News Release

Study finds ways to avoid hidden dangers of accumulated stresses on seagrass

Hundreds of millions of cubic meters of vital seagrass meadows worldwide can potentially be at risk of collapse from accumulated effects of repeated dredging and natural stress -- a QUT-led research project examines just what the main risks are

Peer-Reviewed Publication

Queensland University of Technology

QUT Research Fellow Dr. Paul Wu

image: QUT Research Fellow Dr. Paul Wu is part of a research team working towards saving seagrass from dredging. view more 

Credit: Anthony Weate/QUT Marketing & Communication.

A new QUT-led study has found ways to detect hidden dangers of repeated stresses on seagrass using statistical modelling.

The research, published by the Journal of Applied Ecology, found cumulative maintenance dredging which affected the light on the sea floor increased risks on seagrass survival.

It found, globally, seagrass meadows can be at risk of collapse from accumulated effects of repeated dredging and natural stress.

However, lead researcher QUT's Dr Paul Wu said maintenance dredging programs of one or two weeks (common in Queensland) were unlikely to impact seagrass.

  • Seagrass provide shelter and food to marine life, including at-risk species like dugongs and green turtles
  • Globally, hundreds of millions of cubic metres of sediment are dredged annually
  • Dredging repeated every 1, 2 or 3 years, or for three months or more duration, needs careful management to avoid a loss of resilience
  • Latest research builds on recently released research pinpointing 'ecological windows' for timing of dredging

"Our model predicts ahead of time how much repeated stress is too much," Dr Wu said.

"Our results show dredging can be successfully managed to maintain healthy seagrass meadows in the absence of other disturbances.

"The research isn't about stopping dredging.

"It's about being able to predict how resilient the seagrass will be by incorporating environmental conditions such as storms, cyclones and run-off from agriculture."

Dr Wu said port authorities and coastal developers could use the research to support a risk-informed management strategy.

Coastal development is commonly associated with dredging, which presents a hazard to ecosystem health via stressors including light degradation and water quality reduction.

"Generally, dredging repeated every one, two or three years, or of three months duration or more, needs careful management to avoid a loss of seagrass resilience," Dr Wu said.

Dr Wu said the development of a risk modelling approach, based on a Bayesian Network, was a tool increasingly applied in ecology.

The findings of the study are specific to hazards and environmental conditions for individual sites.

"For instance, dredging repeated every one, two or three years on a Halophila meadow at Hay Point was predicted to be at risk of losing resilience," he said.

"We developed 960 hazard scenarios including frequency of dredging durations of between one to six months and the level of light stress and the month when dredging occurred."

Dr Wu is an Associate Investigator with the ARC Centre of Excellence for Mathematical and Statistical Frontiers (ACEMS) within QUT's Mathematical and Statistical Sciences Faculty.


High res photos of Dr Wu and a pdf of the JAE paper can be provided upon request. View video at:

Co-authors are: QUT's Distinguished Professor Kerrie Mengersen and Adjunct Professor Julian Caley, Dr Kathryn McMahon (School of Sciences and Centre for Marine Ecosystems Research, Edith Cowan University), Dr Michael Rasheed, Professor Gary Kendrick (University of Western Australia), Dr Paul H York, Kathryn Chartrand (Centre for Tropical Water & Aquatic Ecosystem Research James Cook University)

Editorial Note: the DOI for this paper will be 10.1111/1365-2664.13037 and the direct web link:

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