The instability of power generation from national grids has led industries (e.g., telecommunication) to rely on plant generators to run their businesses. However, these secondary generators create additional challenges such as fuel leakages in and out of the system and perturbations in the fuel level gauges. Consequently, telecommunication operators have been involved in a constant need for fuel to supply diesel generators. With the increase in fuel prices due to socio-economic factors, excessive fuel consumption and fuel pilferage become a problem, and this affects the smooth run of the network companies. In this work, we compared four machine learning algorithms (i.e. Gradient Boosting, Random Forest, Neural Network, and Lasso) to predict the amount of fuel consumed by a power generation plant. After evaluating the predictive accuracy of these models, the Gradient Boosting model out-perform the other three regressor models with the highest Nash efficiency value of 99.1%.
翻译:由于国家电网发电的不稳定性,工业(例如电信)依赖发电厂发电机经营业务,但这些二级发电机带来了额外的挑战,如系统内外的燃料泄漏以及燃料量表的扰动。因此,电信运营商一直需要燃料来供应柴油发电机。由于社会经济因素导致燃料价格上涨,燃料消耗过量和燃料泄漏成为问题,影响到网络公司的顺利运行。在这项工作中,我们比较了四种机器学习算法(如 " 梯度引力 " 、 " 随机森林 " 、 " 神经网络 " 和 " 拉索 " )来预测发电厂的燃料消耗量。在评估了这些模型的预测准确性之后, " 梯度引力 " 模型比其他三种递后退模型的精度高出了99.1%的最高纳什效率值。