U. Shafi, Waheed Anwar, Imran Sarwar Bajwa, H. Sattar, Iqra Yaqoob, Aqsa Mahmood, Shabana Ramzan
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引用次数: 0
Abstract
The splendid technological inventions supersede many traditional agricultural monitoring systems. In the last decade, a variety of new techniques and tools are proposed to monitor storage areas, which provide more safe and secure storage for different crops. The term storage area monitoring is supposed to check and avoid fire hazards, whereas numerous other hazards also need attention. One such hazard to cotton storage is spontaneous combustion, a process by which an element having comparatively low ignition temperature (hay, straw, peat, etc.) starts to relieve heat. In the presence of spontaneous combustion and lack of oxygen, if cotton catches any sparks from bales or physicochemical heat to ignite, the combustion can convert in to smoldering, and it can last up to several days without being discovered. Consequently, the actual fire occurs, cotton silently smoldering which not only affects cotton quality but also became the reason of big fire event. Many researchers propose valuable tools and techniques based on laboratory methods and modern techniques as well for detection and prevention of security hazards in storages. However, there is no standalone efficient tool/technique to monitor the storage area for spontaneous combustion. In current research, we propose an efficient wireless sensor network (WSN) and machine learning- (ML-) based storage area monitoring system for early prediction of spontaneous combustion in the cotton storage area. The WSN is used to collect real-time values from storage field by different combinations of sensors and send this over the network, where data is processed to identify spontaneous combustion and distribute the prediction results to the end user. The real-time data collection and ML-based analysis make the system efficient and reliable. The efficiency of the current system is verified by presenting two groups of cotton stored with different conditions. The results showed that the proposed system is able to detect spontaneous combustion well in time with a 95% accuracy rate.
辉煌的技术发明取代了许多传统的农业监测系统。在过去的十年中,人们提出了各种新技术和新工具来监测储藏区,从而为不同作物提供更安全可靠的储藏。所谓储藏区监控,是指检查和避免火灾危险,而其他许多危险也需要关注。自燃是棉花储存过程中的一种危险,自燃是指点火温度相对较低的元素(干草、稻草、泥炭等)开始释放热量的过程。在自燃和缺氧的情况下,如果棉花从棉包或物理化学热中产生火花而被点燃,燃烧就会转化为燃烧,并可持续数天而不被发现。因此,在实际火灾发生时,棉花默默地燃烧不仅会影响棉花质量,还会成为大火的原因。许多研究人员在实验室方法和现代技术的基础上提出了一些有价值的工具和技术,用于检测和预防仓库中的安全隐患。然而,目前还没有独立的高效工具/技术来监测储藏区的自燃情况。在当前的研究中,我们提出了一种基于无线传感器网络(WSN)和机器学习(ML)的高效仓储区监控系统,用于早期预测棉花仓储区的自燃情况。WSN 用于通过不同的传感器组合收集储藏区的实时值,并将其发送到网络上,在网络上对数据进行处理,以识别自燃并将预测结果发送给最终用户。实时数据收集和基于 ML 的分析使系统高效可靠。通过展示两组不同条件下储存的棉花,验证了当前系统的效率。结果表明,所提出的系统能够及时发现自燃现象,准确率高达 95%。
期刊介绍:
International Journal of Distributed Sensor Networks (IJDSN) is a JCR ranked, peer-reviewed, open access journal that focuses on applied research and applications of sensor networks. The goal of this journal is to provide a forum for the publication of important research contributions in developing high performance computing solutions to problems arising from the complexities of these sensor network systems. Articles highlight advances in uses of sensor network systems for solving computational tasks in manufacturing, engineering and environmental systems.