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Predicting Wind Turbine Blade Fault Condition to Enhance Wind Energy Harvest Through Classification via Regression Classifier

机译:预测风力涡轮机叶片故障条件,通过回归分类器通过分类增强风能收获

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Wind energy has turned into a huge contender of usual fossil fuel energy. The advancement of substantial wind turbines empowers to obtain energy more proficiently as a result of the growing interest for renewables on the planet. With the expanded zest for the usage of wind turbine power plants in remote ranges, basic condition monitoring will be one of the main factors in the proficient foundation of wind turbines in the energy field. The wind turbine is utilized to change over wind energy into electrical energy. To make wind energy more engaged from various resources of energy, related to execution, convenience, dependability, viability, the life of turbines must be enhanced. Fault recognition on cutting edge at an early stage will avoid the issue, as sharp edge destruction can prompt a disastrous result for the whole wind turbine framework. This paper brings a pattern recognition technology into the wind energy field and endeavours to anticipate a different fault condition which happens in wind turbine sharp edge using vibration signals.
机译:风能变成了通常的化石燃料能量的巨大竞争者。大量风力涡轮机的进步使得由于行星上可再生能源的利益而越来越熟练地获得能量。随着扩大的ZEST用于使用远程范围内的风力涡轮机发电厂,基本状态监测将是能源场中风涡轮机熟练基础的主要因素之一。风力涡轮机用于通过风能变为电能。为了使风能更从各种能源资源从事,有关的执行,便利性,可靠性,可行性,必须增强涡轮机的寿命。由于尖锐的边缘破坏可以促使整个风力涡轮机框架的灾难性造成灾难性的灾难,避免对切削刃的故障识别。本文将图案识别技术带入风能场,努力预期使用振动信号发生在风力涡轮机锋利边缘中的不同故障状态。

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