通过基于气体分布图数据库的深度学习方法进行气体源定位

Z. H. Mohd Juffry, Kamarulzaman Kamarudin, Abdul Hamid Adom, M. F. Miskon, A. S. Ali Yeon, Abdulnasser Nabil Abdullah
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引用次数: 0

摘要

有害气体泄漏事件可能会对环境造成严重破坏,并造成人员伤亡,而气体定位系统在减少这些伤亡方面发挥着重要作用。随着人工智能技术的发展,深度学习能够提高气体定位系统定位气体源的准确性。本文提出的瓦斯定位系统利用三种不同的深度学习模型,即 DNN、1DCNN 和 2DCNN,来定位瓦斯地图中的瓦斯源。所提出的方法包括在真实的室内场景中通过大型气体传感器阵列平台生成气体分布图。然后利用收集到的数据库对这些模型进行训练,从而准确预测气源位置。通过比较每个拟议的深度学习模型的性能,找出在识别气体泄漏方面最有效的最佳模型。研究表明,与 DNN 和 2DCNN 模型相比,1DCNN 在预测 0.0 米至 0.3 米范围内的气体源方面具有最高的有效性,达到 90.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GAS SOURCE LOCALIZATION THROUGH DEEP LEARNING METHOD BASED ON GAS DISTRIBUTION MAP DATABASE
The incident of harmful gas leakage can cause severe damage to the environment and several casualties to human beings while the gas localization system plays a major role in mitigating those causalities. With the advances in artificial intelligence technology, deep learning is able to enhance the accuracy of the gas localization system to locate the gas source. This paper proposes a gas localization system that utilizes three different deep learning models namely DNN, 1DCNN, and 2DCNN to locate the gas source within the gas map. The proposed method involves generating the gas distribution map through the large gas sensor array platform in real-world indoor scenarios. Those models are then trained using the collected database which allows for accurate prediction of the gas source location. The performance of each proposed deep learning model was compared to find the best model demonstrating the highest effectiveness in identifying gas leaks. The study has shown that the 1DCNN has the highest effectiveness in predicting the gas source in the range between 0.0 m to 0.3 m with 90.3% compared to the DNN and 2DCNN models.
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