A morphological event detection algorithm of camera vision warning system for real time traffic analysis

Author(s):  
Dongcheng Shi ◽  
Ying Liu ◽  
Hexin Chen
Author(s):  
Sujithra L.R ◽  
Vibin Kishore H ◽  
Swathi S ◽  
Pradeep Kumar G, Priya Darsini S ◽  

Author(s):  
Jose M. Mossi ◽  
Alberto Albiol ◽  
Antonio Albiol ◽  
Valery Naranjo Ornedo

2021 ◽  
Author(s):  
Lucian Toader ◽  
Paulinus Abhyudaya Bimastianto ◽  
Shreepad Purushottam Khambete ◽  
Suhail Mohammed Al Ameri ◽  
Erwan Couzigou ◽  
...  

Abstract In a drive to enhance drilling operational awareness, the Real-Time Operations Center (RTOC) has developed a State-of-the-Art event detection algorithm that consistently highlights the deviations of critical parameters by actively comparing real-time values against comprehensive physical models and alerting the users through a dashboard. The process relies on different levels of frequency and severity in order to detect events at their onset and prevent developing into a situation that compromises the operations. The first pillar of the solution consists of deterministic modelling of the expected values for a series of parameters in order to provide the basis for comparison and diagnostics. The main parameters sought to be modelled consist of the Standpipe Pressure, the Rotary Torque and the Hook load, which respectively are generated through individual methods taking into consideration actual conditions as well as relevant contextual data to ensure accuracy. The second pillar of the solution consists of visual alerts, triggered and displayed on a dashboard based on frequency and severity levels, as percentage of deviation from accepted operational envelope. The solution has been initially implemented during drilling operations where different issues were expected to take place, finding that whenever such occurrences took place, the algorithms were able to signal potential events in most of the cases. Some challenges were observed mainly due to sensor calibration and behavior since the expected model values not necessarily match reality, including residual pressure when the pumps are off or when the string is set on slips but the hook load values still present some variance. Also, it has been observed during transient periods where flow and rotation are changed drastically, that the stabilization to a steady state present with high variance, which has demanded the introduction of further logics within the algorithms to account for these effects and avoid the generation of false indications of issues. The solution has given encouraging results thus far in signaling different dysfunctions on the drilling process without the need of immediate human interpretation of data, which has allowed to move forward in the digitalization of operations, not only by timely signaling the onset of issues, but as well by providing the basis to further develop real time diagnosis of the problems to accelerate their resolution. The conception of the event detection based on deterministic real time analysis of individual channels against robust physical models from the existing digital twin solution has proven an immediate asset for operations on its own. By providing clear signaling of issues, while providing a solid framework to ultimately develop a diagnostic solution to translate a potential event into a proactive approach to support decision making process.


2018 ◽  
Author(s):  
Guizhen Yu ◽  
Ao Lei ◽  
Honggang Li ◽  
Yunpeng Wang ◽  
Zhangyu Wang ◽  
...  

2013 ◽  
Vol 1 (3) ◽  
pp. 2455-2493 ◽  
Author(s):  
L. Bressan ◽  
F. Zaniboni ◽  
S. Tinti

Abstract. Coastal tide-gauges play a very important role in a Tsunami Warning System, since sea-level data are needed for a correct evaluation of the tsunami threat and the tsunami arrival has to be recognised as early as possible. Real-time tsunami detection algorithms serve this purpose. For an efficient detection they have to be calibrated and adapted to the specific local characteristics of the site where they are installed, which is easily done when the station has recorded a sufficiently large number of tsunamis. In this case the recorded database can be used to select the best set of parameters enhancing the discrimination power of the algorithm and minimizing the detection time. This chance is however rare, since most of the coastal tide-gauge stations, either historical or of new installation, have recorded only a few tsunamis in their lifetime, if not any. In this case calibration must be carried out by using synthetic tsunami signals, which poses the problem of how to generate them and how to use them. This paper investigates this issue and proposes a calibration approach by using as an example a specific case, that is the calibration of a real-time detection algorithm called TEDA for two stations, namely Tremestieri and Catania, in eastern Sicily, Italy, that have been recently installed in the frame of the Italian project TSUNET, aiming at improving the tsunami monitoring capacity in a region that is one of the most hazardous tsunami areas of Italy and of the Mediterranean.


2018 ◽  
Vol 5 (3) ◽  
pp. 77-84 ◽  
Author(s):  
Angelica Salas Jones ◽  
Panagiotis Georgakis ◽  
Yannis Petalas ◽  
Renukappa Suresh

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