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Eleven years’ data of grassland management in Germany
Abstract. BACKGROUND: The 150 grassland plots were located in three study regions in Germany, 50 in each region. The dataset describes the yearly grassland management for each grassland plot using 116 variables. General information includes plot identifier, study region and survey year. Additionally...
Autores principales: | , , , , , , , , , , , , , , , , , , , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Pensoft Publishers
2019
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6778154/ https://www.ncbi.nlm.nih.gov/pubmed/31598068 http://dx.doi.org/10.3897/BDJ.7.e36387 |
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author | Vogt, Juliane Klaus, Valentin H. Both, Steffen Fürstenau, Cornelia Gockel, Sonja Gossner, Martin M. Heinze, Johannes Hemp, Andreas Hölzel, Nobert Jung, Kirsten Kleinebecker, Till Lauterbach, Ralf Lorenzen, Katrin Ostrowski, Andreas Otto, Niclas Prati, Daniel Renner, Swen Schumacher, Uta Seibold, Sebastian Simons, Nadja Steitz, Iris Teuscher, Miriam Thiele, Jan Weithmann, Sandra Wells, Konstans Wiesner, Kerstin Ayasse, Manfred Blüthgen, Nico Fischer, Markus Weisser, Wolfgang W. |
author_facet | Vogt, Juliane Klaus, Valentin H. Both, Steffen Fürstenau, Cornelia Gockel, Sonja Gossner, Martin M. Heinze, Johannes Hemp, Andreas Hölzel, Nobert Jung, Kirsten Kleinebecker, Till Lauterbach, Ralf Lorenzen, Katrin Ostrowski, Andreas Otto, Niclas Prati, Daniel Renner, Swen Schumacher, Uta Seibold, Sebastian Simons, Nadja Steitz, Iris Teuscher, Miriam Thiele, Jan Weithmann, Sandra Wells, Konstans Wiesner, Kerstin Ayasse, Manfred Blüthgen, Nico Fischer, Markus Weisser, Wolfgang W. |
author_sort | Vogt, Juliane |
collection | PubMed |
description | Abstract. BACKGROUND: The 150 grassland plots were located in three study regions in Germany, 50 in each region. The dataset describes the yearly grassland management for each grassland plot using 116 variables. General information includes plot identifier, study region and survey year. Additionally, grassland plot characteristics describe the presence and starting year of drainage and whether arable farming had taken place 25 years before our assessment, i.e. between 1981 and 2006. In each year, the size of the management unit is given which, in some cases, changed slightly across years. Mowing, grazing and fertilisation were systematically surveyed: Mowing is characterised by mowing frequency (i.e. number of cuts per year), dates of cutting and different technical variables, such as type of machine used or usage of conditioner. For grazing, the livestock species and age (e.g. cattle, horse, sheep), the number of animals, stocking density per hectare and total duration of grazing were recorded. As a derived variable, the mean grazing intensity was then calculated by multiplying the livestock units with the duration of grazing per hectare [LSU days/ha]. Different grazing periods during a year, partly involving different herds, were summed up to an annual grazing intensity for each grassland. For fertilisation, information on the type and amount of different types of fertilisers was recorded separately for mineral and organic fertilisers, such as solid farmland manure, slurry and mash from a bioethanol factory. Our fertilisation measures neglect dung dropped by livestock during grazing. For each type of fertiliser, we calculated its total nitrogen content, derived from chemical analyses by the producer or agricultural guidelines (Table 3). All three management types, mowing, fertilisation and grazing, were used to calculate a combined land use intensity index (LUI) which is frequently used to define a measure for the land use intensity. Here, fertilisation is expressed as total nitrogen per hectare [kg N/ha], but does not consider potassium and phosphorus. Information on additional management practices in grasslands was also recorded including levelling, to tear-up matted grass covers, rolling, to remove surface irregularities, seed addition, to close gaps in the sward. NEW INFORMATION: Investigating the relationship between human land use and biodiversity is important to understand if and how humans affect it through the way they manage the land and to develop sustainable land use strategies. Quantifying land use (the ‘X’ in such graphs) can be difficult as humans manage land using a multitude of actions, all of which may affect biodiversity, yet most studies use rather simple measures of land use, for example, by creating land use categories such as conventional vs. organic agriculture. Here, we provide detailed data on grassland management to allow for detailed analyses and the development of land use theory. The raw data have already been used for > 100 papers on the effect of management on biodiversity (e.g. Manning et al. 2015). |
format | Online Article Text |
id | pubmed-6778154 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2019 |
publisher | Pensoft Publishers |
record_format | MEDLINE/PubMed |
spelling | pubmed-67781542019-10-09 Eleven years’ data of grassland management in Germany Vogt, Juliane Klaus, Valentin H. Both, Steffen Fürstenau, Cornelia Gockel, Sonja Gossner, Martin M. Heinze, Johannes Hemp, Andreas Hölzel, Nobert Jung, Kirsten Kleinebecker, Till Lauterbach, Ralf Lorenzen, Katrin Ostrowski, Andreas Otto, Niclas Prati, Daniel Renner, Swen Schumacher, Uta Seibold, Sebastian Simons, Nadja Steitz, Iris Teuscher, Miriam Thiele, Jan Weithmann, Sandra Wells, Konstans Wiesner, Kerstin Ayasse, Manfred Blüthgen, Nico Fischer, Markus Weisser, Wolfgang W. Biodivers Data J Data Paper (Biosciences) Abstract. BACKGROUND: The 150 grassland plots were located in three study regions in Germany, 50 in each region. The dataset describes the yearly grassland management for each grassland plot using 116 variables. General information includes plot identifier, study region and survey year. Additionally, grassland plot characteristics describe the presence and starting year of drainage and whether arable farming had taken place 25 years before our assessment, i.e. between 1981 and 2006. In each year, the size of the management unit is given which, in some cases, changed slightly across years. Mowing, grazing and fertilisation were systematically surveyed: Mowing is characterised by mowing frequency (i.e. number of cuts per year), dates of cutting and different technical variables, such as type of machine used or usage of conditioner. For grazing, the livestock species and age (e.g. cattle, horse, sheep), the number of animals, stocking density per hectare and total duration of grazing were recorded. As a derived variable, the mean grazing intensity was then calculated by multiplying the livestock units with the duration of grazing per hectare [LSU days/ha]. Different grazing periods during a year, partly involving different herds, were summed up to an annual grazing intensity for each grassland. For fertilisation, information on the type and amount of different types of fertilisers was recorded separately for mineral and organic fertilisers, such as solid farmland manure, slurry and mash from a bioethanol factory. Our fertilisation measures neglect dung dropped by livestock during grazing. For each type of fertiliser, we calculated its total nitrogen content, derived from chemical analyses by the producer or agricultural guidelines (Table 3). All three management types, mowing, fertilisation and grazing, were used to calculate a combined land use intensity index (LUI) which is frequently used to define a measure for the land use intensity. Here, fertilisation is expressed as total nitrogen per hectare [kg N/ha], but does not consider potassium and phosphorus. Information on additional management practices in grasslands was also recorded including levelling, to tear-up matted grass covers, rolling, to remove surface irregularities, seed addition, to close gaps in the sward. NEW INFORMATION: Investigating the relationship between human land use and biodiversity is important to understand if and how humans affect it through the way they manage the land and to develop sustainable land use strategies. Quantifying land use (the ‘X’ in such graphs) can be difficult as humans manage land using a multitude of actions, all of which may affect biodiversity, yet most studies use rather simple measures of land use, for example, by creating land use categories such as conventional vs. organic agriculture. Here, we provide detailed data on grassland management to allow for detailed analyses and the development of land use theory. The raw data have already been used for > 100 papers on the effect of management on biodiversity (e.g. Manning et al. 2015). Pensoft Publishers 2019-09-27 /pmc/articles/PMC6778154/ /pubmed/31598068 http://dx.doi.org/10.3897/BDJ.7.e36387 Text en Juliane Vogt, Valentin H. Klaus, Steffen Both, Cornelia Fürstenau, Sonja Gockel, Martin M. Gossner, Johannes Heinze, Andreas Hemp, Nobert Hölzel, Kirsten Jung, Till Kleinebecker, Ralf Lauterbach, Katrin Lorenzen, Andreas Ostrowski, Niclas Otto, Daniel Prati, Swen Renner, Uta Schumacher, Sebastian Seibold, Nadja Simons, Iris Steitz, Miriam Teuscher, Jan Thiele, Sandra Weithmann, Konstans Wells, Kerstin Wiesner, Manfred Ayasse, Nico Blüthgen, Markus Fischer, Wolfgang W. Weisser http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (CC BY 4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited. |
spellingShingle | Data Paper (Biosciences) Vogt, Juliane Klaus, Valentin H. Both, Steffen Fürstenau, Cornelia Gockel, Sonja Gossner, Martin M. Heinze, Johannes Hemp, Andreas Hölzel, Nobert Jung, Kirsten Kleinebecker, Till Lauterbach, Ralf Lorenzen, Katrin Ostrowski, Andreas Otto, Niclas Prati, Daniel Renner, Swen Schumacher, Uta Seibold, Sebastian Simons, Nadja Steitz, Iris Teuscher, Miriam Thiele, Jan Weithmann, Sandra Wells, Konstans Wiesner, Kerstin Ayasse, Manfred Blüthgen, Nico Fischer, Markus Weisser, Wolfgang W. Eleven years’ data of grassland management in Germany |
title | Eleven years’ data of grassland management in Germany |
title_full | Eleven years’ data of grassland management in Germany |
title_fullStr | Eleven years’ data of grassland management in Germany |
title_full_unstemmed | Eleven years’ data of grassland management in Germany |
title_short | Eleven years’ data of grassland management in Germany |
title_sort | eleven years’ data of grassland management in germany |
topic | Data Paper (Biosciences) |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6778154/ https://www.ncbi.nlm.nih.gov/pubmed/31598068 http://dx.doi.org/10.3897/BDJ.7.e36387 |
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