IRES Program in Sensors and Machine Learning for Energy Systems

Kristen Jaskie, Joshua Martin, Sunil Rao, W. Barnard, P. Spanias, E. Kyriakides, Yiannis Tofis, L. Hadjidemetriou, M. Michael, T. Theocharides, Stella K. Hadjistassou, A. Spanias
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Abstract

The international research experiences for students (IRES) program addresses multidisciplinary research at the overlap of sustainability, power systems, and signal processing with the aim of improving efficiency in PV power generation. The IRES program engages faculty at the ASU SenSIP Center and at the University of Cyprus’ (UCy) KIOS Center to address fault detection and other research problems in solar energy arrays. IRES participants are tasked with studying algorithms and software to monitor and control solar arrays. Research involves using data from programmable sensors embedded in smart monitoring devices (SMDs) that are attached to solar panels. The SMDs have sensors, actuators and radios that enable researchers to work with a solar array where every panel provides data. IRES participants are trained to use machine learning to assess the solar array condition. The program also trains the students to perform research and present results in international settings. In the first year of the project, four students travelled to the University of Cyprus and worked with UCy faculty on fault detection. The program included weekly research presentations by the students at UCy, presentations at a local workshop and continued engagement after the summer experience at ASU. Two of the students were able to present and publish their work in international conferences.
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能源系统传感器和机器学习的IRES程序
国际学生研究经验(IRES)项目涉及可持续性,电力系统和信号处理重叠的多学科研究,旨在提高光伏发电的效率。IRES项目由亚利桑那州立大学senp中心和塞浦路斯大学KIOS中心的教师参与,解决太阳能电池阵列的故障检测和其他研究问题。IRES参与者的任务是研究算法和软件,以监测和控制太阳能电池阵列。研究包括使用嵌入在太阳能电池板上的智能监控设备(smd)中的可编程传感器的数据。smd具有传感器、执行器和无线电,使研究人员能够使用每个面板提供数据的太阳能电池阵列。IRES参与者接受培训,使用机器学习来评估太阳能电池阵的状况。该课程还训练学生在国际环境中进行研究并展示结果。在项目的第一年,四名学生前往塞浦路斯大学,与该大学的教师一起研究故障检测。这个项目包括每周由亚利桑那州立大学的学生做研究报告,在当地的研讨会上做报告,并在亚利桑那州立大学的暑期经历后继续参与。其中两名学生能够在国际会议上展示和发表他们的作品。
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