In this research, we develop machine learning models to predict future sensor readings of a waste-to-fuel plant, which would enable proactive control of the plant's operations. We developed models that predict sensor readings for 30 and 60 minutes into the future. The models were trained using historical data, and predictions were made based on sensor readings taken at a specific time. We compare three types of models: (a) a n\"aive prediction that considers only the last predicted value, (b) neural networks that make predictions based on past sensor data (we consider different time window sizes for making a prediction), and (c) a gradient boosted tree regressor created with a set of features that we developed. We developed and tested our models on a real-world use case at a waste-to-fuel plant in Canada. We found that approach (c) provided the best results, while approach (b) provided mixed results and was not able to outperform the n\"aive consistently.
翻译:在这一研究中,我们开发了机器学习模型,以预测一个废物到燃料工厂的未来传感器读数,从而能够积极主动地控制该工厂的运行。我们开发了预测未来30和60分钟的传感器读数的模型。这些模型是使用历史数据培训的,预测是在特定时间根据传感器读数进行的。我们比较了三种模型:(a) 仅考虑最后预测值的N\"动态预测,(b) 根据过去的传感器数据作出预测的神经网络(我们考虑不同的时间窗口大小以作出预测),以及(c) 以我们开发的一套特征创建的梯度加速树递增递增器。我们在加拿大一个废物到燃料工厂开发和测试了我们真实世界使用模型。我们发现,(c) 提供了最佳结果,而方法(b) 提供了混合结果,无法以一致的方式超越“动态”。