and min values
  • Uses expert judgement to set borders
  • Provides modelled areas on maps that may be
    measured (area)
  • Absolute borders, easy to miscommunicate
  • The uncertainty in the models not included, no
    probability measures

54
Binomial modelling of kelp forest
Skagerrak In exposed and moderately exposed
areas down to 20 m depth North Sea In exposed
areas down to 25 m depth and moderately exposed
areas down to 20 m depth Norwegian Sea to
South-Trøndelag as in the North Sea Norwegian
Sea from to the Barents Sea Exposed areas down
to 25 m (moderately exposed areas are grazed by
sea urchins)
55
Binomial modelling of eelgrass (Zostera marina)
In shallow (down to 7 m depth), relatively flat
(lt7 degrees) and sheltered and moderately exposed
areas
56
Predictions habitat modelling
Green modelled kelp forest Pink modelled
eelgrass Yellow modelled shell sand Turquoise
modelled Pecten maximus
57
Binomial modelling of EUNIS classes
Based on the data available for the whole of
Norway, it has been possible to model EUNIS down
to level 2, using wave exposure and depth
classes. The depth classes are 0-30 m, 30-50,
50-100, 100-200, 200-500, 500-700 and deeper than
700 m. Wave exposure classes are
Wave exposure (SWM) EUNIS class
lt 1200 Ultra beskyttet
1200 4000 Ekstremt beskyttet
4000 10000 Svært beskyttet
10000 100000 Beskyttet
100000 500000 Moderat eksponert
500000 1000000 Eksponert
1000000 2000000 Svært eksponert
gt 2000000 Ekstremt eksponert
58
Modelling approach methodology, some examples
Probability modelling pros and cons Uses
empirical data to find max and min values
Includes the uncertainty of the data in the
models, has probabilities Probabilities makes
it possible to select different approaches,
overestimate (precautionary) or underestimate
(e.g. for time-efficient searching) More
intuitive, easier to explain discrepancies from
observations - Can not include expert
judgement - Depends a lot on the empirical data
set, an insufficient data set will give a bad
model
59
Laminaria hyperborean kelp forest
60
Seagrass (Zostera marina) meadows
61
Analyses separating the information from the
noise
  • Integrating data in a GIS
  • Linking data for analyses
  • Predictor data (depth, slope, wave exposure,
    currents etc)
  • Response data (habitat presence/absence,
    coverage etc)
  • Analyses and model building
  • Finding significant factors (traditional H0
    testing with p-values) OR
  • Build different alternative models and use model
    selection techniques (e.g. AIC)

62
Three traditions
  • Frequentism (p-values)
  • Likelihood (AIC)
  • Bayesian IC
  • Frequentism
  • H0 hypothesis testing, p-values, significance
  • Akaikes Information Criterion (AIC)
  • Testing the models (and the hypotheses) relative
    to each other
  • Finding the model that looses the least
    information
  • Bayes
  • Often called BIC, but it has noting to do with
    information theory, not as well founded on theory
    as AIC
  • Often gets none or very large effects
  • Regarded as better that frequentism, but not as
    good as AIC

63
Traditional H0 testing or AIC model selection
techniques
  • Finding significant factors (traditional H0
    testing with p-values)
  • Did we believe in the H0 in the first place?
  • What does significant p really mean?
  • We test the H0(not the H1), as accept the H1
    because of the rejection
  • Build different alternative models and use model
    selection techniques (AIC)
  • My models are my hypotheses and model selection
    is hypothesis selection
  • All hypothesis are formulated as models, a
    priori neck-up-thinking is essential
  • Testing the models (and the hypotheses) relative
    to each other
  • AIC finds the model that looses the least
    information
  • AIC weights the benefit of a better and more
    complicated model against the cost of
  • including more factors

64
One example on neck-down models
  • Kelp forest presence (P) is determined by wave
    exposure (WE) only
  • P is determined by light attenuation (LA) only
  • P is determined by sea bed substrate (SS) only
  • P is determined by WE and LA
  • P is determines by WE and SS
  • P is determined by LA and SE
  • P is determined by WE, LA and SE
  • P is determined by WE, LA and WELA
  • P is determined by WE, SS and WESS
  • P is determined by LA, SE and LASE
  • P is determined by WE, LA, SE and WELA
  • P is determined by WE, LA, SE and WESE
  • P is determined by WE, LA, SE and LASE
  • P is determined by WE, LA, SE and WELASE

Neck-up choice of hypotheses and models is
essential
65
More about AIC Akaike Information Criterion
  • AIC finds the model that looses the least
    information
  • AIC weights the benefit of a better and more
    complicated model against the cost of
  • including more factors
  • A bit of introduction to the math
  • A maximum likelihood estimate (MLE) or RSS
    (residual sum of squares from Lest
  • square estimate, LSE) value for each
    hypothesis based model are needed
  • (obtained from e.g. an ANOVA)
  • MLE maximises the likelihood, LES minimises the
    sum of squares of error
  • ML or RSS RSS assumes normal, independent data
    and linear relationships, often
  • this is not the case with ecological data. ML
    is most often the best choice.
  • AIC -2log(L) 2K ? -2log(L) is the deviance,
    i.e. the measure of lack of fit.
  • This is linked to the Chi square analysis
    (ChiSq-2log(La/Lb)
  • The model fit often gets better with more
    factors, but you are punished for
  • complicating the model (2K), i.e. a
    cost-benefit approach

66
All models are wrong, but some are useful
67
A bit of math
  • AIC -2log(L) 2K
  • ? -2log(L) is the deviance, i.e. the measure of
    lack of fit.
  • ? K is the number of parameters in the model
  • This is linked to the Chi square analysis
    (ChiSq-2log(La/Lb)
  • The model fit often gets better with more
    factors, but you are punished for
  • complicating the model (2K), i.e. a
    cost-benefit approach

68
Some more math
  • The smaller the AIC value, the better the model
    fit
  • The delta value shows the difference between the
    best and the alternative models
  • Deltalt2 the alternative model has good support
  • Delta 4-7 the alternative model has low support
  • DeltaZ10 the alternative model has no support
  • Wi the Akaike weight, the probability that the
    model in fact is the best, how many ticket do I
    have in the lottery, Wi0.66 means 66 chance
    that the model is best.
  • To know if the best model is fact is good (not
    only the best of the bad), combine AIC with
  • adjusted R2 and residual plotting

69
  • So, what if more than one model is good
  • Describe them all, but choose one for your
    predictions
  • Model averaging (multi model inference), models
    are weigh using the Wi value. Is most often
    recommended

70
GRASP for GIS prediction comments and concerns
  1. Uses GAM (Generalised Additative Models) to
    build models
  2. Uses AIC to select the models
  3. Concerns
  4. The AIC algorithm used in GRASP only applies to
    large datasets, ad additional
  5. algorithm should be added to correct for this
  6. GRASP does not allow for model averaging

71
Model validation using field data
  • Cross validation re-using the data from the
    predictive modelling
  • No point when using AIC, because in the Akaike
    development of the Kullback-Leiber methodology
    into AIC, the expectation of the cross validation
    ends up as the same or similar to the expectation
    of the AIC. So cross validation adds nothing.
  • Validation using fresh data
  • From the predictions, you get probabilities of
    finding a habitat at a certain site (pixel)
  • Collecting data in the field (e.g.
    presence/absence data), you get binomial data (0s
    or 1s) that can be compared with modelled values
    using logistic regression.
  • Look at the R2 and the residual plot

72
Habitat valorisation
  • We havent come too far, due to lack of
    information on habitat distribution and function
    (e.g. little knowledge on rare and threatened
    species). The national program for mapping of
    marine habitats has established some criteria for
    nationally very important (A), regionally
    important (B) and locally important (C)
    occurences.
  • Ecological criteria
  • Ecological function (richness, size, age,
    production rate, functionally close to natural
    state
  • Rareness (rare both regionally and nationally,
    close to natural state when it comes to
    biodiversity
  • Threatenedness (small occurrences, vulnerable,
    reducing in abundance
  • Cultural criteria
  • Aesthetics
  • Use (provides understanding of nature, important
    for recreation, teaching, research, long time
    series and knowledge of trends)
  • A includes the categories critically and
    strongly threatened and vulnerable
  • B includes close threatened
Write a Comment
User Comments (0)
About PowerShow.com