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Nick Isaac Biological Records Centre Centre for Ecology & Hydrology Interpreting biodiversity under diverse syndromes of recording behaviour

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Nick Isaac Biological Records Centre Centre for Ecology & Hydrology. Interpreting biodiversity under diverse syndromes of recording behaviour. Nick Isaac Biological Records Centre Centre for Ecology & Hydrology. Extracting trends from biological recording data. - PowerPoint PPT Presentation

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Page 1: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Nick IsaacBiological Records CentreCentre for Ecology & Hydrology

Interpreting biodiversity under diverse syndromes of recording behaviour

Page 2: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Nick IsaacBiological Records CentreCentre for Ecology & Hydrology

Extracting trends from biological recording data

Page 3: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Is biological recording fit for purpose?

• What is the purpose?

• What data are available?

• What are the problem issues?

• What tools might provide a solution?

Page 4: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

• What is the purpose?• Describing species’ distributions• Detecting and attributing change over time• Identifying novelties

Is biological recording fit for purpose?

Mike MajerusWikipedia Commons

FERA

GBNSS

GBNSS

Page 5: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Biological records data

How do we interpret the gaps?

NBN lists 35 data sources:• Individual records• Regional recording projects• Co-ordinated national surveys

Page 6: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Published Atlases

The primary tool for understanding UK biodiversity

Authoritative summary of the current state of knowledge

A snapshot of species’ distributions

Perring, F H, & Walters, S M, eds 1962 Atlas of the British Flora. Thomas Nelson & Sons, London

Page 7: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Published Atlases

Page 8: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Stock & change in distribution

• Repeat atlases allow an assessment of change over time

• Prickly Lettuce (Lactuca serriola) has expanded northwest since 1970

Page 9: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Repeat atlases: plants & birds, butterflies

Page 10: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Biodiversity change using atlases

‘Square counts‘ on repeat atlases reveal which species are increasing vs decreasing

Greatest losses occurred among butterflies, then birds

Thomas, JA et al. (2004). Comparative losses of British butterflies, birds, and plants and the global extinction crisis. Science, 303(5665), 1879–81

Page 11: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Where are we now?

• Atlases provide a rather static view of biodiversity

• The unstructured nature of the data makes square counting unreliable

• Increasing demand for quantitative information

• New methods for estimating trends are being developed

Page 12: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Detecting and attributing change

Trends in the distribution of 8 common ladybirds

A majority show substantial negative response to arrival of Harlequin ladybird

Similar patterns in GB & Belgium

Roy, HE, Adriaens, T, Isaac, NJB et al. (2012). Invasive alien predator causes rapid declines of native European ladybirds. Diversity and Distributions, 18(7), 717–725

Mike Majerus

Page 13: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Past, present and futureBiodiversity IndicatorsAttributing changeDescribing change

Page 14: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Talk outline

• Extracting trends from Biological records data• Problems & possible solutions

• Comparison of candidate methods• Simulations of recording behaviour• Which methods are useful for detecting trends?

• Applications: which species are declining?• Trends in Odonata 1970-2011• Biodiversity Indicator

Page 15: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Recording intensity varies among taxa

Page 16: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Extracting trends from biological records

Page 17: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Recording intensity has increased over time

Page 18: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Telfer’s Change Index

Telfer, MG, Preston, CD & Rothery, P (2002). A general method for measuring relative change in range size from biological atlas data. Biological Conservation, 107(1), 99–109

• Compares two time-periods that differ in recording intensity &/or geographic coverage

Page 19: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Ball’s Visit Rate model

Ball, S, Morris, R, Rotheray, G, & Watt, K (2011). Atlas of the Hoverflies of Great Britain (Diptera, Syrphidae).

Page 20: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Most lists are incomplete

For most groups, ~50% of visits produce ‘incidental records’

Page 21: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Lists lengths are not constant over time

Page 22: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Mixed model

Page 23: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Most records come from a few recorders

Bryophytes: 18Myriapods: 11Moths: 102Orthoptera: 39

Page 24: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Spatial pattern of recording behaviour

Orthoptera 1970-2011: top 4 recorders made 14% of all visits

Page 25: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Hill’s Frescalo method

Hill, MO (2011). Local frequency as a key to interpreting species occurrence data when recording effort is not known. Methods in Ecology and Evolution, 3(1), 195–205.

Red = under-recordedWhite = well-recorded

Frescalo estimates the recording intensity of each grid cell

Page 26: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Hill’s Frescalo method

By estimating recording intensity, Frescalo calculates the number of species that ‘should’ be in each grid cell.

Page 27: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Hill’s Frescalo method

Hill, MO (2011). Local frequency as a key to interpreting species occurrence data when recording effort is not known. Methods in Ecology and Evolution, 3(1), 195–205.

Page 28: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Occupancy modelling: a panacea?

van Strien, A, van Swaay, C, & Kéry, M (2011). Metapopulation dynamics in the butterfly Hipparchia semele changed decades before occupancy declined in the Netherlands. Ecological Applications, 21(7), 2510–2520

Gateshead birders

Page 29: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Talk outline

• Extracting trends from Biological records data• Problems & possible solutions

• Comparison of candidate methods• Simulations of recording behaviour• Which methods are useful for detecting trends?

• Applications: which species are declining?• Trends in Odonata 1970-2011• Biodiversity Indicator

Page 30: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Recorder behaviour

Estimate trendsRaw data

Simulations

How can we estimate trends?

Page 31: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Simulations

Aims:

1. To compare the performance of different methods for estimating range change under realistic scenarios of recorder behaviour

2. To discard methods that are inappropriate

3. To derive rules of thumb for when other methods are appropriate

Page 32: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Simulation overview

• 1000 sites (no spatial information)

• 1 focal species + 25 others

• Focal species occupies 50% sites

• Impose different patterns of recording

• Run for 10 years

• Estimate trends using different methods

Page 33: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Simulation patterns of recording

• A: Control scenario: even recording• Equal probability of sites being visited

• B: Increasing recording intensity• Growth in number of visits

• C1: Incomplete recording (even)• A fixed proportion of Visits produce short lists

• C2: incomplete recording (increasing)• Proportion of short lists increases over time

Page 34: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Type I Error Rates

Page 35: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Type I Error Rates

AEven

RecordingChange Index 0.027

nRecords 0.024

Visit Rate 0.046

MM2sp 0.061

MM3sp 0.058

MM4sp 0.058

Frescalo 0.040

Page 36: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Type I Error Rates

AEven

Recording

BIncreasing Intensity

C1 Incomplete

even

C2Incomplete increasing

Change Index 0.027 0.026 0.033 0.037

Page 37: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Type I Error Rates

AEven

Recording

BIncreasing Intensity

C1 Incomplete

even

C2Incomplete increasing

nRecords 0.024 0.993 0.042 0.609

Page 38: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Type I Error Rates

AEven

Recording

BIncreasing Intensity

C1 Incomplete

even

C2Incomplete increasing

Visit Rate 0.046 0.060 0.059 0.675

Page 39: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Type I Error Rates

AEven

Recording

BIncreasing Intensity

C1 Incomplete

even

C2Incomplete increasing

MM2sp 0.061 0.079 0.053 0.195

MM3sp 0.058 0.079 0.060 0.089

MM4sp 0.058 0.073 0.066 0.049

Page 40: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Type I Error Rates

AEven

Recording

BIncreasing Intensity

C1 Incomplete

even

C2Incomplete increasing

Frescalo 0.040 0.164 0.036 0.060

Page 41: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Type I Error Rates

AEven

Recording

BIncreasing Intensity

C1 Incomplete

even

C2Incomplete increasing

Change Index 0.027 0.026 0.033 0.037

nRecords 0.024 0.993 0.042 0.609

Visit Rate 0.046 0.060 0.059 0.675

MM2sp 0.061 0.079 0.053 0.195

MM3sp 0.058 0.079 0.060 0.089

MM4sp 0.058 0.073 0.066 0.049

Frescalo 0.040 0.164 0.036 0.060

Page 42: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Power to detect a genuine decline

AEven

RecordingChange Index 0.574

nRecords 0.642

Visit Rate 0.739

MM2sp 0.665

MM3sp 0.649

MM4sp 0.615

Frescalo 0.612

Page 43: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Power to detect a genuine decline

AEven

Recording

BIncreasing Intensity

C1 Incomplete

even

C2Incomplete increasing

Change Index 0.574 0.461 0.37 0.316

nRecords 0.642 0 0.449 0.979

Visit Rate 0.739 0.606 0.507 0.985

MM2sp 0.665 0.424 0.319 0.685

MM3sp 0.649 0.408 0.271 0.463

MM4sp 0.615 0.363 0.211 0.208

Frescalo 0.612 0.768 0.34 0.308

Page 44: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Simulations: Conclusions

• The simulation provides a framework for comparing methods under a range of recording scenarios

• The Mixed model method performs best so far (Frescalo & Occupancy results pending)

• In the best recording scenario, a decline of 30% was detected in 60% of simulated datasets

Page 45: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Talk outline

• Extracting trends from Biological records data• Problems & possible solutions

• Comparison of candidate methods• Simulations of recording behaviour• Which methods are useful for detecting trends?

• Applications: which species are declining?• Trends in Odonata 1970-2011• Biodiversity Indicator

Page 46: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Odonata trends 1970-2011

• Broad agreement between methods

• 14/32 species show significant increases under both methods

• 2/32 show significant decreases under both methods

Page 47: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Odonata trends: winners

Wikipedia Commons

Small red-eyed Damselfly(Erythromma viridulum)

Scarce chaser(Libellula fulva)

Emperor Dragonfly(Anax imperator)

Page 48: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Odonata trends: losers

Variable damselfly(Coenagrion pulchellum)

Blue-tailed Damselfly(Ischnura elegans)

Common Blue Damselfly(Enallagma cyathigerum)

Page 49: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Odonata Indicator

Page 50: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

Biological Recording for the 21st Century

• We have the tools to model biodiversity change using unstructured biological records

• This is only possible if records continue to be submitted to the database!

• We could be smarter about data collection

• We’re only just beginning to exploit the potential of biological recording data• Indicators, Red Listing, ecosystem service provision,

targeting Agri-environment schemes

Page 51: Nick Isaac Biological Records Centre Centre for Ecology & Hydrology

AcknowledgmentsTom AugustColin HarrowerDavid Roy, Helen Roy, Michael Pocock, Gary Powney, Chris PrestonMark HillArco van Strien