Deep Convolutional Neural Network for Plume Rise Measurements in Industrial Environments
Mohammad Koushafar, Gunho Sohn, Mark Gordon

TL;DR
This paper introduces a low-cost, real-time measurement system for smokestack plume rise using a deep convolutional neural network, improving accuracy in diverse atmospheric conditions for environmental monitoring.
Contribution
It develops a novel two-stage deep learning method combining Mask R-CNN and geometric analysis for accurate plume recognition and measurement in various weather conditions.
Findings
Outperforms existing networks in smoke border detection
Enables long-term, real-time plume rise measurement
Works effectively across different atmospheric conditions
Abstract
Estimating Plume Cloud (PC) height is essential for various applications, such as global climate models. Smokestack Plume Rise (PR) is the constant height at which the PC is carried downwind as its momentum dissipates and the PC and the ambient temperatures equalize. Although different parameterizations are used in most air-quality models to predict PR, they have yet to be verified thoroughly. This paper proposes a low-cost measurement technology to monitor smokestack PCs and make long-term, real-time measurements of PR. For this purpose, a two-stage method is developed based on Deep Convolutional Neural Networks (DCNNs). In the first stage, an improved Mask R-CNN, called Deep Plume Rise Network (DPRNet), is applied to recognize the PC. Here, image processing analyses and least squares, respectively, are used to detect PC boundaries and fit an asymptotic model into the boundaries…
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Taxonomy
TopicsFire Detection and Safety Systems · Wind and Air Flow Studies · Air Quality Monitoring and Forecasting
MethodsConvolution · Region Proposal Network · RoIAlign · Softmax · Mask R-CNN
