scholarly journals Common Diseases and Quality Control of Expressway Roadbed Engineering Based on Big Data

2021 ◽  
Vol 1744 (4) ◽  
pp. 042140
Author(s):  
Zhihao Ye
Author(s):  
Sudhakar Tummala ◽  
Venkata Sainath Gupta Thadikemalla ◽  
Barbara A.K. Kreilkamp ◽  
Erik B. Dam ◽  
Niels K. Focke

2019 ◽  
Vol 266 (11) ◽  
pp. 2848-2858 ◽  
Author(s):  
Loredana Storelli ◽  
◽  
Maria A. Rocca ◽  
Patrizia Pantano ◽  
Elisabetta Pagani ◽  
...  

2020 ◽  
Author(s):  
João Felipe Cardoso dos Santos ◽  
Dimitry Van Der Zande ◽  
Nabil Youdjou

<p>Earth Observation (EO) data availability is drastically increasing thanks to the Copernicus Sentinel missions. In 2014 Sentinel data volumes were approximately 200 TB (one operational mission) while in 2019 these volumes rose to 12 PB (nine operational missions) and will increase further with the planned launch of new Sentinel satellites. Dealing with this big data evolution has become an additional challenge in the development of downstream services next to algorithm development, product quality control, and data dissemination techniques.</p><p>The H2020 project ‘Data Cube Service for Copernicus (DCS4COP)’ addresses the downstream challenges of big data integrating Copernicus services in a data cube system. A data cube is typically a four-dimensions object, with a parameter dimension and three shared dimensions (time, latitude, longitude). The traditional geographical map data is transformed into a data cube based with user-defined spatial and temporal resolutions using tools such as mathematical operations, sub-setting, resampling, or gap filling to obtain a set of consistent parameters.</p><p>This work describes how different EO datasets are integrated in a data cube system to monitor the water quality in the Belgian Continental Shelf (BCS) for a period from 2017 to 2019. The EO data sources are divided in four groups: 1) high resolution data with low temporal coverage (i.e. Sentinel-2), 2) medium resolution data with daily coverage (i.e. Sentinel-3), 3) low resolution geostationary data with high coverage frequency (i.e. MSG-SEVIRI), and 4) merged EO data with different spatial and temporal information acquired from CMEMS. Each EO dataset from group 1 to 3 has its own thematic processor that is responsible for the acquisition of Level 1 data, the application of atmospheric corrections and a first quality control (QC) resulting in a Level 2 quality-controlled remote sensing reflectance (Rrs) product. The Level 2 Rrs is the main product used to generate other ocean colour products such as chlorophyll-a and suspended particulate matter. Each product generated from the Rrs passed by a second QC related to its characteristic and improvements (when applied) and organized in a common data format and structure to facilitate the direct integration into a product and sensor specific. At the end of the process, these products are defined as quality-controlled analysis ready data (ARD) and are ingested in the data cube system enabling fast and easy access to these big data volumes of multi-scale water quality products for further analysis (i.e. downstream service). The data cube system grants a fast and easy straightforward access converting netCDF data to Zarr and placing it on the server. In Zarr datasets, the object is divided into chunks and compressed while the metadata are stored in light weight .json files. Zarr works well on both local filesystems and cloud-based object stores which makes it possible to use through a variety of tools such as an interactive data viewer or jupyter notebooks.</p>


2020 ◽  
Author(s):  
Qi Yao ◽  
Xue Zhu ◽  
Maozhen Han ◽  
Chaoyun Chen ◽  
Wei Li ◽  
...  

AbstractWith the rapid development of high-throughput sequencing (HTS) technology, the techniques for the assessment of biological ingredients in Traditional Chinese Medicine (TCM) preparations have also advanced. By using HTS together with the multi-barcoding approach, all biological ingredients could be identified from TCM preparations in theory, as long as their DNA is present. The biological ingredients of a handful of classical TCM preparations were analyzed successfully based on this approach in previous studies. However, the universality, sensitivity and reliability of this approach used on TCM preparations remain unclear. Here, four representative TCM preparations, namely Bazhen Yimu Wan, Da Huoluo Wan, Niuhuang Jiangya Wan and You Gui Wan, were selected for concrete assessment of this approach. We have successfully detected from 77.8% to 100% prescribed herbal materials based on both ITS2 and trnL biomarkers. The results based on ITS2 have also shown a higher level of reliability than those of trnL at species level, and the integration of both biomarkers could provide higher sensitivity and reliability. In the omics big-data era, this study has undoubtedly made one step forward for the multi-barcoding approach for prescribed herbal materials analysis of TCM preparation, towards better digitization and modernization of drug quality control.


2021 ◽  
Author(s):  
Ivan I. Maximov ◽  
Dennis Meer ◽  
Ann‐Marie G. de Lange ◽  
Tobias Kaufmann ◽  
Alexey Shadrin ◽  
...  

2020 ◽  
Vol 10 (1) ◽  
pp. 13-19
Author(s):  
Péter Ficzere ◽  
Norbert László Lukács

Additive production technologies made the realization of individually designed, highly complicated geometric structures in practically all fields of industry and human therapy (implantation) possible. In order to minimalize the risk of failure originating from production technology the continuous development of measurements technologies provides the possibility to track the parameters of production and if necessary to ensure their modification. The great number of recorded production data (big data) at the same time can be used in the quality control of the product.


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