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Gas Detection and Identification Using Multimodal Artificial Intelligence Based Sensor Fusion

机译:基于多模式人工智能的传感器融合的气体检测和识别

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摘要

With the rapid industrialization and technological advancements, innovative engineering technologies which are cost effective, faster and easier to implement are essential. One such area of concern is the rising number of accidents happening due to gas leaks at coal mines, chemical industries, home appliances etc. In this paper we propose a novel approach to detect and identify the gaseous emissions using the multimodal AI fusion techniques. Most of the gases and their fumes are colorless, odorless, and tasteless, thereby challenging our normal human senses. Sensing based on a single sensor may not be accurate, and sensor fusion is essential for robust and reliable detection in several real-world applications. We manually collected 6400 gas samples (1600 samples per class for four classes) using two specific sensors: the 7-semiconductor gas sensors array, and a thermal camera. The early fusion method of multimodal AI, is applied The network architecture consists of a feature extraction module for individual modality, which is then fused using a merged layer followed by a dense layer, which provides a single output for identifying the gas. We obtained the testing accuracy of 96% (for fused model) as opposed to individual model accuracies of 82% (based on Gas Sensor data using LSTM) and 93% (based on thermal images data using CNN model). Results demonstrate that the fusion of multiple sensors and modalities outperforms the outcome of a single sensor.
机译:随着快速的工业化和技术进步,创新的工程技术,具有成本效益,更快,更容易实施的是必不可少的。一个这样的关注领域是由于煤矿,化学工业,家电等煤气泄漏所发生的事故数量上升。在本文中,我们提出了一种使用多模式AI融合技术检测和识别气态排放的新方法。大多数气体和它们的烟雾是无色的,无味的,无味的,从而挑战我们的正常人类感官。基于单个传感器的感测可能是不准确的,传感器融合对于在几个现实世界的应用中的鲁棒和可靠的检测方面是必不可少的。我们使用两个特定的传感器手动收集6400个气体样本(每个级别为1600个样本):7半导体气体传感器阵列和热摄像头。应用多媒体AI的早期融合方法,应用网络架构包括用于各个模态的特征提取模块,然后使用合并层融合,然后使用致密层,其提供用于识别气体的单个输出。我们获得了96%(融合模型)的测试精度,而不是以82%的单独模型精度(基于使用LSTM的气体传感器数据)和93%(基于使用CNN模型的热图像数据)。结果表明,多个传感器的融合和模态优于单个传感器的结果。

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