Model-data fusion is a powerful framework by which to combine models with various data streams (including observations at different spatial or temporal scales), and account for associated uncertainties. The approach can be used to constrain estimates of model states, rate constants, and driver sensitivities. The number of applications of model-data fusion in environmental biology and ecology has been rising steadily, offering insights into both model and data strengths and limitations. For reliable model-data fusion-based results, however, the approach taken must fully account for both model and data uncertainties in a statistically rigorous and transparent manner. Here we review and outline the cornerstones of a rigorous model-data fusion ...
© 2020 The Authors Increasing volumes of data allow environmental scientists to use machine learning...
Environmental models are important tools; however uncertainty is pervasive in the modeling process. ...
How do we know how much we know? Quantifying uncertainty associated with our modelling work is the o...
Model-data fusion is a powerful framework by which to combine models with various data streams (incl...
There are increasing demands in assessing the impacts of change on environmental systems to couple d...
In many practical situations, we need to combine the results of measuring a local value of a certain...
Without corroborating observations, hydrological models should not be trusted. Hydrometric observati...
Models are quantitative formulations of assumptions regarding key physical processes, their mathemat...
International audienceP>It is increasingly being recognized that global ecological research requires...
Uncertainties in model projections of carbon cycling in terrestrial ecosystems stem from inaccurate ...
There is a growing consensus that land surface models (LSMs) that simulate terrestrial biosphere exc...
Abstract: Current model identification strategies often have the objective of finding the model or m...
© 2020 The Authors Increasing volumes of data allow environmental scientists to use machine learning...
Environmental models are important tools; however uncertainty is pervasive in the modeling process. ...
How do we know how much we know? Quantifying uncertainty associated with our modelling work is the o...
Model-data fusion is a powerful framework by which to combine models with various data streams (incl...
There are increasing demands in assessing the impacts of change on environmental systems to couple d...
In many practical situations, we need to combine the results of measuring a local value of a certain...
Without corroborating observations, hydrological models should not be trusted. Hydrometric observati...
Models are quantitative formulations of assumptions regarding key physical processes, their mathemat...
International audienceP>It is increasingly being recognized that global ecological research requires...
Uncertainties in model projections of carbon cycling in terrestrial ecosystems stem from inaccurate ...
There is a growing consensus that land surface models (LSMs) that simulate terrestrial biosphere exc...
Abstract: Current model identification strategies often have the objective of finding the model or m...
© 2020 The Authors Increasing volumes of data allow environmental scientists to use machine learning...
Environmental models are important tools; however uncertainty is pervasive in the modeling process. ...
How do we know how much we know? Quantifying uncertainty associated with our modelling work is the o...