The daunting complexity of ecosystems has led ecologists to use mathematical modelling to gain understanding of ecological relationships, processes and dynamics. In pursuit of mathematical tractability, these models use simplified descriptions of key patterns, processes and relationships observed in nature. In contrast, ecological data are often complex, scale-dependent, space-time correlated, and governed by nonlinear relations between organisms and their environment. This disparity in complexity between ecosystem models and data has created a large gap in ecology between model and data-driven approaches. Here, we explore data assimilation (DA) with the Ensemble Kalman filter to fuse a two-predator-two-prey model with abundance data from a...
Prediction is one of the last frontiers in ecology. Indeed, predicting fine-scale species compositio...
A new model in the NPZ (nutrient-phytoplankton-zooplankton) style is presented, mechanistically simp...
Estimating animal abundance in space and time is (and will remain) a challange, even for dense obser...
The daunting complexity of ecosystems has led ecologists to use mathematical modelling to gain under...
The daunting complexity of ecosystems has led ecologists to use mathematical modelling to gain under...
In this rapidly changing world, improving the capacity to predict future dynamics of ecological syst...
The potential for forecasting the dynamics of ecological systems is currently unclear, with contrast...
Mathematical models predict that species interactions such as competition and predation can generate...
Ecological stability refers to a range of concepts used to quantify how species and environments cha...
Abstract Background Accurate network models of species interaction could be used to predict populati...
Humans simultaneously depend on and affect the health of natural ecosystems on a global scale, so it...
A suite of data-assimilation methods is presented: the Kalman Filter, the Ensemble Kalman Filter (En...
While economists have discussed ecosystem-based management and similar concepts, little attention ha...
It is difficult to make skillful predictions about the future dynamics of marine phyto-plankton popu...
The purpose of this paper is to examine the use of a complex ecosystem model along with near real-...
Prediction is one of the last frontiers in ecology. Indeed, predicting fine-scale species compositio...
A new model in the NPZ (nutrient-phytoplankton-zooplankton) style is presented, mechanistically simp...
Estimating animal abundance in space and time is (and will remain) a challange, even for dense obser...
The daunting complexity of ecosystems has led ecologists to use mathematical modelling to gain under...
The daunting complexity of ecosystems has led ecologists to use mathematical modelling to gain under...
In this rapidly changing world, improving the capacity to predict future dynamics of ecological syst...
The potential for forecasting the dynamics of ecological systems is currently unclear, with contrast...
Mathematical models predict that species interactions such as competition and predation can generate...
Ecological stability refers to a range of concepts used to quantify how species and environments cha...
Abstract Background Accurate network models of species interaction could be used to predict populati...
Humans simultaneously depend on and affect the health of natural ecosystems on a global scale, so it...
A suite of data-assimilation methods is presented: the Kalman Filter, the Ensemble Kalman Filter (En...
While economists have discussed ecosystem-based management and similar concepts, little attention ha...
It is difficult to make skillful predictions about the future dynamics of marine phyto-plankton popu...
The purpose of this paper is to examine the use of a complex ecosystem model along with near real-...
Prediction is one of the last frontiers in ecology. Indeed, predicting fine-scale species compositio...
A new model in the NPZ (nutrient-phytoplankton-zooplankton) style is presented, mechanistically simp...
Estimating animal abundance in space and time is (and will remain) a challange, even for dense obser...