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Application of Machine Learning and Big Data in Doubly Fed Induction Generator based Stability Analysis of Multi Machine System using Substantial Transformative Optimization Algorithm

机译:机器学习和大数据在基于双馈感应发电机的多机系统稳定性分析中的应用

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With the increase in the amount of data captured during the manufacturing process, surveillance systems are the most important decision making decisions. Current technologies such as Internet of Things (IoT) can be considered a solution to provide efficient monitoring of productivity. In this study, it has suggested a real-time monitoring system that uses an IoT, big data processing and an Offshore Wind Farm (OWF) model is proposed. The Offshore Wind Farm (OWF) is an extended level invasion in modern power electronics systems, in this proposed work Doubly Fed Induction Generator (DFIG) based multi machined OWF was designed, and power stability was analyzed using Substantial Transformative Optimization Algorithm (STOA). The Voltage Source Converter (VSC) and High Voltage Direct Current (HVDC) system was combined with onshore network. The terminal voltage of onshore network was controlled through Onshore Side Converter (OSC), active and reactive power was regulated separately using VSC. The performance of the onshore network was evaluated under renewable network errors (Total Harmonics distortion and steady state error) beside with OWE. The OWF - DFIG active and reactive power was controlled smoothly with in the limit of HVDC, and the power framework security can be updated by controlling the active power of the OSC to help its terminal voltage using STOA methodology. From the voltage control mode, the electrical faults are recovered rapidly with minimum fluctuation. The dynamic simulation comes about additionally demonstrate that onshore network fault can't impact OWF behind HVDC transmission system. Because of the specialized favorable circumstance, VSC-HVDC innovation, the constancy in OWF is very much ensured against the onshore grid faults. The proposed STOA based system has validated through simulation in Matlab Simulink environment. General, 97% effectiveness, accomplished at full load condition in light of the proposed system. The results showed that the IoT system and the proposed large data processing system were sufficiently competent to monitor the manufacturing process. (C) 2019 Elsevier B.V. All rights reserved.
机译:随着制造过程中捕获的数据量的增加,监视系统是最重要的决策决策。可以将诸如物联网(IoT)之类的当前技术视为提供对生产力进行有效监视的解决方案。在这项研究中,它提出了一种使用物联网,大数据处理和海上风电场(OWF)模型的实时监控系统。海上风电场(OWF)是现代电力电子系统中的一个扩展级别的入侵,在这项拟议的工作中,设计了基于双馈感应发电机(DFIG)的多机OWF,并使用实质性变优化算法(STOA)分析了功率稳定性。电压源转换器(VSC)和高压直流(HVDC)系统与陆上网络相结合。岸上电网的端电压通过岸上变流器(OSC)进行控制,有功和无功功率分别通过VSC进行调节。除了OWE以外,还根据可再生网络错误(总谐波失真和稳态错误)评估了陆上网络的性能。 OWF-DFIG的有功功率和无功功率在HVDC的限制内得到了平稳控制,并且可以通过使用STOA方法控制OSC的有功功率来帮助其端电压来更新电源框架的安全性。从电压控制模式,可以以最小的波动迅速恢复电气故障。动态仿真还表明,HVDC输电系统后,陆上电网故障不会影响OWF。由于特殊的有利环境,VSC-HVDC创新,极大地确保了OWF的恒定性以防陆上电网故障。所提出的基于STOA的系统已经在Matlab Simulink环境中通过仿真进行了验证。通常,根据建议的系统,在满负载条件下可以实现97%的效率。结果表明,物联网系统和拟议的大数据处理系统具有足够的能力来监控制造过程。 (C)2019 Elsevier B.V.保留所有权利。

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