https://orcid.org/0000-0001-7782-759X
GitHub more info
Hi there, 馃憢
I鈥檓 a researcher specializing in agent-based modeling, complex systems, and research software engineering, with a focus on social, public health, and environmental applications. I work fluently with R (including package development), NetLogo, and Python, and I enjoy creating data visualizations, graphical interfaces, and reproducible research workflows.
LogoClim is a NetLogo model for simulating and visualizing global climate conditions. It allows researchers to integrate high-resolution climate data into agent-based models, supporting reproducible research in ecology, agriculture, environmental sciences, and other fields that rely on climate data.
The model utilizes raster data to represent climate variables such as temperature and precipitation over time. It incorporates historical data (1951-2024) and future climate projections (2021-2100) derived from global climate models under various Shared Socioeconomic Pathways (SSPs, O’Neill et al., 2017). All climate inputs come from WorldClim 2.1, a widely used source of high-resolution, interpolated climate datasets based on weather station observations worldwide (Fick & Hijmans, 2017).
LogoClim follows the FAIR Principles for Research Software (Barker et al., 2022) and is openly available on the CoMSES Network and GitHub. See the Log么nia model for an example of its integration into a full NetLogo simulation.
Log么nia is a NetLogo model that simulates the growth response of a fictional plant, log么nia, under different climatic conditions. The model uses climate data from WorldClim 2.1 and demonstrates how to integrate the LogoClim model through the LevelSpace extension.
Log么nia follows the FAIR Principles for Research Software (Barker et al., 2022) and is openly available on the CoMSES Network and GitHub.
Under development.