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Failure Prognostic Schemes and Database Design of a Software Tool for Efficient Management of Wind Turbine Maintenance

机译:有效管理风力发电机组维护的软件工具故障预测方案和数据库设计

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Wind Turbines require numerous and varied types of maintenance activities throughout their lifespan, the frequency of which increases with years in operation. At present the proportion of maintenance cost to the total cost for wind turbines is significant particularly for offshore wind turbines (OWT) where this ratio is ~35%. If this ratio is to be reduced in-spite of adverse operating conditions, pre-mature component failures and absence of reliability database for wind turbine components, there is a need to design unconventional maintenance scheme preferably by including novel failure prediction methodologies. Several researchers have advocated the use of Artificial Neural Networks (ANN), Bayesian Network Theory (BNT) and other statistical methods to predict failure so as to plan efficient maintenance of wind turbines, however novelty and randomness of failures, nature and number of parameters involved in statistical calculations and absence of required amount of fundamental work required for such advanced analysis have continued to maintain the high cost of maintenance. This work builds upon the benefits of condition monitoring to design methods to predict generic failures in wind turbine components and exhibits how such prediction methods can assist in cutting the maintenance cost of wind turbines. This study proposes using a dedicated tool to assist with failure prediction and planning and execution of wind turbine maintenance. The design and development of such an all-inclusive tool will assist in performing administrative works, inventory control, financial calculations and service management apart from failure prediction in wind turbine components. Its database will contain reference to standard management practices, regulatory provisions, staff details and their skillsets, service call register, troubleshooting manuals, installation guide, service history, details of customers and clients etc. that would cater to multiple avenues of wind turbine maintenance. In order to build such a software package, a robust design of its database is crucial. This work lists prerequisites for choosing a physical database and identifies the benefits of relational database software in controlling large amounts of data of various formats that are stored in such physical databases. Such a database would be an invaluable resource for reliability studies, an area of interest for both academic researchers and the industry that are identifying avenues to economise wind turbine operations.
机译:风力涡轮机在其整个使用寿命中需要进行多种多样的维护活动,并且随着使用年限的增加其频率也会增加。目前,维护成本在风力涡轮机总成本中所占的比例非常重要,特别是对于海上风力涡轮机(OWT),该比例约为35%。如果尽管不利的运行条件,过早的部件故障以及风力涡轮机部件的可靠性数据库的存在而要减小该比率,则需要优选地通过包括新颖的故障预测方法来设计非常规维护方案。几位研究人员提倡使用人工神经网络(ANN),贝叶斯网络理论(BNT)和其他统计方法来预测故障,以计划对风机进行有效维护,但是故障的新颖性和随机性,涉及的参数的性质和数量在进行统计计算时,由于缺乏进行这种高级分析所需的基本工作量,因此继续维持高昂的维护成本。这项工作建立在状态监测到设计方法的优势的基础上,以预测风力涡轮机部件的一般故障,并展示了这种预测方法如何帮助降低风力涡轮机的维护成本。本研究建议使用专用工具来辅助故障预测以及风力涡轮机维护的计划和执行。除了风力涡轮机组件中的故障预测之外,这种全包工具的设计和开发将有助于执行管理工作,库存控制,财务计算和服务管理。它的数据库将包含对标准管理实践,法规规定,员工详细信息及其技能,服务电话登记册,故障排除手册,安装指南,服务历史记录,客户和客户详细信息等的参考,这些内容可满足风机维护的多种途径。为了构建这样的软件包,其数据库的健壮设计至关重要。这项工作列出了选择物理数据库的先决条件,并确定了关系数据库软件在控制存储在此类物理数据库中的各种格式的大量数据中的好处。这样的数据库将是进行可靠性研究的宝贵资源,这是学术研究人员和正在寻找节约风力涡轮机运行途径的行业感兴趣的领域。

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