Showing 1 - 8 results of 8 for search '"open data"', query time: 0.07s Refine Results
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    Big data for traffic estimation and prediction: a survey of data and tools by Jiang, Weiwei, Luo, Jiayun

    Published 2023
    “…Combined with this trend, this study presents an up-to-date survey of open data and big data tools used for traffic estimation and prediction. …”
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    Journal Article
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    Personal credit default prediction fusion framework based on self-attention and cross-network algorithms by Han, Di, Guo, Wei, Chen, Yi, Wang, Bocheng, Li, Wenting

    Published 2024
    “…As the volume of open data from cloud platforms, including consumer, credit, and social data, experiences exponential growth, the problem of data collection for credit and lending has been effectively alleviated. …”
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    Journal Article
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    Universal digital twin: land use by Akroyd, Jethro, Harper, Zachary, Soutar, David, Farazi, Feroz, Bhave, Amit, Mosbach, Sebastian, Kraft, Markus

    Published 2023
    “…The Crop Map of England (CROME) is produced annually by the UK Government and was identified as a valuable source of open data. Formal ontologies to represent land use and the geospatial data arising from such surveys have been developed. …”
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    Journal Article
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    Spatial and temporal dynamics of suspended sediment concentrations in coastal waters of the South China Sea, off Sarawak, Borneo: ocean colour remote sensing observations and analy... by Choo, Jenny, Cherukuru, Nagur, Lehmann, Eric, Paget, Matt, Mujahid, Aazani, Martin, Patrick, Müller, Moritz

    Published 2023
    “…In this paper, we present a newly developed regional total suspended solids (TSSs) empirical model using MODIS Aqua's Rrs(530) and Rrs(666) reflectance bands to investigate the spatial and temporal variation in TSS dynamics along the southwest coast of Sarawak, Borneo, with the application of the Open Data Cube (ODC) platform. The performance of this TSS retrieval model was evaluated using error metrics (bias Combining double low line 1.0, MAE Combining double low line 1.47, and RMSE Combining double low line 0.22, in milligrams per litre) with a log10 transformation prior to calculation as well as using a k-fold cross-validation technique. …”
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    Journal Article