机器人辅助植物灾害预防和响应任务必备的机器人视觉系统

Saifuddin Mahmud, M. Ferdous, R. Sourave, Mohammad Insanur Rahman Shuvo, Jong-Hoon Kim
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引用次数: 1

摘要

电厂、炼油厂、铁厂和工业单位的日常检查和应急响应是不可避免的需求,因为它们直接影响到产量和安全。通过使用自主机器人,它们可以得到改进。除了位于危险区域的设施(如海上工厂)可能无法派遣人员外,可以通过对设施(泵、储罐、锅炉等)的自动检查和诊断来防止人为错误造成的事故。此外,如果任何灾难或事故发生在工厂受害者应立即得到援助。一旦发现受害者,自主机器人可以为他们提供快速的紧急援助。机器人辅助检查操作和受害者检测的主要障碍是识别各种类型的仪表并读取它们,在任何照明条件下检测实际的受害者,并采取适当的行动。本研究描述了一种独特的用于工厂检查和受害者检测系统的机器人视觉系统,该系统可用于提高例行检查的频率,从而最大限度地减少由人为错误或退化引起的设备故障和事故(由气体泄漏引起的爆炸或火灾),并检测受害者以提供即时响应。该系统可以通过检测和读取各种仪表并找到受害者来进行设施检查,如果发现任何异常情况,它会发出报告。此外,该系统可以对可能对人员有害的不可预见的异常事件做出反应,并在必要时执行特定的活动,如阀门控制。
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An Essential Robot Vision System for Robot Assisted Plant Disaster Prevention and Response Missions
Routine inspections and emergency response are unavoidable needs for power plants, oil refineries, iron works, and industrial units, as they directly influence output and safety. By utilizing autonomous robots, they can be improved. With the exception of facilities located in hazardous areas, such as off-shore factories, where dispatching people might be impossible, accidents caused by human mistakes can be prevented by autonomous inspections and diagnosis of facilities (pumps, tanks, boilers, and so on). Furthermore, if any disaster or accident happens in the plant victims should get immediate assistance. Autonomous robots can enable quick emergency assistance for victims once they are detected. The primary obstacles in robot-assisted inspection operations and victim detection are identifying various types of gauges and reading them, detecting the actual victims in any lighting condition, and taking appropriate actions. This study describes a unique robot vision system for plant inspection and victim detection system that may be used to enhance the frequency of routine checks, hence minimizing equipment faults and accidents (explosions or fires caused by gas leaks) caused by human mistakes or degradation and detecting victims to provide an immediate response. This suggested system can conduct facility inspections by detecting and reading a variety of gauges and finding victims, and it issues reports if any anomalies are discovered. Furthermore, this system can respond to unforeseen anomalous events that are potentially harmful to people and execute specific activities such as valve control if necessary.
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