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Research on a Gas Concentration Prediction Algorithm Based on Stacking

机译:基于堆叠的气体浓度预测算法研究

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摘要

Machine learning algorithms play an important role in the detection of toxic, flammable and explosive gases, and they are extremely important for the study of mixed gas classification and concentration prediction methods. To solve the problem of low prediction accuracy of gas concentration regression prediction algorithms, a gas concentration prediction algorithm based on a stacking model is proposed in the current research. In this paper, the stochastic forest, extreme random regression tree and gradient boosting decision tree (GBDT) regression algorithms are selected as the base learning devices and use the stacking algorithm to take the output of each base learning device as input to train a new model to produce a final output. Through the stacking model, the grid search algorithm is studied to automatically optimize the parameters so that the performance of the entire system can reach the optimal parameters. Through experimental simulation, the gas concentration prediction algorithm based on stacking model has better prediction effect than other integrated frame algorithms and the accuracy of mixed gas concentration prediction is improved.
机译:机器学习算法在检测有毒,易燃和爆炸性气体中起重要作用,它们对于研究混合气体分类和浓缩预测方法非常重要。为了解决气体浓度回归预测算法的低预测精度的问题,在当前研究中提出了一种基于堆叠模型的气体浓缩预测算法。在本文中,随机森林,极端随机回归树和渐变升降决策树(GBDT)回归算法被选择为基础学习设备,并使用堆叠算法将每个基本学习设备的输出作为输入训练新模型产生最终输出。通过堆叠模型,研究了网格搜索算法,自动优化参数,以便整个系统的性能可以达到最佳参数。通过实验模拟,基于堆叠模型的气体浓度预测算法具有比其他集成帧算法更好的预测效果,并且改善了混合气体浓度预测的精度。

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