Developing a Neural Network Based Fault Prediction Tool for a Solar Power Plant in Uganda

Salmah Nansamba, Hadi Harb
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Abstract

Solar photovoltaic (PV) systems are one of the fastest growing renewable energy technologies and plenty of research has been and continues to be carried out in this domain. Maximization of solar PV power plant production, efficiency and return on investment can only be achieved by having adequate and effective maintenance systems in place. Of the various maintenance schemes, predictive maintenance is popular for its effectiveness and minimization of resource wastage. Maintenance activities are scheduled based on the real time condition of the system with priority being given to the system components with the highest likelihood of failure. A good predictive maintenance system is based on the premise of being able to anticipate faults before they occur. In this study therefore, a fault prediction tool for a solar plant in Uganda is proposed. The hybrid tool is developed using both feed forward and long short term memory neural networks for power prediction, in conjunction with a mean chart statistical process control tool for final fault prediction. Results from the study demonstrate that the feed forward and long short term memory neural network modules of the proposed tool attain mean absolute errors of 4.2% and 6.9% respectively for power production predictions. The fault prediction capability of the tool is tested under both normal and abnormal operating conditions. Results show that the tool satisfactorily discriminates against the fault and non-fault conditions thereby achieving successful solar PV system fault prediction.
基于神经网络的乌干达太阳能电站故障预测工具开发
太阳能光伏(PV)系统是发展最快的可再生能源技术之一,在这一领域已经并将继续进行大量的研究。只有通过适当和有效的维护系统,才能实现太阳能光伏发电厂产量、效率和投资回报的最大化。在各种维护方案中,预测性维护以其有效性和最小化资源浪费而广受欢迎。维护活动是根据系统的实时状况来安排的,优先考虑最有可能发生故障的系统组件。一个好的预测性维护系统是建立在能够在故障发生之前预测到故障的前提之上的。因此,在这项研究中,提出了乌干达太阳能发电厂的故障预测工具。该混合工具使用前馈和长短期记忆神经网络进行功率预测,并结合平均图统计过程控制工具进行最终故障预测。研究结果表明,该工具的前馈和长短期记忆神经网络模块对发电量预测的平均绝对误差分别为4.2%和6.9%。在正常和异常工况下,对该工具的故障预测能力进行了测试。结果表明,该工具能够很好地区分故障和非故障情况,从而成功地实现了太阳能光伏系统的故障预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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