利用机器学习技术预测联合循环电厂小时总能量

Md. Golam Rabby Shuvo, Niger Sultana, Limon Motin, Mohammad Rezaul Islam
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引用次数: 6

摘要

电是一种能源形式,在世界范围内为我们日常生活中的一切提供动力。能源的价值及其可再生性质成为集合能源的重要课题之一。发电厂每小时产生的能量的正确近似值对于生产具有成本效益的能源至关重要。近年来,机器学习算法被广泛应用于电厂预估发电量的预测分析。联合循环发电厂(CCPP)是指一种独特的电能生产站,在这里,能源是在两种类型的涡轮机(燃气和蒸汽)合并成一个单一循环的帮助下产生的。本研究探索并评估了四种ML回归技术,用于预测CCPP运行的每小时总能量输出。我们的整个数据集收集自孟加拉国迈门辛格农村电力有限公司(RPCL),其中包含24个输入变量,8768个观测值,净小时总能量(MW)作为目标变量。以下回归技术的性能评估:线性,套索,决策树和随机森林,表明线性回归最有效地执行我们的数据集。线性回归的R2为0.99910896(99.91%)。
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Prediction of Hourly Total Energy in Combined Cycle Power Plant Using Machine Learning Techniques
Electricity is a form of energy used around the world to power everything in our daily life. The value of energy and its renewable nature assemble energy as one of the vital topics. The correct approximation of hourly energy created on an exceeding power plant is crucial for producing cost-effective energy. In recent times, Machine Learning (ML) algorithms are widely utilized in predictive analysis of the power plants’ estimated energy production. A Combined Cycle Power Plant (CCPP) refers to a distinctive electrical energy producing station, where energy is generated with the help of the two types of turbines (gas and steam) merged into a single cycle. This study explores and evaluates four ML regression techniques for forecasting the total energy output per hour operated by a CCPP. Our entire set of data is collected from Rural Power Company Limited (RPCL), Mymensingh, Bangladesh, which contains 24 input variables, 8768 observations, and net hourly total energy (MW) as the target variable. The performance evaluation of the following regression techniques: Linear, Lasso, Decision Tree, and Random Forest, shows that Linear Regression performs most efficiently our dataset. The value of R2 for Linear Regression is 0.99910896 (99.91%).
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