An overview of the Environment Agency's new time-series data exchange standard

2005 ◽  
Author(s):  
C. Beales
Sensors ◽  
2020 ◽  
Vol 20 (7) ◽  
pp. 1908
Author(s):  
Chao Ma ◽  
Xiaochuan Shi ◽  
Wei Li ◽  
Weiping Zhu

In the past decade, time series data have been generated from various fields at a rapid speed, which offers a huge opportunity for mining valuable knowledge. As a typical task of time series mining, Time Series Classification (TSC) has attracted lots of attention from both researchers and domain experts due to its broad applications ranging from human activity recognition to smart city governance. Specifically, there is an increasing requirement for performing classification tasks on diverse types of time series data in a timely manner without costly hand-crafting feature engineering. Therefore, in this paper, we propose a framework named Edge4TSC that allows time series to be processed in the edge environment, so that the classification results can be instantly returned to the end-users. Meanwhile, to get rid of the costly hand-crafting feature engineering process, deep learning techniques are applied for automatic feature extraction, which shows competitive or even superior performance compared to state-of-the-art TSC solutions. However, because time series presents complex patterns, even deep learning models are not capable of achieving satisfactory classification accuracy, which motivated us to explore new time series representation methods to help classifiers further improve the classification accuracy. In the proposed framework Edge4TSC, by building the binary distribution tree, a new time series representation method was designed for addressing the classification accuracy concern in TSC tasks. By conducting comprehensive experiments on six challenging time series datasets in the edge environment, the potential of the proposed framework for its generalization ability and classification accuracy improvement is firmly validated with a number of helpful insights.


2019 ◽  
Author(s):  
Birgit Möller ◽  
Hongmei Chen ◽  
Tino Schmidt ◽  
Axel Zieschank ◽  
Roman Patzak ◽  
...  

AbstractBackground and aimsMinirhizotrons are commonly used to study root turnover which is essential for understanding ecosystem carbon and nutrient cycling. Yet, extracting data from minirhizotron images requires intensive annotation effort. Existing annotation tools often lack flexibility and provide only a subset of the required functionality. To facilitate efficient root annotation in minirhizotrons, we present the user-friendly open source tool rhizoTrak.Methods and resultsrhizoTrak builds on TrakEM2 and is publically available as Fiji plugin. It uses treelines to represent branching structures in roots and assigns customizable status labels per root segment. rhizoTrak offers configuration options for visualization and various functions for root annotation mostly accessible via keyboard shortcuts. rhizoTrak allows time-series data import and particularly supports easy handling and annotation of time series images. This is facilitated via explicit temporal links (connectors) between roots which are automatically generated when copying annotations from one image to the next. rhizoTrak includes automatic consistency checks and guided procedures for resolving conflicts. It facilitates easy data exchange with other software by supporting open data formats.ConclusionsrhizoTrak covers the full range of functions required for user-friendly and efficient annotation of time-series images. Its flexibility and open source nature will foster efficient data acquisition procedures in root studies using minirhizotrons.


2011 ◽  
Vol 121-126 ◽  
pp. 1692-1696
Author(s):  
Xin Quan Jiao ◽  
Yong Xing Yao ◽  
Qing Meng

For the need to test square wave pulse sequence, designed and implemented a recorder. Recorder using FPGA for judging square wave pulse’s edge and precise timing functions, using C8051F MCU to storage the results of time-series data and printing functions, FPGA and MCU using a custom protocol for data exchange and command transfer. After experimental verification, the recorder have 1ms accuracy to record 28 roads square wave pulse signal timing, and fixed-format print the results.


2013 ◽  
Vol 16 (2) ◽  
pp. 425-446 ◽  
Author(s):  
P. Taylor ◽  
S. Cox ◽  
G. Walker ◽  
D. Valentine ◽  
P. Sheahan

The increasing global demand on freshwater is resulting in nations improving their terrestrial water monitoring and reporting systems to better understand the availability, and quality, of this valuable resource. A barrier to this is the inability for stakeholders to share information relating to water observations data: traditional hydrological information systems have relied on internal custom data formats to exchange data, leading to issues in data integration and exchange. Organisations are looking to information standards to assist in data exchange, integration and interpretation to lower costs in use, and re-use, of monitoring data. The WaterML2.0 Standards Working Group (SWG), working within the Open Geospatial Consortium (OGC) and in cooperation with the joint OGC-World Meteorological Organisation (WMO) Hydrology Domain Working Group (HDWG), has developed an open standard for the exchange of water observation data. The focus of the standard is time-series data, commonly used for hydrological applications such as flood forecasting, environmental reporting and hydrological infrastructure, where a lack of standards inhibits efficient re-use and automation. This paper describes the development methodology and principles of WaterML2.0, key parts of its information model, implementation scenarios, evaluation and future work. WaterML2.0 was adopted by the OGC as an official standard in September 2012.


1978 ◽  
Vol 17 (4) ◽  
pp. 511-516
Author(s):  
Ole David Koht Norbye

In a comment [4] I discussed the methods used in two articles by A.R. Kemal [1, 2] which aimed at presenting new time series for the develop¬ment of Pakistan's large scale manufacturing industries during the period 1959-1960 to 1969-1970. I found the methods questionable, and concluded that the new series probably were more misleading than the existing official statistics. To illustrate the weakness of the methodology I gave some numerical examples from Kemal's own material, and I also compared his figures with some data from other sources. In a reply to my comments [3] Kemal finds my observations either marginal or not well founded or even ■directly wrong. Since Kemal's reply in part builds on a misrepresentation of some of my comments and since his rejection of my objections on some points is not substantiated, I find it necessary to come back to this subject once more with some few remarks.


2020 ◽  
Author(s):  
Muzaffar Bashir ◽  
Habeeba Abdul Sattar ◽  
Aliya Zaheer

Abstract The evidence of Covid19 outbreak was first received in December 2019 in China and it spread out rapidly on the map of the world. The cases of Coronavirus are increasing day by day around the world due to which mortality rate raises hastily. In the matter of days, WHO declared Covid19 as pandemic of the decade. So far, it is controlled by taking strict precautions in terms of lockdown and supervised treatments at the hospital. As its epidemic is severely breaking the scale, there is a necessity to recognize and evaluate its extension in people on each new day. We collected time series data from January 22, to April 28, 2020 which includes the number of confirmed patients (CP) and reported deaths (RD) of 186 countries all around the world. We choose to evaluate the data for US, Italy, Spain and Pakistan. We are selecting here the data up to April 28, 2020, however the data is automatically updated from Humanitarian Data Exchange on daily basis for all the countries suffering from this pandemic. In this study, three parameters logistic (autocatalytic) model is applied to characterize the disease which determine the size of epidemic with the most populated hit cases around the world respectively and predict the life cycle of COVID 19 cases by using Gaussian based prediction model. It is determined that there are worst numbers of cases of Coronavirus that are found in US and the number of CPs and RDs grow exponentially around the world underneath Spain, Italy, UK and France etc. The epicentre of this pandemic was the city of Wuhan, China. The firm defence that has been taken is to quarantine the people and the patients were cured in organized hospitals.


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