The Awareness and Adoption of Artificial Intelligence for Effective Facilities Management in the Energy Sector

Jonathan Oluwapelumi Mobayo, Ayooluwa Femi Aribisala, S. Yusuf, Usman Belgore
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Abstract

Digitalization and artificial intelligence (AI) have infiltrated most sectors of the economy, including the energy sector, where they have been extensively investigated. The aim of the study is primarily to assess the awareness of AI in facility management, and to identify the prospects and challenges of the adoption of AI in the energy sector. The study adopted the quantitative methodology approach, using a structured questionnaire to a sample size of 384 respondents. The questionnaire was administered to professionals such as mechanical, civil, electrical, computer, and mechatronics engineers, and project managers within the North-central geopolitical zone of Nigeria. Data gathered was analysed using descriptive analysis (mean value, weighted total, and relative importance index). The study based on findings concludes that there exists high awareness level about the concept of AI in the energy sector. However, regarding the awareness about some selected AI technologies, machine & deep learning, robotics, and speech recognition had high awareness level. The study also concludes that improved energy management, efficiency and transparency, remote reading of energy meters, and improved planning, operation & control of power systems were prevalent prospects of AI adoption. The major challenging factors to the adoption of AI in the Nigerian energy sector are outdated power system infrastructure, cellular technologies, lack of qualified experts and data science skills, and growing threat from cyber-attacks. The study recommends improved awareness and technical know-how of energy sector personnel, and provision of adequate power system infrastructure to provide stable power supply.
人工智能对能源部门有效设施管理的认识和采用
数字化和人工智能(AI)已经渗透到大多数经济领域,包括能源领域,在这方面它们已经得到了广泛的调查。该研究的主要目的是评估人工智能在设施管理中的意识,并确定在能源部门采用人工智能的前景和挑战。本研究采用定量方法,采用结构化问卷,样本量为384人。问卷调查的对象是尼日利亚中北部地缘政治地区的机械、土木、电气、计算机和机电一体化工程师以及项目经理等专业人员。收集的数据采用描述性分析(平均值、加权总数和相对重要性指数)进行分析。根据调查结果得出的结论是,能源部门对人工智能概念的认知度很高。然而,对于一些选定的人工智能技术的认知度,机器与深度学习,机器人和语音识别的认知度较高。该研究还得出结论,改进能源管理、效率和透明度、远程读取电能表以及改进电力系统的规划、运行和控制是人工智能应用的普遍前景。尼日利亚能源部门采用人工智能的主要挑战因素是过时的电力系统基础设施、蜂窝技术、缺乏合格的专家和数据科学技能,以及日益增长的网络攻击威胁。该研究建议提高能源部门人员的认识和技术知识,并提供足够的电力系统基础设施以提供稳定的电力供应。
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