Abstract

Liquid leakage from pipelines is a critical issue in large-scale chemical process plants since it can affect the normal operation of the plant and pose unsafe and hazardous situations. Therefore, leakage detection in the early stages can prevent serious damage. Developing a vision-based inspection system by means of IR imaging can be a promising approach for accurate leakage detection. IR cameras can capture the effect of leaking drops if they have higher (or lower) temperature than their surroundings. Since the leaking drops can be observed in an IR video as a repetitive phenomenon with specific patterns, motion pattern detection methods can be utilized for leakage detection. In this paper, an approach based on the Kalman filter is proposed to track the motion of leaking drops and differentiate them from noise. The motion patterns are learned from the training data and applied to the test data to evaluate the accuracy of the method. For this purpose, a laboratory demonstrator plant is assembled to simulate the leakages from pipelines, and to generate training and test videos. The results show that the proposed method can detect the leaking drops by tracking them based on obtained motion patterns. Furthermore, the possibilities and conditions for applying the proposed method in a real industrial chemical plant are discussed at the end.

Highlights

  • Liquid leakage from pipelines is a critical issue in large-scale chemical process plants since it can affect the normal operation of the plant and pose unsafe and hazardous situations

  • The main contribution of this paper is to propose a method for liquid leakage detection in chemical process plants Using IR cameras

  • If the highest matching ratio after comparison with all obtained Kalman filters, rmatch max, is more than 80%, the possible positions in the corresponding strip in the test video are marked as leakage, otherwise the detected possible positions are considered as noise and will be ignored

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Summary

Leakage Inspection in Chemical Process Plant

Pipe networks are one of the most important elements of chemical process plants and a reliable condition monitoring of pipelines is indispensable for safe transportation of toxic or hazardous chemical substances. An automatic leakage inspection mechanism is required to permanently monitor the plant, to detect and localize the leaking drops [3]. The use of IR cameras can be very practical in capturing the effect of comparatively small leaking drops, if the temperature difference between the liquid and the environment is high enough. Using IR cameras and taking advantage of machine vision techniques [7,8] provide an automatic vision-based system for leakage monitoring in large-scale chemical process plants. The main contribution of this paper is to propose a method for liquid leakage detection in chemical process plants Using IR cameras. An overview of recent approaches in object tracking and motion pattern detection in image and video data is provided as well.

Requirements for Efficient Leakage Detection
State of the Art in Leakage Monitoring
State of the Art in Motion Pattern Detection
Typical Kalman Filter
Calculation of Measurement Points in Training Set
Leakage Detection in Test Video
Evaluation of the Proposed Method in Leakage Detection and Localization
Conclusions and Outlook
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