BEESCOUT: A model of bee scouting behaviour and a software tool for characterizing nectar/pollen landscapes for BEEHAVE
Authored by Volker Grimm, M A Becher, J Knapp, J Horn, G Twiston-Davies, J L Osborne
Date Published: 2016
DOI: 10.1016/j.ecolmodel.2016.09.013
Sponsors:
Biotechnology and Biological Sciences Research Council (BBSRC)
Platforms:
NetLogo
Model Documentation:
ODD
Model Code URLs:
http://ars.els-cdn.com/content/image/1-s2.0-S030438001630415X-mmc1.zip
Abstract
Social bees are central place foragers collecting floral resources from
the surrounding landscape, but little is known about the probability of
a scouting bee finding a particular flower patch. We therefore developed
a software tool, BEESCOUT, to theoretically examine how bees might
explore a landscape and distribute their scouting activities over time
and space. An image file can be imported, which is interpreted by the
model as a ``forage map{''} with certain colours representing certain
crops or habitat types as specified by the user. BEESCOUT calculates the
size and location of these potential food sources in that landscape
relative to a bee colony. An individual-based model then determines the
detection probabilities of the food patches by bees, based on parameter
values gathered from the flight patterns of radar-tracked honeybees and
bumblebees. Various ``search modes{''} describe hypothetical search
strategies for the long-range exploration of scouting bees. The
resulting detection probabilities of forage patches can be used as input
for the recently developed honeybee model BEEHAVE, to explore realistic
scenarios of colony growth and death in response to different stressors.
In example simulations, we find that detection probabilities for food
sources close to the colony fit empirical data reasonably well. However, for food sources further away no empirical data are available to
validate model output. The simulated detection probabilities depend
largely on the bees' search mode, and whether they exchange information
about food source locations. Nevertheless, we show that landscape
structure and connectivity of food sources can have a strong impact on
the results. We believe that BEESCOUT is a valuable tool to better
understand how landscape configurations and searching behaviour of bees
affect detection probabilities of food sources. It can also guide the
collection of relevant data and the design of experiments to close
knowledge gaps, and provides a useful extension to the BEEHAVE honeybee
model, enabling future users to explore how landscape structure and food
availability affect the foraging decisions and patch visitation rates of
the bees and, in consequence, to predict colony development and
survival. (C) 2016 The Authors. Published by Elsevier B.V.
Tags
Dispersal
scale
waggle dance
Recruitment
Honey-bees
Harmonic radar
Colony failure
Apis-mellifera
Flight paths
Food sources