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Identification, quantification and analysis of observable anthropogenic debris along swiss river and lakes (IQAASL)

DOI

IQAASL was a project sponsored by the Swiss Federal Office for the Environment to quantify shoreline trash along swiss lakes and rivers. Multiple small scale litter surveys are completed at different locations within a designated survey area. For the year 2020/2021 the survey areas were defined by the municipalities that border the Aare, Rhône, Ticino and Linth/Limmat rivers and any lakes or rivers that are within the catchment area.

The following components (currently being refactored), were developed specifically to manage the data collected:

Develpment of these two tools stopped for two years while we were out in the field collecting samples. The new version of the API and frontend will incorporate language support and additional functionality in the survey form.

hammerdirt staff maintain the repo for the report, the API and the front end.

Contents

report

report/de:

The .ipynb files for each chapter of the report

report/themed:

The .ipynb files for reports that are basd on a specific theme or topic

resources

All the images and maps for the report. The contents is doucmented in readme_data .

docs

The complete html version of the report in German: Litter Surveyor Report

The original english version is there litter surveyor

_build

Any other available build formats

Contributing

This report was the inspiration for three manuscripts in devlopment and could serve as an initiation to data science and computing. Specifically for those interested in discrete, random observations or count data methods this repo may provide you with a new challenge.

The REST API for the new application is in development here IQALS

Currently there is a team working on the application of a simple machine learning model that describes the probability of finding an object given the data. Development has also begun on a more complex model that predicts the range of probable values that a person may encounter.

The methods and formatting used in this report are being refactored for use in the litter surveyor as the evolution of that application continues.

There are ample oportunities to learn, teach and contribute.

more information

[email protected] or [email protected]

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