Power Plant Coal Inventory Forecasting Based on LightGBM with Bayesian Optimization

Min Zhang, Yuan Song, Zhijun Zhang, L. Lu
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Abstract

Accurate prediction of coal inventory in power plants is an important prerequisite for the smooth implementation of power plant supply guarantee policies. It is of great significance to accurately predict the supply risk of coal in advance. The coal inventory of hydropower plants has the characteristics of periodicity, randomness and seasonality, and is affected by coal input, coal consumption, meteorology and special policy events. Aiming at the problems that the prediction results of the existing power plant coal inventory prediction algorithm are not accurate enough, and the prediction is only based on historical data such as power generation and coal consumption, this paper proposes a new coal inventory prediction method for hydropower plants, which uses the learning advantage of the LightGBM model based on Bayesian optimization to the regression problem, determines the local optimal hyperparameter configuration, and uses the histogram algorithm and the gradient unilateral sampling algorithm, Reduce the number of training samples and features in the iteration to avoid over fitting. In this paper, the experimental analysis is carried out on the historical data of a hydropower plant. Finally, the accuracy of the model is evaluated by statistical indicators such as RMSE, Mae and correlation coefficient. Experiments show that compared with other algorithms, the method proposed in this paper has higher accuracy and is of great significance for the prediction of coal inventory in hydropower plants.
基于LightGBM的电厂煤库存预测与贝叶斯优化
准确预测电厂煤炭库存是电厂供电保障政策顺利实施的重要前提。提前准确预测煤炭供应风险具有重要意义。水电厂煤炭库存具有周期性、随机性和季节性特征,受煤炭投入、煤炭消费、气象和特殊政策事件的影响。针对现有电厂煤炭库存预测算法预测结果不够准确,仅基于发电量、煤耗等历史数据进行预测的问题,本文提出了一种新的水电站煤炭库存预测方法,该方法利用基于贝叶斯优化的LightGBM模型的学习优势对回归问题进行求解,确定局部最优超参数配置;并采用直方图算法和梯度单边采样算法,减少迭代中训练样本和特征的数量,避免过拟合。本文对某水电站的历史数据进行了实验分析。最后,通过RMSE、Mae、相关系数等统计指标对模型的准确性进行评价。实验表明,与其他算法相比,本文提出的方法具有更高的精度,对水电厂煤炭库存预测具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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