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关键维修区域管理优化探究

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摘要 长期以来,核电厂关键维修区域的人员、物项管理较为杂乱,造成人员受照剂量过高、物项管理不清等问题。另外,维修过程中新产生的物项,如果管理不到位也极易成为关键设备或系统的异物。为方便对关键维修区域人员、工器具、备件、耗材等进行管理,探索一种基于智能设备和智能算法的区域管理方案,包括但不限于人脸、物项识别算法、区域监控、红外线屏障的多种管理手段,从而实现人员控制、异物控制、场地实时监控的目的,在智慧电网的背景下推动维修区域管理的智能化发展。
作者 舒学松
出处 《设备管理与维修》 2024年第11期1-3,共3页 Plant Maintenance Engineering
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