scholarly journals Pipe inspection system by guide wave using a long distance waveguide

Author(s):  
Riichi Murayama ◽  
Makiko Kobayashi
2015 ◽  
Vol 05 (04) ◽  
pp. 139-149 ◽  
Author(s):  
Riichi Murayama ◽  
Kenshi Matsumoto ◽  
Kenji Ushitani ◽  
Makiko Makiko

2013 ◽  
Vol 2013 (0) ◽  
pp. _J041012-1-_J041012-4
Author(s):  
Kenshi MATSUMOTO ◽  
Kazutaka KITA ◽  
Richi MURAYAMA

2021 ◽  
Vol 2076 (1) ◽  
pp. 012016
Author(s):  
Wen-Lan Wang ◽  
Xiong-Huai Bai

Abstract The Inner Mongolia has abundant solar energy and electricity resources. Because of the long distance between cities, transmission lines are too long, making it difficult to check lines. In order to solve the problems existing in the inspection work, this paper studies a kind of outdoor inspection vehicle using solar energy, the energy system of the inspection vehicle can independently complete the charge and discharge, so as to realize the inspection task. This paper focuses on the energy autonomy of the on-site inspection vehicle for solar energy. According to the design requirements of the inspection vehicle, appropriate parts are selected to build an energy autonomy inspection system for the inspection vehicle. Then the solar tracking algorithm and maximum power tracking control algorithm are used to improve the conversion rate of solar panels and achieve fast charging. Finally, the hardware and software of the solar controller are designed, and the corresponding functions are debugged.


Author(s):  
Oluwafemi Ayodeji Olugboji ◽  
Adinoyi Abdulmajeed Sadiq ◽  
Oluwafemi Olorunsaiye ◽  
David Omeiza Peters ◽  
Babatunde Ayobami Ajayi

Pipeline defects and oil leakages pose an enormous challenge especially in the oil and gas industries, hence, the need for an effective and economical pipeline inspection system. This work focused on the development of a cost effective In-Line-Inspection tool called a smart pipe inspection gauge (PIG). A Test bed was designed and developed to simulate the impulses experienced by the PIG as it moved along the pipeline. The electronics and sensors embedded in the smart PIG were designed to detect vibrations as it moved along the pipe wall and allowed for the wireless transmission of data collected by the PIG system. The results obtained from the laboratory tests revealed dramatic changes in the vibrational intensity experienced by the smart PIG at various intervals. This validates the use of off-the-shelf sensing equipment with a low cost assembly to detect defects in pipelines.


2015 ◽  
Author(s):  
Kenshi Matsumoto ◽  
Riichi Murayama ◽  
Kenji Ushitani

2021 ◽  
Author(s):  
◽  
Stephen Winch

<p>Robotic units used in pipe inspection are expensive to purchase and repair. Many companies do not offer long term support for the repair and maintenance of their robotic units. Consequently Associated Environmental Services Limited (AES), a Wellington based pipe inspection company approached Victoria University to facilitate the repair of a non-functional system. As a result this Masters project aims to design and implement a reliable pipe inspection system for use by AES. This thesis outlines and discusses the circuit boards and software designed for such a robotic unit. A reliable graphical user interface and internal circuitry for the robot was designed and is also presented.</p>


Author(s):  
Jian Li ◽  
Xianglin Zhan ◽  
Shili Chen ◽  
Jingchang Zhuge ◽  
Shijiu Jin ◽  
...  

Various types of defect may be formed in girth welds of long-distance pipeline in the process of welding. They are hidden dangers to pipeline transportation safety. Currently, ultrasonic phased array instrument is commonly adopted for quick automatic positioning and quantitative analysis of flaws in the girth weld after welding. But as for qualitative analysis – flaw classification, traditional manual identification method is still used. By traditional method, human-made error is easily introduced and classification result is depended on the detection experiences of the inspecting person. To overcome these deficiencies, a new method combined second generation wavelet transform (SGWT) with Radial Basis Function neural network (RBFN) is proposed in this paper, realizing automatic flaw classification and reducing human factors impaction. SGWT is ideally matched local characteristics of the flaw signal, improving both the computational speed and flaw classification efficiency. Then, based on the “energy-status” feature extraction method and the above SGWT analysis, feature eigenvectors of the flaw signals are extracted, training the following RBFN. And then when the feature of any flaw is extracted, it can be recognized by the network. The output of the network is the type of the input flaw signal, realizing automatic flaw classification. Finally, an ultrasonic phased array inspection system is described. The system is integrated with automatic flaw detection and classification. Experiments are tested on a long-distance pipeline girth weld block with artificial defects in it. The results validate that the proposed method is efficient, which is helpful to increasing inspection speed and reliability of flaw inspection for long-distance pipeline girth welds.


Sign in / Sign up

Export Citation Format

Share Document