Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Employer
-
Field
-
The Department of Agroecology at Aarhus University, Denmark, is looking for an experienced assistant professor in the field of remote sensing, modelling of landscape biogeochemistry and landscape
-
well as international partners. Field experiments, digital technologies -- including modelling and remote sensing, as well as interactions with stakeholders are key components of Land-CRAFT. The successful candidate will
-
Description Do you want to explore GNSS reflectometry (GNSS-R) for remote sensing applications on Unmanned Aerial Systems (UAS)? The Technical University of Denmark invites applicants to a fully funded 3-year
-
technologies, including biogeochemical modelling and remote sensing, as well as interactions with stakeholders are key components of Land-CRAFT. We have a variety of activities in the field, in our laboratories
-
description: The Department of Agroecology at Aarhus University, Denmark, is offering a PhD position in integrating remote sensing data and process-based agroecosystem modelling, starting 15-09-2024 or as soon
-
and evaluating forest management practices, advanced spatial analyses, remote sensing methods, notably airborne laser scanning techniques as well as mapping of forest and woodland ecosystem properties
-
and health-related interfaces sensing techniques printed electronics wearables smart fibers sustainable fabrication other related topics The successful candidate must have a PhD Degree (or equivalent
-
multiple data sources with different granularities ranging from monitoring networks, field samples, weather data, crop information, remote sensing, and historical data. The PhD will be part of a team that
-
focusing on innovations in remote sensing for better measurement of greenhouse gas emissions, which is a collaboration with DTU Electro, manufacturers of laser products, leading providers of gas measurement
-
, complex question several research approaches may be used in various combinations, e.g., statistical, and process-based plant diversity and vegetation modelling, remote sensing, meta-analyses, existing