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Partitioning Seed Dispersal Rate Amongst Vertebrates Vs Invertebrates Along a Land-Use Gradient

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NIAID Data Ecosystem2026-03-11 收录
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https://zenodo.org/record/1198582
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Description: Seed perdation and dispersal experiments Project: This dataset was collected as part of the following SAFE research project: Partitioning Seed Dispersal Rate Amongst Vertebrates Vs Invertebrates Along a Land-Use Gradient XML metadata: GEMINI compliant metadata for this dataset is available here Data worksheets: There are 1 data worksheets in this dataset: Seed removal experiments (Worksheet Data) Dimensions: 904 rows by 13 columns Description: Experimental seed removal trials. Each trial consisted of 20 pumpkin seeds being placed on a plate, with seed fates ascertained the following day. Fields: Location: SAFE project sample site (Field type: Location) Point : SAFE project sample site (Field type: ID) Date: Date seeds were placed in field (Field type: Date) Treatment: Experimental treatment (Field type: Categorical) NPlacement: Unknown variable (Field type: ID) RemainUneat: How many seeds remained on the plate and had no evidence of having been eaten? (Field type: Numeric) RemovUneat: How many seeds were removed from the plate and had no evidence of having been eaten? (Field type: Numeric) RemainEat: How many seeds remained on the plate but had evidence of having been eaten? (Field type: Numeric) RemovEat: How many seeds were removed from the plate and also had evidence of being eaten? (Field type: Numeric) RemovUnknown: How many seeds were removed from the plate and had an unknown fate? (Field type: Numeric) Rain: How heavily did it rain last night? 0 being no rain and 5 being torrential rain (Field type: Numeric) TreatmentSuccessFail: Was the treatment successful? (Field type: Categorical) Date range: 2013-05-07 to 2013-07-27 Latitudinal extent: 4.6350 to 4.7523 Longitudinal extent: 116.9632 to 117.5934
创建时间:
2020-01-24
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