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Pylon Anti-Vandalism Monitoring System using Machine Learning Approach

机译:使用机器学习方法的塔式防范式监控系统

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A country's economic growth is largely dependent on the stability of its energy sector. The growth of Kenya's power sector is greatly supported by Vision 2030 development blueprint, which is geared at transforming the country into a “middle-income country that is able to provide a high quality of life to all of its citizens by the year 2030”. Though major investments have so far been made in the generation and transmission of power, the distribution sub-sector is yet to reap the full benefits due to a number of challenges ranging from financial to operation and maintenance. Transformers are key components of any power distribution network and despite their specified long operational life, they often fail within a short period of commissioning due to various reasons including vandalism. This has led to great losses to the power distribution sub-sector and consumers alike. This paper proposes an anti-theft system that uses machine learning technique to monitor the pylon's environs against vandals. Results of the study reveals that the system is capable of detecting human images with confidence levels between 68% and 97%.
机译:一个国家的经济增长在很大程度上取决于其能源部门的稳定性。肯尼亚电力行业的增长得到《 2030年愿景》发展蓝图的大力支持,该愿景旨在将肯尼亚转变为“到2030年能够为所有公民提供高质量生活的中等收入国家”。尽管迄今为止已经在发电和输电方面进行了重大投资,但由于从财务到运营和维护等诸多挑战,配电子行业仍未获得全部收益。变压器是任何配电网络的关键组件,尽管规定了较长的使用寿命,但由于各种原因(包括故意破坏),它们通常会在短时间内调试失败。这给配电子行业和消费者造成了巨大损失。本文提出了一种防盗系统,该系统使用机器学习技术来监视塔的周围环境以防破坏。研究结果表明,该系统能够以68%至97%的置信度检测人类图像。

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