Skip to content
View hngeo55's full-sized avatar
Block or Report

Block or report hngeo55

Block user

Prevent this user from interacting with your repositories and sending you notifications. Learn more about blocking users.

You must be logged in to block users.

Please don't include any personal information such as legal names or email addresses. Maximum 100 characters, markdown supported. This note will be visible to only you.
Report abuse

Contact GitHub support about this user’s behavior. Learn more about reporting abuse.

Report abuse
hngeo55/README.md

hngeo55

Geoscientist (GIS Analyst/Spatial Data Scientist/Environmental Consultant)

About Me My name is Heather Nicholson and I have a Ph.D. in Geosciences from Florida Atlantic University. My specialty is the use of spatial data science techniques to study the environmental around us in order to better predict future changes. I have over four years of experience with spatial data science techniques, and over six+ years in the geospatial field. I have proficient knowledge in Python and the SKLearn and Python API for ArcGIS libraries. To learn more about my skill set and experience, please see below.


Languages and Tools

ArcGIS Pro, QGIS, Python, HTML, Anaconda


Projects

The following are projects that I have worked on.

Dissertation

Salt Marsh Species Classification and Soil Property Modeling Using Multiple Remote Sensors

Abstract: Salt marshes are highly dynamic ecosystems that rely on multiple environmental and physical drivers that determine species distribution and soil property distribution. However, climate change and human interference are threatening the delicate ecosystem. One of the easiest ways to monitor marsh dynamics is through remote sensing. Traditional methods may not handle the large, non-parametric datasets well and often do not spatially determine areas of uncertainty. This dissertation research developed a framework to map marsh species and predict ground soil properties using multiple remote sensing data sources by integrating modern Object-based Image Analysis (OBIA), machine learning, data fusion, and band indices techniques. It also sought to determine areas of uncertainty in the final outputs and differences between different spectral resolutions. Five machine learning classifiers were examined including Support Vector Machine (SVM) and Random Forest (RF) to map marsh species. Overall results illustrated that RF and SVM typically performed best, especially when using hyperspectral data combined with DEM information. Seven regressors were assessed to map three different soil properties. Again, RF and SVM performed the best no matter the dataset used, or soil property mapped. Soil salinity had r as high as 0.93, soil moisture had r as high as 0.91, and soil organic an r as high as 0.74 when using hyperspectral data.

Popular repositories Loading

  1. hngeo55 hngeo55 Public

  2. ARSET_ML_Fundamentals ARSET_ML_Fundamentals Public

    Forked from NASAARSET/ARSET_ML_Fundamentals

    Repository for Jupyter Notebook examples associated with the NASA ARSET Training, "Fundamentals of Machine Learning for Earth Science"

    Jupyter Notebook

  3. Python_Programming_MOOC_2023_I Python_Programming_MOOC_2023_I Public

    Forked from P4r1nc3/Python_Programming_MOOC_2024_I

    All exercises for Introduction to Programming course from University of Helsinki, Finland.

    Python

  4. Python_Programming_MOOC_2023_II Python_Programming_MOOC_2023_II Public

    Forked from P4r1nc3/Python_Programming_MOOC_2024_II

    All exercises for Advanced Course in Programming course from University of Helsinki, Finland.

    Python

  5. census_python census_python Public

    Forked from yohman/getting-started-with-gis

    python notebook for importing census data from UCLA python workshop

    Jupyter Notebook

  6. creating-and-using-web-tools-and-geoprocessing-services-2021 creating-and-using-web-tools-and-geoprocessing-services-2021 Public

    Forked from EsriDevEvents/creating-and-using-web-tools-and-geoprocessing-services-2021

    This contains the source data, ArcGIS Pro projects, and Python scripts shown in the seesion 12401 Creating and Using Web Tools and Geoprocessing Services.

    Python