利用机器学习方法确定燃气轮机机组的管路有效功率

V. L. Blinov, G. Deryabin
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引用次数: 1

摘要

对天然气输送用燃气轮机动力设计方法进行了研究,并指出了其不足之处。用Python语言编写了一个程序来研究机器学习方法在确定运行条件下电厂功率的适用性。采用工厂自动控制系统登记的档案气体动力学参数作为初始数据。根据不同的特征参数集估计机器学习模型的预测质量。对模型的使用提出了建议;并确定了方法误差。驳斥了基于单个发动机数据学习的模型适用于估计其他同类型发动机功率的假设。即使没有部分初始数据,机器学习方法也可以用来确定燃气轮机发电厂的功率,这是传统方法的主要优势。
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Using machine-learning methods in determination of the pipe line gas turbine plant effective power
The paper considers methods of the gas turbine plant power designed for natural gas transportation and reveals their drawbacks. A program in the Python language was created to study applicability of the machine-learning methods to determine the plant power under operating conditions. Archival gas-dynamic parameters registered by the plant automatic control system were used as the initial data. Forecast quality of the machine-learning models was estimated depending on different sets of the feature parameters. Recommendations on the models use are provided; and the method error was determined. Hypothesis on applicability of models learned based on data of a single engine to estimate the power of the other engines of the same type was refuted. Machine-learning methods could be used to determine the gas turbine plant power even in the absence of part of the initial data, which is the main advantage over traditional methods.
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