基于移动边缘计算的城市污泥遥感检测与资源化利用

Weijie Hu, Youfei Zhou, Junying Lu, Jun Sheng, Zechen Jin
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引用次数: 1

摘要

城市污水污泥处置不当对有效的环境保护构成重大威胁。随着人工智能技术和物联网(IoT)的不断发展,遥感检测技术正在成为解决这一问题的一个有前途的研究途径。然而,目前实时检测技术的现状尚不完善,阻碍了全面、稳定的监测运行。此外,网络资源的合理使用仍然是次优的。为了应对这一挑战,本研究针对目前城市污泥智能监测系统的不足,提出了一种资源优化技术。通过利用物联网和无线技术,与传统的PLC收集相比,水表数据可以以最少的土地建设收集。然后利用Faster R-CNN规划污水遥感信息资源的网络传输。最后,通过结合边缘计算和保留传感器端口来增强架构采集模块的可扩展性,以满足未来工厂扩展的需求。实验证明了该技术在应用和资源优化方面的巨大潜力。在实际参数跟踪测试中,本文方法有效地监测了污水污泥,为相关部门提供政策指导和措施优化,最终促进城市无公害发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Remote Sensing Detection and Resource Utilisation of Urban Sewage Sludge Based on Mobile Edge Computing
Abstract Improper disposal of municipal sewage sludge poses a significant threat to effective environmental protection. With the continuous advancement of artificial intelligence technology and the Internet of Things (IoT), remote sensing detection technology is emerging as a promising research avenue to address this issue. However, the current state of real-time detection technology is inadequate, hindering comprehensive and stable monitoring operation. Additionally, the rational use of network resources remains suboptimal. To address this challenge, this study proposes a resource optimisation technology for the current insufficient intelligent monitoring system of urban sewage sludge. By leveraging IoT and wireless technology, water meter data can be collected with minimal earth construction compared to traditional PLC collection. This is followed by utilising Faster R-CNN to plan the network transmission of sewage remote sensing information resources. Finally, the architecture collection module’s scalability is enhanced by incorporating edge computing and reserving sensor ports to meet future plant expansion demands. The experiment demonstrates the significant potential of this technology in application and resource optimisation. In actual parameter tracking tests, the proposed method effectively monitors sewage sludge, providing policy guidance and measure optimisation for relevant authorities, ultimately contributing to pollution-free urban development.
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