智能工业控制在可再生能源系统中的应用进展

Q2 Engineering
M. Salhi, Said Kashoob, Z. Lachiri
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引用次数: 1

摘要

摘要以SCADA系统为代表的工业监控与数据采集系统,其故障检测的准确性日益提高。其中,故障诊断模型主要基于具有近不确定性的概率方法。这些模型是建立在主观评价的基础上的,通过将获得的信号与参考信号进行比较。因此,SCADA故障检测的精度取决于运行环境、系统设计和分析方法等因素。本研究工作的贡献在于提出了一种智能策略,通过将两个附加模型集成到经典技术中,丰富和增强SCADA系统的故障识别。第一个模型是SOM映射简化分类器,第二个模型是用于最终决策的进化递归自组织神经过滤器。这种集成范例提高了结果的准确性和对信号干扰的鲁棒性。被提议的想法包含了任何远程列出的缺陷的最佳细节。本研究在Simulink-Matlab上进行,通过对传感器发出的多个信号和相应天线接收的多个信号进行分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Progress in smart industrial control applied to renewable energy system
Abstract The industrial Supervising Control and Data Acquisition, referred by SCADA system, tends to improve its accuracy in detecting faults. In that, it uses fault diagnosis models based mostly on probabilistic methods with close uncertainties. These models are based on a subjective evaluation by comparing the obtained signal to its reference. Therefore, SCADA precision fault detection varies depending on the operation environment, system design and analysis approach among other factors. The contribution of this research work is to propose a smart strategy that will enrich and enhance failure recognition in SCADA systems by integrating two additional models into the classic technique. The first model is a SOM map reduce simple classifier and the second model is an evolutionary recurrent self-organizing neural filter for final decision-making. This integrated paradigm improves results accuracy and robustness against signal interference. The proposed idea involves best details around any remotely listed defect. This study has been conducted on Simulink-Matlab, through the analysis of multi signals emitted by sensors and received by corresponding antennas.
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来源期刊
Energy Harvesting and Systems
Energy Harvesting and Systems Energy-Energy Engineering and Power Technology
CiteScore
2.00
自引率
0.00%
发文量
31
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