Predicting Insect Pest Phenology: calibrating laboratory-based model parameter estimates from field-based monitoring of agroecosystems (PI2P)


Worldwide, insect pests are responsible for potential crop losses up to 80%, so that crop protection plays a central role in safeguarding crop productivity. Recent studies estimate that invasive insect species cost a minimum of US$70.0 billion per year globally, while substantial savings could be achieved. It is thus critical to develop models that accurately predict insect pest phenology to implement control practices and interventions at the right time. Despite the well-known sensitivity of insects to temperature, their potential response to ongoing climate change together with the one from their natural enemies, remains insufficiently documented. Building models that accurately predict insect phenology and that are transferable to field conditions is thus a critical issue.

The project’s objectives are to develop phenological models based on the available literature, to improve their performance by providing parameter estimates calibrated from field insect monitoring and taking into account agroecosystems parameters, and to use these models to study insect responses to climate change. Phenological models can be built from development rate models that describe the time needed for a species in a life stage to reach the next one (e.g., egg to larva), as a function of temperature. The phenological model results from the combination of development rate models for each life stage. Temperature-dependent development rate is typically characterized under laboratory conditions in rearing units. Generally, the development rate is null under a critical minimum temperature, then increases slowly up to an optimal temperature for development, and then decreases rapidly to a critical maximum temperature. There are almost 40 development rate mathematical models in the literature and at least 3000 articles on the relationship between temperature and development rate. Development rate mathematical model choice is however still an issue with profound consequences as different models leads to different results. Also, whether a model is more appropriate than another or if different models should be used for different species is still a matter of debate.

PI2P will gather into a database published results from available articles in the literature and will provide guidance for development rate model choice, and new ways of characterizing development rate with applications in the face of ongoing climate change. PI2P will use the database to evaluate insect responses to climate change by using adequate mathematical models and new performance metrics (as opposed to traditional metrics such as thermal safety margin). PI2P will build phenological model taking into account agroecosystems parameters using an individual-based approach to take into account intra-specific variability, and use Internet of things sensors to get environmental variables close to those experienced by the insects in different ecosystems worldwide (Eastern Africa, the Andes, France). The expected outputs are a better understanding of the relationship between temperature and development rate, a better understanding of phenology and its drivers, and a set of methods and tools from raw dataset to development rate models, new performance metrics, and phenology models with applications for agriculture and crop protection.

→ https://anr.fr/Project-ANR-19-CE32-0001
Featured Dataverses

In order to use this feature you must have at least one published dataverse.

Publish Dataverse

Are you sure you want to publish your dataverse? Once you do so it must remain published.

Publish Dataverse

This dataverse cannot be published because the dataverse it is in has not been published.

Delete Dataverse

Are you sure you want to delete your dataverse? You cannot undelete this dataverse.

Advanced Search

1 to 10 of 45 Results
Adobe PDF - 356.1 KB - MD5: 62cbac89ebc85246019cc79ded0d0b5d
simple graphical representations of the dataset performed with R
PNG Image - 28.1 KB - MD5: ee986e969cb117e1307f68a1f00896ac
cover image for the dataset
Tabular Data - 10.9 MB - 2 Variables, 385004 Observations - UNF:6:VqxHH4xr88dpVMwL3aotRA==
temperature
Tabular Data - 10.9 MB - 2 Variables, 384946 Observations - UNF:6:HLK3K/xiHuqGgp0kKppYMQ==
relative humidity
Tabular Data - 10.8 MB - 2 Variables, 384889 Observations - UNF:6:JGOIdkiD8IpXyUNFq/B+5w==
atmospheric pressure
Adobe PDF - 227.3 KB - MD5: 1ea6aaa3c3738ff8e91fa2fde40919db
simple graphical representations of the dataset performed with R
PNG Image - 22.8 KB - MD5: e6bf03c0a9f6ac460c2a9e859b88954c
cover image for the dataset
Tabular Data - 8.8 MB - 2 Variables, 310513 Observations - UNF:6:LnbBmQKnZyY3fhnbtdMOvQ==
temperature
Tabular Data - 8.7 MB - 2 Variables, 310522 Observations - UNF:6:PlkC70CKNR4COo7mypmbsw==
relative humidity
Tabular Data - 8.7 MB - 2 Variables, 310515 Observations - UNF:6:qZU1RfH2Pvex3zWXenb3GQ==
atmospheric pressure
Add Data

Log in to create a dataverse or add a dataset.

Share Dataverse

Share this dataverse on your favorite social media networks.

Link Dataverse
Reset Modifications

Are you sure you want to reset the selected metadata fields? If you do this, any customizations (hidden, required, optional) you have done will no longer appear.