Analysis of Remotely Piloted Aircraft Payload for Oil Spill Detection

IF 0.5 Q4 PHYSICS, APPLIED
V. Zavtkevics, M. Urbaha
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引用次数: 0

Abstract

Abstract Operational monitoring of large sea aquatorium areas with the aim of detecting and controlling oil pollution is now carried out using various technological systems, such as satellite remote sensing, sea-going vessels, various aircraft and remotely piloted aircraft (RPA). Currently, the use of RPA for the fulfilment of monitoring tasks in the aquatorium is being intensively developed and can eliminate problems of remote sensing performed by satellites and piloted aircraft, such as short presence in the monitoring area, very long delay of information (up to 48 hours) and low quality of imagery. This paper presents mathematical modelling of RPA multi-sensor pay-loads for oil spill detection, monitoring and control. Information obtained from payload sensors is critical for increasing effectiveness of detection and monitoring of oil spills. Nowadays, many types of sensors are used for oil spill detection and monitoring. The most common sensors for detection of oil pollution are optical, multispectral, hyperspectral, thermal and laser fluorometers. Some oil pollution detection sensors have limitations, such as false alarm, only daytime operation, weather restrictions. Airborne remote sensors cannot provide all information required for detection of and response to oil spills, and water quality monitoring in the spill area. A model for selecting sensors for multi sensor payload that will make it possible to optimize the application of RPA for oil spill detection was developed. The RPA payload can be increased/reduced to the greatest possible extent with the help of different types of equipment at various parameters. The mathematical model of the integrated payload considers detection capability of sensors, weather conditions, sensor characteristics, and false alarm rate. The optimal multi-sensor payload will optimize the application of RPA for oil spill detection and monitoring.
用于漏油探测的遥控飞机有效载荷分析
摘要为了检测和控制石油污染,目前正在使用各种技术系统,如卫星遥感、海船、各种飞机和遥控飞机,对大型海水养殖区进行操作监测。目前,正在大力开发使用RPA来完成水族馆的监测任务,可以消除卫星和有人驾驶的飞机进行遥感的问题,例如监测区域存在时间短、信息延迟很长(长达48小时)和图像质量低。本文介绍了用于漏油检测、监测和控制的RPA多传感器有效载荷的数学模型。从有效载荷传感器获得的信息对于提高石油泄漏检测和监测的有效性至关重要。如今,许多类型的传感器被用于漏油检测和监测。用于检测石油污染的最常见传感器是光学、多光谱、高光谱、热和激光荧光计。一些油污染检测传感器有局限性,如误报、仅在白天操作、天气限制。机载遥感器无法提供检测和应对石油泄漏以及泄漏区域水质监测所需的所有信息。开发了一个为多传感器有效载荷选择传感器的模型,该模型将有可能优化RPA在漏油检测中的应用。在不同参数的不同类型设备的帮助下,RPA有效载荷可以最大限度地增加/减少。集成有效载荷的数学模型考虑了传感器的检测能力、天气条件、传感器特性和误报率。最佳的多传感器有效载荷将优化RPA在漏油检测和监测中的应用。
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来源期刊
CiteScore
1.50
自引率
16.70%
发文量
41
审稿时长
5 weeks
期刊介绍: Latvian Journal of Physics and Technical Sciences (Latvijas Fizikas un Tehnisko Zinātņu Žurnāls) publishes experimental and theoretical papers containing results not published previously and review articles. Its scope includes Energy and Power, Energy Engineering, Energy Policy and Economics, Physical Sciences, Physics and Applied Physics in Engineering, Astronomy and Spectroscopy.
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